Artificial Intelligence Models Utilize Lifestyle Factors to Predict Dry Eye-Related Outcomes

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Abstract Purpose To examine and interpret machine learning models that predict dry eye (DE)-related clinical signs, subjective symptoms, and clinician diagnoses by heavily weighting lifestyle factors in the predictions. Methods Machine learning models were trained to take clinical assessments of the ocular surface, eyelids, and tear film, combined with symptom scores from validated questionnaire instruments for DE and clinician diagnoses of ocular surface diseases, and perform a classification into DE-related outcome categories. Outcomes are presented for which the data-driven algorithm identified subject characteristics, lifestyle, behaviors, or environmental exposures as heavily weighted predictors. Models were assessed by 5-fold cross-validation accuracy and class-wise statistics of the predictors. Results Age was a heavily weighted factor in predictions of eyelid notching, Line of Marx anterior displacement, and fluorescein tear breakup time (FTBUT), as well as visual analog scale symptom ratings and a clinician diagnosis of blepharitis. Comfortable contact lens wearing time was heavily weighted in predictions of DE symptom ratings. Time spent in near work, alcohol consumption, exercise, and time spent outdoors were heavily weighted predictors for several ocular signs and symptoms. Exposure to airplane cabin environments and driving a car were predictors of DE-related symptoms but not clinical signs. Prediction accuracies for DE-related symptoms ranged from 60.7–86.5%, for diagnoses from 73.7–80.1%, and for clinical signs from 66.9–98.7%. Conclusions The results emphasize the importance of lifestyle, subject, and environmental characteristics in the etiology of ocular surface disease. Lifestyle factors should be taken into account in clinical research and care to a far greater extent than has been the case to date.
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Graham, Jiayun Wang, Tejasvi Kothapalli, Jennifer Ding, and 6 more This is a preprint; it has not been peer reviewed by a journal. https://doi.org/ 10.21203/rs.3.rs-4536316/v1 This work is licensed under a CC BY 4.0 License Status: Published Journal Publication published 18 Apr, 2025 Read the published version in Scientific Reports → Version 1 posted 12 You are reading this latest preprint version Abstract Purpose To examine and interpret machine learning models that predict dry eye (DE)-related clinical signs, subjective symptoms, and clinician diagnoses by heavily weighting lifestyle factors in the predictions. Methods Machine learning models were trained to take clinical assessments of the ocular surface, eyelids, and tear film, combined with symptom scores from validated questionnaire instruments for DE and clinician diagnoses of ocular surface diseases, and perform a classification into DE-related outcome categories. Outcomes are presented for which the data-driven algorithm identified subject characteristics, lifestyle, behaviors, or environmental exposures as heavily weighted predictors. Models were assessed by 5-fold cross-validation accuracy and class-wise statistics of the predictors. Results Age was a heavily weighted factor in predictions of eyelid notching, Line of Marx anterior displacement, and fluorescein tear breakup time (FTBUT), as well as visual analog scale symptom ratings and a clinician diagnosis of blepharitis. Comfortable contact lens wearing time was heavily weighted in predictions of DE symptom ratings. Time spent in near work, alcohol consumption, exercise, and time spent outdoors were heavily weighted predictors for several ocular signs and symptoms. Exposure to airplane cabin environments and driving a car were predictors of DE-related symptoms but not clinical signs. Prediction accuracies for DE-related symptoms ranged from 60.7–86.5%, for diagnoses from 73.7–80.1%, and for clinical signs from 66.9–98.7%. Conclusions The results emphasize the importance of lifestyle, subject, and environmental characteristics in the etiology of ocular surface disease. Lifestyle factors should be taken into account in clinical research and care to a far greater extent than has been the case to date. Health sciences/Medical research Health sciences/Medical research/Outcomes research Health sciences/Medical research/Translational research Health sciences/Diseases/Eye diseases Health sciences/Diseases/Eye diseases/Conjunctival diseases Health sciences/Diseases/Eye diseases/Corneal diseases Health sciences/Diseases/Eye diseases/Eyelid diseases Health sciences/Diseases/Eye diseases/Vision disorders Dry Eye Meibomian gland dysfunction lifestyle artificial intelligence machine learning age contact lens wear alcohol driving exercise near work airplane cabin outdoor exposure blepharitis Line of Marx eyelid notching tear film instability Figures Figure 1 Figure 2 INTRODUCTION In the study of dry eye (DE), patient characteristics, lifestyle behaviors, and risk exposures have recently emerged as critical to its etiology and to its diagnosis, treatment and management. While the vast literature on DE and related ocular surface diseases has tended to focus on mechanisms of pathology, development of diagnostic instruments both objective and subjective, and on treatment and management, lifestyle factors have historically been secondary to most analyses, when they are included at all. Recently, the Tear Film and Ocular Surface Society (TFOS) workshop report described ocular surface disease as a “lifestyle epidemic”, 1 and interest in the impact of patient lifestyle and behaviors is receiving renewed and much needed attention. In recent years, artificial intelligence has proven to be a valuable tool in biomedical research and health care, however the use of this technology in the study and management of ocular surface diseases like DE has lagged behind its use in other aspects of vision such as retinal imaging. 2 One area of nascent advancement has been the detailed analysis of Meibomian gland morphology from infrared imaging of the everted eyelids, known as meibography. 3 Recent work has demonstrated the ability to use machine learning models to quantify Meibomian gland morphological characteristics from meibography imaging, 4 , 5 and to combine the imaging results with patient lifestyle and behavioral factors, clinical measurements, symptomatological assessments, and clinician diagnoses to predict outcomes related to Meibomian gland dysfunction (MGD), DE, and other ocular surface pathology. 6 When the most heavily weighted variables used by machine learning models to predict DE-related outcomes are examined, many subject characteristics, lifestyle qualities, behavioral factors, and associated environmental exposures play a prominent role. These emerging artificial intelligence models can facilitate the discovery of novel relationships among clinical, lifestyle, and symptom variables, allow examination of previously determined relationships from a new perspective, and generate new hypotheses for further investigation. 7 , 8 The importance of lifestyle factors in machine learning model predictions of ocular surface disease-related outcomes is the focus of the current work. METHODS Subjects 18 years of age or older with no history of ocular surgery, no active ocular infections, and not currently taking medications known to affect the anterior eye, eyelids or tear film were eligible for the study. Both contact lens wearers and non-wearers were eligible. Informed consent was obtained from all subjects. The study adhered to the tenets of the Declaration of Helsinki and was approved by the U.C. Berkeley Committee for the Protection of Human Subjects. The study complied with the relevant CONSORT-AI extension guidelines for clinical studies with an artificial intelligence component. The machine learning methodology employed in this study is reported in detail elsewhere. 6 Briefly, a machine learning prediction model was developed to segment Meibomian gland morphological features from meibography images and combine them with subject characteristics, clinical assessments, and symptom scores as inputs to a prediction model. The prediction model then performs classifications into DE-related outcome categories using logistic regression. A depiction of the input features (i.e., the subject, clinical, and symptom variables available as potential predictors) and the output features (i.e., the predicted DE-related outcome classes) is provided in Fig. 1 . Some outcomes have natural predicted classes, such as a diagnosis of blepharitis (Yes/No) or eyelid notching (Present/Absent). The predicted classes for continuous and ordinal outcomes were defined based on published thresholds where available, 9 – 14 and on clinical expertise and standard practice where not. Details of all clinical assessments, symptomatology instruments, and clinician diagnoses are provided in Appendix 1. Figure 1 . Inputs and outputs for the DE-related outcome prediction models. MGD = Meibomian gland dysfunction; OSDI = Ocular Surface Disease Index; SPEED = Standard Patient Evaluation of Eye Dryness; CLDEQ-8 = 8-item Contact Lens Dry Eye Questionnaire; VAS = Visual Analog Scale; DEFC = Berkeley Dry Eye Flow Chart. To train the prediction models for each DE-related outcome, data were divided into 5 randomly selected folds, with 4 folds used to train the model and the 5th used for validation. The models were first trained using all available variables as potential predictive features, then the least weighted feature (i.e., the variable with the lowest coefficient value) was pruned and the model retrained on the remaining features. This process was repeated until only a single predictor remained. From that set of trained models, the one with the highest cross-validation accuracy was selected. To further improve the generalizability of the modeling results, the entire training-pruning-retraining process was repeated using each of the original 5 folds as the validation set. The coefficient values for the 5 best-accuracy models were then aggregated and ranked to determine the most heavily weighted features used for predicting each DE-related outcome. This makes it less likely for the model outputs to be entirely dependent on the makeup of a single validation set. Finally, the class-wise mean values of the predictors stratified on outcome classes were reported, along with the mean cross-validation accuracy. The overall process and an example of the model output are shown in Fig. 2 . Figure 2 . Training process for the DE-related outcome prediction models. FTBUT = Fluorescein Tear Breakup Time; NITBUT = Non-Invasive Tear Breakup Time; Conj = Conjunctival; MG = Meibomian Glands. RESULTS Subjects This study utilized 726 clinical records from 363 subjects. The mean (SD) age was 26.6 (12.1) yrs with a range of 18 to 71 yrs. Subjects were 67.2% female, 32.8% male; 46.8% contact lens wearers, 53.2% non-wearers; 43.8% of Asian race, 56.2% of non-Asian race. The distinction between Asian and non-Asian races is based on well-established differences in eyelid anatomy, 15 tear film stability, 16 and DE symptoms. 17 The Asian racial group included subjects of Chinese, Japanese, Korean, and Southeast Asian descent. The non-Asian group consisted primarily of Caucasian subjects, with small minorities of African, Hispanic, and mixed-race subjects. Demographic Characteristics Greater age was a heavily weighted predictor of several clinical signs, including eyelid notching, Line of Marx (LoM) anterior displacement, and fluorescein tear breakup time (FTBUT; Table 1 ). The model for eyelid notching achieved 95.9% prediction accuracy with a 19.6 year greater mean age for subjects with notching. The model for anterior displacement of the LoM achieved 86.8% prediction accuracy with a mean 6.0 year greater age among those with moderate to severe LoM displacement. Among Asian subjects, greater age was a heavily weighted predictor of FTBUT < 6.7 sec with a model accuracy of 79.7%. Table 1 Clinical signs predicted by machine learning models that identify lifestyle features as heavily weighted predictors. Predicted Outcomes: Clinical Signs Predicted Outcome [Predicted Classes] Predictive Lifestyle Features Class-wise Means Accuracy (%) Eyelid Notching [Absent, Present] Age (yrs) [27.07, 46.73] 95.92 Eyelid Margin Erythema: UL [< 2, ≥2] Near Work (hrs/day) [7.25, 8.28] 98.65 Meibum Quality: UL, Central [< 18, ≥18] Near Work (hrs/day) [7.24, 8.22] 96.05 Meibum Quality: LL, Entire [< 36, ≥36] Alcoholic Beverages (#/wk) [1.66, 0.68] 93.99 LoM: Anterior Displacement, UL [< 2, ≥2] Age (yrs) [26.92, 32.88] 86.82 LoM: Anterior Displacement, LL [< 2, ≥2] Airplane Cabin Exposure (hrs/mo) [1.28, 0.55] 83.00 LWE: Length [< 2, ≥2] CL Wear History (yrs) [9.91, 10.17] 92.36 LWE: Width [60] CL Wear History (yrs) [10.64, 9.29] 66.87 Corneal Staining: Extent [< 2, ≥2] Time Outdoors (hrs/day) [2.72, 2.26] 91.24 Non-invasive TBUT (s): Asian [< 9.0, ≥9.0] Near Work (hrs/day) [8.19, 7.05] 80.35 Fluorescein TBUT (s): Asian [< 6.7, ≥6.7] Age (yrs) [26.05, 22.11] 79.74 CL Wear Duration (hrs/day) [10.91, 9.59] Fluor TBUT (s): Non-Asian [< 9.2, ≥9.2] CL Wear Freq (days/wk) [5.78, 5.29] 87.39 Fluor TBUT (s): All Subjects [< 10.0, ≥10.0] CL Wear Freq (days/wk) [6.03, 5.64] 84.55 Age was also a heavily weighted predictor of several DE-related symptoms. Ocular dryness severity and frequency rated on visual analog scales (VAS; Table 2 ) included age as a heavily weighted predictor. Subjects with the worst average dryness severity averaged 6.9 yrs older than those with the least severe dryness. For severity of end-of-day dryness, subjects with the highest severity averaged 6.7 yrs older. Subject with the most frequent dryness symptoms averaged 8.0 yrs older that those with the least frequent dryness. Frequency of end-of-day dryness was similar with a 7.0 year greater mean age among those with the most frequent dryness. Interestingly, age was a heavily weighted predictor for all VAS ratings of dryness, but not for any VAS ratings of discomfort. Table 2 Subjective symptoms predicted by machine learning models that identify lifestyle features as heavily weighted predictors. Predicted Outcomes: Symptoms Predicted Outcome [Predicted Classes] Predictive Lifestyle Features Class-wise Means Accuracy (%) OSDI Score [≤ 12, >12 ≤ 23, >23] Car Driving Exposure (hrs/wk) [2.07, 5.29, 3.38] 68.09 CL Wear Comfortable Wear (hrs/day) [9.01, 8.19, 7.80] Train Riding Exposure (hrs/wk) [1.24, 0.71, 1.99] SPEED II Score [≤ 4, >4] CL Wear Comfortable Wear (hrs/day) [9.04, 8.27] 74.47 CL Wear History (yrs) [9.85, 10.08] Alcoholic Beverages (#/wk) [0.99, 1.97] VAS Comfort [< 75, ≥75 < 83, ≥83] CL Wear Comfortable Wear (hrs/day) [7.52, 8.78, 9.31] 65.35 VAS Discomfort Frequency [< 10, ≥10 < 17, ≥17] CL Wear Comfortable Wear (hrs/day) [9.24, 8.96, 7.89] 60.71 Airplane Cabin Exposure (hrs/mo) [0.81, 1.70, 1.22] Time Exercising (hrs/wk) [4.80, 3.99, 4.13] Alcoholic Beverages (#/wk) [0.96, 1.81, 1.97] VAS EOD Comfort [< 59, ≥59 < 76, ≥76] CL Wear Comfortable Wear (hrs/day) [8.02, 8.48, 9.03] 63.26 Alcoholic Beverages (#/wk) [2.01, 2.12, 1.06] Car Driving Exposure (hrs/wk) [3.96, 2.65, 2.51] VAS EOD Discomfort Frequency [< 17, ≥17 < 32, ≥32] Alcoholic Beverages (#/wk) [1.00, 1.98, 2.05] 63.09 CL Wear Duration (hrs/day) [10.39, 10.81, 10.28] VAS Dryness [< 20, ≥20 < 43, ≥43] CL Wear Comfortable Wear (hrs/day) [9.18, 8.23, 7.67] 66.13 Age (yrs) [25.87, 28.01, 32.75] Car Driving Exposure (hrs/wk) [2.58, 2.22, 4.60] VAS Dryness Frequency [< 19, ≥19 < 48, ≥48] CL Wear Comfortable Wear (hrs/day) [9.14, 8.25, 7.40] 67.24 Age (yrs) [26.27, 27.27, 34.27] VAS EOD Dryness [< 31, ≥31 < 61, ≥61] CL Wear Comfortable Wear (hrs/day) [8.98, 7.92, 7.99] 70.29 Age (yrs) [26.37, 26.90, 33.11] VAS EOD Dryness Frequency [< 32, ≥32 < 65, ≥65] CL Wear Comfortable Wear (hrs/day) [8.82, 8.63, 7.90] 70.18 Age (yrs) [26.75, 26.50, 33.72] DEFC Any Dryness: CLW [ASYM, CLIDE, DE] CL Wear Comfortable Wear (hrs/day) [12.92, 8.77, 8.56] 61.11 Time Exercising (hrs/wk) [4.31, 3.95, 3.74] DEFC Debilitating Dryness: CLW [ASYM, CLIDE, DE] CL Wear Comfortable Wear (hrs/day) [11.75, 8.13, 7.60] 63.93 Alcoholic Beverages (#/wk) [1.09, 1.61, 2.43] Time Exercising (hrs/wk) [3.88, 3.95, 3.95] DEFC Debil Dryness: Non-CLW [ASYM, DE] Car Driving Exposure (hrs/wk) [2.26, 5.23] 86.54 Alcoholic Beverages (#/wk) [1.31, 2.27] CLDEQ8 Score [< 12, ≥12] CL Wear Comfortable Wear (hrs/day) [10.56, 7.89] 76.31 CL Wear Duration (hrs/day) [11.05, 10.69] Time Outdoors (hrs/day) [2.66, 2.10] Caffeinated Drinks (#/day) [0.75, 0.93] The prediction model for a diagnosis of blepharitis included age as heavily weighted feature (Table 3 ), and achieved 73.7% prediction accuracy. Subjects with blepharitis averaged approximately 5.4 yrs older than those without blepharitis. Table 3 Clinician diagnoses predicted by machine learning models that identify lifestyle features as heavily weighted predictors. Predicted Outcomes: Diagnoses Predicted Outcome [Predicted Classes] Predictive Lifestyle Features Class-wise Means Accuracy (%) Meibomian Gland Dysfunction [Yes, No] CL Wear History (yrs) [9.85, 10.10] 74.38 Blepharitis [Yes, No] Age (yrs) [30.36, 24.95] 73.67 Lagophthalmos [Yes, No] Airplane Cabin Exposure (hrs/mo) [1.64, 0.90] 80.07 Sex and race were not heavily weighted features in any prediction models of signs, symptoms, or diagnoses. Contact Lens Wear Contact lens wear (CLW) patterns were heavily weighted in several prediction models. Some measures of CLW, specifically history (yrs) and frequency (days/wk), although heavily weighted in some models, revealed only minimal differences between subjects with and without signs or symptoms (e.g., a mean of 0.25 yrs longer CLW among those with MGD). Longer CLW duration (hrs/day) was a heavily weighted predictor of FTBUT among Asian subjects (79.7% accuracy) with approximately 1.3 hrs/day longer wear for subjects with shorter FTBUT. Although the difference appears minimal, it should kept in mind that it is equivalent to 9.1 hrs/wk less CLW among those with better tear film stability. CLW duration was not a heavily weighted feature in any symptom or diagnosis predictions. In contrast, the duration of comfortable CLW (hrs/day) was an important predictor for every subjective measure of symptoms studied. For Ocular Surface Disease Index (OSDI) score, comfortable CLW averaged 1.2 hrs/day longer among those with the mildest symptoms. Longer comfortable wearing time was predictive of lower VAS ratings of ocular discomfort and dryness severity and frequency, both overall and at end-of-day. Subjects who were classified as asymptomatic for DE with the Berkeley Dry Eye Flow Chart (DEFC) averaged 12.9 comfortable hrs/day of lens wear, contact lens-induced DE subjects averaged 8.8 hrs/day, and subjects with physiological DE averaged 8.6 hrs/day. Comfortable CLW duration was also a heavily weighted predictor of DEFC debilitating symptoms in the highest accuracy model of any symptom assessment (86.5%). Asymptomatic subjects averaged 11.8 hrs/day of comfortable lens wear, subjects with debilitating contact lens-induced DE averaged 8.1 hrs/day, and subjects with debilitating physiological DE averaged 7.6 hrs/day. Finally, Contact Lens Dry Eye Questionnaire (CLDEQ-8) score was predicted with 76.3% accuracy with a comfortable contact lens wearing time of 2.7 hrs/day longer among subjects with no or mild symptoms. Detrimental Lifestyle Behaviors There are a number of lifestyle behaviors that are known or generally considered to have positive or negative effects on health that may also have effects on the ocular surface and/or subjective symptoms. A greater amount of near work (hrs/day) was found to be a heavily weighted predictor of eyelid margin erythema in a model achieving 98.7% prediction accuracy. Among Asian subjects, those with non-invasive tear breakup time (NITBUT) < 9.0 sec averaged 8.2 hours of near work per day and those with breakup times ≥ 9.0 sec averaged 7.1 hours (80.4% accuracy). Consuming alcoholic beverages was a heavily weighted predictor of meibum quality, averaging 1.0 drinks more per week among those with poor meibum quality (94.0% accuracy). Alcoholic beverage consumption was a heavily weighted feature in several symptom prediction models. Subjects with high Standard Patient Evaluation of Eye Dryness (SPEED II) scores (worse symptoms) averaged 1.0 drinks per week more than those with mild or no symptoms (74.5% accuracy). The number of alcoholic drinks per week was also a heavily weighted predictor of VAS ratings of ocular discomfort frequency, end-of-day discomfort, and frequency of end-of-day discomfort. In each of those models, subjects with severe and frequent symptoms consumed approximately 1.0 drinks per week more on average. The model of DEFC debilitating symptoms among contact lens wearers showed that asymptomatic lens wearers averaged 1.1 alcoholic drinks per week, those with contact lens-induced DE 1.6 drinks per week, and those with physiological DE 2.4 drinks per week. Beneficial Lifestyle Behaviors Time exercising (hrs/wk) was a heavily weighted predictor of lid wiper epitheliopathy (LWE; 92.9% accuracy), averaging 1.2 hrs/wk more exercise among subjects with no or mild LWE. In terms of symptoms, subjects with the most frequent VAS discomfort exercised approximately 0.7 hrs/wk less, and subjects classified as symptomatic by the DEFC exercised approximately 0.6 hrs/wk less. Less time spent outdoors (hrs/day) was a heavily weighted predictor of corneal staining extent (91.2% accuracy), and of CLDEQ-8 score (76.3% accuracy). Subjects with moderate to severe corneal staining extent averaged 0.5 fewer hours per day outdoors. Contact lens wearers with high CLDEQ-8 scores (worse symptoms) spent approximately 0.6 fewer hours per day outdoors. Environmental Exposures More exposure to airplane cabin environments (hrs/mo) was a heavily weighted predictor for anterior displacement of the LoM (83.0% accuracy) and a diagnosis of lagophthalmos (80.1% accuracy). More airplane cabin exposure was also a heavily weighted predictor of more frequent ocular discomfort in VAS ratings. The mean differences in airplane cabin exposure between those with and without signs or symptoms were minimal at approximately 0.7 hrs/mo in all models. More time riding the train (hrs/wk) was predictive of a higher OSDI score, and subjects with the highest OSDI scores (worse symptoms) were exposed to riding the train approximately 0.8 hrs/wk more than those with the lowest OSDI scores. Driving a car (hrs/wk) was predictive of several assessments of subjective symptoms. Subjects with the highest OSDI scores averaged approximately 1.3 hrs/wk more driving time. For VAS severity of end-of-day ocular discomfort, subjects with the lowest comfort ratings drove a car on average 1.5 hrs/wk more. Subjects with the highest VAS dryness severity ratings averaged approximately 2.0 hrs/wk more driving time. Among non-contact lens wearers, subjects symptomatic for debilitating DE by DEFC classification averaged approximately 3 hrs/wk more exposure to driving a car than did asymptomatic subjects (86.5% accuracy). DISCUSSION In this study, machine learning models were trained to take subject characteristics, lifestyle behaviors and risk exposures, clinical assessments of the ocular surface, tear film and eyelids, and symptom scores from validated DE instruments, and combine them in prediction models of DE-related outcomes. Lifestyle factors were found to be among the most heavily weighted features used by the models to predict a number of clinical signs, subjective symptoms, and diagnoses related ocular surface disease. Prediction accuracies for DE-related symptoms ranged from 60.7–86.5%, for diagnoses from 73.7–80.1%, and for clinical signs from 66.9–98.7%. Greater age was a heavily weighted predictor for clinical signs including the presence of eyelid notching, anterior displacement of the LoM, and shorter FTBUT among Asian subjects. Greater age was also a heavily weighted predictor for VAS dryness severity and frequency ratings, both throughout the day and at end-of-day, as well as for a clinical diagnosis of blepharitis. There is evidence to suggest that the LoM can shift due to aging, and due to the presence of DE. 14 , 18 Eyelid margin irregularities such as notching are frequently observed in cases of blepharitis and MGD, 19 , 20 both conditions known to be related to aging. 21 – 24 It has been well documented that symptoms of DE and MGD are on average more severe, frequent, and prevalent among older populations. 22 , 25 – 27 More years of CLW was a heavily weighted predictor in models of LWE, a thinner lipid layer, a higher SPEED II score, and a diagnosis of MGD, all of which are in agreement with the literature. 28 – 32 In general, however, the interclass differences in these models were very small (0.2–1.4 yrs of CLW). Similarly, CLW frequency (days/wk) was a heavily weighted predictor of unstable vs. stable FTBUT 33 but with small interclass differences (0.4–0.5 days/wk). These results illustrate how very small differences that are not considered to be of importance to clinicians can still be heavily weighted features in machine learning predictions. 7 Duration of CLW (hrs/day) was a heavily weighted feature in predicting FTBUT among Asian subjects. In contrast, while the duration of comfortable CLW (hrs/day) was not a heavily weighted predictor for any clinical signs, it was an important predictor for every subjective measure of symptoms studied. 34 Asymptomatic subjects averaged 0.8–4.4 more hrs/day of comfortable CLW. Total hrs/day of CLW is not always informative because corneal desensitization, wearer commitment, lifestyle needs, and individual pain sensitivity level can result in continuing wear far beyond the onset of symptoms. Hrs/day of comfortable CLW was a far better predictor of symptoms. Clinicians should ask symptomatic contact lens patients about their comfortable wearing time and distinguish it from their total wearing time. 35 It is important to point out that with these machine learning prediction models the direction of causality is generally unknown, but sometimes can be inferred logically. For example, there was longer CLW duration (hrs/day) among Asian subjects with shorter FTBUT. Other than by chance (e.g., some unknown sampling bias), there is no reason to think that better tear film stability would cause contact lens wearers to wear their lenses less. The fact that those with shorter FTBUT were actually wearing their lenses longer implies that the direction of causation is from longer CLW to shorter FTBUT and not the reverse. Amount of near work (hrs/day) was a heavily weighted predictor of eyelid margin erythema among all subjects and shorter NITBUT among Asian subjects. Subjects with erythema or reduced tear film stability averaged slightly over an hour per day more near work. Frequent near work is a well-known risk factor for DE, particularly in the context of digital display use. 36 – 38 While there is little information on the effects of near work on the eyelids, Wu et al. found that an eyelid margin abnormality score was positively correlated with time using a visual display terminal, and that FTBUT, corneal staining, and OSDI score were all significantly worse in a cohort using visual display terminals for more than 4 hours per day. 39 Most studies of near work and tear film stability have employed FTBUT as the outcome measure. Khezrzade et al., however, did find that NITBUT was significantly reduced after 30 minutes of reading. 40 To our knowledge, the machine learning results presented here represent the only other evidence of the effects of sustained near work on non-invasive measurements of tear film stability, and that sustained near work may ultimately have effects on the eyelid margin. Consuming caffeinated beverages was a heavily weighted predictor only for CLDEQ-8 score, and only with an average of 0.2 drinks per day more among those with a higher score. Caffeinated beverage consumption was not predictive of any other signs, symptoms, or diagnoses. Most studies have found either no relationship between caffeine consumption and DE, 41 or a possible protective effect. 1 , 42 , 43 Consumption of alcohol on the other hand was a heavily weighted predictor of poor meibum quality and of worse DE symptoms on several questionnaire instruments. Subjects with poor meibum quality averaged 1.0 drink more per week, and symptomatic subjects averaged 1.0-1.3 drinks more per week. Although the effect size appears to be small, it should be kept in mind that it is equivalent to 52–68 drinks more over the course of a year. The literature on the effects of alcohol on the signs and symptoms of DE is largely equivocal. 1 Some studies have found alcohol consumption to be linked to tear film deterioration, reduced tear volume, increased osmolarity, and worse DE symptoms. 43 , 44 Other studies have found alcohol to be a non-factor in DE, 42 , 45 , 46 and a few studies have reported a protective effect against DE. 41 , 47 To our knowledge this is the first study to link alcohol consumption to lower quality meibum. Magno, et al. found that alcohol consumption significantly increased the risk of DE in women but not in men, possibly due to differences the hormone androgen, the deficiency of which has been linked to MGD. 44 In men, it has been shown that excessive or chronic alcohol consumption can reduce serum testosterone. 48 Modeling the interaction of alcohol consumption and sex was not performed in this study and may deserve further investigation. More time exercising was found to be a heavily weighted predictor of less LWE. LWE is associated with sub-clinical inflammation, 49 and exercise has been linked to reduced tear concentrations of several cytokines and other markers of inflammation or oxidative stress. 50 – 52 Aerobic exercise has been shown to promote tear secretion and improves tear film stability in dry eye patients, 50 , 53 and tear film instability has been linked to LWE. 28 Other studies have also demonstrated a link between a lack of exercise (i.e., sedentary lifestyle) and risk of DE. Sedentary behavior has been associated with reduced tear breakup time, lower tear volume, and risk of DE. 50 – 53 It has been speculated that exercise increases parasympathetic stimulation of the lacrimal gland and acinar blood vessels, increasing secretion of electrolytes and aqueous. 1 Approximately 2.5 hours more per week spent outdoors was found to be a heavily weighted predictor of lesser corneal staining extent, and of lower CLDEQ-8 score among contact lens wearers. Some studies have found time outdoors to be a risk factor for DE, 46 , 54 often related to extreme heat or cold conditions 38 or excessive wind. 55 Other studies have found time spent outdoors to be a non-factor in risk for DE. 45 Rodriguez, et al. found that time spent on indoor work was associated with a decreased blink rate, 56 which is well known to be an etiological factor in DE. In this study, a post-hoc analysis showed that our subjects who spent more time outdoors were also doing less near work on average (thus presumably blinking more), and exercising significantly more. More time riding the train was a heavily weighted predictor of higher OSDI score. More time driving a car was a heavily weighted predictor of higher symptom scores including OSDI score, VAS ratings, and DEFC classification. Symptomatic subjects averaged 0.8-3.0 more hours per week exposure. There are likely similarities and differences in the mechanisms of DE symptoms in these two types of exposure. While there are studies on how DE affects the ability to drive, 26 there are relatively few studies of car driving or train riding as a causative or risk factor for DE. Guillon, et al. found a greater incidence of symptoms among DE subjects after riding the subway and after driving a car for both contact lens wearers and non-wearers. 57 Rodriguez, et al. found increased levels of ocular discomfort and a reduced interblink period associated with driving a car. 56 The link between DE and these exposures could be due to the inside environment (e.g., windows open or closed; heater or air conditioner settings; fan settings; environmental contaminants or cleaning product irritants), which could apply to both cars and trains. It could also be due to extended visual tasking while driving for extended periods which reduces the interblink period, 56 while extended visual tasking at distance would likely not apply to riding the train. The limitations of this study include employing univariate logistic regression in the machine learning prediction models. More sophisticated statistical models and larger datasets for some sparse variables are likely to improve prediction accuracy further, especially for symptoms. There are numerous other likely important lifestyle behaviors and exposures that were not addressed in this study, including obesity, dietary habits, health and wellness supplements, sleep patterns, and a wide variety of ocular and systemic medications, to name a few. Future work would also benefit from modeling interactions among demographic and risk factors to determine if predictive relationships are the same for different ages, sexes, and races. CONCLUSIONS In this study a novel machine learning approach was employed to predict DE-related outcomes using combined clinical, symptom, and lifestyle data. The algorithm relied heavily on a number of subject characteristic, lifestyle behavior, and environmental exposure variables to make the highest accuracy predictions. Age was a heavily weighted feature in predictions of eyelid notching, LoM anterior displacement, and FTBUT, as well as VAS symptom ratings and a clinician diagnosis of blepharitis. Contact lens wear patterns were heavily weighted features in predictions of FTBUT and subjective ratings of DE symptoms. Some generally beneficial or detrimental behaviors were shown to also be important predictors of ocular signs and symptoms, including time spent in near work, alcohol consumption, exercise, and time spent outdoors. Exposure to riding the train and driving a car were predictors of DE-related symptoms but not clinical signs. These results illustrate the importance of lifestyle, subject, and environmental characteristics in ocular surface health and disease, and underscore the emerging consensus that the impact of these factors in clinical care and clinical research must be taken into account with greater rigor than has largely been the case to date. Declarations Author Contribution ADG - Conception, analysis, primary writing;JW - Programming, analysis;TK - Programming, analysis;JD - Data collection, study management;HT - Data collection;AM - Data collection;VT - Data collection, study management;SMC - Data collection;SXY - Conception, programming oversight, co-PI;MCL - Conception, writing, primary study PI;All authors reviewed the manuscript; Data Availability De-identified data will be made available upon request for research purposes only with valid Data Transfer and Use Agreements (DTUA) required for sharing protected human subject data. 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Prevalence of ocular surface symptoms, signs, and uncomfortable hours of wear in contact lens wearers: The effect of refitting with daily-wear silicone hydrogel lenses (Senofilcon A). Eye Contact Lens. 2006;32(6):281–286. Wang MTM, Muntz, Mamidi B, Wolffsohn JS, Craig JP. Modifiable lifestyle risk factors for dry eye disease. Contact Lens Ant Eye. 2021;44(6):101409. Wolffsohn JS, Wang MTM, Vidal-Rohr M, Menduni F, Dhallu S, Ipek T, Acar D, Recchioni A, France A, Kingsnorth A, Craig JP. Demographic and lifestyle risk factors of dry eye disease subtypes: a cross-sectional study. Ocul Surf. 2021;21:58–63. Gayton JL. Etiology, prevalence, and treatment of dry eye disease. Clin Ophthalmol. 2009;3:405–412. Wu H, Wang Y, Dong N, Yang F, Lin Z, Shang X, Li C. Meibomian gland dysfunction determines the severity of the dry eye conditions in visual display terminal workers. PLoS ONE. 2014;9(8):e105575. Khezrzade S, Ehsaei A, Momeni-Moghaddam H, Wollfsoh JS, Abadi SOA. After-effect on tear film quality and quantity of reading on laptop computer screen versus hardcopy. Clin Exp Optom. 2023. Moss SE, Klein R, Klein BEK. Long-term incidence of dry eye in an older population. Optom Vis Sci. 2008;85(8):668–674. García-Marqués JV, Talens-Estarelles C, García-Lázaro S, Wolffsohn JS, Cerviño A. Systemic, environmental and lifestyle risk factors for dry eye disease in a Mediterranean Caucasian population. Contact Lens Ant Eye. 2022;45:101539. Galor A, Britten-Jones AC, Feng Y, Ferrari G, Goldblum D, Gupta P, et al. TFOS Lifestyle: Impact of lifestyle challenges on the ocular surface. Ocul Surf. 2023;28:262–303. Magno MS, Daniel T, Morthen MK, Snieder H, Jansonius N, Utheim TP, Hammond CJ, Vehof J. The relationship between alcohol consumption and dry eye. Ocul Surf. 2021;21:87–95. Moss SE, Klein R, Klein BEK. Prevalence and risk factors for dry eye syndrome. Arch Ophthalmol, 2000;118(9):1264–1268. Vidal-Rohr M, Craig JP, Davies LN, Wolffsohn JS. The epidemiology of dry eye disease in the UK: The Aston Dry Eye Study. Contact Lens Ant Eye. 2023;46(3):101837. Viso E, Rodriguez-Ares MT, Abelenda D, Oubiña B, Gude F. Prevalence of symptomatic and symptomatic Meibomian gland dysfunction in the general population of Spain. Invest Ophthalmol Vis Sci. 2012;53(6):2601–2606. Smith SJ, Lopresti AL, Fairchild TJ. The effects of alcohol on testosterone synthesis in men: a review. Expert Rev Endocrinol Metab. 2023;18(2):155–166. Efron N, Brennan NA, Morgan PB, Wilson T. Lid wiper epitheliopathy. Prog Retin Eye Res. 2016;53:140–174. Navarro-Lopez S, Moya-Ramón M, Gallar J, Carracedo G, Aracil-Marco A. Effects of physical activity/exercise on tear film characteristics and dry eye associated symptoms: a literature review. Contact Lens Ant Eye. 2023;46(4):101854. Kawashima M, Uchino M, Yokoi N, Uchino Y, Dogru M, Komuro A, Sonomura Y, Kato H, Nishiwaki Y, Kinoshita S, Tsubota K. The association between Dry Eye Disease and physical activity as well as sedentary behavior: Results from the Osaka Study. J Ophthalmol. 2014;943786:1–6. Kojima T, Dogru M, Kawashima M, Nakamura S, Tsubota K. Advances in the diagnosis and treatment of dry eye. Prog Retin Eye Res. 2020;78:100842. Sun C, Chen X, Huang Y, Zou H, Fan W, Yang M, Yuan R. Effects of aerobic exercise on tear secretion and tear film stability in dry eye patients. BMC Ophthalmol. 2022;22(1):9. Kim Y, Paik HJ, Hae J, Kim MK, Choi Y-H, Kim DH. Short-term effects of ground-level ozone in patients with dry eye disease: A prospective clinical study. Cornea. 2019;38(12):1483–1488. Li J, Zheng K, Deng Z, Zheng J, Ma H, Sun L, Chen W. Prevalence and risk factors of dry eye disease among a hospital-based population in southeast China. Eye Contact Lens. 2015;41(1):44–50. Rodriguez JD, Lane KJ, Ousler III GW, Angjeli E, Smith LM, Abelson MB. Blink: Characteristics, controls, and relation to dry eyes. Curr Eye Res. 2018;43(1):52–66. Guillon M, Maissa C. Dry eye symptomatology of soft contact lens wearers and nonwearers. Opt Vis Sci. 2005;82(9):829–834. Additional Declarations No competing interests reported. Supplementary Files MGAILifestyleAppendix1Final.docx Cite Share Download PDF Status: Published Journal Publication published 18 Apr, 2025 Read the published version in Scientific Reports → Version 1 posted Editorial decision: Revision requested 02 Feb, 2025 Reviews received at journal 29 Jan, 2025 Reviewers agreed at journal 22 Jan, 2025 Reviews received at journal 01 Jan, 2025 Reviews received at journal 28 Dec, 2024 Reviewers agreed at journal 19 Dec, 2024 Reviewers agreed at journal 17 Dec, 2024 Reviewers invited by journal 24 Jun, 2024 Editor assigned by journal 24 Jun, 2024 Editor invited by journal 22 Jun, 2024 Submission checks completed at journal 21 Jun, 2024 First submitted to journal 05 Jun, 2024 You are reading this latest preprint version Research Square lets you share your work early, gain feedback from the community, and start making changes to your manuscript prior to peer review in a journal. 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Lin","email":"data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAZAAAAAyAQMAAABI0h/eAAAABlBMVEX///8AAABVwtN+AAAACXBIWXMAAA7EAAAOxAGVKw4bAAAAyElEQVRIiWNgGAWjYDACdsYGho8NDAwSDMwNID5jA0EtzIwNjDPBWhiJ1gJEvCRp0W1mbntsu8MmX7K9sfExD4ON7IYDBLSYHWZsN849k2Y5m+dgszEPQ5oxMVrapHPbDhvISSS2SfMwHE4kTotl238DOfmH7b95GP4TqYWx7YCBtARjGzMPwwHitEj2nkk2kOxJbJacY5BsPJOgluPtzyR+7rAzkDh++OCHNxV2sn2EtKAAJh4DUpSDAOMPUnWMglEwCkbBiAAA0pFCNNKQI4QAAAAASUVORK5CYII=","orcid":"","institution":"Vision Science Group, University of California, Berkeley","correspondingAuthor":true,"prefix":"","firstName":"Meng","middleName":"C.","lastName":"Lin","suffix":""}],"badges":[],"createdAt":"2024-06-05 22:08:15","currentVersionCode":1,"declarations":"","doi":"10.21203/rs.3.rs-4536316/v1","doiUrl":"https://doi.org/10.21203/rs.3.rs-4536316/v1","draftVersion":[],"editorialEvents":[{"content":"https://doi.org/10.1038/s41598-025-96778-x","type":"published","date":"2025-04-18T15:57:44+00:00"}],"editorialNote":"","failedWorkflow":false,"files":[{"id":60600650,"identity":"aaf5de01-1e0b-4565-bfac-846c8ff6b84a","added_by":"auto","created_at":"2024-07-18 16:02:25","extension":"png","order_by":1,"title":"Figure 1","display":"","copyAsset":false,"role":"figure","size":62303,"visible":true,"origin":"","legend":"\u003cp\u003eInputs and outputs for the DE-related outcome prediction models. MGD = Meibomian gland dysfunction; OSDI = Ocular Surface Disease Index; SPEED = Standard Patient Evaluation of Eye Dryness; CLDEQ-8 = 8-item Contact Lens Dry Eye Questionnaire; VAS = Visual Analog Scale; DEFC = Berkeley Dry Eye Flow Chart.\u003c/p\u003e","description":"","filename":"floatimage1.png","url":"https://assets-eu.researchsquare.com/files/rs-4536316/v1/5551a21c16226b4959175636.png"},{"id":60600653,"identity":"ab53a5c0-3533-4f23-847e-3e566c167ae8","added_by":"auto","created_at":"2024-07-18 16:02:26","extension":"jpeg","order_by":2,"title":"Figure 2","display":"","copyAsset":false,"role":"figure","size":360256,"visible":true,"origin":"","legend":"\u003cp\u003eTraining process for the DE-related outcome prediction models. FTBUT = Fluorescein Tear Breakup Time; NITBUT = Non-Invasive Tear Breakup Time; Conj = Conjunctival; MG = Meibomian Glands.\u003c/p\u003e","description":"","filename":"floatimage2.jpeg","url":"https://assets-eu.researchsquare.com/files/rs-4536316/v1/d93ba308753afe703e4f9547.jpeg"},{"id":81051520,"identity":"30661705-b449-490d-9c02-d293c179ba3c","added_by":"auto","created_at":"2025-04-21 16:10:59","extension":"pdf","order_by":0,"title":"","display":"","copyAsset":false,"role":"manuscript-pdf","size":1334493,"visible":true,"origin":"","legend":"","description":"","filename":"manuscript.pdf","url":"https://assets-eu.researchsquare.com/files/rs-4536316/v1/ac050ec8-c61a-4da0-a605-179bd4713dd0.pdf"},{"id":60600651,"identity":"dd27801d-2308-48f8-a01d-00c4e320209f","added_by":"auto","created_at":"2024-07-18 16:02:25","extension":"docx","order_by":2,"title":"","display":"","copyAsset":false,"role":"supplement","size":518470,"visible":true,"origin":"","legend":"","description":"","filename":"MGAILifestyleAppendix1Final.docx","url":"https://assets-eu.researchsquare.com/files/rs-4536316/v1/a98eddc6f44134c9df8d0ac6.docx"}],"financialInterests":"No competing interests reported.","formattedTitle":"Artificial Intelligence Models Utilize Lifestyle Factors to Predict Dry Eye-Related Outcomes","fulltext":[{"header":"INTRODUCTION","content":"\u003cp\u003eIn the study of dry eye (DE), patient characteristics, lifestyle behaviors, and risk exposures have recently emerged as critical to its etiology and to its diagnosis, treatment and management. While the vast literature on DE and related ocular surface diseases has tended to focus on mechanisms of pathology, development of diagnostic instruments both objective and subjective, and on treatment and management, lifestyle factors have historically been secondary to most analyses, when they are included at all. Recently, the Tear Film and Ocular Surface Society (TFOS) workshop report described ocular surface disease as a \u0026ldquo;lifestyle epidemic\u0026rdquo;,\u003csup\u003e\u003cspan citationid=\"CR1\" class=\"CitationRef\"\u003e1\u003c/span\u003e\u003c/sup\u003e and interest in the impact of patient lifestyle and behaviors is receiving renewed and much needed attention.\u003c/p\u003e \u003cp\u003eIn recent years, artificial intelligence has proven to be a valuable tool in biomedical research and health care, however the use of this technology in the study and management of ocular surface diseases like DE has lagged behind its use in other aspects of vision such as retinal imaging.\u003csup\u003e\u003cspan citationid=\"CR2\" class=\"CitationRef\"\u003e2\u003c/span\u003e\u003c/sup\u003e One area of nascent advancement has been the detailed analysis of Meibomian gland morphology from infrared imaging of the everted eyelids, known as meibography.\u003csup\u003e\u003cspan citationid=\"CR3\" class=\"CitationRef\"\u003e3\u003c/span\u003e\u003c/sup\u003e Recent work has demonstrated the ability to use machine learning models to quantify Meibomian gland morphological characteristics from meibography imaging,\u003csup\u003e\u003cspan citationid=\"CR4\" class=\"CitationRef\"\u003e4\u003c/span\u003e,\u003cspan citationid=\"CR5\" class=\"CitationRef\"\u003e5\u003c/span\u003e\u003c/sup\u003e and to combine the imaging results with patient lifestyle and behavioral factors, clinical measurements, symptomatological assessments, and clinician diagnoses to predict outcomes related to Meibomian gland dysfunction (MGD), DE, and other ocular surface pathology.\u003csup\u003e\u003cspan citationid=\"CR6\" class=\"CitationRef\"\u003e6\u003c/span\u003e\u003c/sup\u003e\u003c/p\u003e \u003cp\u003eWhen the most heavily weighted variables used by machine learning models to predict DE-related outcomes are examined, many subject characteristics, lifestyle qualities, behavioral factors, and associated environmental exposures play a prominent role. These emerging artificial intelligence models can facilitate the discovery of novel relationships among clinical, lifestyle, and symptom variables, allow examination of previously determined relationships from a new perspective, and generate new hypotheses for further investigation.\u003csup\u003e\u003cspan citationid=\"CR7\" class=\"CitationRef\"\u003e7\u003c/span\u003e,\u003cspan citationid=\"CR8\" class=\"CitationRef\"\u003e8\u003c/span\u003e\u003c/sup\u003e The importance of lifestyle factors in machine learning model predictions of ocular surface disease-related outcomes is the focus of the current work.\u003c/p\u003e"},{"header":"METHODS","content":"\u003cp\u003eSubjects 18 years of age or older with no history of ocular surgery, no active ocular infections, and not currently taking medications known to affect the anterior eye, eyelids or tear film were eligible for the study. Both contact lens wearers and non-wearers were eligible. Informed consent was obtained from all subjects. The study adhered to the tenets of the Declaration of Helsinki and was approved by the U.C. Berkeley Committee for the Protection of Human Subjects. The study complied with the relevant CONSORT-AI extension guidelines for clinical studies with an artificial intelligence component.\u003c/p\u003e \u003cp\u003eThe machine learning methodology employed in this study is reported in detail elsewhere.\u003csup\u003e\u003cspan citationid=\"CR6\" class=\"CitationRef\"\u003e6\u003c/span\u003e\u003c/sup\u003e Briefly, a machine learning prediction model was developed to segment Meibomian gland morphological features from meibography images and combine them with subject characteristics, clinical assessments, and symptom scores as inputs to a prediction model. The prediction model then performs classifications into DE-related outcome categories using logistic regression. A depiction of the input features (i.e., the subject, clinical, and symptom variables available as potential predictors) and the output features (i.e., the predicted DE-related outcome classes) is provided in Fig.\u0026nbsp;\u003cspan refid=\"Fig1\" class=\"InternalRef\"\u003e1\u003c/span\u003e. Some outcomes have natural predicted classes, such as a diagnosis of blepharitis (Yes/No) or eyelid notching (Present/Absent). The predicted classes for continuous and ordinal outcomes were defined based on published thresholds where available, \u003csup\u003e\u003cspan additionalcitationids=\"CR10 CR11 CR12 CR13\" citationid=\"CR9\" class=\"CitationRef\"\u003e9\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR14\" class=\"CitationRef\"\u003e14\u003c/span\u003e\u003c/sup\u003e and on clinical expertise and standard practice where not. Details of all clinical assessments, symptomatology instruments, and clinician diagnoses are provided in Appendix 1.\u003c/p\u003e \u003cp\u003e \u003c/p\u003e \u003cp\u003eFigure \u003cspan refid=\"Fig1\" class=\"InternalRef\"\u003e1\u003c/span\u003e. Inputs and outputs for the DE-related outcome prediction models. MGD\u0026thinsp;=\u0026thinsp;Meibomian gland dysfunction; OSDI\u0026thinsp;=\u0026thinsp;Ocular Surface Disease Index; SPEED\u0026thinsp;=\u0026thinsp;Standard Patient Evaluation of Eye Dryness; CLDEQ-8\u0026thinsp;=\u0026thinsp;8-item Contact Lens Dry Eye Questionnaire; VAS\u0026thinsp;=\u0026thinsp;Visual Analog Scale; DEFC\u0026thinsp;=\u0026thinsp;Berkeley Dry Eye Flow Chart.\u003c/p\u003e \u003cp\u003eTo train the prediction models for each DE-related outcome, data were divided into 5 randomly selected folds, with 4 folds used to train the model and the 5th used for validation. The models were first trained using all available variables as potential predictive features, then the least weighted feature (i.e., the variable with the lowest coefficient value) was pruned and the model retrained on the remaining features. This process was repeated until only a single predictor remained. From that set of trained models, the one with the highest cross-validation accuracy was selected. To further improve the generalizability of the modeling results, the entire training-pruning-retraining process was repeated using each of the original 5 folds as the validation set. The coefficient values for the 5 best-accuracy models were then aggregated and ranked to determine the most heavily weighted features used for predicting each DE-related outcome. This makes it less likely for the model outputs to be entirely dependent on the makeup of a single validation set. Finally, the class-wise mean values of the predictors stratified on outcome classes were reported, along with the mean cross-validation accuracy. The overall process and an example of the model output are shown in Fig.\u0026nbsp;\u003cspan refid=\"Fig2\" class=\"InternalRef\"\u003e2\u003c/span\u003e.\u003c/p\u003e \u003cp\u003e \u003c/p\u003e \u003cp\u003eFigure \u003cspan refid=\"Fig2\" class=\"InternalRef\"\u003e2\u003c/span\u003e. Training process for the DE-related outcome prediction models. FTBUT\u0026thinsp;=\u0026thinsp;Fluorescein Tear Breakup Time; NITBUT\u0026thinsp;=\u0026thinsp;Non-Invasive Tear Breakup Time; Conj\u0026thinsp;=\u0026thinsp;Conjunctival; MG\u0026thinsp;=\u0026thinsp;Meibomian Glands.\u003c/p\u003e"},{"header":"RESULTS","content":"\u003cdiv id=\"Sec4\" class=\"Section2\"\u003e \u003ch2\u003eSubjects\u003c/h2\u003e \u003cp\u003eThis study utilized 726 clinical records from 363 subjects. The mean (SD) age was 26.6 (12.1) yrs with a range of 18 to 71 yrs. Subjects were 67.2% female, 32.8% male; 46.8% contact lens wearers, 53.2% non-wearers; 43.8% of Asian race, 56.2% of non-Asian race. The distinction between Asian and non-Asian races is based on well-established differences in eyelid anatomy,\u003csup\u003e\u003cspan citationid=\"CR15\" class=\"CitationRef\"\u003e15\u003c/span\u003e\u003c/sup\u003e tear film stability,\u003csup\u003e\u003cspan citationid=\"CR16\" class=\"CitationRef\"\u003e16\u003c/span\u003e\u003c/sup\u003e and DE symptoms.\u003csup\u003e\u003cspan citationid=\"CR17\" class=\"CitationRef\"\u003e17\u003c/span\u003e\u003c/sup\u003e The Asian racial group included subjects of Chinese, Japanese, Korean, and Southeast Asian descent. The non-Asian group consisted primarily of Caucasian subjects, with small minorities of African, Hispanic, and mixed-race subjects.\u003c/p\u003e \u003c/div\u003e \u003cdiv id=\"Sec5\" class=\"Section2\"\u003e \u003ch2\u003eDemographic Characteristics\u003c/h2\u003e \u003cp\u003eGreater age was a heavily weighted predictor of several clinical signs, including eyelid notching, Line of Marx (LoM) anterior displacement, and fluorescein tear breakup time (FTBUT; Table\u0026nbsp;\u003cspan refid=\"Tab1\" class=\"InternalRef\"\u003e1\u003c/span\u003e). The model for eyelid notching achieved 95.9% prediction accuracy with a 19.6\u0026nbsp;year greater mean age for subjects with notching. The model for anterior displacement of the LoM achieved 86.8% prediction accuracy with a mean 6.0\u0026nbsp;year greater age among those with moderate to severe LoM displacement. Among Asian subjects, greater age was a heavily weighted predictor of FTBUT\u0026thinsp;\u0026lt;\u0026thinsp;6.7 sec with a model accuracy of 79.7%.\u003c/p\u003e \u003cp\u003e \u003cdiv class=\"gridtable\"\u003e\u003ctable float=\"Yes\" id=\"Tab1\" border=\"1\"\u003e \u003ccaption language=\"En\"\u003e \u003cdiv class=\"CaptionNumber\"\u003eTable 1\u003c/div\u003e \u003cdiv class=\"CaptionContent\"\u003e \u003cp\u003eClinical signs predicted by machine learning models that identify lifestyle features as heavily weighted predictors.\u003c/p\u003e \u003c/div\u003e \u003c/caption\u003e \u003ccolgroup cols=\"5\"\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c1\" colnum=\"1\"\u003e\u003c/div\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c2\" colnum=\"2\"\u003e\u003c/div\u003e \u003cdiv align=\"char\" char=\".\" class=\"colspec\" colname=\"c3\" colnum=\"3\"\u003e\u003c/div\u003e \u003cdiv align=\"char\" char=\".\" class=\"colspec\" colname=\"c4\" colnum=\"4\"\u003e\u003c/div\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c5\" colnum=\"5\"\u003e\u003c/div\u003e \u003cthead\u003e \u003ctr\u003e \u003cth align=\"left\" colspan=\"4\" nameend=\"c4\" namest=\"c1\"\u003e \u003cp\u003ePredicted Outcomes: Clinical Signs\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/th\u003e \u003c/tr\u003e \u003ctr\u003e \u003cth align=\"left\" colname=\"c1\"\u003e \u003cp\u003ePredicted Outcome [Predicted Classes]\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c2\"\u003e \u003cp\u003ePredictive Lifestyle Features\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c3\"\u003e \u003cp\u003eClass-wise Means\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c4\"\u003e \u003cp\u003eAccuracy (%)\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/th\u003e \u003c/tr\u003e \u003c/thead\u003e \u003ctbody\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eEyelid Notching [Absent, Present]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[27.07, 46.73]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e95.92\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eEyelid Margin Erythema: UL [\u0026lt;\u0026thinsp;2, \u0026ge;2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eNear Work (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[7.25, 8.28]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e98.65\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eMeibum Quality: UL, Central [\u0026lt;\u0026thinsp;18, \u0026ge;18]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eNear Work (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[7.24, 8.22]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e96.05\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eMeibum Quality: LL, Entire [\u0026lt;\u0026thinsp;36, \u0026ge;36]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.66, 0.68]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e93.99\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eLoM: Anterior Displacement, UL [\u0026lt;\u0026thinsp;2, \u0026ge;2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[26.92, 32.88]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e86.82\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eLoM: Anterior Displacement, LL [\u0026lt;\u0026thinsp;2, \u0026ge;2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAirplane Cabin Exposure (hrs/mo)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.28, 0.55]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e83.00\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eLWE: Length [\u0026lt;\u0026thinsp;2, \u0026ge;2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear History (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.91, 10.17]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e92.36\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eLWE: Width [\u0026lt;\u0026thinsp;2, \u0026ge;2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTime Exercising (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[4.60, 3.38]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e92.86\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eLipid Layer Thickness (nm) [\u0026le;\u0026thinsp;60, \u0026gt;60]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear History (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[10.64, 9.29]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e66.87\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eCorneal Staining: Extent [\u0026lt;\u0026thinsp;2, \u0026ge;2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTime Outdoors (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[2.72, 2.26]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e91.24\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eNon-invasive TBUT (s): Asian [\u0026lt;\u0026thinsp;9.0, \u0026ge;9.0]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eNear Work (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[8.19, 7.05]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e80.35\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eFluorescein TBUT (s): Asian [\u0026lt;\u0026thinsp;6.7, \u0026ge;6.7]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[26.05, 22.11]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e79.74\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Duration (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[10.91, 9.59]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eFluor TBUT (s): Non-Asian [\u0026lt;\u0026thinsp;9.2, \u0026ge;9.2]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Freq (days/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[5.78, 5.29]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e87.39\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eFluor TBUT (s): All Subjects [\u0026lt;\u0026thinsp;10.0, \u0026ge;10.0]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Freq (days/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[6.03, 5.64]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e84.55\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003c/tbody\u003e \u003c/colgroup\u003e \u003c/table\u003e\u003c/div\u003e \u003c/p\u003e \u003cp\u003eAge was also a heavily weighted predictor of several DE-related symptoms. Ocular dryness severity and frequency rated on visual analog scales (VAS; Table\u0026nbsp;\u003cspan refid=\"Tab2\" class=\"InternalRef\"\u003e2\u003c/span\u003e) included age as a heavily weighted predictor. Subjects with the worst average dryness severity averaged 6.9 yrs older than those with the least severe dryness. For severity of end-of-day dryness, subjects with the highest severity averaged 6.7 yrs older. Subject with the most frequent dryness symptoms averaged 8.0 yrs older that those with the least frequent dryness. Frequency of end-of-day dryness was similar with a 7.0\u0026nbsp;year greater mean age among those with the most frequent dryness. Interestingly, age was a heavily weighted predictor for all VAS ratings of dryness, but not for any VAS ratings of discomfort.\u003c/p\u003e \u003cp\u003e \u003cdiv class=\"gridtable\"\u003e\u003ctable float=\"Yes\" id=\"Tab2\" border=\"1\"\u003e \u003ccaption language=\"En\"\u003e \u003cdiv class=\"CaptionNumber\"\u003eTable 2\u003c/div\u003e \u003cdiv class=\"CaptionContent\"\u003e \u003cp\u003eSubjective symptoms predicted by machine learning models that identify lifestyle features as heavily weighted predictors.\u003c/p\u003e \u003c/div\u003e \u003c/caption\u003e \u003ccolgroup cols=\"5\"\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c1\" colnum=\"1\"\u003e\u003c/div\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c2\" colnum=\"2\"\u003e\u003c/div\u003e \u003cdiv align=\"char\" char=\".\" class=\"colspec\" colname=\"c3\" colnum=\"3\"\u003e\u003c/div\u003e \u003cdiv align=\"char\" char=\".\" class=\"colspec\" colname=\"c4\" colnum=\"4\"\u003e\u003c/div\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c5\" colnum=\"5\"\u003e\u003c/div\u003e \u003cthead\u003e \u003ctr\u003e \u003cth align=\"left\" colspan=\"4\" nameend=\"c4\" namest=\"c1\"\u003e \u003cp\u003ePredicted Outcomes: Symptoms\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/th\u003e \u003c/tr\u003e \u003ctr\u003e \u003cth align=\"left\" colname=\"c1\"\u003e \u003cp\u003ePredicted Outcome [Predicted Classes]\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c2\"\u003e \u003cp\u003ePredictive Lifestyle Features\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c3\"\u003e \u003cp\u003eClass-wise Means\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c4\"\u003e \u003cp\u003eAccuracy (%)\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/th\u003e \u003c/tr\u003e \u003c/thead\u003e \u003ctbody\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003eOSDI Score [\u0026le;\u0026thinsp;12, \u0026gt;12\u0026thinsp;\u0026le;\u0026thinsp;23, \u0026gt;23]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCar Driving Exposure (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[2.07, 5.29, 3.38]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003e68.09\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.01, 8.19, 7.80]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTrain Riding Exposure (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.24, 0.71, 1.99]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003eSPEED II Score [\u0026le;\u0026thinsp;4, \u0026gt;4]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.04, 8.27]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003e74.47\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear History (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.85, 10.08]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[0.99, 1.97]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eVAS Comfort [\u0026lt;\u0026thinsp;75, \u0026ge;75\u0026thinsp;\u0026lt;\u0026thinsp;83, \u0026ge;83]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[7.52, 8.78, 9.31]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e65.35\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"3\" rowspan=\"4\"\u003e \u003cp\u003eVAS Discomfort Frequency [\u0026lt;\u0026thinsp;10, \u0026ge;10\u0026thinsp;\u0026lt;\u0026thinsp;17, \u0026ge;17]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.24, 8.96, 7.89]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"3\" rowspan=\"4\"\u003e \u003cp\u003e60.71\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAirplane Cabin Exposure (hrs/mo)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[0.81, 1.70, 1.22]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTime Exercising (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[4.80, 3.99, 4.13]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[0.96, 1.81, 1.97]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003eVAS EOD Comfort [\u0026lt;\u0026thinsp;59, \u0026ge;59\u0026thinsp;\u0026lt;\u0026thinsp;76, \u0026ge;76]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[8.02, 8.48, 9.03]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003e63.26\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[2.01, 2.12, 1.06]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCar Driving Exposure (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[3.96, 2.65, 2.51]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eVAS EOD Discomfort Frequency [\u0026lt;\u0026thinsp;17, \u0026ge;17\u0026thinsp;\u0026lt;\u0026thinsp;32, \u0026ge;32]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.00, 1.98, 2.05]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e63.09\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Duration (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[10.39, 10.81, 10.28]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003eVAS Dryness [\u0026lt;\u0026thinsp;20, \u0026ge;20\u0026thinsp;\u0026lt;\u0026thinsp;43, \u0026ge;43]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.18, 8.23, 7.67]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003e66.13\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[25.87, 28.01, 32.75]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCar Driving Exposure (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[2.58, 2.22, 4.60]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eVAS Dryness Frequency [\u0026lt;\u0026thinsp;19, \u0026ge;19\u0026thinsp;\u0026lt;\u0026thinsp;48, \u0026ge;48]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.14, 8.25, 7.40]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e67.24\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[26.27, 27.27, 34.27]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eVAS EOD Dryness [\u0026lt;\u0026thinsp;31, \u0026ge;31\u0026thinsp;\u0026lt;\u0026thinsp;61, \u0026ge;61]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[8.98, 7.92, 7.99]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e70.29\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[26.37, 26.90, 33.11]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eVAS EOD Dryness Frequency [\u0026lt;\u0026thinsp;32, \u0026ge;32\u0026thinsp;\u0026lt;\u0026thinsp;65, \u0026ge;65]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[8.82, 8.63, 7.90]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e70.18\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[26.75, 26.50, 33.72]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eDEFC Any Dryness: CLW [ASYM, CLIDE, DE]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[12.92, 8.77, 8.56]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e61.11\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTime Exercising (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[4.31, 3.95, 3.74]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003eDEFC Debilitating Dryness: CLW [ASYM, CLIDE, DE]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[11.75, 8.13, 7.60]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"2\" rowspan=\"3\"\u003e \u003cp\u003e63.93\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.09, 1.61, 2.43]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTime Exercising (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[3.88, 3.95, 3.95]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003eDEFC Debil Dryness: Non-CLW [ASYM, DE]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCar Driving Exposure (hrs/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[2.26, 5.23]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"1\" rowspan=\"2\"\u003e \u003cp\u003e86.54\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAlcoholic Beverages (#/wk)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.31, 2.27]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\" morerows=\"3\" rowspan=\"4\"\u003e \u003cp\u003eCLDEQ8 Score [\u0026lt;\u0026thinsp;12, \u0026ge;12]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Comfortable Wear (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[10.56, 7.89]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\" morerows=\"3\" rowspan=\"4\"\u003e \u003cp\u003e76.31\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear Duration (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[11.05, 10.69]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eTime Outdoors (hrs/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[2.66, 2.10]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCaffeinated Drinks (#/day)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[0.75, 0.93]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003c/tbody\u003e \u003c/colgroup\u003e \u003c/table\u003e\u003c/div\u003e \u003c/p\u003e \u003cp\u003eThe prediction model for a diagnosis of blepharitis included age as heavily weighted feature (Table\u0026nbsp;\u003cspan refid=\"Tab3\" class=\"InternalRef\"\u003e3\u003c/span\u003e), and achieved 73.7% prediction accuracy. Subjects with blepharitis averaged approximately 5.4 yrs older than those without blepharitis.\u003c/p\u003e \u003cp\u003e \u003cdiv class=\"gridtable\"\u003e\u003ctable float=\"Yes\" id=\"Tab3\" border=\"1\"\u003e \u003ccaption language=\"En\"\u003e \u003cdiv class=\"CaptionNumber\"\u003eTable 3\u003c/div\u003e \u003cdiv class=\"CaptionContent\"\u003e \u003cp\u003eClinician diagnoses predicted by machine learning models that identify lifestyle features as heavily weighted predictors.\u003c/p\u003e \u003c/div\u003e \u003c/caption\u003e \u003ccolgroup cols=\"5\"\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c1\" colnum=\"1\"\u003e\u003c/div\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c2\" colnum=\"2\"\u003e\u003c/div\u003e \u003cdiv align=\"char\" char=\".\" class=\"colspec\" colname=\"c3\" colnum=\"3\"\u003e\u003c/div\u003e \u003cdiv align=\"char\" char=\".\" class=\"colspec\" colname=\"c4\" colnum=\"4\"\u003e\u003c/div\u003e \u003cdiv align=\"left\" class=\"colspec\" colname=\"c5\" colnum=\"5\"\u003e\u003c/div\u003e \u003cthead\u003e \u003ctr\u003e \u003cth align=\"left\" colspan=\"4\" nameend=\"c4\" namest=\"c1\"\u003e \u003cp\u003ePredicted Outcomes: Diagnoses\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/th\u003e \u003c/tr\u003e \u003ctr\u003e \u003cth align=\"left\" colname=\"c1\"\u003e \u003cp\u003ePredicted Outcome [Predicted Classes]\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c2\"\u003e \u003cp\u003ePredictive Lifestyle Features\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c3\"\u003e \u003cp\u003eClass-wise Means\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colname=\"c4\"\u003e \u003cp\u003eAccuracy (%)\u003c/p\u003e \u003c/th\u003e \u003cth align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/th\u003e \u003c/tr\u003e \u003c/thead\u003e \u003ctbody\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eMeibomian Gland Dysfunction [Yes, No]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eCL Wear History (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[9.85, 10.10]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e74.38\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colspan=\"1\" nameend=\"c5\" namest=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eBlepharitis [Yes, No]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAge (yrs)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[30.36, 24.95]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e73.67\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003ctr\u003e \u003ctd align=\"left\" colname=\"c1\"\u003e \u003cp\u003eLagophthalmos [Yes, No]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c2\"\u003e \u003cp\u003eAirplane Cabin Exposure (hrs/mo)\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c3\"\u003e \u003cp\u003e[1.64, 0.90]\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"char\" char=\".\" colname=\"c4\"\u003e \u003cp\u003e80.07\u003c/p\u003e \u003c/td\u003e \u003ctd align=\"left\" colname=\"c5\"\u003e\u0026nbsp;\u003c/td\u003e \u003c/tr\u003e \u003c/tbody\u003e \u003c/colgroup\u003e \u003c/table\u003e\u003c/div\u003e \u003c/p\u003e \u003cp\u003eSex and race were not heavily weighted features in any prediction models of signs, symptoms, or diagnoses.\u003c/p\u003e \u003cdiv id=\"Sec6\" class=\"Section3\"\u003e \u003ch2\u003eContact Lens Wear\u003c/h2\u003e \u003cp\u003eContact lens wear (CLW) patterns were heavily weighted in several prediction models. Some measures of CLW, specifically history (yrs) and frequency (days/wk), although heavily weighted in some models, revealed only minimal differences between subjects with and without signs or symptoms (e.g., a mean of 0.25 yrs longer CLW among those with MGD).\u003c/p\u003e \u003cp\u003eLonger CLW duration (hrs/day) was a heavily weighted predictor of FTBUT among Asian subjects (79.7% accuracy) with approximately 1.3 hrs/day longer wear for subjects with shorter FTBUT. Although the difference appears minimal, it should kept in mind that it is equivalent to 9.1 hrs/wk less CLW among those with better tear film stability. CLW duration was not a heavily weighted feature in any symptom or diagnosis predictions.\u003c/p\u003e \u003cp\u003eIn contrast, the duration of \u003cem\u003ecomfortable\u003c/em\u003e CLW (hrs/day) was an important predictor for every subjective measure of symptoms studied. For Ocular Surface Disease Index (OSDI) score, comfortable CLW averaged 1.2 hrs/day longer among those with the mildest symptoms. Longer comfortable wearing time was predictive of lower VAS ratings of ocular discomfort and dryness severity and frequency, both overall and at end-of-day. Subjects who were classified as asymptomatic for DE with the Berkeley Dry Eye Flow Chart (DEFC) averaged 12.9 comfortable hrs/day of lens wear, contact lens-induced DE subjects averaged 8.8 hrs/day, and subjects with physiological DE averaged 8.6 hrs/day. Comfortable CLW duration was also a heavily weighted predictor of DEFC debilitating symptoms in the highest accuracy model of any symptom assessment (86.5%). Asymptomatic subjects averaged 11.8 hrs/day of comfortable lens wear, subjects with debilitating contact lens-induced DE averaged 8.1 hrs/day, and subjects with debilitating physiological DE averaged 7.6 hrs/day. Finally, Contact Lens Dry Eye Questionnaire (CLDEQ-8) score was predicted with 76.3% accuracy with a comfortable contact lens wearing time of 2.7 hrs/day longer among subjects with no or mild symptoms.\u003c/p\u003e \u003c/div\u003e \u003c/div\u003e \u003cdiv id=\"Sec7\" class=\"Section2\"\u003e \u003ch2\u003eDetrimental Lifestyle Behaviors\u003c/h2\u003e \u003cp\u003eThere are a number of lifestyle behaviors that are known or generally considered to have positive or negative effects on health that may also have effects on the ocular surface and/or subjective symptoms. A greater amount of near work (hrs/day) was found to be a heavily weighted predictor of eyelid margin erythema in a model achieving 98.7% prediction accuracy. Among Asian subjects, those with non-invasive tear breakup time (NITBUT)\u0026thinsp;\u0026lt;\u0026thinsp;9.0 sec averaged 8.2 hours of near work per day and those with breakup times\u0026thinsp;\u0026ge;\u0026thinsp;9.0 sec averaged 7.1 hours (80.4% accuracy).\u003c/p\u003e \u003cp\u003eConsuming alcoholic beverages was a heavily weighted predictor of meibum quality, averaging 1.0 drinks more per week among those with poor meibum quality (94.0% accuracy). Alcoholic beverage consumption was a heavily weighted feature in several symptom prediction models. Subjects with high Standard Patient Evaluation of Eye Dryness (SPEED II) scores (worse symptoms) averaged 1.0 drinks per week more than those with mild or no symptoms (74.5% accuracy). The number of alcoholic drinks per week was also a heavily weighted predictor of VAS ratings of ocular discomfort frequency, end-of-day discomfort, and frequency of end-of-day discomfort. In each of those models, subjects with severe and frequent symptoms consumed approximately 1.0 drinks per week more on average. The model of DEFC debilitating symptoms among contact lens wearers showed that asymptomatic lens wearers averaged 1.1 alcoholic drinks per week, those with contact lens-induced DE 1.6 drinks per week, and those with physiological DE 2.4 drinks per week.\u003c/p\u003e \u003c/div\u003e \u003cdiv id=\"Sec8\" class=\"Section2\"\u003e \u003ch2\u003eBeneficial Lifestyle Behaviors\u003c/h2\u003e \u003cp\u003eTime exercising (hrs/wk) was a heavily weighted predictor of lid wiper epitheliopathy (LWE; 92.9% accuracy), averaging 1.2 hrs/wk more exercise among subjects with no or mild LWE. In terms of symptoms, subjects with the most frequent VAS discomfort exercised approximately 0.7 hrs/wk less, and subjects classified as symptomatic by the DEFC exercised approximately 0.6 hrs/wk less.\u003c/p\u003e \u003cp\u003eLess time spent outdoors (hrs/day) was a heavily weighted predictor of corneal staining extent (91.2% accuracy), and of CLDEQ-8 score (76.3% accuracy). Subjects with moderate to severe corneal staining extent averaged 0.5 fewer hours per day outdoors. Contact lens wearers with high CLDEQ-8 scores (worse symptoms) spent approximately 0.6 fewer hours per day outdoors.\u003c/p\u003e \u003cdiv id=\"Sec9\" class=\"Section3\"\u003e \u003ch2\u003eEnvironmental Exposures\u003c/h2\u003e \u003cp\u003eMore exposure to airplane cabin environments (hrs/mo) was a heavily weighted predictor for anterior displacement of the LoM (83.0% accuracy) and a diagnosis of lagophthalmos (80.1% accuracy). More airplane cabin exposure was also a heavily weighted predictor of more frequent ocular discomfort in VAS ratings. The mean differences in airplane cabin exposure between those with and without signs or symptoms were minimal at approximately 0.7 hrs/mo in all models.\u003c/p\u003e \u003cp\u003eMore time riding the train (hrs/wk) was predictive of a higher OSDI score, and subjects with the highest OSDI scores (worse symptoms) were exposed to riding the train approximately 0.8 hrs/wk more than those with the lowest OSDI scores. Driving a car (hrs/wk) was predictive of several assessments of subjective symptoms. Subjects with the highest OSDI scores averaged approximately 1.3 hrs/wk more driving time. For VAS severity of end-of-day ocular discomfort, subjects with the lowest comfort ratings drove a car on average 1.5 hrs/wk more. Subjects with the highest VAS dryness severity ratings averaged approximately 2.0 hrs/wk more driving time. Among non-contact lens wearers, subjects symptomatic for debilitating DE by DEFC classification averaged approximately 3 hrs/wk more exposure to driving a car than did asymptomatic subjects (86.5% accuracy).\u003c/p\u003e \u003c/div\u003e \u003c/div\u003e"},{"header":"DISCUSSION","content":"\u003cp\u003eIn this study, machine learning models were trained to take subject characteristics, lifestyle behaviors and risk exposures, clinical assessments of the ocular surface, tear film and eyelids, and symptom scores from validated DE instruments, and combine them in prediction models of DE-related outcomes. Lifestyle factors were found to be among the most heavily weighted features used by the models to predict a number of clinical signs, subjective symptoms, and diagnoses related ocular surface disease. Prediction accuracies for DE-related symptoms ranged from 60.7\u0026ndash;86.5%, for diagnoses from 73.7\u0026ndash;80.1%, and for clinical signs from 66.9\u0026ndash;98.7%.\u003c/p\u003e \u003cp\u003eGreater age was a heavily weighted predictor for clinical signs including the presence of eyelid notching, anterior displacement of the LoM, and shorter FTBUT among Asian subjects. Greater age was also a heavily weighted predictor for VAS dryness severity and frequency ratings, both throughout the day and at end-of-day, as well as for a clinical diagnosis of blepharitis. There is evidence to suggest that the LoM can shift due to aging, and due to the presence of DE.\u003csup\u003e\u003cspan citationid=\"CR14\" class=\"CitationRef\"\u003e14\u003c/span\u003e,\u003cspan citationid=\"CR18\" class=\"CitationRef\"\u003e18\u003c/span\u003e\u003c/sup\u003e Eyelid margin irregularities such as notching are frequently observed in cases of blepharitis and MGD,\u003csup\u003e\u003cspan citationid=\"CR19\" class=\"CitationRef\"\u003e19\u003c/span\u003e,\u003cspan citationid=\"CR20\" class=\"CitationRef\"\u003e20\u003c/span\u003e\u003c/sup\u003e both conditions known to be related to aging.\u003csup\u003e\u003cspan additionalcitationids=\"CR22 CR23\" citationid=\"CR21\" class=\"CitationRef\"\u003e21\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR24\" class=\"CitationRef\"\u003e24\u003c/span\u003e\u003c/sup\u003e It has been well documented that symptoms of DE and MGD are on average more severe, frequent, and prevalent among older populations.\u003csup\u003e\u003cspan citationid=\"CR22\" class=\"CitationRef\"\u003e22\u003c/span\u003e,\u003cspan additionalcitationids=\"CR26\" citationid=\"CR25\" class=\"CitationRef\"\u003e25\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR27\" class=\"CitationRef\"\u003e27\u003c/span\u003e\u003c/sup\u003e\u003c/p\u003e \u003cp\u003eMore years of CLW was a heavily weighted predictor in models of LWE, a thinner lipid layer, a higher SPEED II score, and a diagnosis of MGD, all of which are in agreement with the literature.\u003csup\u003e\u003cspan additionalcitationids=\"CR29 CR30 CR31\" citationid=\"CR28\" class=\"CitationRef\"\u003e28\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR32\" class=\"CitationRef\"\u003e32\u003c/span\u003e\u003c/sup\u003e In general, however, the interclass differences in these models were very small (0.2\u0026ndash;1.4 yrs of CLW). Similarly, CLW frequency (days/wk) was a heavily weighted predictor of unstable vs. stable FTBUT\u003csup\u003e\u003cspan citationid=\"CR33\" class=\"CitationRef\"\u003e33\u003c/span\u003e\u003c/sup\u003e but with small interclass differences (0.4\u0026ndash;0.5 days/wk). These results illustrate how very small differences that are not considered to be of importance to clinicians can still be heavily weighted features in machine learning predictions.\u003csup\u003e\u003cspan citationid=\"CR7\" class=\"CitationRef\"\u003e7\u003c/span\u003e\u003c/sup\u003e\u003c/p\u003e \u003cp\u003eDuration of CLW (hrs/day) was a heavily weighted feature in predicting FTBUT among Asian subjects. In contrast, while the duration of \u003cem\u003ecomfortable\u003c/em\u003e CLW (hrs/day) was not a heavily weighted predictor for any clinical signs, it was an important predictor for every subjective measure of symptoms studied.\u003csup\u003e\u003cspan citationid=\"CR34\" class=\"CitationRef\"\u003e34\u003c/span\u003e\u003c/sup\u003e Asymptomatic subjects averaged 0.8\u0026ndash;4.4 more hrs/day of comfortable CLW. Total hrs/day of CLW is not always informative because corneal desensitization, wearer commitment, lifestyle needs, and individual pain sensitivity level can result in continuing wear far beyond the onset of symptoms. Hrs/day of comfortable CLW was a far better predictor of symptoms. Clinicians should ask symptomatic contact lens patients about their comfortable wearing time and distinguish it from their total wearing time.\u003csup\u003e\u003cspan citationid=\"CR35\" class=\"CitationRef\"\u003e35\u003c/span\u003e\u003c/sup\u003e\u003c/p\u003e \u003cp\u003eIt is important to point out that with these machine learning prediction models the direction of causality is generally unknown, but sometimes can be inferred logically. For example, there was longer CLW duration (hrs/day) among Asian subjects with shorter FTBUT. Other than by chance (e.g., some unknown sampling bias), there is no reason to think that better tear film stability would cause contact lens wearers to wear their lenses less. The fact that those with shorter FTBUT were actually wearing their lenses longer implies that the direction of causation is from longer CLW to shorter FTBUT and not the reverse.\u003c/p\u003e \u003cp\u003eAmount of near work (hrs/day) was a heavily weighted predictor of eyelid margin erythema among all subjects and shorter NITBUT among Asian subjects. Subjects with erythema or reduced tear film stability averaged slightly over an hour per day more near work. Frequent near work is a well-known risk factor for DE, particularly in the context of digital display use.\u003csup\u003e\u003cspan additionalcitationids=\"CR37\" citationid=\"CR36\" class=\"CitationRef\"\u003e36\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR38\" class=\"CitationRef\"\u003e38\u003c/span\u003e\u003c/sup\u003e While there is little information on the effects of near work on the eyelids, Wu et al. found that an eyelid margin abnormality score was positively correlated with time using a visual display terminal, and that FTBUT, corneal staining, and OSDI score were all significantly worse in a cohort using visual display terminals for more than 4 hours per day.\u003csup\u003e\u003cspan citationid=\"CR39\" class=\"CitationRef\"\u003e39\u003c/span\u003e\u003c/sup\u003e Most studies of near work and tear film stability have employed FTBUT as the outcome measure. Khezrzade et al., however, did find that NITBUT was significantly reduced after 30 minutes of reading.\u003csup\u003e\u003cspan citationid=\"CR40\" class=\"CitationRef\"\u003e40\u003c/span\u003e\u003c/sup\u003e To our knowledge, the machine learning results presented here represent the only other evidence of the effects of sustained near work on non-invasive measurements of tear film stability, and that sustained near work may ultimately have effects on the eyelid margin.\u003c/p\u003e \u003cp\u003eConsuming caffeinated beverages was a heavily weighted predictor only for CLDEQ-8 score, and only with an average of 0.2 drinks per day more among those with a higher score. Caffeinated beverage consumption was not predictive of any other signs, symptoms, or diagnoses. Most studies have found either no relationship between caffeine consumption and DE,\u003csup\u003e\u003cspan citationid=\"CR41\" class=\"CitationRef\"\u003e41\u003c/span\u003e\u003c/sup\u003e or a possible protective effect.\u003csup\u003e\u003cspan citationid=\"CR1\" class=\"CitationRef\"\u003e1\u003c/span\u003e,\u003cspan citationid=\"CR42\" class=\"CitationRef\"\u003e42\u003c/span\u003e,\u003cspan citationid=\"CR43\" class=\"CitationRef\"\u003e43\u003c/span\u003e\u003c/sup\u003e Consumption of alcohol on the other hand was a heavily weighted predictor of poor meibum quality and of worse DE symptoms on several questionnaire instruments. Subjects with poor meibum quality averaged 1.0 drink more per week, and symptomatic subjects averaged 1.0-1.3 drinks more per week. Although the effect size appears to be small, it should be kept in mind that it is equivalent to 52\u0026ndash;68 drinks more over the course of a year. The literature on the effects of alcohol on the signs and symptoms of DE is largely equivocal.\u003csup\u003e\u003cspan citationid=\"CR1\" class=\"CitationRef\"\u003e1\u003c/span\u003e\u003c/sup\u003e Some studies have found alcohol consumption to be linked to tear film deterioration, reduced tear volume, increased osmolarity, and worse DE symptoms.\u003csup\u003e\u003cspan citationid=\"CR43\" class=\"CitationRef\"\u003e43\u003c/span\u003e,\u003cspan citationid=\"CR44\" class=\"CitationRef\"\u003e44\u003c/span\u003e\u003c/sup\u003e Other studies have found alcohol to be a non-factor in DE, \u003csup\u003e\u003cspan citationid=\"CR42\" class=\"CitationRef\"\u003e42\u003c/span\u003e,\u003cspan citationid=\"CR45\" class=\"CitationRef\"\u003e45\u003c/span\u003e,\u003cspan citationid=\"CR46\" class=\"CitationRef\"\u003e46\u003c/span\u003e\u003c/sup\u003e and a few studies have reported a protective effect against DE.\u003csup\u003e\u003cspan citationid=\"CR41\" class=\"CitationRef\"\u003e41\u003c/span\u003e,\u003cspan citationid=\"CR47\" class=\"CitationRef\"\u003e47\u003c/span\u003e\u003c/sup\u003e To our knowledge this is the first study to link alcohol consumption to lower quality meibum. Magno, et al. found that alcohol consumption significantly increased the risk of DE in women but not in men, possibly due to differences the hormone androgen, the deficiency of which has been linked to MGD.\u003csup\u003e\u003cspan citationid=\"CR44\" class=\"CitationRef\"\u003e44\u003c/span\u003e\u003c/sup\u003e In men, it has been shown that excessive or chronic alcohol consumption can reduce serum testosterone.\u003csup\u003e\u003cspan citationid=\"CR48\" class=\"CitationRef\"\u003e48\u003c/span\u003e\u003c/sup\u003e Modeling the interaction of alcohol consumption and sex was not performed in this study and may deserve further investigation.\u003c/p\u003e \u003cp\u003eMore time exercising was found to be a heavily weighted predictor of less LWE. LWE is associated with sub-clinical inflammation,\u003csup\u003e\u003cspan citationid=\"CR49\" class=\"CitationRef\"\u003e49\u003c/span\u003e\u003c/sup\u003e and exercise has been linked to reduced tear concentrations of several cytokines and other markers of inflammation or oxidative stress.\u003csup\u003e\u003cspan additionalcitationids=\"CR51\" citationid=\"CR50\" class=\"CitationRef\"\u003e50\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR52\" class=\"CitationRef\"\u003e52\u003c/span\u003e\u003c/sup\u003e Aerobic exercise has been shown to promote tear secretion and improves tear film stability in dry eye patients,\u003csup\u003e\u003cspan citationid=\"CR50\" class=\"CitationRef\"\u003e50\u003c/span\u003e,\u003cspan citationid=\"CR53\" class=\"CitationRef\"\u003e53\u003c/span\u003e\u003c/sup\u003e and tear film instability has been linked to LWE.\u003csup\u003e\u003cspan citationid=\"CR28\" class=\"CitationRef\"\u003e28\u003c/span\u003e\u003c/sup\u003e Other studies have also demonstrated a link between a lack of exercise (i.e., sedentary lifestyle) and risk of DE. Sedentary behavior has been associated with reduced tear breakup time, lower tear volume, and risk of DE.\u003csup\u003e\u003cspan additionalcitationids=\"CR51 CR52\" citationid=\"CR50\" class=\"CitationRef\"\u003e50\u003c/span\u003e\u0026ndash;\u003cspan citationid=\"CR53\" class=\"CitationRef\"\u003e53\u003c/span\u003e\u003c/sup\u003e It has been speculated that exercise increases parasympathetic stimulation of the lacrimal gland and acinar blood vessels, increasing secretion of electrolytes and aqueous.\u003csup\u003e\u003cspan citationid=\"CR1\" class=\"CitationRef\"\u003e1\u003c/span\u003e\u003c/sup\u003e\u003c/p\u003e \u003cp\u003eApproximately 2.5 hours more per week spent outdoors was found to be a heavily weighted predictor of lesser corneal staining extent, and of lower CLDEQ-8 score among contact lens wearers. Some studies have found time outdoors to be a risk factor for DE,\u003csup\u003e\u003cspan citationid=\"CR46\" class=\"CitationRef\"\u003e46\u003c/span\u003e,\u003cspan citationid=\"CR54\" class=\"CitationRef\"\u003e54\u003c/span\u003e\u003c/sup\u003e often related to extreme heat or cold conditions\u003csup\u003e\u003cspan citationid=\"CR38\" class=\"CitationRef\"\u003e38\u003c/span\u003e\u003c/sup\u003e or excessive wind.\u003csup\u003e\u003cspan citationid=\"CR55\" class=\"CitationRef\"\u003e55\u003c/span\u003e\u003c/sup\u003e Other studies have found time spent outdoors to be a non-factor in risk for DE.\u003csup\u003e\u003cspan citationid=\"CR45\" class=\"CitationRef\"\u003e45\u003c/span\u003e\u003c/sup\u003e Rodriguez, et al. found that time spent on indoor work was associated with a decreased blink rate,\u003csup\u003e\u003cspan citationid=\"CR56\" class=\"CitationRef\"\u003e56\u003c/span\u003e\u003c/sup\u003e which is well known to be an etiological factor in DE. In this study, a post-hoc analysis showed that our subjects who spent more time outdoors were also doing less near work on average (thus presumably blinking more), and exercising significantly more.\u003c/p\u003e \u003cp\u003eMore time riding the train was a heavily weighted predictor of higher OSDI score. More time driving a car was a heavily weighted predictor of higher symptom scores including OSDI score, VAS ratings, and DEFC classification. Symptomatic subjects averaged 0.8-3.0 more hours per week exposure. There are likely similarities and differences in the mechanisms of DE symptoms in these two types of exposure. While there are studies on how DE affects the ability to drive,\u003csup\u003e\u003cspan citationid=\"CR26\" class=\"CitationRef\"\u003e26\u003c/span\u003e\u003c/sup\u003e there are relatively few studies of car driving or train riding as a causative or risk factor for DE. Guillon, et al. found a greater incidence of symptoms among DE subjects after riding the subway and after driving a car for both contact lens wearers and non-wearers.\u003csup\u003e\u003cspan citationid=\"CR57\" class=\"CitationRef\"\u003e57\u003c/span\u003e\u003c/sup\u003e Rodriguez, et al. found increased levels of ocular discomfort and a reduced interblink period associated with driving a car.\u003csup\u003e\u003cspan citationid=\"CR56\" class=\"CitationRef\"\u003e56\u003c/span\u003e\u003c/sup\u003e The link between DE and these exposures could be due to the inside environment (e.g., windows open or closed; heater or air conditioner settings; fan settings; environmental contaminants or cleaning product irritants), which could apply to both cars and trains. It could also be due to extended visual tasking while driving for extended periods which reduces the interblink period,\u003csup\u003e\u003cspan citationid=\"CR56\" class=\"CitationRef\"\u003e56\u003c/span\u003e\u003c/sup\u003e while extended visual tasking at distance would likely not apply to riding the train.\u003c/p\u003e \u003cp\u003eThe limitations of this study include employing univariate logistic regression in the machine learning prediction models. More sophisticated statistical models and larger datasets for some sparse variables are likely to improve prediction accuracy further, especially for symptoms. There are numerous other likely important lifestyle behaviors and exposures that were not addressed in this study, including obesity, dietary habits, health and wellness supplements, sleep patterns, and a wide variety of ocular and systemic medications, to name a few. Future work would also benefit from modeling interactions among demographic and risk factors to determine if predictive relationships are the same for different ages, sexes, and races.\u003c/p\u003e"},{"header":"CONCLUSIONS","content":"\u003cp\u003eIn this study a novel machine learning approach was employed to predict DE-related outcomes using combined clinical, symptom, and lifestyle data. The algorithm relied heavily on a number of subject characteristic, lifestyle behavior, and environmental exposure variables to make the highest accuracy predictions. Age was a heavily weighted feature in predictions of eyelid notching, LoM anterior displacement, and FTBUT, as well as VAS symptom ratings and a clinician diagnosis of blepharitis. Contact lens wear patterns were heavily weighted features in predictions of FTBUT and subjective ratings of DE symptoms. Some generally beneficial or detrimental behaviors were shown to also be important predictors of ocular signs and symptoms, including time spent in near work, alcohol consumption, exercise, and time spent outdoors. Exposure to riding the train and driving a car were predictors of DE-related symptoms but not clinical signs. These results illustrate the importance of lifestyle, subject, and environmental characteristics in ocular surface health and disease, and underscore the emerging consensus that the impact of these factors in clinical care and clinical research must be taken into account with greater rigor than has largely been the case to date.\u003c/p\u003e "},{"header":"Declarations","content":"\u003ch2\u003eAuthor Contribution\u003c/h2\u003e\u003cp\u003eADG - Conception, analysis, primary writing;JW - Programming, analysis;TK - Programming, analysis;JD - Data collection, study management;HT - Data collection;AM - Data collection;VT - Data collection, study management;SMC - Data collection;SXY - Conception, programming oversight, co-PI;MCL - Conception, writing, primary study PI;All authors reviewed the manuscript;\u003c/p\u003e\u003ch2\u003eData Availability\u003c/h2\u003e\u003cp\u003eDe-identified data will be made available upon request for research purposes only with valid Data Transfer and Use Agreements (DTUA) required for sharing protected human subject data.\u003c/p\u003e"},{"header":"References","content":"\u003col\u003e\u003cli\u003e\u003cspan\u003eStapleton F, Abad JC, Barabino S, Burnett A, Iyer G, Lekhanot K, et al. 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The epidemiology of dry eye disease in the UK: The Aston Dry Eye Study. Contact Lens Ant Eye. 2023;46(3):101837.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eViso E, Rodriguez-Ares MT, Abelenda D, Oubi\u0026ntilde;a B, Gude F. Prevalence of symptomatic and symptomatic Meibomian gland dysfunction in the general population of Spain. Invest Ophthalmol Vis Sci. 2012;53(6):2601\u0026ndash;2606.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eSmith SJ, Lopresti AL, Fairchild TJ. The effects of alcohol on testosterone synthesis in men: a review. Expert Rev Endocrinol Metab. 2023;18(2):155\u0026ndash;166.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eEfron N, Brennan NA, Morgan PB, Wilson T. Lid wiper epitheliopathy. Prog Retin Eye Res. 2016;53:140\u0026ndash;174.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eNavarro-Lopez S, Moya-Ram\u0026oacute;n M, Gallar J, Carracedo G, Aracil-Marco A. Effects of physical activity/exercise on tear film characteristics and dry eye associated symptoms: a literature review. Contact Lens Ant Eye. 2023;46(4):101854.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eKawashima M, Uchino M, Yokoi N, Uchino Y, Dogru M, Komuro A, Sonomura Y, Kato H, Nishiwaki Y, Kinoshita S, Tsubota K. The association between Dry Eye Disease and physical activity as well as sedentary behavior: Results from the Osaka Study. J Ophthalmol. 2014;943786:1\u0026ndash;6.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eKojima T, Dogru M, Kawashima M, Nakamura S, Tsubota K. Advances in the diagnosis and treatment of dry eye. Prog Retin Eye Res. 2020;78:100842.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eSun C, Chen X, Huang Y, Zou H, Fan W, Yang M, Yuan R. Effects of aerobic exercise on tear secretion and tear film stability in dry eye patients. BMC Ophthalmol. 2022;22(1):9.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eKim Y, Paik HJ, Hae J, Kim MK, Choi Y-H, Kim DH. Short-term effects of ground-level ozone in patients with dry eye disease: A prospective clinical study. Cornea. 2019;38(12):1483\u0026ndash;1488.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eLi J, Zheng K, Deng Z, Zheng J, Ma H, Sun L, Chen W. Prevalence and risk factors of dry eye disease among a hospital-based population in southeast China. Eye Contact Lens. 2015;41(1):44\u0026ndash;50.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eRodriguez JD, Lane KJ, Ousler III GW, Angjeli E, Smith LM, Abelson MB. Blink: Characteristics, controls, and relation to dry eyes. Curr Eye Res. 2018;43(1):52\u0026ndash;66.\u003c/span\u003e\u003c/li\u003e \u003cli\u003e\u003cspan\u003eGuillon M, Maissa C. Dry eye symptomatology of soft contact lens wearers and nonwearers. Opt Vis Sci. 2005;82(9):829\u0026ndash;834.\u003c/span\u003e\u003c/li\u003e\u003c/ol\u003e"}],"fulltextSource":"","fullText":"","funders":[],"hasAdminPriorityOnWorkflow":false,"hasManuscriptDocX":true,"hasOptedInToPreprint":true,"hasPassedJournalQc":"","hasAnyPriority":false,"hideJournal":false,"highlight":"","institution":"","isAcceptedByJournal":true,"isAuthorSuppliedPdf":false,"isDeskRejected":"","isHiddenFromSearch":false,"isInQc":false,"isInWorkflow":false,"isPdf":false,"isPdfUpToDate":true,"isWithdrawnOrRetracted":false,"journal":{"display":true,"email":"[email protected]","identity":"scientific-reports","isNatureJournal":false,"hasQc":true,"allowDirectSubmit":false,"externalIdentity":"scirep","sideBox":"Learn more about [Scientific Reports](http://www.nature.com/srep/)","snPcode":"","submissionUrl":"","title":"Scientific Reports","twitterHandle":"","acdcEnabled":true,"dfaEnabled":true,"editorialSystem":"stoa","reportingPortfolio":"Scientific Reports","inReviewEnabled":true,"inReviewRevisionsEnabled":true},"keywords":"Dry Eye, Meibomian gland dysfunction, lifestyle, artificial intelligence, machine learning, age, contact lens wear, alcohol, driving, exercise, near work, airplane cabin, outdoor exposure, blepharitis, Line of Marx, eyelid notching, tear film instability","lastPublishedDoi":"10.21203/rs.3.rs-4536316/v1","lastPublishedDoiUrl":"https://doi.org/10.21203/rs.3.rs-4536316/v1","license":{"name":"CC BY 4.0","url":"https://creativecommons.org/licenses/by/4.0/"},"manuscriptAbstract":"\u003ch2\u003ePurpose\u003c/h2\u003e \u003cp\u003eTo examine and interpret machine learning models that predict dry eye (DE)-related clinical signs, subjective symptoms, and clinician diagnoses by heavily weighting lifestyle factors in the predictions.\u003c/p\u003e\u003ch2\u003eMethods\u003c/h2\u003e \u003cp\u003eMachine learning models were trained to take clinical assessments of the ocular surface, eyelids, and tear film, combined with symptom scores from validated questionnaire instruments for DE and clinician diagnoses of ocular surface diseases, and perform a classification into DE-related outcome categories. Outcomes are presented for which the data-driven algorithm identified subject characteristics, lifestyle, behaviors, or environmental exposures as heavily weighted predictors. Models were assessed by 5-fold cross-validation accuracy and class-wise statistics of the predictors.\u003c/p\u003e\u003ch2\u003eResults\u003c/h2\u003e \u003cp\u003eAge was a heavily weighted factor in predictions of eyelid notching, Line of Marx anterior displacement, and fluorescein tear breakup time (FTBUT), as well as visual analog scale symptom ratings and a clinician diagnosis of blepharitis. Comfortable contact lens wearing time was heavily weighted in predictions of DE symptom ratings. Time spent in near work, alcohol consumption, exercise, and time spent outdoors were heavily weighted predictors for several ocular signs and symptoms. Exposure to airplane cabin environments and driving a car were predictors of DE-related symptoms but not clinical signs. Prediction accuracies for DE-related symptoms ranged from 60.7\u0026ndash;86.5%, for diagnoses from 73.7\u0026ndash;80.1%, and for clinical signs from 66.9\u0026ndash;98.7%.\u003c/p\u003e\u003ch2\u003eConclusions\u003c/h2\u003e \u003cp\u003eThe results emphasize the importance of lifestyle, subject, and environmental characteristics in the etiology of ocular surface disease. Lifestyle factors should be taken into account in clinical research and care to a far greater extent than has been the case to date.\u003c/p\u003e","manuscriptTitle":"Artificial Intelligence Models Utilize Lifestyle Factors to Predict Dry Eye-Related Outcomes","msid":"","msnumber":"","nonDraftVersions":[{"code":1,"date":"2024-07-18 16:02:21","doi":"10.21203/rs.3.rs-4536316/v1","editorialEvents":[{"type":"communityComments","content":0},{"type":"decision","content":"Revision requested","date":"2025-02-03T04:06:40+00:00","index":"","fulltext":""},{"type":"editorInvitedReview","content":"","date":"2025-01-29T18:29:29+00:00","index":"hide","fulltext":""},{"type":"reviewerAgreed","content":"145159834290023736931864219205764886196","date":"2025-01-22T08:36:07+00:00","index":"hide","fulltext":""},{"type":"editorInvitedReview","content":"","date":"2025-01-01T05:11:16+00:00","index":"hide","fulltext":""},{"type":"editorInvitedReview","content":"","date":"2024-12-28T08:28:40+00:00","index":"hide","fulltext":""},{"type":"reviewerAgreed","content":"183520084085861952120981423338741151820","date":"2024-12-19T05:37:38+00:00","index":"hide","fulltext":""},{"type":"reviewerAgreed","content":"182963550315695130174852417219789293545","date":"2024-12-18T03:07:28+00:00","index":"hide","fulltext":""},{"type":"reviewersInvited","content":"","date":"2024-06-24T12:38:23+00:00","index":"","fulltext":""},{"type":"editorAssigned","content":"","date":"2024-06-24T12:27:09+00:00","index":"","fulltext":""},{"type":"editorInvited","content":"","date":"2024-06-22T06:49:22+00:00","index":"","fulltext":""},{"type":"checksComplete","content":"","date":"2024-06-21T04:59:00+00:00","index":"","fulltext":""},{"type":"submitted","content":"Scientific Reports","date":"2024-06-05T22:04:07+00:00","index":"","fulltext":""}],"status":"published","journal":{"display":true,"email":"[email protected]","identity":"scientific-reports","isNatureJournal":false,"hasQc":true,"allowDirectSubmit":false,"externalIdentity":"scirep","sideBox":"Learn more about [Scientific Reports](http://www.nature.com/srep/)","snPcode":"","submissionUrl":"","title":"Scientific Reports","twitterHandle":"","acdcEnabled":true,"dfaEnabled":true,"editorialSystem":"stoa","reportingPortfolio":"Scientific Reports","inReviewEnabled":true,"inReviewRevisionsEnabled":true}}],"origin":"","ownerIdentity":"3624dfa4-2c08-46c3-bfb6-ecc3564cd25c","owner":[],"postedDate":"July 18th, 2024","published":true,"recentEditorialEvents":[],"rejectedJournal":[],"revision":"","amendment":"","status":"published-in-journal","subjectAreas":[{"id":34405023,"name":"Health sciences/Medical research"},{"id":34405024,"name":"Health sciences/Medical research/Outcomes research"},{"id":34405025,"name":"Health sciences/Medical research/Translational research"},{"id":34405026,"name":"Health sciences/Diseases/Eye diseases"},{"id":34405027,"name":"Health sciences/Diseases/Eye diseases/Conjunctival diseases"},{"id":34405028,"name":"Health sciences/Diseases/Eye diseases/Corneal diseases"},{"id":34405029,"name":"Health sciences/Diseases/Eye diseases/Eyelid diseases"},{"id":34405030,"name":"Health sciences/Diseases/Eye diseases/Vision disorders"}],"tags":[],"updatedAt":"2025-04-21T16:10:27+00:00","versionOfRecord":{"articleIdentity":"rs-4536316","link":"https://doi.org/10.1038/s41598-025-96778-x","journal":{"identity":"scientific-reports","isVorOnly":false,"title":"Scientific Reports"},"publishedOn":"2025-04-18 15:57:44","publishedOnDateReadable":"April 18th, 2025"},"versionCreatedAt":"2024-07-18 16:02:21","video":"","vorDoi":"10.1038/s41598-025-96778-x","vorDoiUrl":"https://doi.org/10.1038/s41598-025-96778-x","workflowStages":[]},"version":"v1","identity":"rs-4536316","journalConfig":"researchsquare"},"__N_SSP":true},"page":"/article/[identity]/[[...version]]","query":{"redirect":"/article/rs-4536316","identity":"rs-4536316","version":["v1"]},"buildId":"8U1c8b4HqxoKbykW_rLl7","isFallback":false,"isExperimentalCompile":false,"dynamicIds":[84888],"gssp":true,"scriptLoader":[]}

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