Accurate diagnosis of endometriosis using serum microRNAs
article
OA: hybrid
CC0
⤵ 105 in-corpus citations
AI-generated summary
A machine learning algorithm combining serum microRNA expression levels accurately differentiates endometriosis from other gynecological pathologies with an area under the curve of 0.94.
One-sentence paraphrase of the abstract; not a substitute for reading it. No clinical advice. How this works
Abstract
BackgroundEndometriosis, a chronic disease that afflicts millions of women worldwide, has traditionally been diagnosed by laparoscopic surgery. This diagnostic barrier delays identification and treatment by years, resulting in prolonged pain and disease progression. Development of a noninvasive diagnostic test could significantly improve timely disease detection. We tested the feasibility of serum microRNAs as diagnostic biomarkers of endometriosis in women with gynecologic disease symptoms.ObjectiveThe objective of the study was to validate the use of a microRNA panel as a noninvasive diagnostic method for detecting endometriosis.Study DesignThis was a prospective study evaluating subjects with a clinical indication for gynecological surgery in an academic medical center. Serum samples were collected prior to surgery from 100 subjects. Women were selected based on the presence of symptoms, and laparoscopy was performed to determine the presence or absence of endometriosis. The control group was categorized based on absence of visual disease at the time of surgery. Circulating miRNAs, miR-125b-5p, miR-150-5p, miR-342-3p, miR-451a, miR-3613-5p, and let-7b, were measured in serum by quantitative real-time polymerase chain reaction in a blinded fashion without knowledge of disease status. Receiver-operating characteristic analysis was performed on individual microRNAs as well as combinations of microRNAs. An algorithm combining the expression values of these microRNAs, built using machine learning with a random forest classifier, was generated to predict the presence or absence of endometriosis on operative findings. This algorithm was then tested in an independent data set of 48 previously identified subjects not included in the training set (24 endometriosis and 24 controls) to validate its diagnostic performance.ResultsThe mean age of women in the study population was 34.1 and 36.9 years for the endometriosis and control groups, respectively. Control group subjects displayed varying pathologies, with leiomyoma occurring the most often (n = 39). Subjects with endometriosis had significantly higher expression levels of 4 serum microRNAs: miR-125b-5p, miR-150-5p, miR-342-3p, and miR-451a. Two serum microRNAs showed significantly lower levels in the endometriosis group: miR-3613-5p and let-7b. Individual microRNAs had receiver-operating characteristic areas under the curve ranging from 0.68 to 0.92. A classifier combining these microRNAs yielded an area under the curve of 0.94 when validated in the independent set of subjects not included in the training set. Analysis of the expression levels of each microRNA based on revised American Society of Reproductive Medicine staging revealed that all microRNAs could distinguish stage I/II from control and stage III/IV from control but that the difference between stage I/II and stage III/IV was not significant. Subgroup analysis revealed that neither phase of the menstrual cycle or use of hormonal medication had a significant impact on the expression levels in the microRNAs used in our algorithm.ConclusionThis is the first report showing that microRNA biomarkers can reliably differentiate between endometriosis and other gynecological pathologies with an area under the curve >0.9 across 2 independent studies. We validated the performance of an algorithm based on previously identified microRNA biomarkers, demonstrating their potential to detect endometriosis in a clinical setting, allowing earlier identification and treatment. The ability to diagnose endometriosis noninvasively could reduce the time to diagnosis, surgical risk, years of discomfort, disease progression, associated comorbidities, and health care costs. Endometriosis, a chronic disease that afflicts millions of women worldwide, has traditionally been diagnosed by laparoscopic surgery. This diagnostic barrier delays identification and treatment by years, resulting in prolonged pain and disease progression. Development of a noninvasive diagnostic test could significantly improve timely disease detection. We tested the feasibility of serum microRNAs as diagnostic biomarkers of endometriosis in women with gynecologic disease symptoms. The objective of the study was to validate the use of a microRNA panel as a noninvasive diagnostic method for detecting endometriosis. This was a prospective study evaluating subjects with a clinical indication for gynecological surgery in an academic medical center. Serum samples were collected prior to surgery from 100 subjects. Women were selected based on the presence of symptoms, and laparoscopy was performed to determine the presence or absence of endometriosis. The control group was categorized based on absence of visual disease at the time of surgery. Circulating miRNAs, miR-125b-5p, miR-150-5p, miR-342-3p, miR-451a, miR-3613-5p, and let-7b, were measured in serum by quantitative real-time polymerase chain reaction in a blinded fashion without knowledge of disease status. Receiver-operating characteristic analysis was performed on individual microRNAs as well as combinations of microRNAs. An algorithm combining the expression values of these microRNAs, built using machine learning with a random forest classifier, was generated to predict the presence or absence of endometriosis on operative findings. This algorithm was then tested in an independent data set of 48 previously identified subjects not included in the training set (24 endometriosis and 24 controls) to validate its diagnostic performance. The mean age of women in the study population was 34.1 and 36.9 years for the endometriosis and control groups, respectively. Control group subjects displayed varying pathologies, with leiomyoma occurring the most often (n = 39). Subjects with endometriosis had significantly higher expression levels of 4 serum microRNAs: miR-125b-5p, miR-150-5p, miR-342-3p, and miR-451a. Two serum microRNAs showed significantly lower levels in the endometriosis group: miR-3613-5p and let-7b. Individual microRNAs had receiver-operating characteristic areas under the curve ranging from 0.68 to 0.92. A classifier combining these microRNAs yielded an area under the curve of 0.94 when validated in the independent set of subjects not included in the training set. Analysis of the expression levels of each microRNA based on revised American Society of Reproductive Medicine staging revealed that all microRNAs could distinguish stage I/II from control and stage III/IV from control but that the difference between stage I/II and stage III/IV was not significant. Subgroup analysis revealed that neither phase of the menstrual cycle or use of hormonal medication had a significant impact on the expression levels in the microRNAs used in our algorithm. This is the first report showing that microRNA biomarkers can reliably differentiate between endometriosis and other gynecological pathologies with an area under the curve >0.9 across 2 independent studies. We validated the performance of an algorithm based on previously identified microRNA biomarkers, demonstrating their potential to detect endometriosis in a clinical setting, allowing earlier identification and treatment. The ability to diagnose endometriosis noninvasively could reduce the time to diagnosis, surgical risk, years of discomfort, disease progression, associated comorbidities, and health care costs.
My notes (saved in your browser only)
Condition tags
MeSH descriptors
Citation neighborhood (2-hop)
Papers in the corpus that this work cites (lower rings, blue) and that cite this one (upper rings, green). Dot size scales with the paper's in-corpus citation count — bigger dot = more influential within the endo/adeno field. Click a dot to open that paper. Outer rings show 2-hop neighbours — papers reached through the immediate citers/citees. [ collapse to 1-hop ]
References (30)
- Analysis of Serum microRNA Profile by Solexa Sequencing in Women With Endometriosis via openalex
- Circulating microRNAs as potential biomarkers for endometriosis via openalex
- Circulating MicroRNAs Identified in a Genome-Wide Serum MicroRNA Expression Analysis as Noninvasive Biomarkers for Endometriosis via openalex
- Developing symptom-based predictive models of endometriosis as a clinical screening tool: results from a multicenter study via openalex
- Diagnostic accuracy of serum miR‐122 and miR‐199a in women with endometriosis via openalex
- Diagnostic delay for endometriosis in Austria and Germany: causes and possible consequences via openalex
- Impact of endometriosis on quality of life and work productivity: a multicenter study across ten countries via openalex
- Incremental direct and indirect cost burden attributed to endometriosis surgeries in the United States via openalex
- miR-31 and miR-145 as Potential Non-Invasive Regulatory Biomarkers in Patients with Endometriosis. via openalex
- miR-31 and miR-145 as Potential Non-Invasive Regulatory\nBiomarkers in Patients with Endometriosis via openalex
- Peripheral biomarkers of endometriosis: a systematic review via openalex
- Plasma MicroRNAs as Novel Biomarkers for Endometriosis and Endometriosis-Associated Ovarian Cancer via openalex
- Plasma miR-17-5p, miR-20a and miR-22 are down-regulated in women with endometriosis via openalex
- Revised American Society for Reproductive Medicine classification of endometriosis: 1996 via openalex
- Serum MicroRNA Biomarkers Regulated by Simvastatin in a Primate Model of Endometriosis via openalex
- Serum microRNAs as diagnostic markers of endometriosis: a comprehensive array-based analysis via openalex
- Serum miR-451a Levels Are Significantly Elevated in Women With Endometriosis and Recapitulated in Baboons (Papio anubis) With Experimentally-Induced Disease via openalex
- Systematic enrichment analysis of microRNA expression profiling studies in endometriosis. via openalex
- The influence of endometriosis-related symptoms on work life and work ability: a study of Danish endometriosis patients in employment via openalex
- The social and psychological impact of endometriosis on women's lives: a critical narrative review via openalex
- Treatment of pelvic pain associated with endometriosis: a committee opinion via openalex
- W6770759602 via openalex
- W2114410175 via openalex
- W2293093886 via openalex
- W2588757737 via openalex
- W2617880691 via openalex
- W2762716878 via openalex
- W6678104062 via openalex
- W6750025554 via openalex
- W1945678685 via openalex
Cited by (50)
- Urinary microRNAs for the non-invasive diagnosis of endometriosis identified by next-generation sequencing and machine learning 2026
- Hormonal Dysregulation and Neuroinflammation in Endometriosis: Convergent Druggable Pathways 2026
- Changing the paradigm of endometriosis – from diagnosis to integrated long-term management: a joint society opinion paper 2026
- Expression analysis of plasma extracellular vesicle associated candidate MiRNAs in endometriosis using integrative bioinformatics and experiential data 2025
- Identification of long non-coding RNAs BAT5, MALAT1, and UBOX5 in the peripheral blood leukocytes of women with endometriosis before surgery and at 1 month after surgery 2025
- Diagnostic accuracy of non-coding RNA for detecting endometriosis: A systematic review and meta-analysis 2025
- Sviluppo di un modello diagnostico basato su MicroRNA sierici per la diagnosi di endometriosi 2025
- Model for Endometriosis Detection Using Machine Learning Algorithms 2025
- Endometriosis: A new perspective on epigenetics and oxidative stress 2025
- The Hôtel-Dieu MRI Classification of Uterosacral Ligament Involvement in Endometriosis: A Pictorial Guide to Clinical Use 2025
- Precision Therapeutic and Preventive Molecular Strategies for Endometriosis-Associated Infertility 2025
- Leveraging epigenetic aberrations in the pathogenesis of endometriosis: from DNA methylation to non-coding RNAs 2025
- Identifying serum microRNAs as biomarkers for endometriosis in adolescents and young adults 2025
- The Role of miRNA in Endometriosis-Related Infertility—An Update 2025
- Advances in approaches to diagnose endometriosis 2024
- Endometriosis: A review of recent evidence and guidelines 2024
- From Environmental Exposure Risk to Epigenetic Factors: What Role Do They Play in the Etiology of Endometriosis? 2024
- MiRNAs related in signaling pathways of women’s reproductive diseases: an overview 2024
- Guideline No. 449: Diagnosis and Impact of Endometriosis – A Canadian Guideline 2024
- miR-375-3p predicts the severity of endometriosis and regulates cellular progression by targeting NOX4 2024
- Endometriosis: reasons for cautious optimism 2024
- Endometriosis: Molecular Pathophysiology and Recent Treatment Strategies—Comprehensive Literature Review 2024
- Biomarkeri pentru diagnosticul neinvaziv al endometriozei 2024
- The Known, the Unknown and the Future of the Pathophysiology of Endometriosis 2024
- Global, regional, and national prevalence and disability-adjusted life-years for endometriosis in 204 countries and territories, 1990– 2019: findings from a global burden of disease study 2024
- The modern non-invasive diagnosis of endometriosis 2024
- A Call for New Theories on the Pathogenesis and Pathophysiology of Endometriosis 2024
- An integrated multi-tissue approach for endometriosis candidate biomarkers: a systematic review 2024
- Circulating microRNAs as Non-Invasive Biomarkers in Endometriosis Diagnosis—A Systematic Review 2024
- Clues to revising the conventional diagnostic algorithm for endometriosis 2024
- Immune infiltration related circular RNA, circGLIS2, facilitated progression of endometriosis through miR-4731-5p/IL-1β axis 2024
- MRI classification of uterosacral ligament involvement in endometriosis: the Hôtel-Dieu classification 2024
- Angiogenesis signaling in endometriosis: Molecules, diagnosis and treatment (Review) 2024
- An update for endometriosis management: a position statement 2024
- Saliva-based microRNA diagnostic signature for the superficial peritoneal endometriosis phenotype 2024
- <span data-contrast="auto">Evaluating the Prognostic Potential of CA-125 and miRNA Levels in Endometriosis: A Narrative Review <span data-ccp-props="{"> 2024
- Directive clinique no 449 : Directive canadienne sur le diagnostic et les impacts de l’endométriose 2024
- The Holy Grail of endometriosis biomarkers in the diagnostic process – How much would it be worth and what does it look like? 2023
- Identifying a panel of nine genes as novel specific model in endometriosis noninvasive diagnosis 2023
- POTENTIAL ВIOMARKERS OF ENDOMETRIOSIS: THE SEARCH IS UNDERWAY 2023
- Research advances in endometriosis-related signaling pathways: A review 2023
- New class of RNA biomarker for endometriosis diagnosis: The potential of salivary piRNA expression 2023
- Role of microRNAs in embryo–endometrial interactions: biological functions and clinical applications 2023
- Circulating miR-3613-5p but not miR-125b-5p, miR-199a-3p, and miR-451a are biomarkers of endometriosis 2023
- Paradigm Shift for Endometriosis and the Potential Role of Genetic Testing – Going Beyond the 2022 ESHRE Guidelines for Endometriosis 2023
- Translational aspects of the endometriosis epigenome 2023
- Exosomal microRNAs and long noncoding RNAs: as novel biomarkers for endometriosis 2023
- Comparative Study of Serum miRNA as A Biomarker for Non-Invasive Diagnosis in Suspected Versus Proven Cases of Endometriosis 2023
- Actualization of differential diagnosis of chronic pelvic pain syndrome in women of reproductive age 2023
- Disputable issues of non–invasive diagnosis of small forms of endometriosis 2023
Source provenance
- europepmc
- last seen: 2026-06-04T01:30:01.192114+00:00
- openalex
- last seen: 2026-06-04T00:00:01.174412+00:00
- pubmed
- last seen: 2026-05-13T22:22:11.167363+00:00
License: CC0
· commercial use OK