Towards Multimodal Longitudinal Analysis for Predicting Cognitive Decline

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This paper uses longitudinal data from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) to develop feature-driven supervised machine learning models that predict cognitive decline over time by integrating neuroimaging biomarkers with clinical assessment and demographic variables. The authors report that imaging biomarkers alone provide moderate predictive ability, but adding clinical and demographic variables to imaging improves model performance, and that non-imaging variables alone can also predict decline with reasonable effectiveness. A key limitation stated is that the work is positioned as laying groundwork for comprehensive longitudinal analyses and as a framework rather than definitive targeted clinical conclusions, with details deferred to cohort and updated experimental materials. The paper does not explicitly discuss endometriosis or adenomyosis; it was included in the corpus via a keyword match in the upstream search index.

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SUMMARY Understanding and predicting cognitive decline in Alzheimer’s disease (AD) is crucial for timely intervention and management. While neuroimaging biomarkers and clinical assessments are valuable individually, their combined predictive power and interaction with demographic and cognitive variables remain underexplored. This study lays the groundwork for comprehensive longitudinal analyses by integrating neuroimaging markers and clinical data to predict cognitive changes over time. Using data from the Alzheimer’s Disease Neuroimaging Initiative (ADNI), we applied feature-driven supervised machine learning techniques for assessing cognitive decline predictability. We hypothesize that combining neuroimaging biomarkers with demographic and clinical assessment variables significantly improves the prediction of cognitive decline in Alzheimer’s disease. Our results show that while imaging biomarkers alone offer moderate predictive capabilities, including key clinical assessment and demographic variables in conjunction with imaging biomarkers significantly improves the model performance. Furthermore, our results indicate that non-imaging variables alone can serve as effective and cost-efficient predictors of cognitive decline. This study underscores the need for integrating multi-dimensional data in future longitudinal research to capture time-dependent patterns in cognitive decline and guide the development of targeted intervention strategies. We also introduce NeuroLAMA - an open and extensible data engineering and machine-learning system, to support the continued investigation by the community Competing Interest Statement The authors have declared no competing interest. Footnotes 1. Updated experimental results. 2. Additional details provided on experimental cohorts

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License: CC-BY-NC-4.0