Early Prediction of Alzheimer's and Related Dementias: A Machine Learning Approach Utilizing Social Determinants of Health Data
Journal:
arXiv
Published Date:
Mar 20, 2025
Abstract
Alzheimer's disease and related dementias (AD/ADRD) represent a growing
healthcare crisis affecting over 6 million Americans. While genetic factors
play a crucial role, emerging research reveals that social determinants of
health (SDOH) significantly influence both the risk and progression of
cognitive functioning, such as cognitive scores and cognitive decline. This
report examines how these social, environmental, and structural factors impact
cognitive health trajectories, with a particular focus on Hispanic populations,
who face disproportionate risk for AD/ADRD. Using data from the Mexican Health
and Aging Study (MHAS) and its cognitive assessment sub study (Mex-Cog), we
employed ensemble of regression trees models to predict 4-year and 9-year
cognitive scores and cognitive decline based on SDOH. This approach identified
key predictive SDOH factors to inform potential multilevel interventions to
address cognitive health disparities in this population.