Machine learning based prediction of medication adherence in heart failure using large electronic health record cohort with linkages to pharmacy-fill and neighborhood-level data.
While timely interventions can improve medication adherence, it is challenging to identify which patients are at risk of nonadherence at point-of-care. We aim to develop and validate flexible machine learning (ML) models to predict a continuous measure of adherence to guideline-directed medication therapies (GDMTs) for heart failure (HF).
Author(s): Adhikari, Samrachana, Stokes, Tyrel, Li, Xiyue, Zhao, Yunan, Fitchett, Cassidy, Ladino, Nathalia, Lawrence, Steven, Qian, Min, Cho, Young S, Hamo, Carine, Dodson, John A, Chunara, Rumi, Kronish, Ian M, Mukhopadhyay, Amrita, Blecker, Saul B
DOI: 10.1093/jamia/ocaf162