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Accuracy of machine learning-based prediction of medication adherence in clinical research

Vidya Koesmahargyo, Anzar Abbas, Li Zhang, Lei Guan, Shaolei Feng, Vijay Yadav, Isaac R. Galatzer‐Levy

2020Psychiatry Research56 citationsDOIOpen Access PDF

Abstract

Medication non-adherence represents a significant barrier to treatment efficacy. Remote, real-time measurement of medication dosing can facilitate dynamic prediction of risk for medication non-adherence, which in-turn allows for proactive clinical intervention to optimize health outcomes. We examine the accuracy of dynamic prediction of non-adherence using data from remote real-time measurements of medication dosing. Participants across a large set of clinical trials (n = 4,182) were observed via a smartphone application that video records patients taking their prescribed medication. The patients' primary diagnosis, demographics, and prior indication of observed adherence/non-adherence were utilized to predict (1) adherence rates ≥ 80% across the clinical trial, (2) adherence ≥ 80% for the subsequent week, and (3) adherence the subsequent day using machine learning-based classification models. Empirically observed adherence was demonstrated to be the strongest predictor of future adherence/non-adherence. Collectively, the classification models accurately predicted adherence across the trial (AUC = 0.83), the subsequent week (AUC = 0.87) and the subsequent day (AUC = 0.87). Real-time measurement of dosing can be utilized to dynamically predict medication adherence with high accuracy.

Topics & Concepts

DosingMedicineDemographicsMedication adherenceClinical trialMachine learningInternal medicineComputer scienceDemographySociologyMedication Adherence and ComplianceBipolar Disorder and TreatmentAttention Deficit Hyperactivity Disorder