Inferring medication adherence from time-varying health measures
Kristen B. Hunter, Mark E. Glickman, Luis F. Campos

TL;DR
This paper introduces a novel statistical framework that infers medication adherence from longitudinal health data, improving accuracy and resource efficiency over existing methods, especially for chronic disease management.
Contribution
The study develops a modular inferential approach combining Markov chain Monte Carlo and Sequential Monte Carlo methods to estimate adherence from health measures.
Findings
Accurately infers medication adherence from health data
Increases detection of low-adherers compared to traditional methods
Demonstrates effectiveness on hypertensive patient cohort
Abstract
Medication adherence is a problem of widespread concern in clinical care. Poor adherence is a particular problem for patients with chronic diseases requiring long-term medication because poor adherence can result in less successful treatment outcomes and even preventable deaths. Existing methods to collect information about patient adherence are resource-intensive or do not successfully detect low-adherers with high accuracy. Acknowledging that health measures recorded at clinic visits are more reliably recorded than a patient's adherence, we have developed an approach to infer medication adherence rates based on longitudinally recorded health measures that are likely impacted by time-varying adherence behaviors. Our framework permits the inclusion of baseline health characteristics and socio-demographic data. We employ a modular inferential approach. First, we fit a two-component model…
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