4.5 Article

Inferring medication adherence from time-varying health measures

期刊

STATISTICS IN MEDICINE
卷 41, 期 12, 页码 2205-2226

出版社

WILEY
DOI: 10.1002/sim.9351

关键词

hypertension; medication adherence; sequential Monte Carlo; state-space models

资金

  1. Agency for Healthcare Research and Quality [R03-HS022112]
  2. National Heart, Lung, and Blood Institute [R21-HL121366]
  3. U.S. Department of Defense

向作者/读者索取更多资源

Medication adherence is a widespread concern in clinical care. Researchers have developed an approach to infer medication adherence rates based on longitudinally recorded health measures. This method can predict patients' adherence to medication and includes baseline health and socio-demographic data as reference. The approach has been applied and evaluated in a cohort of hypertensive patients.
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 on a training set of patients who have detailed adherence data obtained from electronic medication monitoring. One model component predicts adherence behaviors only from baseline health and socio-demographic information, and the other predicts longitudinal health measures given the adherence and baseline health measures. Posterior draws of relevant model parameters are simulated from this model using Markov chain Monte Carlo methods. Second, we develop an approach to infer medication adherence from the time-varying health measures using a sequential Monte Carlo algorithm applied to a new set of patients for whom no adherence data are available. We apply and evaluate the method on a cohort of hypertensive patients, using baseline health comorbidities, socio-demographic measures, and blood pressure measured over time to infer patients' adherence to antihypertensive medication.

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