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Predicting short-term interruptions of antiretroviral therapy from summary adherence data: Development and test of a probability model

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2018

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Public Library of Science
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Harris, Rebecca Arden, Jessica E. Haberer, Nicholas Musinguzi, Kyong-Mi Chang, Clyde B. Schechter, Chyke A. Doubeni, and Robert Gross. 2018. “Predicting short-term interruptions of antiretroviral therapy from summary adherence data: Development and test of a probability model.” PLoS ONE 13 (3): e0194713. doi:10.1371/journal.pone.0194713. http://dx.doi.org/10.1371/journal.pone.0194713.

Abstract

Antiretroviral therapy (ART) for HIV is vulnerable to unplanned treatment interruptions–consecutively missed doses over a series of days–which can result in virologic rebound. Yet clinicians lack a simple, valid method for estimating the risk of interruptions. If the likelihood of ART interruption could be derived from a convenient-to-gather summary measure of medication adherence, it might be a valuable tool for both clinical decision-making and research. We constructed an a priori probability model of ART interruption based on average adherence and tested its predictions using data collected on 185 HIV-infected, treatment-naïve individuals over the first 90 days of ART in a prospective cohort study in Mbarara, Uganda. The outcome of interest was the presence or absence of a treatment gap, defined as >72 hours without a dose. Using the pre-determined value of 0.50 probability as the cut point for predicting an interruption, the classification accuracy of the model was 73% (95% CI = 66%– 79%), the specificity was 87% (95% CI = 79%– 93%), and the sensitivity was 59% (95% CI = 48%– 69%). Overall model performance was satisfactory, with an area under the receiver operator characteristic curve (AUROC) of 0.85 (95% CI = 0.80–0.91) and Brier score of 0.20. The study serves as proof-of-concept that the probability model can accurately differentiate patients on the continuum of risk for short-term ART interruptions using a summary measure of adherence. The model may also aid in the design of targeted interventions.

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Biology and Life Sciences, Immunology, Vaccination and Immunization, Antiviral Therapy, Antiretroviral Therapy, Medicine and Health Sciences, Public and Occupational Health, Preventive Medicine, Pharmaceutics, Dose Prediction Methods, People and Places, Geographical Locations, Africa, Uganda, Microbiology, Microbial Control, Antimicrobial Resistance, Pharmacology, Drug Therapy, Mental Health and Psychiatry, Mood Disorders, Depression, Medical Microbiology, Microbial Pathogens, Viral Pathogens, Immunodeficiency Viruses, HIV, Pathology and Laboratory Medicine, Pathogens, Organisms, Viruses, Biology and life sciences, RNA viruses, Retroviruses, Lentivirus, Cohort Studies

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