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Using Previous Medication Adherence to Predict Future Adherence

BACKGROUND: Medication nonadherence is a major public health problem. Identification of patients who are likely to be and not be adherent can guide targeted interventions and improve the design of comparative-effectiveness studies. OBJECTIVE: To evaluate multiple measures of patient previous medicat...

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Autores principales: Kumamaru, Hiraku, Lee, Moa P., Choudhry, Niteesh K., Dong, Yaa-Hui, Krumme, Alexis A., Khan, Nazleen, Brill, Gregory, Kohsaka, Shun, Miyata, Hiroaki, Schneeweiss, Sebastian, Gagne, Joshua J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academy of Managed Care Pharmacy 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10397923/
https://www.ncbi.nlm.nih.gov/pubmed/30362915
http://dx.doi.org/10.18553/jmcp.2018.24.11.1146
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author Kumamaru, Hiraku
Lee, Moa P.
Choudhry, Niteesh K.
Dong, Yaa-Hui
Krumme, Alexis A.
Khan, Nazleen
Brill, Gregory
Kohsaka, Shun
Miyata, Hiroaki
Schneeweiss, Sebastian
Gagne, Joshua J.
author_facet Kumamaru, Hiraku
Lee, Moa P.
Choudhry, Niteesh K.
Dong, Yaa-Hui
Krumme, Alexis A.
Khan, Nazleen
Brill, Gregory
Kohsaka, Shun
Miyata, Hiroaki
Schneeweiss, Sebastian
Gagne, Joshua J.
author_sort Kumamaru, Hiraku
collection PubMed
description BACKGROUND: Medication nonadherence is a major public health problem. Identification of patients who are likely to be and not be adherent can guide targeted interventions and improve the design of comparative-effectiveness studies. OBJECTIVE: To evaluate multiple measures of patient previous medication adherence in light of predicting future statin adherence in a large U.S. administrative claims database. METHODS: We identified a cohort of patients newly initiating statins and measured their previous adherence to other chronic preventive medications during a 365-day baseline period, using metrics such as proportion of days covered (PDC), lack of second fills, and number of dispensations. We measured adherence to statins during the year after initiation, defining high adherence as PDC ≥ 80%. We built logistic regression models from different combinations of baseline variables and previous adherence measures to predict high adherence in a random 50% sample and tested their discrimination using concordance statistics (c-statistics) in the other 50%. We also assessed the association between previous adherence and subsequent statin high adherence by fitting a modified Poisson model from all relevant covariates plus previous mean PDC categorized as < 25%, 25%-79%, and ≥ 80%. RESULTS: Among 89,490 statin initiators identified, a prediction model including only demographic variables had a c-statistic of 0.578 (95% CI = 0.573-0.584). A model combining information on patient comorbidities, health care services utilization, and medication use resulted in a c-statistic of 0.665 (95% CI = 0.659-0.670). Models with each of the previous medication adherence measures as the only explanatory variable yielded c-statistics ranging between 0.533 (95% CI = 0.529-0.537) for lack of second fill and 0.666 (95% CI = 0.661-0.671) for maximum PDC. Adding mean PDC to the combined model yielded a c-statistic of 0.695 (95% CI = 0.690-0.700). Given a sensitivity of 75%, the predictor improved the specificity from 47.7% to 53.6%. Patients with previous mean PDC < 25% were half as likely to show high adherence to statins compared with those with previous mean PDC ≥ 80% (risk ratio = 0.49, 95% CI = 0.46-0.50). CONCLUSIONS: Including measures of previous medication adherence yields better prediction of future statin adherence than usual baseline clinical measures that are typically used in claims-based studies.
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spelling pubmed-103979232023-08-04 Using Previous Medication Adherence to Predict Future Adherence Kumamaru, Hiraku Lee, Moa P. Choudhry, Niteesh K. Dong, Yaa-Hui Krumme, Alexis A. Khan, Nazleen Brill, Gregory Kohsaka, Shun Miyata, Hiroaki Schneeweiss, Sebastian Gagne, Joshua J. J Manag Care Spec Pharm Research BACKGROUND: Medication nonadherence is a major public health problem. Identification of patients who are likely to be and not be adherent can guide targeted interventions and improve the design of comparative-effectiveness studies. OBJECTIVE: To evaluate multiple measures of patient previous medication adherence in light of predicting future statin adherence in a large U.S. administrative claims database. METHODS: We identified a cohort of patients newly initiating statins and measured their previous adherence to other chronic preventive medications during a 365-day baseline period, using metrics such as proportion of days covered (PDC), lack of second fills, and number of dispensations. We measured adherence to statins during the year after initiation, defining high adherence as PDC ≥ 80%. We built logistic regression models from different combinations of baseline variables and previous adherence measures to predict high adherence in a random 50% sample and tested their discrimination using concordance statistics (c-statistics) in the other 50%. We also assessed the association between previous adherence and subsequent statin high adherence by fitting a modified Poisson model from all relevant covariates plus previous mean PDC categorized as < 25%, 25%-79%, and ≥ 80%. RESULTS: Among 89,490 statin initiators identified, a prediction model including only demographic variables had a c-statistic of 0.578 (95% CI = 0.573-0.584). A model combining information on patient comorbidities, health care services utilization, and medication use resulted in a c-statistic of 0.665 (95% CI = 0.659-0.670). Models with each of the previous medication adherence measures as the only explanatory variable yielded c-statistics ranging between 0.533 (95% CI = 0.529-0.537) for lack of second fill and 0.666 (95% CI = 0.661-0.671) for maximum PDC. Adding mean PDC to the combined model yielded a c-statistic of 0.695 (95% CI = 0.690-0.700). Given a sensitivity of 75%, the predictor improved the specificity from 47.7% to 53.6%. Patients with previous mean PDC < 25% were half as likely to show high adherence to statins compared with those with previous mean PDC ≥ 80% (risk ratio = 0.49, 95% CI = 0.46-0.50). CONCLUSIONS: Including measures of previous medication adherence yields better prediction of future statin adherence than usual baseline clinical measures that are typically used in claims-based studies. Academy of Managed Care Pharmacy 2018-11 /pmc/articles/PMC10397923/ /pubmed/30362915 http://dx.doi.org/10.18553/jmcp.2018.24.11.1146 Text en Copyright © 2018, Academy of Managed Care Pharmacy. All rights reserved. https://creativecommons.org/licenses/by/4.0/This article is licensed under a Creative Commons Attribution 4.0 International License, which permits unrestricted use and redistribution provided that the original author and source are credited.
spellingShingle Research
Kumamaru, Hiraku
Lee, Moa P.
Choudhry, Niteesh K.
Dong, Yaa-Hui
Krumme, Alexis A.
Khan, Nazleen
Brill, Gregory
Kohsaka, Shun
Miyata, Hiroaki
Schneeweiss, Sebastian
Gagne, Joshua J.
Using Previous Medication Adherence to Predict Future Adherence
title Using Previous Medication Adherence to Predict Future Adherence
title_full Using Previous Medication Adherence to Predict Future Adherence
title_fullStr Using Previous Medication Adherence to Predict Future Adherence
title_full_unstemmed Using Previous Medication Adherence to Predict Future Adherence
title_short Using Previous Medication Adherence to Predict Future Adherence
title_sort using previous medication adherence to predict future adherence
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10397923/
https://www.ncbi.nlm.nih.gov/pubmed/30362915
http://dx.doi.org/10.18553/jmcp.2018.24.11.1146
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