Investigating the Time-Varying Nature of Medication Adherence Predictors: An Experimental Approach Using Andersen's Behavioral Model of Health Services Use.

IF 2 Q3 PHARMACOLOGY & PHARMACY
Pharmacy Pub Date : 2025-04-09 DOI:10.3390/pharmacy13020053
Vasco M Pontinha, Julie A Patterson, Dave L Dixon, Norman V Carroll, D'Arcy Mays, Karen B Farris, David A Holdford
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引用次数: 0

Abstract

Medication adherence is a crucial factor for managing chronic conditions, especially in aging adults. Previous studies have identified predictors of medication adherence. However, current methods fail to capture the time-varying nature of how risk factors can influence adherence behavior. This objective of this study was to implement multitrajectory group-based models to compare a time-varying to a time-fixed approach to identifying non-adherence risk factors. The study population comprised 11,068 Medicare beneficiaries aged 65 and older taking select medications for hypertension, high blood cholesterol, and oral diabetes medications, between 2008 and 2016. Time-fixed predictors (e.g., sex, education) were examined using generalized multinomial logistic regression, while time-varying predictors were explored through multitrajectory group-based modeling. Several predisposing, enabling, and need characteristics were identified as risk factors for following at least one non-adherence trajectory. Time-varying predictors displayed an alternative representation of those risk factors, especially depression symptoms. This study highlights the dynamic nature of medication adherence predictors and the utility of multitrajectory modeling. Findings suggest that targeted interventions can be developed by addressing the key time-varying factors affecting adherence.

调查药物依从性预测因子的时变性质:使用Andersen的卫生服务使用行为模型的实验方法。
药物依从性是治疗慢性疾病的关键因素,特别是在老年人中。先前的研究已经确定了药物依从性的预测因素。然而,目前的方法未能捕捉到风险因素如何影响依从性行为的时变性质。本研究的目的是实施基于多轨迹组的模型,以比较时变和固定的方法来识别不依从性风险因素。研究人群包括11068名65岁及以上的医疗保险受益人,他们在2008年至2016年期间服用高血压、高血胆固醇和口服糖尿病药物。时间固定的预测因子(如性别、教育)使用广义多项逻辑回归进行检验,而时变的预测因子则通过基于多轨迹的群体模型进行探索。几个易感因素,使能因素和需求特征被确定为遵循至少一个不依从轨迹的危险因素。时变预测因子显示了这些风险因素的另一种表现,尤其是抑郁症状。本研究强调了药物依从性预测因子的动态性质和多轨迹建模的效用。研究结果表明,可以通过解决影响依从性的关键时变因素来制定有针对性的干预措施。
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来源期刊
Pharmacy
Pharmacy PHARMACOLOGY & PHARMACY-
自引率
9.10%
发文量
141
审稿时长
11 weeks
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