Adherence patterns 1 year after initiation of SGLT2 inhibitors: results of a national cohort study.

IF 2.5 4区 医学 Q2 HEALTH CARE SCIENCES & SERVICES American Journal of Managed Care Pub Date : 2024-08-01 DOI:10.37765/ajmc.2024.89591
Hsiao-Ching Huang, Daniel R Touchette, Mina Tadrous, Glen T Schumock, Saria Awadalla, Todd A Lee
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Abstract

Objectives: Adherence to medications is important for the management of chronic diseases. Although the proportion of days covered (PDC) is a common metric for measuring adherence, it may be insufficient to distinguish relevant differences in medication-taking behavior. Group-based trajectory models (GBTMs) have been used to better represent adherence over time. This study aims to examine adherence patterns 1 year after initiation among users of sodium-glucose cotransporter 2 (SGLT2) inhibitors using GBTMs and evaluate the ability of baseline characteristics to predict adherence trajectory.

Study design: SGLT2 inhibitor new-user cohort study from 2014 to 2018.

Methods: We calculated 12-month PDC and categorized patients with PDC of 80% or greater as adherent. We performed multivariable logistic regression on adherence status controlling for baseline covariates. GBTMs were fit to identify adherence patterns 12 months following SGLT2 inhibitor initiation. Five multinomial logistic regression models including different subsets of predictors were used to predict adherence trajectory group assignment.

Results: In a cohort of 228,363 SGLT2 inhibitor users, the mean PDC was 57%, with 36% of the cohort being adherent. Overall, women and patients with anxiety or depression were less likely to be adherent. Six patterns of SGLT2 inhibitor adherence were identified with GBTMs: 1 fill (PDC = 0.08), early discontinuation (PDC = 0.22), consistently low adherence (PDC = 0.35), moderate adherence (PDC = 0.48), high adherence (PDC = 0.79), and near-perfect adherence (PDC = 0.95). All prediction models showed poor predictive accuracy (0.35).

Conclusions: We found wide variation in adherence patterns among SGLT2 inhibitor users in a national cohort. Predictors from a health care claims database were unable to accurately predict adherence trajectory.

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开始使用 SGLT2 抑制剂 1 年后的依从性模式:一项全国队列研究的结果。
目的:坚持服药对于慢性病的治疗非常重要。虽然覆盖天数比例(PDC)是衡量服药依从性的常用指标,但它可能不足以区分服药行为的相关差异。基于群体的轨迹模型(GBTM)被用来更好地反映随时间变化的依从性。本研究旨在使用 GBTM 检验钠-葡萄糖共转运体 2(SGLT2)抑制剂使用者在开始用药 1 年后的依从性模式,并评估基线特征预测依从性轨迹的能力:2014年至2018年SGLT2抑制剂新用户队列研究:我们计算了 12 个月的 PDC,并将 PDC 达到或超过 80% 的患者归类为依从性患者。我们对依从性状态进行了多变量逻辑回归,并控制了基线协变量。对 GBTM 进行拟合,以确定 SGLT2 抑制剂启用 12 个月后的依从性模式。五个多项式逻辑回归模型包括不同的预测因子子集,用于预测依从性轨迹组的分配:在 228363 名 SGLT2 抑制剂使用者的队列中,平均 PDC 为 57%,其中 36% 的人坚持用药。总体而言,女性和焦虑或抑郁症患者的依从性较低。通过 GBTM 确定了六种 SGLT2 抑制剂依从性模式:1 次填充(PDC = 0.08)、早期停药(PDC = 0.22)、持续低依从性(PDC = 0.35)、中度依从性(PDC = 0.48)、高度依从性(PDC = 0.79)和接近完美依从性(PDC = 0.95)。所有预测模型的预测准确率均较低(0.35):我们发现,在全国队列中,SGLT2 抑制剂使用者的依从性模式差异很大。来自医疗索赔数据库的预测因子无法准确预测依从性轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
American Journal of Managed Care
American Journal of Managed Care 医学-卫生保健
CiteScore
3.60
自引率
0.00%
发文量
177
审稿时长
4-8 weeks
期刊介绍: The American Journal of Managed Care is an independent, peer-reviewed publication dedicated to disseminating clinical information to managed care physicians, clinical decision makers, and other healthcare professionals. Its aim is to stimulate scientific communication in the ever-evolving field of managed care. The American Journal of Managed Care addresses a broad range of issues relevant to clinical decision making in a cost-constrained environment and examines the impact of clinical, management, and policy interventions and programs on healthcare and economic outcomes.
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