Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:3554-3557. doi: 10.1109/EMBC48229.2022.9871486.
Medication adherence is usually defined as the manner in which a patient takes their medication, in relation to the regimen agreed to with their healthcare provider. Electronic Health Records (EHRs) can be used to estimate adherence in a cost-effective and non-invasive manner across large-scale populations, although there is no universally agreed optimal approach to doing so. We sought to explore patterns of asthma ICS prescription refills in a large EHR dataset, and to evaluate the use of rolling-average based measures towards short-term adherence estimation. Over 1.6 million asthma controllers were prescribed for our cohort of 91,332 individuals, between January 2009 and March 2017. The Continuous Single interval measures of medication Availability (CSA) and Gaps (CSG) were calculated for individual prescriptions, as well as rolling-average adherence measures of the CSA over 3, 5, or 10 past prescription intervals. 16.7% of the study population had only a single prescription during their follow-up (a median duration of 7.1 years). 51% of prescriptions were refilled before (or on the day that) supply was exhausted, and for 19% of prescription refills, the amount of medication dispensed should have lasted at least twice as long as the duration before the next refill was filled. The rolling average measures had statistically strong associations (Spearman |R|>0.7) with the estimate for the subsequent prescription refill. Rolling averages of multiple individual refill-level adherence estimates provide a novel and simple way to crudely smoothen estimates from individual prescription refills, which are strongly influenced by common (and adherent) real-world behaviors, for more meaningful and effective trend detection. Clinical Relevance- This demonstrates a novel methodology for estimating medication adherence which can detect recent changes in trends.
药物依从性通常定义为患者服用药物的方式,与他们的医疗保健提供者商定的治疗方案有关。电子健康记录 (EHR) 可以用于以经济有效的非侵入性方式在大规模人群中估计依从性,尽管没有普遍同意的最佳方法。我们试图在大型 EHR 数据集中探索哮喘 ICS 处方补充模式,并评估使用滚动平均值来估计短期依从性。在 2009 年 1 月至 2017 年 3 月期间,我们为 91332 名患者中的 160 多万名哮喘控制者开了处方。为个别处方计算了药物可用性 (CSA) 和差距 (CSG) 的连续单一间隔测量值,以及 CSA 的滚动平均值依从性测量值,范围为 3、5 或 10 个过去的处方间隔。研究人群中有 16.7%的人在随访期间只有一次处方(中位随访时间为 7.1 年)。51%的处方在供应用尽之前(或当天)就已补充,对于 19%的处方补充,配发的药物量至少应该持续两倍于下一次补充之前的时间。滚动平均值测量值与随后处方补充的估计值具有统计学上的强关联(Spearman |R|>0.7)。多个个体再填充级别的依从性估计的滚动平均值为从个体再填充中粗略平滑估计值提供了一种新颖而简单的方法,这些估计值受到常见(且依从性)现实世界行为的强烈影响,以便更有意义和有效的趋势检测。临床相关性-这证明了一种估计药物依从性的新方法,该方法可以检测趋势的近期变化。