Cortaredona Sébastien, Pambrun Elodie, Verdoux Hélène, Verger Pierre
INSERM, UMR912 (SESSTIM), Marseille, France.
Aix Marseille Université, UMR_S912, IRD, Marseille, France.
Pharmacoepidemiol Drug Saf. 2017 Apr;26(4):402-411. doi: 10.1002/pds.4146. Epub 2016 Dec 2.
Health status is sometimes quantified by chronic condition (CC) scores calculated from medical administrative data. We sought to modify two pharmacy-based comorbidity measures and compare their performance in predicting hospitalization and/or death. The reference was a diagnosis-based score.
One of the two measures applied an updated approach linking specific ATC codes of dispensed drugs to 22 CCs; the other used a list of 37 drug categories, without linking them to specific CCs. Using logistic regressions that took repeated measures into account and hospitalization and/or death the following year as the outcome, we assigned weights to each CC/drug category. Comorbidity scores were calculated as the weighted sum of the 22 CCs/37 drug categories. We compared the performance of both measures in predicting hospitalization and/or death with that of a diagnosis-based score based on 30 groups of long-term illnesses (LTIs), a status granted in France to exempt beneficiaries with chronic diseases from copayments. We assessed the predictive performance of the scores with the quasi-likelihood under the independence model criterion (QIC), the c statistic and the Brier score.
The two pharmacy-based scores performed better than the LTI score, with lower QIC and Brier scores and higher c statistics. Their predictive performance was very similar.
While there is no clear consensus or recommendations about the optimal choice of comorbidity measure, both pharmacy-based scores may be useful for limiting confounding in observational studies among general populations of adults from health insurance databases. Copyright © 2016 John Wiley & Sons, Ltd.
健康状况有时通过根据医疗管理数据计算得出的慢性病(CC)评分来量化。我们试图修改两种基于药房的合并症测量方法,并比较它们在预测住院和/或死亡方面的表现。参考标准是基于诊断的评分。
两种测量方法中的一种采用了一种更新的方法,将所配药物的特定解剖学治疗学分类代码(ATC)与22种慢性病联系起来;另一种使用了37种药物类别的列表,并未将它们与特定的慢性病联系起来。使用考虑了重复测量的逻辑回归,并将次年的住院和/或死亡作为结果,我们为每个慢性病/药物类别赋予权重。合并症评分计算为22种慢性病/37种药物类别的加权总和。我们将这两种测量方法在预测住院和/或死亡方面的表现与基于30组长期疾病(LTI)的基于诊断的评分的表现进行了比较,在法国,长期疾病是一种授予慢性病患者免除自付费用的状态。我们使用独立模型准则下的拟似然度(QIC)、c统计量和Brier评分评估了评分的预测性能。
两种基于药房的评分比长期疾病评分表现更好,具有更低的QIC和Brier评分以及更高的c统计量。它们的预测性能非常相似。
虽然关于合并症测量的最佳选择没有明确的共识或建议,但两种基于药房的评分可能有助于在来自健康保险数据库的成年普通人群的观察性研究中限制混杂因素。版权所有© 2016约翰·威利父子有限公司。