Identifying appropriate comparison groups for health system interventions in the COVID-19 era

IF 2.6 Q2 HEALTH POLICY & SERVICES
Samuel T. Savitz, Jason L. Scott, Michael C. Leo, Erin M. Keast, Lucy A. Savitz
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Abstract

Introduction

COVID-19 has created additional challenges for the analysis of non-randomized interventions in health system settings. Our objective is to evaluate these challenges and identify lessons learned from the analysis of a medically tailored meals (MTM) intervention at Kaiser Permanente Northwest (KPNW) that began in April 2020.

Methods

We identified both a historical and concurrent comparison group. The historical comparison group included patients living in the same area as the MTM recipients prior to COVID-19. The concurrent comparison group included patients admitted to contracted non-KPNW hospitals or admitted to a KPNW facility and living outside the service area for the intervention but otherwise eligible. We used two alternative propensity score methods in response to the loss of sample size with exact matching to evaluate the intervention.

Results

We identified 452 patients who received the intervention, 3873 patients in the historical comparison group, and 5333 in the concurrent comparison group. We were able to mostly achieve balance on observable characteristics for the intervention and the two comparison groups.

Conclusions

Lessons learned included: (a) The use of two different comparison groups helped to triangulate results; (b) the meaning of utilization measures changed pre- and post-COVID-19; and (c) that balance on observable characteristics can be achieved, especially when the comparison groups are meaningfully larger than the intervention group. These findings may inform the design for future evaluations of interventions during COVID-19.

Abstract Image

确定COVID-19时代卫生系统干预措施的适当对照组
COVID-19为分析卫生系统环境中的非随机干预措施带来了额外挑战。我们的目标是评估这些挑战,并从对Kaiser Permanente Northwest (KPNW)自2020年4月开始的医疗量身定制膳食(MTM)干预措施的分析中吸取教训。方法选取历史对照组和同期对照组。历史对照组包括在COVID-19之前与MTM接受者居住在同一地区的患者。同期对照组包括在非KPNW签约医院或KPNW机构住院的患者,居住在服务区域之外,但其他方面符合条件。我们使用了两种可选的倾向评分方法来应对样本量的损失,并精确匹配来评估干预措施。结果我们确定了452例接受干预的患者,3873例为历史对照组,5333例为同期对照组。我们基本上能够在干预组和两个对照组的可观察特征上取得平衡。总结的经验教训包括:(a)使用两个不同的比较组有助于三角测量结果;(b)在covid -19之前和之后改变的利用措施的含义;(c)可以实现可观察特征的平衡,特别是当比较组明显大于干预组时。这些发现可为未来COVID-19期间干预措施评估的设计提供信息。
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来源期刊
Learning Health Systems
Learning Health Systems HEALTH POLICY & SERVICES-
CiteScore
5.60
自引率
22.60%
发文量
55
审稿时长
20 weeks
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