Veridical Causal Inference using Propensity Score Methods for Comparative Effectiveness Research with Medical Claims.

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES
Ryan D Ross, Xu Shi, Megan E V Caram, Pheobe A Tsao, Paul Lin, Amy Bohnert, Min Zhang, Bhramar Mukherjee
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引用次数: 6

Abstract

Medical insurance claims are becoming increasingly common data sources to answer a variety of questions in biomedical research. Although comprehensive in terms of longitudinal characterization of disease development and progression for a potentially large number of patients, population-based inference using these datasets require thoughtful modifications to sample selection and analytic strategies relative to other types of studies. Along with complex selection bias and missing data issues, claims-based studies are purely observational, which limits effective understanding and characterization of the treatment differences between groups being compared. All these issues contribute to a crisis in reproducibility and replication of comparative findings using medical claims. This paper offers practical guidance to the analytical process, demonstrates methods for estimating causal treatment effects with propensity score methods for several types of outcomes common to such studies, such as binary, count, time to event and longitudinally-varying measures, and also aims to increase transparency and reproducibility of reporting of results from these investigations. We provide an online version of the paper with readily implementable code for the entire analysis pipeline to serve as a guided tutorial for practitioners. The online version can be accessed at https://rydaro.github.io/. The analytic pipeline is illustrated using a sub-cohort of patients with advanced prostate cancer from the large Clinformatics TM Data Mart Database (OptumInsight, Eden Prairie, Minnesota), consisting of 73 million distinct private payer insurees from 2001-2016.

用倾向评分法对医疗索赔有效性比较研究的实证因果推断。
医疗保险索赔正日益成为回答生物医学研究中各种问题的常见数据来源。尽管这些数据集对潜在的大量患者的疾病发展和进展进行了全面的纵向表征,但与其他类型的研究相比,基于人群的推断需要对样本选择和分析策略进行深思熟虑的修改。伴随着复杂的选择偏差和缺失数据问题,基于声明的研究纯粹是观察性的,这限制了对被比较组之间治疗差异的有效理解和表征。所有这些问题都造成了利用医疗索赔对比较结果进行再现和复制的危机。本文为分析过程提供了实用指导,展示了使用倾向评分方法估计因果治疗效果的方法,这些方法用于此类研究常见的几种结果类型,如二进制、计数、事件时间和纵向变化测量,并且还旨在提高这些调查结果报告的透明度和可重复性。我们提供论文的在线版本,其中包含整个分析管道的易于实现的代码,以作为实践者的指导教程。在线版本可访问https://rydaro.github.io/。该分析流程使用来自大型Clinformatics TM数据集市数据库(OptumInsight, Eden Prairie, Minnesota)的晚期前列腺癌患者亚队列进行说明,其中包括2001-2016年7300万不同的私人付款人保险。
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来源期刊
Health Services and Outcomes Research Methodology
Health Services and Outcomes Research Methodology HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.40
自引率
6.70%
发文量
28
期刊介绍: The journal reflects the multidisciplinary nature of the field of health services and outcomes research. It addresses the needs of multiple, interlocking communities, including methodologists in statistics, econometrics, social and behavioral sciences; designers and analysts of health policy and health services research projects; and health care providers and policy makers who need to properly understand and evaluate the results of published research. The journal strives to enhance the level of methodologic rigor in health services and outcomes research and contributes to the development of methodologic standards in the field. In pursuing its main objective, the journal also provides a meeting ground for researchers from a number of traditional disciplines and fosters the development of new quantitative, qualitative, and mixed methods by statisticians, econometricians, health services researchers, and methodologists in other fields. Health Services and Outcomes Research Methodology publishes: Research papers on quantitative, qualitative, and mixed methods; Case Studies describing applications of quantitative and qualitative methodology in health services and outcomes research; Review Articles synthesizing and popularizing methodologic developments; Tutorials; Articles on computational issues and software reviews; Book reviews; and Notices. Special issues will be devoted to papers presented at important workshops and conferences.
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