Propensity-score matching analysis in COVID-19-related studies: a method and quality systematic review

Chunhui Gu, Ruosha Li, Guoqiang Zhang
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Abstract

Objectives: To provide an overall quality assessment of the methods used for COVID-19-related studies using propensity score matching (PSM). Study Design and Setting: A systematic search was conducted in June 2021 on PubMed to identify COVID-19-related studies that use the PSM analysis between 2020 and 2021. Key information about study design and PSM analysis were extracted, such as covariates, matching algorithm, and reporting of estimated treatment effect type. Results: One-hundred-and-fifty (87.72%) cohort studies and thirteen (7.60%) case-control studies were found among 171 identified articles. Forty-five studies (26.32%) provided a reasonable justification for covariates selection. One-hundred-and-three (60.23%) and Sixty-nine (40.35%) studies did not provide the model that was used for calculating the propensity score or did not report the matching algorithm, respectively. Seventy-three (42.69%) studies reported the method(s) for checking covariates balance. Forty studies (23.39%) had a statistician co-author. All the case-control studies (n=13) did not have a statistician co-author (p=0.006) and all studies that clarified the treatment effect estimation (n=6) had a statistician co-author (p<0.001). Conclusions: The reporting quality of the PSM analysis is suboptimal in some COVID-19 epidemiological studies. Some pitfalls may undermine study findings that involve PSM analysis, such as a mismatch between PSM analysis and study design.
COVID-19 相关研究中的倾向分数匹配分析:方法与质量系统综述
目的:使用倾向得分匹配法 (PSM) 对与 COVID-19 相关的研究进行总体质量评估。研究设计与背景:2021 年 6 月在 PubMed 上进行了系统检索,以确定 2020 年至 2021 年期间使用 PSM 分析的 COVID-19 相关研究。提取了有关研究设计和 PSM 分析的关键信息,如协变量、匹配算法和估计治疗效果类型的报告。结果在 171 篇鉴定文章中发现了 150 项队列研究(87.72%)和 13 项病例对照研究(7.60%)。有 44 项研究(26.32%)提供了选择协变量的合理理由。有 103 项研究(60.23%)和 69 项研究(40.35%)没有提供用于计算倾向评分的模型,也没有报告匹配算法。73项(42.69%)研究报告了检查协变量平衡的方法。40项研究(23.39%)有统计学家作为共同作者。所有病例对照研究(13 项)均无统计学家合著(P=0.006),所有澄清治疗效果估计的研究(6 项)均有统计学家合著(P<0.001)。结论在一些COVID-19流行病学研究中,PSM分析的报告质量并不理想。一些误区可能会影响涉及 PSM 分析的研究结果,如 PSM 分析与研究设计不匹配。
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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