The Impact of Study Size on COVID-19 Treatment Outcomes: A Meta-Epidemiological Study Comparing Large and Small Randomized Controlled Trials: A Systematic Review and Meta-Analyses.
Dong Hyun Kim, Soojin Lim, Michael Eisenhut, Andreas Kronbichler, Eunyoung Kim, Min Seo Kim, Stefania I Papatheodorou, Justin Stebbing, Yonghong Peng, Sarah Soyeon Oh, Jae Il Shin, Lee Smith
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引用次数: 0
Abstract
Small randomized controlled trials (RCTs) in COVID-19 meta-analyses have been associated with more favourable treatment effects and reduced result stability. This study assessed how trial size impacts effect estimates, statistical stability, and risk of bias. Following PRISMA guidelines, we identified meta-analyses of COVID-19 treatments included in WHO, NIH, and the LIVING Project. Trials were classified by log-scale sample size, and separate pooled meta-analyses were conducted for large-only, small-only, and combined trials. Comparative metrics included the Ratio of Odds Ratios (ROR), Kappa statistics, Fragility Index (FI), Reverse Fragility Index (RFI), and Cochrane Risk of Bias assessments. Sensitivity analyses applied alternative size thresholds (≥ 1000 participants and median-based cutoffs) and stratified results by treatment and outcome type. Across 25 meta-analyses including 221 RCTs (46 large, 175 small), small trials produced more extreme estimates in 19 analyses and wider confidence intervals in 23. The pooled ROR was 0.85 (95% CI: 0.76-0.95; P = 0.004), decreasing to 0.81 (95% CI: 0.68-0.95; P = 0.011) when limited to small trials published before the first large trial. RORs remained below 1 across treatment and outcome types. Agreement between small and large trials was minimal, while large trials showed substantial agreement with overall estimates. Stability and bias profiles favoured large trials (FI: 14.0 vs. 4.0; RFI: 10.0 vs. 5.0). In conclusion, small RCTs tend to overestimate treatment effects and yield less precise, less stable results. Meta-analyses should prioritise large, high-quality trials and interpret small-study findings with caution, particularly in rapidly evolving research contexts.
在COVID-19荟萃分析中,小型随机对照试验(rct)与更有利的治疗效果和降低的结果稳定性相关。本研究评估了试验规模如何影响效应估计、统计稳定性和偏倚风险。根据PRISMA指南,我们确定了WHO、NIH和LIVING项目中包含的COVID-19治疗的荟萃分析。试验按对数尺度样本量分类,分别对大型、小型和联合试验进行汇总荟萃分析。比较指标包括优势比(ROR)、Kappa统计、脆弱性指数(FI)、反向脆弱性指数(RFI)和Cochrane偏倚风险评估。敏感性分析采用了可选的规模阈值(≥1000名参与者和基于中位数的截止值),并根据治疗和结局类型对结果进行分层。在包括221项随机对照试验(46项大型试验,175项小型试验)在内的25项荟萃分析中,19项小型试验产生了更极端的估计,23项试验产生了更大的置信区间。合并ROR为0.85 (95% CI: 0.76-0.95; P = 0.004),当限于首次大型试验之前发表的小型试验时,ROR降至0.81 (95% CI: 0.68-0.95; P = 0.011)。不同治疗方法和结果类型的RORs均低于1。小型和大型试验之间的一致性很小,而大型试验显示与总体估计基本一致。稳定性和偏倚概况倾向于大型试验(FI: 14.0 vs. 4.0; RFI: 10.0 vs. 5.0)。总之,小型随机对照试验倾向于高估治疗效果,得出的结果不精确、不稳定。荟萃分析应优先考虑大型、高质量的试验,并谨慎解释小型研究结果,特别是在快速发展的研究背景下。
期刊介绍:
Reviews in Medical Virology aims to provide articles reviewing conceptual or technological advances in diverse areas of virology. The journal covers topics such as molecular biology, cell biology, replication, pathogenesis, immunology, immunization, epidemiology, diagnosis, treatment of viruses of medical importance, and COVID-19 research. The journal has an Impact Factor of 6.989 for the year 2020.
The readership of the journal includes clinicians, virologists, medical microbiologists, molecular biologists, infectious disease specialists, and immunologists. Reviews in Medical Virology is indexed and abstracted in databases such as CABI, Abstracts in Anthropology, ProQuest, Embase, MEDLINE/PubMed, ProQuest Central K-494, SCOPUS, and Web of Science et,al.