对大约 60,000 项稀疏数据荟萃分析的重新分析表明,使用适当的方法进行汇总非常重要。

IF 5 2区 生物学 Q1 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Maxi Schulz, Malte Kramer, Oliver Kuss, Tim Mathes
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引用次数: 0

摘要

在稀疏数据荟萃分析(试验数量少或事件为零)中,传统方法可能会扭曲结果。虽然近年来出现了性能更好的单阶段方法,但在实践中的应用仍然有限。本研究通过重新分析科克伦系统综述数据库中的荟萃分析,在零事件试验和少量试验的情况下,检验了使用传统方法与单阶段模型相比所产生的影响。对于每种情况,我们都计算了单阶段方法(广义线性混合模型[GLMM]、贝塔-二叉模型[BBM]、使用弱信息先验的贝叶斯二叉-正态分层模型[BNHM-WIP]),并将其与传统方法(零事件试验的Poto-Odds-ratio[PETO]、DerSimonian-Laird方法[DL];少数试验的DL、Paule-Mandel[PM]、限制最大似然法[REML])进行了比较。虽然所有方法都显示出相似的治疗效果估计值,但在统计精度方面出现了很大的差异。在零事件情况下,传统方法的置信区间(CI)通常小于单阶段模型。在试验次数较少的情况下,BBM 的置信区间平均最宽,尽管 PM 和 REML 的置信区间相对较宽,但与 PM 和 REML 相比,其显著性经常发生变化。我们的结果表明,与模拟结果和零事件试验荟萃分析指南一致,单阶段模型更可取。既可以根据数据情况选择最佳模型,也可以使用一种适用于各种情况的方法。在试验次数较少的情况下,如果希望得到保守的结果,使用 BBM 和 PM 或 REML 进行敏感性分析似乎是合理的。总之,我们的结果鼓励人们谨慎选择方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A re-analysis of about 60,000 sparse data meta-analyses suggests that using an adequate method for pooling matters

A re-analysis of about 60,000 sparse data meta-analyses suggests that using an adequate method for pooling matters

In sparse data meta-analyses (with few trials or zero events), conventional methods may distort results. Although better-performing one-stage methods have become available in recent years, their implementation remains limited in practice. This study examines the impact of using conventional methods compared to one-stage models by re-analysing meta-analyses from the Cochrane Database of Systematic Reviews in scenarios with zero event trials and few trials. For each scenario, we computed one-stage methods (Generalised linear mixed model [GLMM], Beta-binomial model [BBM], Bayesian binomial-normal hierarchical model using a weakly informative prior [BNHM-WIP]) and compared them with conventional methods (Peto-Odds-ratio [PETO], DerSimonian-Laird method [DL] for zero event trials; DL, Paule-Mandel [PM], Restricted maximum likelihood [REML] method for few trials). While all methods showed similar treatment effect estimates, substantial variability in statistical precision emerged. Conventional methods generally resulted in smaller confidence intervals (CIs) compared to one-stage models in the zero event situation. In the few trials scenario, the CI lengths were widest for the BBM on average and significance often changed compared to the PM and REML, despite the relatively wide CIs of the latter. In agreement with simulations and guidelines for meta-analyses with zero event trials, our results suggest that one-stage models are preferable. The best model can be either selected based on the data situation or, using a method that can be used in various situations. In the few trial situation, using BBM and additionally PM or REML for sensitivity analyses appears reasonable when conservative results are desired. Overall, our results encourage careful method selection.

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来源期刊
Research Synthesis Methods
Research Synthesis Methods MATHEMATICAL & COMPUTATIONAL BIOLOGYMULTID-MULTIDISCIPLINARY SCIENCES
CiteScore
16.90
自引率
3.10%
发文量
75
期刊介绍: Research Synthesis Methods is a reputable, peer-reviewed journal that focuses on the development and dissemination of methods for conducting systematic research synthesis. Our aim is to advance the knowledge and application of research synthesis methods across various disciplines. Our journal provides a platform for the exchange of ideas and knowledge related to designing, conducting, analyzing, interpreting, reporting, and applying research synthesis. While research synthesis is commonly practiced in the health and social sciences, our journal also welcomes contributions from other fields to enrich the methodologies employed in research synthesis across scientific disciplines. By bridging different disciplines, we aim to foster collaboration and cross-fertilization of ideas, ultimately enhancing the quality and effectiveness of research synthesis methods. Whether you are a researcher, practitioner, or stakeholder involved in research synthesis, our journal strives to offer valuable insights and practical guidance for your work.
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