Research School of Population Health, ANU College of Health and Medicine, Australian National University, Australian Capital Territory, Australia.
Department of Population Medicine, College of Medicine, Qatar University, Doha, Qatar.
J Clin Epidemiol. 2020 Feb;118:86-92. doi: 10.1016/j.jclinepi.2019.11.011. Epub 2019 Nov 16.
The aim of the study was to investigate the effect of number of studies in a meta-analysis on the detection of publication bias using P value-driven methods.
The proportion of meta-analyses detected by Egger's, Harbord's, Peters', and Begg's tests to have asymmetry suggestive of publication bias were examined in 5,014 meta-analyses from Cochrane reviews. P values were also assessed in meta-analyses with varying number of studies, whereas symmetry was held constant. A simulation study was conducted to investigate if the above tests underestimate or overestimate the presence of publication bias.
The proportion of meta-analyses detected as asymmetrical via Egger's, Harbord's, Peters', and Begg's tests decreased by 42.6%, 41.1%, 29.3%, and 28.3%, respectively, when the median number of studies in the meta-analysis decreased from 87 to 14. P values decreased as the number of studies increased in the meta-analysis, despite the level of symmetry remaining constant. The simulation study confirmed that when publication bias is present, P value tests underestimate the presence of publication bias, particularly when study numbers are small.
P value-based tests used for the detection of publication bias-related asymmetry in meta-analysis require careful examination, as they underestimate asymmetry. Alternative methods not dependent on the number of studies are preferable.
本研究旨在探讨使用 P 值驱动方法,分析纳入元分析的研究数量对发表偏倚检测的影响。
在 Cochrane 综述的 5014 项元分析中,检查 Egger 检验、Harbord 检验、Peters 检验和 Begg 检验检测到的提示存在发表偏倚的不对称性的元分析比例。还评估了具有不同数量研究的元分析中的 P 值,同时保持对称性不变。进行了一项模拟研究,以调查上述检验是否低估或高估了发表偏倚的存在。
当元分析中的中位数研究数量从 87 降至 14 时,Egger 检验、Harbord 检验、Peters 检验和 Begg 检验检测到的不对称性的元分析比例分别下降了 42.6%、41.1%、29.3%和 28.3%。尽管对称性保持不变,但随着元分析中研究数量的增加,P 值降低。模拟研究证实,当存在发表偏倚时,P 值检验会低估发表偏倚的存在,尤其是在研究数量较少时。
用于检测元分析中与发表偏倚相关的不对称性的基于 P 值的检验需要仔细检查,因为它们低估了不对称性。首选不依赖研究数量的替代方法。