Evaluation of a Meta-Analysis of Ambient Air Quality as a Risk Factor for Asthma Exacerbation

W. Kindzierski, Stanley Young, Terry Meyer, J. Dunn
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引用次数: 10

Abstract

Background: An irreproducibility crisis currently afflicts a wide range of scientific disciplines, including public health and biomedical science. A study was undertaken to assess the reliability of a meta-analysis examining whether air quality components (carbon monoxide, particulate matter 10 µm and 2.5 µm (PM10 and PM2.5), sulfur dioxide, nitrogen dioxide and ozone) are risk factors for asthma exacerbation. Methods: The number of statistical tests and models were counted in 17 randomly selected base papers from 87 used in the meta-analysis. Confidence intervals from all 87 base papers were converted to p-values. p-value plots for each air component were constructed to evaluate the effect heterogeneity of the p-values. Results: The number of statistical tests possible in the 17 selected base papers was large, median = 15,360 (interquartile range = 1536–40,960), in comparison to results presented. Each p-value plot showed a two-component mixture with small p-values < 0.001 while other p-values appeared random (p-values > 0.05). Given potentially large numbers of statistical tests conducted in the 17 selected base papers, p-hacking cannot be ruled out as explanations for small p-values. Conclusions: Our interpretation of the meta-analysis is that random p-values indicating null associations are more plausible and the meta-analysis is unlikely to replicate in the absence of bias.
环境空气质量作为哮喘加重危险因素的荟萃分析评价
背景:不可重复性危机目前困扰着广泛的科学学科,包括公共卫生和生物医学科学。进行了一项研究,以评估荟萃分析的可靠性,该分析检查了空气质量成分(一氧化碳、10µm和2.5µm颗粒物(PM10和PM2.5)、二氧化硫、二氧化氮和臭氧)是否是哮喘恶化的危险因素。方法:从87篇基础论文中随机抽取17篇进行meta分析,统计检验和模型数量。所有87篇基础论文的置信区间均转换为p值。构建了每个空气成分的p值图,以评估p值的影响异质性。结果:所选的17篇基础论文中可能进行统计检验的数量较大,中位数= 15,360(四分位数间距= 1536-40,960),与所提供的结果相比。每个p值图均为双组分混合,较小的p值< 0.001,其他p值为随机(p值> 0.05)。考虑到在17篇选定的基础论文中可能进行了大量的统计检验,不能排除p-hacking作为小p值的解释。结论:我们对荟萃分析的解释是,表明零关联的随机p值更合理,并且在没有偏倚的情况下,荟萃分析不太可能重复。
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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