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Exact meta-analysis approach for discrete data and its application to 2 × 2 tables with rare events

机译:离散数据的精确荟萃分析方法及其在2×2罕见事件表中的应用

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摘要

This paper proposes a general exact meta-analysis approach for synthesizing inferences from multiple studies of discrete data. The approach combines the p-value functions (also known as significance functions) associated with the exact tests from individual studies. It encompasses a broad class of exact meta-analysis methods, as it permits broad choices for the combining elements, such as tests used in individual studies, and any parameter of interest. The approach yields statements that explicitly account for the impact of individual studies on the overall inference, in terms of efficiency/power and the type I error rate. Those statements also give rises to empirical methods for further enhancing the combined inference. Although the proposed approach is for general discrete settings, for convenience, it is illustrated throughout using the setting of meta-analysis of multiple 2 × 2 tables. In the context of rare events data, such as observing few, zero or zero total (i.e., zero events in both arms) outcomes in binomial trials or 2 × 2 tables, most existing meta-analysis methods rely on the large-sample approximations which may yield invalid inference. The commonly used corrections to zero outcomes in rare events data, aiming to improve numerical performance can also incur undesirable consequences. The proposed approach applies readily to any rare event setting, including even the zero total event studies without any artificial correction. While debates continue on whether or how zero total event studies should be incorporated in meta-analysis, the proposed approach has the advantage of automatically including those studies and thus making use of all available data. Through numerical studies in rare events settings, the proposed exact approach is shown to be efficient and, generally, outperform commonly used meta-analysis methods, including Mental-Haenszel and Peto methods.
机译:本文提出了一种通用的精确元分析方法,用于综合来自对离散数据的多次研究得出的推论。该方法将p值函数(也称为显着性函数)与来自各个研究的精确测试相关联。它涵盖了广泛的一类精确的荟萃分析方法,因为它允许对组合元素进行广泛的选择,例如用于个别研究的测试以及任何感兴趣的参数。该方法产生的语句明确地考虑了效率/功效和I类错误率对单个研究对总体推断的影响。这些陈述还提出了进一步增强组合推理的经验方法。尽管建议的方法是针对常规离散设置的,但为方便起见,在使用多个2×2表的元分析设置的过程中对它进行了说明。在稀有事件数据的背景下,例如在二项式试验或2×2表中观察到很少,零或零的总数(即两臂零事件)结果,大多数现有的荟萃分析方法都依赖于大样本近似可能会产生无效的推断。旨在改善数值性能的稀有事件数据中常用的零结果校正也可能导致不良后果。所提出的方法很容易适用于任何罕见事件设置,甚至包括零总事件研究,而无需任何人工校正。尽管关于是否应将零总事件研究纳入或如何纳入荟萃分析的争论仍在继续,但所提出的方法的优势是可以自动包括这些研究,从而利用所有可用数据。通过在稀有事件环境中进行数值研究,所提出的精确方法被证明是有效的,并且通常表现优于包括Mental-Haenszel和Peto方法在内的常用荟萃分析方法。

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