论文标题

荟萃分析参数计算:一种促进实验条件穿越的Python方法

Meta-analysis parameters computation: a Python approach to facilitate the crossing of experimental conditions

论文作者

Quijoux, Flavien, Truong, Charles, Vienne-Jumeau, Aliénor, Oudre, Laurent, BERTIN-HUGAULT, François, ZAWIEJA, Philippe, LEFEVRE, Marie, VIDAL, Pierre-Paul, RICARD, Damien

论文摘要

荟萃分析是一种数据聚合方法,该方法根据几项研究的结果建立了总体和客观的证据水平。有必要在系统文献综述收集的数据中保持高水平的同质性。但是,目前的工具不允许对实验条件进行交叉引用,这可以解释研究之间观察到的异质性。本文旨在提出一项Python编程代码,该编程代码包含多个功能,允许对许多研究的数据进行分析和快速可视化,同时允许通过实验条件对结果进行交叉检查。

Meta-analysis is a data aggregation method that establishes an overall and objective level of evidence based on the results of several studies. It is necessary to maintain a high level of homogeneity in the aggregation of data collected from a systematic literature review. However, the current tools do not allow a cross-referencing of the experimental conditions that could explain the heterogeneity observed between studies. This article aims at proposing a Python programming code containing several functions allowing the analysis and rapid visualization of data from many studies, while allowing the possibility of cross-checking the results by experimental condition.

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