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DANUBE: Data-driven meta-ANalysis using UnBiased Empirical distributions—applied to biological pathway analysis

机译:DANUBE:使用无偏经验分布的数据驱动的荟萃分析-适用于生物途径分析

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摘要

Identifying the pathways and mechanisms that are significantly impacted in a given phenotype is challenging. Issues include patient heterogeneity and noise. Many experiments do not have a large enough sample size to achieve the statistical power necessary to identify significantly impacted pathways. Meta-analysis based on combining p-values from individual experiments has been used to improve power. However, all classical meta-analysis approaches work under the assumption that the p-values produced by experiment-level statistical tests follow a uniform distribution under the null hypothesis. Here we show that this assumption does not hold for three mainstream pathway analysis methods, and significant bias is likely to affect many, if not all such meta-analysis studies. We introduce DANUBE, a novel and unbiased approach to combine statistics computed from individual studies. Our framework uses control samples to construct empirical null distributions, from which empirical p-values of individual studies are calculated and combined using either a Central Limit Theorem approach or the additive method. We assess the performance of DANUBE using four different pathway analysis methods. DANUBE is compared with five meta-analysis approaches, as well as with a pathway analysis approach that employs multiple datasets (MetaPath). The 25 approaches have been tested on 16 different datasets related to two human diseases, Alzheimer’s disease (7 datasets) and acute myeloid leukemia (9 datasets). We demonstrate that DANUBE overcomes bias in order to consistently identify relevant pathways. We also show how the framework improves results in more general cases, compared to classical meta-analysis performed with common experiment-level statistical tests such as Wilcoxon and t-test.
机译:鉴定在给定表型中显着影响的途径和机制具有挑战性。问题包括患者异质性和噪音。许多实验没有足够大的样本量来达到确定严重影响的途径所必需的统计能力。基于合并单个实验的p值的荟萃分析已用于提高功效。但是,所有经典的荟萃分析方法都是在以下假设下进行的:实验水平的统计检验产生的p值在零假设下遵循均匀分布。在这里,我们表明,这种假设并不适用于三种主流途径分析方法,并且显着偏差可能会影响许多(如果不是全部)此类荟萃分析研究。我们介绍了DANUBE,这是一种新颖且无偏见的方法,可以结合从各个研究中得出的统计数据。我们的框架使用控制样本构建经验空值分布,从中计算单个研究的经验p值,并使用中央极限定理或加法来组合。我们使用四种不同的途径分析方法评估DANUBE的性能。将DANUBE与五种荟萃分析方法以及采用多个数据集(MetaPath)的途径分析方法进行了比较。这25种方法已在与两种人类疾病(阿尔茨海默氏病(7个数据集)和急性髓性白血病(9个数据集))相关的16个不同数据集上进行了测试。我们证明,DANUBE克服了偏见,以便始终如一地确定相关途径。与通过普通实验水平的统计检验(例如Wilcoxon和t检验)进行的经典荟萃分析相比,我们还展示了在更一般的情况下该框架如何改善结果。

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