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Gene set analysis for self-contained tests: complex null and specific alternative hypotheses

机译:独立测试的基因集分析:复杂的无效假设和特定的替代假设

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摘要

>Motivation: The analysis of differentially expressed gene sets became a routine in the analyses of gene expression data. There is a multitude of tests available, ranging from aggregation tests that summarize gene-level statistics for a gene set to true multivariate tests, accounting for intergene correlations. Most of them detect complex departures from the null hypothesis but when the null hypothesis is rejected, the specific alternative leading to the rejection is not easily identifiable.>Results: In this article we compare the power and Type I error rates of minimum-spanning tree (MST)-based non-parametric multivariate tests with several multivariate and aggregation tests, which are frequently used for pathway analyses. In our simulation study, we demonstrate that MST-based tests have power that is for many settings comparable with the power of conventional approaches, but outperform them in specific regions of the parameter space corresponding to biologically relevant configurations. Further, we find for simulated and for gene expression data that MST-based tests discriminate well against shift and scale alternatives. As a general result, we suggest a two-step practical analysis strategy that may increase the interpretability of experimental data: first, apply the most powerful multivariate test to find the subset of pathways for which the null hypothesis is rejected and second, apply MST-based tests to these pathways to select those that support specific alternative hypotheses.>Contact: or >Supplementary information: are available at Bioinformatics online.
机译:>动机:差异表达基因集的分析已成为分析基因表达数据的常规方法。有多种测试可用,从汇总基因集基因水平统计的聚合测试到真正的多变量测试(考虑基因间相关性)。他们中的大多数人都检测到了来自原假设的复杂偏离,但是当原假设被拒绝时,导致拒绝的特定替代方案不易识别。>结果:在本文中,我们比较了功效和I类错误基于最小生成树(MST)的非参数多变量检验的比率,具有多个多变量检验和聚集检验,通常用于路径分析。在我们的模拟研究中,我们证明了基于MST的测试在许多设置下的功能都可以与传统方法的功能相媲美,但是在与生物学相关配置相对应的参数空间的特定区域中,它们的性能优于其他方法。此外,我们发现对于基于模拟和基因表达的数据,基于MST的测试可以很好地区分移位和规模替代方案。总的来说,我们建议采取两步实用的分析策略,以提高实验数据的可解释性:首先,应用功能最强大的多元检验来找到无效假设被拒绝的途径子集;其次,应用MST-基于这些路径的测试,以选择支持特定替代假设的路径。>联系方式:或>补充信息:可从在线生物信息学获得。

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