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首页> 外文期刊>Methods: A Companion to Methods in Enzymology >POST: A framework for set-based association analysis in high-dimensional data
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POST: A framework for set-based association analysis in high-dimensional data

机译:帖子:高维数据中基于集基基关联分析的框架

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摘要

Evaluating the differential expression of a set of genes belonging to a common biological process or ontology has proven to be a very useful tool for biological discovery. However, existing gene-set association methods are limited to applications that evaluate differential expression acrossk?2treatment groups or biological categories. This limitation precludes researchers from most effectively evaluating the association with other phenotypes that may be more clinically meaningful, such as quantitative variables or censored survival time variables. Projection onto the Orthogonal Space Testing (POST) is proposed as a general procedure that can robustly evaluate the association of a gene-set with several different types of phenotypic data (categorical, ordinal, continuous, or censored). For each gene-set, POST transforms the gene profiles into a set of eigenvectors and then uses statistical modeling to compute a set of z-statistics that measure the association of each eigenvector with the phenotype. The overall gene-set statistic is the sum of squared z-statistics weighted by the corresponding eigenvalues. Finally, bootstrapping is used to compute ap-value. POST may evaluate associations with or without adjustment for covariates. In simulation studies, it is shown that the performance of POST in evaluating the association with a categorical phenotype is similar to or exceeds that of existing methods. In evaluating the association of 875 biological processes with the time to relapse of pediatric acute myeloid leukemia, POST identified the well-known oncogenic WNT signaling pathway as its top hit. These results indicate that POST can be a very useful tool for evaluating the association of a gene-set with a variety of different phenotypes. We have developed an R package named POST which is freely available in Bioconductor.
机译:评估属于常见生物过程或本体论的一组基因的差异表达已被证明是生物发现的一个非常有用的工具。然而,现有的基因集关联方法仅限于评估差异表达的应用程序横跨困难?2处理群体或生物类别。这种限制禁止研究人员从最有效地评估与可能更临床上有意义的表型的关联,例如定量变量或缩短的存活时间变量。建议投影在正交空间测试(POST)中作为一种通用程序,可以鲁布利地评估基因组的基因组关联与几种不同类型的表型数据(分类,序数,连续或被审查)。对于每个基因集,后术后将基因谱转换成一组特征向量,然后使用统计建模来计算一组Z统计,测量每个特征向量与表型的关联。整体基因设定统计是由相应的特征值加权的平方Z统计之和。最后,使用Bootstrapp用于计算AP值。邮政可能会评估有或没有协调会的关联。在仿真研究中,表明帖子的性能与分类表型评估相关性类似于或超过现有方法的性能。在评估875个生物过程的关联与分泌儿科急性髓性白血病的时间,柱鉴定了众所周知的致癌Wnt信号通路作为其顶部击中。这些结果表明,柱子可以是评估与各种不同表型的基因组关联的非常有用的工具。我们开发了一个名为POST的R封装,可在Biocomoder中自由使用。

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