Chaturvedi Nimisha, de Menezes Renée X, Goeman Jelle J
Epidemiology and Biostatistics, VU University Medical Center, Amsterdam, The Netherlands.
Netherlands Bioinformatics Center, Nijmegen, The Netherlands.
Biom J. 2017 Jan;59(1):145-158. doi: 10.1002/bimj.201500106. Epub 2016 May 25.
In high-dimensional omics studies where multiple molecular profiles are obtained for each set of patients, there is often interest in identifying complex multivariate associations, for example, copy number regulated expression levels in a certain pathway or in a genomic region. To detect such associations, we present a novel approach to test for association between two sets of variables. Our approach generalizes the global test, which tests for association between a group of covariates and a single univariate response, to allow high-dimensional multivariate response. We apply the method to several simulated datasets as well as two publicly available datasets, where we compare the performance of multivariate global test (G2) with univariate global test. The method is implemented in R and will be available as a part of the globaltest package in R.
在高维组学研究中,针对每组患者可获得多种分子谱,人们常常希望识别复杂的多变量关联,例如,特定通路或基因组区域中拷贝数调控的表达水平。为检测此类关联,我们提出了一种用于检验两组变量之间关联的新方法。我们的方法推广了全局检验,该检验用于检验一组协变量与单个单变量响应之间的关联,以允许高维多变量响应。我们将该方法应用于几个模拟数据集以及两个公开可用的数据集,在这些数据集中,我们比较了多变量全局检验(G2)与单变量全局检验的性能。该方法在R语言中实现,并将作为R语言中globaltest包的一部分提供。