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The Detection of Metabolite-Mediated Gene Module Co-Expression Using Multivariate Linear Models
Authors:Trishanta Padayachee  Tatsiana Khamiakova  Ziv Shkedy  Markus Perola  Perttu Salo  Tomasz Burzykowski
Affiliation:1. Interuniversity Institute for Biostatistics and Statistical Bioinformatics (I-Biostat), Hasselt University, Diepenbeek, Belgium.; 2. Unit of Public Health Genomics, National Institute for Health and Welfare, Helsinki, Finland.; National Institute of Genomic Medicine, MEXICO,
Abstract:Investigating whether metabolites regulate the co-expression of a predefined gene module is one of the relevant questions posed in the integrative analysis of metabolomic and transcriptomic data. This article concerns the integrative analysis of the two high-dimensional datasets by means of multivariate models and statistical tests for the dependence between metabolites and the co-expression of a gene module. The general linear model (GLM) for correlated data that we propose models the dependence between adjusted gene expression values through a block-diagonal variance-covariance structure formed by metabolic-subset specific general variance-covariance blocks. Performance of statistical tests for the inference of conditional co-expression are evaluated through a simulation study. The proposed methodology is applied to the gene expression data of the previously characterized lipid-leukocyte module. Our results show that the GLM approach improves on a previous approach by being less prone to the detection of spurious conditional co-expression.
Keywords:
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