A sparse conditional Gaussian graphical model for analysis of genetical genomics data
Jianxin Yin, Hongzhe Li

TL;DR
This paper introduces a sparse conditional Gaussian graphical model that accounts for genetic effects in gene expression data, enabling more accurate and interpretable gene network analysis in genetical genomics studies.
Contribution
The paper proposes a novel sparse conditional Gaussian graphical model with an efficient algorithm, improving the analysis of gene dependencies by adjusting for genetic effects.
Findings
More interpretable gene networks obtained
Enhanced accuracy in gene dependency estimation
Effective handling of genetic effects in modeling
Abstract
Genetical genomics experiments have now been routinely conducted to measure both the genetic markers and gene expression data on the same subjects. The gene expression levels are often treated as quantitative traits and are subject to standard genetic analysis in order to identify the gene expression quantitative loci (eQTL). However, the genetic architecture for many gene expressions may be complex, and poorly estimated genetic architecture may compromise the inferences of the dependency structures of the genes at the transcriptional level. In this paper we introduce a sparse conditional Gaussian graphical model for studying the conditional independent relationships among a set of gene expressions adjusting for possible genetic effects where the gene expressions are modeled with seemingly unrelated regressions. We present an efficient coordinate descent algorithm to obtain the…
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