Learning differential module networks across multiple experimental conditions
arXiv:1711.08927 · doi:10.1007/978-1-4939-8882-2_13
Abstract
Module network inference is a statistical method to reconstruct gene regulatory networks, which uses probabilistic graphical models to learn modules of coregulated genes and their upstream regulatory programs from genome-wide gene expression and other omics data. Here we review the basic theory of module network inference, present protocols for common gene regulatory network reconstruction scenarios based on the Lemon-Tree software, and show, using human gene expression data, how the software can also be applied to learn differential module networks across multiple experimental conditions.
Minor revision; 19 pages, 5 figures; chapter for a forthcoming book on gene regulatory network inference