April 20, 2009
Book Chapter

Inferring molecular interactions pathways from eQTL data

Abstract

Analysis of expression quantitative trait loci (eQTL) helps elucidate the connection between genotype, gene expression levels, and phenotype. However, standard statistical genetics can only attribute changes in expression levels to loci on the genome, not specific genes. Each locus can contain many genes, making it very difficult to discover which gene is controlling the expression levels of other genes. Furthermore, it is even more difficult to find a pathway of molecular interactions responsible for controlling the expression levels. Here we describe a series of techniques for finding explanatory pathways by exploring graphs of molecular interactions. We show several simple methods can find complete pathways the explain the mechanism of differential expression in eQTL data.

Revised: June 12, 2009 | Published: April 20, 2009

Citation

Rashid I., I. Rashid, J.E. McDermott, and R. Samudrala. 2009. Inferring molecular interactions pathways from eQTL data. In Computational Systems Biology, Methods in Molecular Biology. 211-224. Totowa, New Jersey:Humana Press. PNNL-SA-56402.