Construction and Functional Analysis of Human Genetic Interaction Networks with Genome-wide Association Data
Gang Fang, Wen Wang, Vanja Paunic, Benjamin Oately, Majda Haznadar,, Michael Steinbach, Brian Van Ness, Chad L. Myers, Vipin Kumar

TL;DR
This paper introduces a framework for constructing and analyzing human genetic interaction networks from genome-wide SNP data, revealing functional insights and compensatory gene modules related to complex diseases.
Contribution
The study presents a novel method for inferring human genetic interaction networks from SNP data, integrating linkage disequilibrium and functional mapping, which was not previously available.
Findings
Constructed genetic interaction networks supported by biological databases.
Networks can identify compensatory gene modules associated with diseases.
Some properties of genetic networks in humans resemble those in model organisms.
Abstract
Genetic interaction measures how different genes collectively contribute to a phenotype, and can reveal functional compensation and buffering between pathways under genetic perturbations. Recently, genome-wide screening for genetic interactions has revealed genetic interaction networks that provide novel insights either when analyzed by themselves or when integrated with other functional genomic datasets. For higher eukaryotes such as human, the above reverse-genetics approaches are not straightforward since the phenotypes of interest for higher eukaryotes are difficult to study in a cell based assay. We propose a general framework for constructing and analyzing human genetic interaction networks from genome-wide single nucleotide polymorphism (SNP) data used for case-control studies on complex diseases. Specifically, the approach contains three major steps: (1) estimating SNP-SNP…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Gene expression and cancer classification · Genetic Associations and Epidemiology
