Inferring Disease and Gene Set Associations with Rank Coherence in Networks
TaeHyun Hwang, Wei Zhang, Maoqiang Xie, Rui Kuang

TL;DR
This paper introduces rcNet, a network-based computational method that effectively predicts associations between gene sets and disease phenotypes, outperforming traditional methods especially with poorly annotated genes.
Contribution
The paper presents a novel rank coherence framework and efficient algorithms for gene-disease association prediction, addressing limitations of existing enrichment analyses.
Findings
rcNet achieved superior ranking performance in cross-validation.
The algorithms successfully identified target diseases for novel candidate genes.
The method outperformed baseline approaches in multiple case studies.
Abstract
A computational challenge to validate the candidate disease genes identified in a high-throughput genomic study is to elucidate the associations between the set of candidate genes and disease phenotypes. The conventional gene set enrichment analysis often fails to reveal associations between disease phenotypes and the gene sets with a short list of poorly annotated genes, because the existing annotations of disease causative genes are incomplete. We propose a network-based computational approach called rcNet to discover the associations between gene sets and disease phenotypes. Assuming coherent associations between the genes ranked by their relevance to the query gene set, and the disease phenotypes ranked by their relevance to the hidden target disease phenotypes of the query gene set, we formulate a learning framework maximizing the rank coherence with respect to the known disease…
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Taxonomy
TopicsGene expression and cancer classification · Bioinformatics and Genomic Networks · Genomics and Phylogenetic Studies
