Please use this identifier to cite or link to this item: https://doi.org/10.1371/journal.pone.0021502
Title: Inferring Gene-Phenotype associations via global protein complex network propagation
Authors: Yang P.
Li X. 
Wu M.
Kwoh C.-K.
Ng S.-K.
Keywords: multiprotein complex
algorithm
article
bioinformatics
breast cancer
complex formation
controlled study
diabetes mellitus
disease association
genetic analysis
genetic variability
genotype phenotype correlation
prediction
protein analysis
protein expression
protein protein interaction
random walker on protein complex network
statistical analysis
validation process
biology
diseases
genetics
human
human genome
methodology
phenotype
protein protein interaction
Algorithms
Computational Biology
Disease
Genome, Human
Humans
Phenotype
Protein Interaction Maps
Issue Date: 2011
Citation: Yang P., Li X., Wu M., Kwoh C.-K., Ng S.-K. (2011). Inferring Gene-Phenotype associations via global protein complex network propagation. PLoS ONE 6 (7) : e21502. ScholarBank@NUS Repository. https://doi.org/10.1371/journal.pone.0021502
Rights: Attribution 4.0 International
Abstract: Background: Phenotypically similar diseases have been found to be caused by functionally related genes, suggesting a modular organization of the genetic landscape of human diseases that mirrors the modularity observed in biological interaction networks. Protein complexes, as molecular machines that integrate multiple gene products to perform biological functions, express the underlying modular organization of protein-protein interaction networks. As such, protein complexes can be useful for interrogating the networks of phenome and interactome to elucidate gene-phenotype associations of diseases. Methodology/Principal Findings: We proposed a technique called RWPCN (Random Walker on Protein Complex Network) for predicting and prioritizing disease genes. The basis of RWPCN is a protein complex network constructed using existing human protein complexes and protein interaction network. To prioritize candidate disease genes for the query disease phenotypes, we compute the associations between the protein complexes and the query phenotypes in their respective protein complex and phenotype networks. We tested RWPCN on predicting gene-phenotype associations using leave-one-out cross-validation; our method was observed to outperform existing approaches. We also applied RWPCN to predict novel disease genes for two representative diseases, namely, Breast Cancer and Diabetes. Conclusions/Significance: Guilt-by-association prediction and prioritization of disease genes can be enhanced by fully exploiting the underlying modular organizations of both the disease phenome and the protein interactome. Our RWPCN uses a novel protein complex network as a basis for interrogating the human phenome-interactome network. As the protein complex network can capture the underlying modularity in the biological interaction networks better than simple protein interaction networks, RWPCN was found to be able to detect and prioritize disease genes better than traditional approaches that used only protein-phenotype associations. © 2011 Yang et al.
Source Title: PLoS ONE
URI: https://scholarbank.nus.edu.sg/handle/10635/162039
ISSN: 19326203
DOI: 10.1371/journal.pone.0021502
Rights: Attribution 4.0 International
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