Abstract

Human gene networks have proven useful in many aspects of disease research, with numerous network-based strategies developed for generating hypotheses about gene-disease-drug associations. The ability to predict and organize genes most relevant to a specific disease has proven especially important. We previously developed a human functional gene network, HumanNet, by integrating diverse types of omics data using Bayesian statistics framework and demonstrated its ability to retrieve disease genes. Here, we present HumanNet v2 (http://www.inetbio.org/humannet), a database of human gene networks, which was updated by incorporating new data types, extending data sources and improving network inference algorithms. HumanNet now comprises a hierarchy of human gene networks, allowing for more flexible incorporation of network information into studies. HumanNet performs well in ranking disease-linked gene sets with minimal literature-dependent biases. We observe that incorporating model organisms' protein-protein interactions does not markedly improve disease gene predictions, suggesting that many of the disease gene associations are now captured directly in human-derived datasets. With an improved interactive user interface for disease network analysis, we expect HumanNet will be a useful resource for network medicine.

Keywords

Gene regulatory networkInferenceBiologyComputational biologyDiseaseBayesian networkGeneBiological networkRanking (information retrieval)Human diseaseHierarchyComputer scienceMachine learningGeneticsArtificial intelligenceGene expression

MeSH Terms

AlgorithmsDatabasesGeneticDiseaseGene Regulatory NetworksHumansUser-Computer Interface

Affiliated Institutions

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Publication Info

Year
2018
Type
article
Volume
47
Issue
D1
Pages
D573-D580
Citations
215
Access
Closed

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Citation Metrics

215
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10
Influential
183
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Cite This

Sohyun Hwang, Chan Yeong Kim, Sunmo Yang et al. (2018). HumanNet v2: human gene networks for disease research. Nucleic Acids Research , 47 (D1) , D573-D580. https://doi.org/10.1093/nar/gky1126

Identifiers

DOI
10.1093/nar/gky1126
PMID
30418591
PMCID
PMC6323914

Data Quality

Data completeness: 90%