| Literature DB >> 30418591 |
Sohyun Hwang1,2,3, Chan Yeong Kim1, Sunmo Yang1, Eiru Kim4, Traver Hart4, Edward M Marcotte2,5, Insuk Lee1.
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.Entities:
Mesh:
Year: 2019 PMID: 30418591 PMCID: PMC6323914 DOI: 10.1093/nar/gky1126
Source DB: PubMed Journal: Nucleic Acids Res ISSN: 0305-1048 Impact factor: 16.971
Figure 1.(A) Overview of the four level hierarchy of human gene networks in the HumanNet database. (B) Assessment of the six human gene networks at different levels of the hierarchy, based on measuring the precision of identifying gene pairs linked to the same human diseases (defined by DisGeNET or GWAS catalog with timestamp filtration) as a function of the coverage of the database genes.
Figure 2.Assessment of human functional gene networks (A) and PPI networks (B) for genes linked to the same human diseases (defined by GWAS catalog with timestamp filtration) as a function of the coverage of the database genes.
Figure 3.Assessment of predictive ability of networks for unbiased GWAS catalog disease gene sets based on the distribution of (A) the area under receiver operating characteristic curve (AUROC) until 1% of false positive rate (FPR < 0.01) and (B) performance gain scores based on area under precision recall curve (AUPRC). For each box-and-whisker plot, the boundaries of the box represent the first and third quartiles and the whiskers represent the 10th and 90th percentiles. Significance of performance difference from that of HumanNet-XC is indicated by asterisk (*: P < 0.05, **: P < 0.01, Wilcoxon rank sum test).
Figure 4.Screenshots of the HumanNet reports page for the network-based disease gene prediction using HumanNet-XC based on submission of 70 genes for type 2 diabetes mellitus (defined by DISEASES) as guide (query) genes. The upper panel shows the interactive network viewer, visualizing a network of guide genes (green nodes) and their top 100 direct neighbors, which can be interpreted as putative candidate genes (blue nodes). Here, the local subnetwork of the third ranked candidate, IGF2BP2 and its neighbors is highlighted. The retrieved gene IGF2BP2 is already annotated for diabetes mellitus by DISEASES, DOAF and DisGeNET, serving to validate the specific prediction result. The lower panel reports data on the guide genes, including the statistical significance of within group connectivity of guide genes, and the observed network performance for guide gene recovery reported as ROC curves.