4.8 Article

HumanNet v3: an improved database of human gene networks for disease research

Journal

NUCLEIC ACIDS RESEARCH
Volume 50, Issue D1, Pages D632-D639

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/nar/gkab1048

Keywords

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Funding

  1. National Research Foundation of Korea (NRF) - Korean government [2018R1A5A2025079, 2018M3C9A5064709, 2019M3A9B6065192]
  2. Welch Foundation [F-1515]
  3. NIH
  4. Brain Korea 21 (BK21) FOUR program
  5. National Research Foundation of Korea [2019M3A9B6065192, 2018M3C9A5064709] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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Network medicine has been proven useful in dissecting the genetic organization of complex human diseases. HumanNet v3, constructed using expanded data and improved network inference algorithms, outperforms previous versions and other integrated human gene networks in disease gene predictions. This updated network provides a feasible approach for selecting host genes likely associated with COVID-19.
Network medicine has proven useful for dissecting genetic organization of complex human diseases. We have previously published HumanNet, an integrated network of human genes for disease studies. Since the release of the last version of HumanNet, many large-scale protein-protein interaction datasets have accumulated in public depositories. Additionally, the numbers of research papers and functional annotations for gene-phenotype associations have increased significantly. Therefore, updating HumanNet is a timely task for further improvement of network-based research into diseases. Here, we present HumanNet v3 (https://www.inetbio.org/humannet/, covering 99.8% of human protein coding genes) constructed by means of the expanded data with improved network inference algorithms. HumanNet v3 supports a three-tier model: HumanNet-PI (a protein-protein physical interaction network), HumanNet-FN (a functional gene network), and HumanNet-XC (a functional network extended by co-citation). Users can select a suitable tier of HumanNet for their study purpose. We showed that on disease gene predictions, HumanNet v3 outperforms both the previous HumanNet version and other integrated human gene networks. Furthermore, we demonstrated that HumanNet provides a feasible approach for selecting host genes likely to be associated with COVID-19.

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