4.7 Article

Integration of Molecular Interactome and Targeted Interaction Analysis to Identify a COPD Disease Network Module

Journal

SCIENTIFIC REPORTS
Volume 8, Issue -, Pages -

Publisher

NATURE PUBLISHING GROUP
DOI: 10.1038/s41598-018-32173-z

Keywords

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Funding

  1. ARO [W911NF-16-1-0391, W911NF-17-1-0491]
  2. NIH/NHLBI [P01 HL13285, R01 HL118455-02, P01 HL105339, R01 HL111759, P01 HL114501, U01 HL089856, CEGS-P50 HG004233-06, R01 HL118455, R37 HL066289, U01 HL089897, R01HL113264]
  3. COPD Foundation
  4. NHLBI [N01HR76101, N01HR76102, N01HR76103, N01HR76104, N01HR76105, N01HR76106, N01HR76107, N01HR76108, N01HR76109, N01HR76110, N01HR76111, N01HR76112, N01HR76113, N01HR76114, N01HR76115, N01HR76116, N01HR76118, N01HR76119]
  5. Centers for Medicare and Medicaid Services
  6. Agency for Healthcare Research and Quality
  7. Cooperative Studies Program/ERIC of the US Department of Veterans Affairs
  8. GlaxoSmithKline [RES11080, NCT00292552, SCO104960]
  9. [NCT00608764]

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The polygenic nature of complex diseases offers potential opportunities to utilize network-based approaches that leverage the comprehensive set of protein-protein interactions (the human interactome) to identify new genes of interest and relevant biological pathways. However, the incompleteness of the current human interactome prevents it from reaching its full potential to extract network-based knowledge from gene discovery efforts, such as genome-wide association studies, for complex diseases like chronic obstructive pulmonary disease (COPD). Here, we provide a framework that integrates the existing human interactome information with experimental protein-protein interaction data for FAM13A, one of the most highly associated genetic loci to COPD, to find a more comprehensive disease network module. We identified an initial disease network neighborhood by applying a random-walk method. Next, we developed a network-based closeness approach (C-AB) that revealed 9 out of 96 FAM13A interacting partners identified by affinity purification assays were significantly close to the initial network neighborhood. Moreover, compared to a similar method (local radiality), the C-AB approach predicts low-degree genes as potential candidates. The candidates identified by the network-based closeness approach were combined with the initial network neighborhood to build a comprehensive disease network module (163 genes) that was enriched with genes differentially expressed between controls and COPD subjects in alveolar macrophages, lung tissue, sputum, blood, and bronchial brushing datasets. Overall, we demonstrate an approach to find disease-related network components using new laboratory data to overcome incompleteness of the current interactome.

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