4.7 Article Proceedings Paper

Higher-order molecular organization as a source of biological function

期刊

BIOINFORMATICS
卷 34, 期 17, 页码 944-953

出版社

OXFORD UNIV PRESS
DOI: 10.1093/bioinformatics/bty570

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资金

  1. UCL Computer Science departmental funds
  2. European Research Council (ERC) [278212, 770827]
  3. Serbian Ministry of Education and Science [III44006]
  4. Slovenian Research Agency [J1-8155]
  5. Medical Research Council
  6. Arthritis Research UK
  7. British Heart Foundation
  8. Cancer Research UK
  9. Chief Scientist Office
  10. Economic and Social Research Council
  11. Engineering and Physical Sciences Research Council
  12. National Institute for Health Research
  13. National Institute for Social Care and Health Research
  14. Wellcome Trust [MR/K006584/1]
  15. UK Medical Research Council [MC_U12266B]

向作者/读者索取更多资源

Motivation: Molecular interactions have widely been modelled as networks. The local wiring patterns around molecules in molecular networks are linked with their biological functions. However, networks model only pairwise interactions between molecules and cannot explicitly and directly capture the higher-order molecular organization, such as protein complexes and pathways. Hence, we ask if hypergraphs (hypernetworks), that directly capture entire complexes and pathways along with protein-protein interactions (PPIs), carry additional functional information beyond what can be uncovered from networks of pairwise molecular interactions. The mathematical formalism of a hypergraph has long been known, but not often used in studying molecular networks due to the lack of sophisticated algorithms for mining the underlying biological information hidden in the wiring patterns of molecular systems modelled as hypernetworks. Results: We propose a new, multi-scale, protein interaction hypernetwork model that utilizes hypergraphs to capture different scales of protein organization, including PPIs, protein complexes and pathways. In analogy to graphlets, we introduce hypergraphlets, small, connected, non-isomorphic, induced sub-hypergraphs of a hypergraph, to quantify the local wiring patterns of these multi-scale molecular hypergraphs and to mine them for new biological information. We apply them to model the multi-scale protein networks of bakers yeast and human and show that the higher-order molecular organization captured by these hypergraphs is strongly related to the underlying biology. Importantly, we demonstrate that our new models and data mining tools reveal different, but complementary biological information compared with classical PPI networks. We apply our hypergraphlets to successfully predict biological functions of uncharacterized proteins.

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