Hypergraph models of biological networks to identify genes critical to pathogenic viral response

Song Feng(Pacific Northwest National Laboratory), Emily Heath(University of Illinois Urbana-Champaign), Brett Jefferson(Pacific Northwest National Laboratory), Cliff Joslyn(Portland State University), Henry Kvinge(Pacific Northwest National Laboratory), Hugh Mitchell(Pacific Northwest National Laboratory), Brenda Praggastis(Pacific Northwest National Laboratory), Amie J. Eisfeld(University of Wisconsin–Madison), Amy Sims(Pacific Northwest National Laboratory), Larissa B. Thackray(Washington University in St. Louis), Shufang Fan(University of Wisconsin–Madison), Kevin Walters(University of Wisconsin–Madison), Peter Halfmann(University of Wisconsin–Madison), Danielle Westhoff-Smith(University of Wisconsin–Madison), Qing Tan(Washington University in St. Louis), Vineet D. Menachery(University of North Carolina at Chapel Hill), Timothy P. Sheahan(University of North Carolina at Chapel Hill), Adam S. Cockrell, Jacob Kocher(University of North Carolina at Chapel Hill), Kelly G. Stratton(Pacific Northwest National Laboratory), Natalie C. Heller(Pacific Northwest National Laboratory), Lisa Bramer(Pacific Northwest National Laboratory), Michael Diamond(Washington University in St. Louis), Ralph S. Baric(University of North Carolina at Chapel Hill), Katrina M. Waters(Pacific Northwest National Laboratory), Yoshihiro Kawaoka(University of Wisconsin–Madison), Jason McDermott(Pacific Northwest National Laboratory), Emilie Purvine(Pacific Northwest National Laboratory)
BMC Bioinformatics
May 29, 2021
Cited by 101Open Access
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Abstract

BACKGROUND: Representing biological networks as graphs is a powerful approach to reveal underlying patterns, signatures, and critical components from high-throughput biomolecular data. However, graphs do not natively capture the multi-way relationships present among genes and proteins in biological systems. Hypergraphs are generalizations of graphs that naturally model multi-way relationships and have shown promise in modeling systems such as protein complexes and metabolic reactions. In this paper we seek to understand how hypergraphs can more faithfully identify, and potentially predict, important genes based on complex relationships inferred from genomic expression data sets. RESULTS: We compiled a novel data set of transcriptional host response to pathogenic viral infections and formulated relationships between genes as a hypergraph where hyperedges represent significantly perturbed genes, and vertices represent individual biological samples with specific experimental conditions. We find that hypergraph betweenness centrality is a superior method for identification of genes important to viral response when compared with graph centrality. CONCLUSIONS: Our results demonstrate the utility of using hypergraphs to represent complex biological systems and highlight central important responses in common to a variety of highly pathogenic viruses.


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