Omics community detection using multi-resolution clustering

TitleOmics community detection using multi-resolution clustering
Publication TypeJournal Article
Year of Publication2021
AuthorsRahnavard A, Chatterjee S, Sayoldin B, Crandall KA, Tekola-Ayele F, Mallick H
JournalBioinformatics
Volume37
Issue20
Pagination3588-3594
Date Published2021 Oct 25
ISSN1367-4811
Abstract

MOTIVATION: The discovery of biologically interpretable and clinically actionable communities in heterogeneous omics data is a necessary first step toward deriving mechanistic insights into complex biological phenomena. Here, we present a novel clustering approach, omeClust, for community detection in omics profiles by simultaneously incorporating similarities among measurements and the overall complex structure of the data.

RESULTS: We show that omeClust outperforms published methods in inferring the true community structure as measured by both sensitivity and misclassification rate on simulated datasets. We further validated omeClust in diverse, multiple omics datasets, revealing new communities and functionally related groups in microbial strains, cell line gene expression patterns and fetal genomic variation. We also derived enrichment scores attributable to putatively meaningful biological factors in these datasets that can serve as hypothesis generators facilitating new sets of testable hypotheses.

AVAILABILITY AND IMPLEMENTATION: omeClust is open-source software, and the implementation is available online at http://github.com/omicsEye/omeClust.

SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.

DOI10.1093/bioinformatics/btab317
Alternate JournalBioinformatics
PubMed ID33974004
PubMed Central IDPMC8545346
Grant ListDEB-2028280 / / National Science Foundation /
/ / National Institute of Child Health and Human Development /
HHSN275200800013C / HD / NICHD NIH HHS / United States