Englander Institute for Precision Medicine

A strategy to incorporate prior knowledge into correlation network cutoff selection.

TitleA strategy to incorporate prior knowledge into correlation network cutoff selection.
Publication TypeJournal Article
Year of Publication2020
AuthorsBenedetti E, Pučić-Baković M, Keser T, Gerstner N, Buyukozkan M, Štambuk T, Selman MHJ, Rudan I, Polašek O, Hayward C, Al-Amin H, Suhre K, Kastenmüller G, Lauc G, Krumsiek J
JournalNat Commun
Volume11
Issue1
Pagination5153
Date Published2020 Oct 14
ISSN2041-1723
KeywordsAlgorithms, Data Interpretation, Statistical, Glycomics, Humans, Immunoglobulin G, Metabolomics, RNA-Seq
Abstract

Correlation networks are frequently used to statistically extract biological interactions between omics markers. Network edge selection is typically based on the statistical significance of the correlation coefficients. This procedure, however, is not guaranteed to capture biological mechanisms. We here propose an alternative approach for network reconstruction: a cutoff selection algorithm that maximizes the overlap of the inferred network with available prior knowledge. We first evaluate the approach on IgG glycomics data, for which the biochemical pathway is known and well-characterized. Importantly, even in the case of incomplete or incorrect prior knowledge, the optimal network is close to the true optimum. We then demonstrate the generalizability of the approach with applications to untargeted metabolomics and transcriptomics data. For the transcriptomics case, we demonstrate that the optimized network is superior to statistical networks in systematically retrieving interactions that were not included in the biological reference used for optimization.

DOI10.1038/s41467-020-18675-3
Alternate JournalNat Commun
PubMed ID33056991
PubMed Central IDPMC7560866
Grant ListMC_UU_00007/10 / MRC_ / Medical Research Council / United Kingdom

Weill Cornell Medicine Englander Institute for Precision Medicine 413 E 69th Street
Belfer Research Building
New York, NY 10021