Bayesian inference of sample-specific coexpression networks

  1. John Quackenbush1,6
  1. 1 Harvard T.H. Chan School of Public Health;
  2. 2 Harvard T. H. Chan School of Public Health;
  3. 3 Harvard T. H. Chan School of Public Health, Brigham and Women's Hospital;
  4. 4 Brigham and Women's Hospital, Harvard Medical School;
  5. 5 Brigham and Women's Hospital
  • * Corresponding author; email: johnq{at}hsph.harvard.edu
  • Abstract

    Gene regulatory networks (GRNs) are effective tools for inferring complex interactions between molecules that regulate biological processes and hence can provide insights into drivers of biological systems. Inferring coexpression networks is a critical element of GRN inference, as the correlation between expression patterns may indicate that genes are coregulated by common factors. However, methods that estimate coexpression networks generally derive an aggregate network representing the mean regulatory properties of the population and so fail to fully capture population heterogeneity. BONOBO (Bayesian Optimized Networks Obtained By assimilating Omics data) is a scalable Bayesian model for deriving individual sample-specific coexpression matrices that recognizes variations in molecular interactions across individuals. For each sample, BONOBO assumes a Gaussian distribution on the log-transformed centered gene expression and a conjugate prior distribution on the sample-specific coexpression matrix constructed from all other samples in the data. Combining the sample-specific gene coexpression with the prior distribution, BONOBO yields a closed-form solution for the posterior distribution of the sample-specific coexpression matrices, thus allowing the analysis of large datasets. We demonstrate BONOBO's utility in several contexts, including analyzing gene regulation in yeast transcription factor knockout studies, the prognostic significance of miRNA-mRNA interaction in human breast cancer subtypes, and sex differences in gene regulation within human thyroid tissue. We find that BONOBO outperforms other methods that have been used for sample-specific coexpression network inference and provides insight into individual differences in the drivers of biological processes.

    • Received February 15, 2024.
    • Accepted July 31, 2024.

    This manuscript is Open Access.

    This article, published in Genome Research, is available under a Creative Commons License (Attribution 4.0 International license), as described at http://creativecommons.org/licenses/by/4.0/.

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    1. Genome Res. gr.279117.124 Published by Cold Spring Harbor Laboratory Press

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