Empowering differential networks using Bayesian analysis
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Date
Authors
Smith, Jarod
Arashi, Mohammad
Bekker, Andriette, 1958-
Journal Title
Journal ISSN
Volume Title
Publisher
Public Library of Science
Abstract
Differential networks (DN) are important tools for modeling the changes in conditional
dependencies between multiple samples. A Bayesian approach for estimating DNs, from
the classical viewpoint, is introduced with a computationally efficient threshold selection for
graphical model determination. The algorithm separately estimates the precision matrices
of the DN using the Bayesian adaptive graphical lasso procedure. Synthetic experiments
illustrate that the Bayesian DN performs exceptionally well in numerical accuracy and graphical structure determination in comparison to state of the art methods. The proposed method
is applied to South African COVID-19 data to investigate the change in DN structure
between various phases of the pandemic.
Description
DATA AVAILABILITY STATEMENT : The data underlying
the results presented in the study are available
from https://archive.ics.uci.edu/ml/datasets/
spambase for the spambase dataset. The
corresponding COVID-19 data are available from
https://www.nicd.ac.za/diseases-a-z-index/diseaseindex-covid-19/surveillance-reports/ and https://
ourworldindata.org/coronavirus/country/southafrica.
SUPPORTING INFORMATION : S1 File. Supplementary material. Contains a block Gibbs sampler, as well as, additional optimal threshold; adjacency heatmaps and graphical network figures for dimensions p = 30 and p = 100. https://doi.org/10.1371/journal.pone.0261193.s001
SUPPORTING INFORMATION : S1 File. Supplementary material. Contains a block Gibbs sampler, as well as, additional optimal threshold; adjacency heatmaps and graphical network figures for dimensions p = 30 and p = 100. https://doi.org/10.1371/journal.pone.0261193.s001
Keywords
Differential networks, Bayesian analysis
Sustainable Development Goals
Citation
Smith, J., Arashi, M. & Bekker, A. (2022) Empowering differential networks using Bayesian analysis. PLoS One 17(1): e0261193. https://doi.org/10.1371/journal.pone.0261193.