Literature DB >> 35679575

Discovering gene regulatory networks of multiple phenotypic groups using dynamic Bayesian networks.

Polina Suter1,2, Jack Kuipers1,2, Niko Beerenwinkel1,2.   

Abstract

Dynamic Bayesian networks (DBNs) can be used for the discovery of gene regulatory networks (GRNs) from time series gene expression data. Here, we suggest a strategy for learning DBNs from gene expression data by employing a Bayesian approach that is scalable to large networks and is targeted at learning models with high predictive accuracy. Our framework can be used to learn DBNs for multiple groups of samples and highlight differences and similarities in their GRNs. We learn these DBN models based on different structural and parametric assumptions and select the optimal model based on the cross-validated predictive accuracy. We show in simulation studies that our approach is better equipped to prevent overfitting than techniques used in previous studies. We applied the proposed DBN-based approach to two time series transcriptomic datasets from the Gene Expression Omnibus database, each comprising data from distinct phenotypic groups of the same tissue type. In the first case, we used DBNs to characterize responders and non-responders to anti-cancer therapy. In the second case, we compared normal to tumor cells of colorectal tissue. The classification accuracy reached by the DBN-based classifier for both datasets was higher than reported previously. For the colorectal cancer dataset, our analysis suggested that GRNs for cancer and normal tissues have a lot of differences, which are most pronounced in the neighborhoods of oncogenes and known cancer tissue markers. The identified differences in gene networks of cancer and normal cells may be used for the discovery of targeted therapies.
© The Author(s) 2022. Published by Oxford University Press.

Entities:  

Keywords:  Bayesian learning; MCMC; classification; dynamic Bayesian networks; gene expression; time series

Mesh:

Year:  2022        PMID: 35679575      PMCID: PMC9294428          DOI: 10.1093/bib/bbac219

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   13.994


  46 in total

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Authors:  Min Zou; Suzanne D Conzen
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Authors:  Mengyuan Zhao; Wenying He; Jijun Tang; Quan Zou; Fei Guo
Journal:  Brief Bioinform       Date:  2021-02-05       Impact factor: 11.622

5.  Learning the structure of gene regulatory networks from time series gene expression data.

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6.  Dynamic Bayesian Network Learning to Infer Sparse Models From Time Series Gene Expression Data.

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Journal:  IEEE/ACM Trans Comput Biol Bioinform       Date:  2022-10-10       Impact factor: 3.702

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Authors:  Jian Kang; C Marcelo Sergio; Robert L Sutherland; Elizabeth A Musgrove
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8.  Inferring orthologous gene regulatory networks using interspecies data fusion.

Authors:  Christopher A Penfold; Jonathan B A Millar; David L Wild
Journal:  Bioinformatics       Date:  2015-06-15       Impact factor: 6.937

9.  dynGENIE3: dynamical GENIE3 for the inference of gene networks from time series expression data.

Authors:  Vân Anh Huynh-Thu; Pierre Geurts
Journal:  Sci Rep       Date:  2018-02-21       Impact factor: 4.379

10.  Construction of Condition-Specific Gene Regulatory Network Using Kernel Canonical Correlation Analysis.

Authors:  Dabin Jeong; Sangsoo Lim; Sangseon Lee; Minsik Oh; Changyun Cho; Hyeju Seong; Woosuk Jung; Sun Kim
Journal:  Front Genet       Date:  2021-05-20       Impact factor: 4.599

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