Stingo, Francesco C.; Chen, Yian A.; Vannucci, Marina; Barrier, Marianne; Mirkes, Philip E. A Bayesian graphical modeling approach to microRNA regulatory network inference. (English) Zbl 1220.62142 Ann. Appl. Stat. 4, No. 4, 2024-2048 (2010). Summary: It has been estimated that about 30% of the genes in the human genome are regulated by microRNAs (miRNAs). These are short RNA sequences that can down-regulate the levels of mRNAs or proteins in animals and plants. Genes regulated by miRNAs are called targets. Typically, methods for target prediction are based solely on sequence data and on the structure information. We propose a Bayesian graphical modeling approach that infers the miRNA regulatory network by integrating expression levels of miRNAs with their potential mRNA targets and, via the prior probability model, with their sequence/structure information. We use a directed graphical model with a particular structure adapted to our data based on biological considerations. We then achieve network inference using stochastic search methods for variable selection that allow us to explore the huge model space via MCMC. A time-dependent coefficients model is also implemented. We consider experimental data from a study on a very well-known developmental toxicant causing neural tube defects, hyperthermia. Some of the pairs of target gene and miRNA we identify seem very plausible and warrant future investigation. Our proposed method is general and can be easily applied to other types of network inference by integrating multiple data sources. Cited in 23 Documents MSC: 62P10 Applications of statistics to biology and medical sciences; meta analysis 62F15 Bayesian inference 92C40 Biochemistry, molecular biology 05C90 Applications of graph theory 90B40 Search theory 62H99 Multivariate analysis Keywords:Bayesian variable selection; data integration; graphical models; miRNA regulatory network × Cite Format Result Cite Review PDF Full Text: DOI arXiv References: [1] Bagga, S., Bracht, J., Hunter, S., Massirer, K., Holtz, J., Eachus, R. and Pasquinelli, A. E. (2005). Regulation by let-7 and lin-4 miRNAs results in target mRNA degradation. Cell 122 553-563. [2] Betel, D., Wilson, M., Gabow, A., Marks, D. S. and Sander, C. (2008). The microRNA.org resource: Targets and expression. Nucleic Acids Research 36 D149-D153. [3] Brown, P. J., Vannucci, M. and Fearn, T. (1998). Multivariate Bayesian variable selection and prediction. J. Roy. Statist. Soc. Ser. 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