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Construction of Regulatory Networks Using Expression Time-series Data of a Genotyped Population

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Specialty Science
Date 2011 Nov 16
PMID 22084118
Citations 47
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Abstract

The inference of regulatory and biochemical networks from large-scale genomics data is a basic problem in molecular biology. The goal is to generate testable hypotheses of gene-to-gene influences and subsequently to design bench experiments to confirm these network predictions. Coexpression of genes in large-scale gene-expression data implies coregulation and potential gene-gene interactions, but provide little information about the direction of influences. Here, we use both time-series data and genetics data to infer directionality of edges in regulatory networks: time-series data contain information about the chronological order of regulatory events and genetics data allow us to map DNA variations to variations at the RNA level. We generate microarray data measuring time-dependent gene-expression levels in 95 genotyped yeast segregants subjected to a drug perturbation. We develop a Bayesian model averaging regression algorithm that incorporates external information from diverse data types to infer regulatory networks from the time-series and genetics data. Our algorithm is capable of generating feedback loops. We show that our inferred network recovers existing and novel regulatory relationships. Following network construction, we generate independent microarray data on selected deletion mutants to prospectively test network predictions. We demonstrate the potential of our network to discover de novo transcription-factor binding sites. Applying our construction method to previously published data demonstrates that our method is competitive with leading network construction algorithms in the literature.

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References
1.
Zhu C, Byers K, McCord R, Shi Z, Berger M, Newburger D . High-resolution DNA-binding specificity analysis of yeast transcription factors. Genome Res. 2009; 19(4):556-66. PMC: 2665775. DOI: 10.1101/gr.090233.108. View

2.
Friedman N, Linial M, Nachman I, Peer D . Using Bayesian networks to analyze expression data. J Comput Biol. 2000; 7(3-4):601-20. DOI: 10.1089/106652700750050961. View

3.
Zhu J, Zhang B, Smith E, Drees B, Brem R, Kruglyak L . Integrating large-scale functional genomic data to dissect the complexity of yeast regulatory networks. Nat Genet. 2008; 40(7):854-61. PMC: 2573859. DOI: 10.1038/ng.167. View

4.
Brazma A, Parkinson H, Sarkans U, Shojatalab M, Vilo J, Abeygunawardena N . ArrayExpress--a public repository for microarray gene expression data at the EBI. Nucleic Acids Res. 2003; 31(1):68-71. PMC: 165538. DOI: 10.1093/nar/gkg091. View

5.
Lee S, Peer D, Dudley A, Church G, Koller D . Identifying regulatory mechanisms using individual variation reveals key role for chromatin modification. Proc Natl Acad Sci U S A. 2006; 103(38):14062-7. PMC: 1599912. DOI: 10.1073/pnas.0601852103. View