| Literature DB >> 26975728 |
Bingqiang Liu1, Chuan Zhou1, Guojun Li1, Hanyuan Zhang2, Erliang Zeng3,4,5, Qi Liu6, Qin Ma7,5.
Abstract
Regulons are the basic units of the response system in a bacterial cell, and each consists of a set of transcriptionally co-regulated operons. Regulon elucidation is the basis for studying the bacterial global transcriptional regulation network. In this study, we designed a novel co-regulation score between a pair of operons based on accurate operon identification and cis regulatory motif analyses, which can capture their co-regulation relationship much better than other scores. Taking full advantage of this discovery, we developed a new computational framework and built a novel graph model for regulon prediction. This model integrates the motif comparison and clustering and makes the regulon prediction problem substantially more solvable and accurate. To evaluate our prediction, a regulon coverage score was designed based on the documented regulons and their overlap with our prediction; and a modified Fisher Exact test was implemented to measure how well our predictions match the co-expressed modules derived from E. coli microarray gene-expression datasets collected under 466 conditions. The results indicate that our program consistently performed better than others in terms of the prediction accuracy. This suggests that our algorithms substantially improve the state-of-the-art, leading to a computational capability to reliably predict regulons for any bacteria.Entities:
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Year: 2016 PMID: 26975728 PMCID: PMC4792141 DOI: 10.1038/srep23030
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379