3 research outputs found

    Bacterial regulon modeling and prediction based on systematic \u3ci\u3ecis\u3c/i\u3e regulatory motif analyses

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    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

    Detecting uber-operons in prokaryotic genomes

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    We present a study on computational identification of uber-operons in a prokaryotic genome, each of which represents a group of operons that are evolutionarily or functionally associated through operons in other (reference) genomes. Uber-operons represent a rich set of footprints of operon evolution, whose full utilization could lead to new and more powerful tools for elucidation of biological pathways and networks than what operons have provided, and a better understanding of prokaryotic genome structures and evolution. Our prediction algorithm predicts uber-operons through identifying groups of functionally or transcriptionally related operons, whose gene sets are conserved across the target and multiple reference genomes. Using this algorithm, we have predicted uber-operons for each of a group of 91 genomes, using the other 90 genomes as references. In particular, we predicted 158 uber-operons in Escherichia coli K12 covering 1830 genes, and found that many of the uber-operons correspond to parts of known regulons or biological pathways or are involved in highly related biological processes based on their Gene Ontology (GO) assignments. For some of the predicted uber-operons that are not parts of known regulons or pathways, our analyses indicate that their genes are highly likely to work together in the same biological processes, suggesting the possibility of new regulons and pathways. We believe that our uber-operon prediction provides a highly useful capability and a rich information source for elucidation of complex biological processes, such as pathways in microbes. All the prediction results are available at our Uber-Operon Database: , the first of its kind

    In silico construction of the carbon fixation pathway in Synechococcus sp. WH8102

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    Because the carbon fixation pathway plays an essential role in the primary production and natural carbon recycling process, and because the genome of the marine cyanobacterial Synechococcus sp. WH8102 (SYNWH8102) was recently sequenced, SYNWH8102 was chosen to further our understanding of the interaction and regulation of the carbon fixation pathway at the molecular level. In this abstract, we present the predicted carbon fixation pathway in SYNWH8102 as a result of our recently developed computational protocol for inference of regulatory and signaling pathways. The results of our pathway prediction include: (a) Major components of the carbon fixation pathway reported in the literature are present in SYNWH8102. (b) Approximately, 48 new candidates are added into the network from the results of the pathway expansion step. (c) Additionally, our in-house motif finding program, CUBIC, found several motifs that are present in the promoter regions of multiple genes involved in this pathway, suggesting that these genes are transcriptionally co-regulated. 1
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