2012
DOI: 10.1073/pnas.1200030109
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Computational design of genomic transcriptional networks with adaptation to varying environments

Abstract: Transcriptional profiling has been widely used as a tool for unveiling the coregulations of genes in response to genetic and environmental perturbations. These coregulations have been used, in a few instances, to infer global transcriptional regulatory models. Here, using the large amount of transcriptomic information available for the bacterium Escherichia coli, we seek to understand the design principles determining the regulation of its transcriptome. Combining transcriptomic and signaling data, we develop … Show more

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Cited by 16 publications
(22 citation statements)
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“…A crucial tool for integrative modeling is network inference algorithms, both unsupervised and supervised, which can be used to generate topological models and consensus networks from data (Basso et al , 2005 ; Faith et al , 2007 ; Mordelet & Vert, 2008 ; Taylor et al , 2008 ; Zare et al , 2009 ; Marbach et al , 2010 , 2012 ). Several methods have targeted the integration of models across the transcriptional, proteomic, signal transduction, and metabolomics layers (Reed et al , 2003 , 2006 ; Covert et al , 2004 ; Duarte et al , 2004 ; Beltran et al , 2006 ; Joyce & Palsson, 2006 ; Kresnowati et al , 2006 ; Becker et al , 2007 ; Feist et al , 2007 ; Andersen et al , 2008 ; Feist & Palsson, 2008 ; Herrgard et al , 2008 ; Carrera et al , 2012a , b ).…”
Section: Introductionmentioning
confidence: 99%
“…A crucial tool for integrative modeling is network inference algorithms, both unsupervised and supervised, which can be used to generate topological models and consensus networks from data (Basso et al , 2005 ; Faith et al , 2007 ; Mordelet & Vert, 2008 ; Taylor et al , 2008 ; Zare et al , 2009 ; Marbach et al , 2010 , 2012 ). Several methods have targeted the integration of models across the transcriptional, proteomic, signal transduction, and metabolomics layers (Reed et al , 2003 , 2006 ; Covert et al , 2004 ; Duarte et al , 2004 ; Beltran et al , 2006 ; Joyce & Palsson, 2006 ; Kresnowati et al , 2006 ; Becker et al , 2007 ; Feist et al , 2007 ; Andersen et al , 2008 ; Feist & Palsson, 2008 ; Herrgard et al , 2008 ; Carrera et al , 2012a , b ).…”
Section: Introductionmentioning
confidence: 99%
“…To maximize the modularity of the system and thus simplify the TRN, we defined a measure based on the entropy of the genome [17]. We also aimed to maximize the similarity of the expression profiles of the wild-type and refactored genomes for a set of extreme environments and for a set of critical genes that guarantee the functionality of the refactored system.…”
Section: Methodsmentioning
confidence: 99%
“…Furthermore, it is possible to construct regulatory network models that accurately predict the global transcriptional profile for some organisms [ 15 , 16 ]. These regulatory network models can be used to predict the growth of cells with modified transcriptional networks, thereby providing the fitness function required to evaluate their performance under diverse environmental conditions [ 17 ].…”
Section: Introductionmentioning
confidence: 99%
“…These approaches rely on the construction of networks that encompass key biological processes, and may incorporate combinations of probabilistic representations [5], machine learning-based algorithms [6], mechanistic constraint-based models [7], or large-scale ordinary differential equations [8]. …”
Section: Five Applications For Whole-cell Modelingmentioning
confidence: 99%