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An integrative, multi‐scale, genome‐wide model reveals the phenotypic landscape of E scherichia coli
Author(s) -
Carrera Javier,
Estrela Raissa,
Luo Jing,
Rai Navneet,
Tsoukalas Athanasios,
Tagkopoulos Ilias
Publication year - 2014
Publication title -
molecular systems biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 8.523
H-Index - 148
ISSN - 1744-4292
DOI - 10.15252/msb.20145108
Subject(s) - compendium , biology , computational biology , context (archaeology) , systems biology , phenotype , variety (cybernetics) , genome , gene , genetics , computer science , artificial intelligence , history , paleontology , archaeology
Given the vast behavioral repertoire and biological complexity of even the simplest organisms, accurately predicting phenotypes in novel environments and unveiling their biological organization is a challenging endeavor. Here, we present an integrative modeling methodology that unifies under a common framework the various biological processes and their interactions across multiple layers. We trained this methodology on an extensive normalized compendium for the gram‐negative bacterium E scherichia coli, which incorporates gene expression data for genetic and environmental perturbations, transcriptional regulation, signal transduction, and metabolic pathways, as well as growth measurements. Comparison with measured growth and high‐throughput data demonstrates the enhanced ability of the integrative model to predict phenotypic outcomes in various environmental and genetic conditions, even in cases where their underlying functions are under‐represented in the training set. This work paves the way toward integrative techniques that extract knowledge from a variety of biological data to achieve more than the sum of their parts in the context of prediction, analysis, and redesign of biological systems.

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