Please use this identifier to cite or link to this item: https://doi.org/10.1186/s12934-018-1015-7
Title: In silico model-guided identification of transcriptional regulator targets for efficient strain design
Authors: Koduru, L 
Lakshmanan, M
Lee, D.-Y 
Keywords: article
Corynebacterium glutamicum
drug efficacy
Escherichia coli
genome
nonhuman
strain improvement
systems biology
algorithm
bacterial genome
computer simulation
gene expression regulation
gene regulatory network
genetic transcription
genetics
metabolome
Algorithms
Computer Simulation
Corynebacterium glutamicum
Escherichia coli
Gene Expression Regulation, Bacterial
Gene Regulatory Networks
Genome, Bacterial
Metabolome
Transcription, Genetic
Issue Date: 2018
Citation: Koduru, L, Lakshmanan, M, Lee, D.-Y (2018). In silico model-guided identification of transcriptional regulator targets for efficient strain design. Microbial Cell Factories 17 (1) : 167. ScholarBank@NUS Repository. https://doi.org/10.1186/s12934-018-1015-7
Abstract: Background: Cellular metabolism is tightly regulated by hard-wired multiple layers of biological processes to achieve robust and homeostatic states given the limited resources. As a result, even the most intuitive enzyme-centric metabolic engineering endeavours through the up-/down-regulation of multiple genes in biochemical pathways often deliver insignificant improvements in the product yield. In this regard, targeted engineering of transcriptional regulators (TRs) that control several metabolic functions in modular patterns is an interesting strategy. However, only a handful of in silico model-added techniques are available for identifying the TR manipulation candidates, thus limiting its strain design application. Results: We developed hierarchical-Beneficial Regulatory Targeting (h-BeReTa) which employs a genome-scale metabolic model and transcriptional regulatory network (TRN) to identify the relevant TR targets suitable for strain improvement. We then applied this method to industrially relevant metabolites and cell factory hosts, Escherichia coli and Corynebacterium glutamicum. h-BeReTa suggested several promising TR targets, many of which have been validated through literature evidences. h-BeReTa considers the hierarchy of TRs in the TRN and also accounts for alternative metabolic pathways which may divert flux away from the product while identifying suitable metabolic fluxes, thereby performing superior in terms of global TR target identification. Conclusions: In silico model-guided strain design framework, h-BeReTa, was presented for identifying transcriptional regulator targets. Its efficacy and applicability to microbial cell factories were successfully demonstrated via case studies involving two cell factory hosts, as such suggesting several intuitive targets for overproducing various value-added compounds. © 2018 The Author(s).
Source Title: Microbial Cell Factories
URI: https://scholarbank.nus.edu.sg/handle/10635/175360
ISSN: 1475-2859
DOI: 10.1186/s12934-018-1015-7
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