4.6 Article

From DNA to FBA: How to Build Your Own Genome-Scale Metabolic Model

期刊

FRONTIERS IN MICROBIOLOGY
卷 7, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fmicb.2016.00907

关键词

metabolic modeling; metabolic reconstruction; in silico modeling; flux-balance analysis; model SEED; genome annotation

资金

  1. NSF [CNS-1305112, MCB-1330800]
  2. STEM scholarship award - NSF [DUE-1259951]
  3. Direct For Biological Sciences
  4. Div Of Molecular and Cellular Bioscience [1330800] Funding Source: National Science Foundation
  5. Division Of Undergraduate Education
  6. Direct For Education and Human Resources [1259951] Funding Source: National Science Foundation

向作者/读者索取更多资源

Microbiological studies are increasingly relying on in silico methods to perform exploration and rapid analysis of genomic data, and functional genomics studies are supplemented by the new perspectives that genome-scale metabolic models offer. A mathematical model consisting of a microbe's entire metabolic map can be rapidly determined from whole-genome sequencing and annotating the genomic material encoded in its DNA. Flux-balance analysis (FBA), a linear programming technique that uses metabolic models to predict the phenotypic responses imposed by environmental elements and factors, is the leading method to simulate and manipulate cellular growth in silico. However, the process of creating an accurate model to use in FBA consists of a series of steps involving a multitude of connections between bioinformatics databases, enzyme resources, and metabolic pathways. We present the methodology and procedure to obtain a metabolic model using PyFBA, an extensible Python based open-source software package aimed to provide a platform where functional annotations are used to build metabolic models (http://linsalrob.github.io/PyFBA). Backed by the Model SEED biochemistry database, PyFBA contains methods to reconstruct a microbe's metabolic map, run FBA upon different media conditions, and gap-fill its metabolism. The extensibility of PyFBA facilitates novel techniques in creating accurate genome-scale metabolic models.

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