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通过双向化学搜索高效重建代谢途径。

Efficient reconstruction of metabolic pathways by bidirectional chemical search.

作者信息

Félix Liliana, Rosselló Francesc, Valiente Gabriel

机构信息

Algorithms, Bioinformatics, Complexity and Formal Methods Research Group, Technical University of Catalonia, 08034, Barcelona, Spain.

出版信息

Bull Math Biol. 2009 Apr;71(3):750-69. doi: 10.1007/s11538-008-9380-8. Epub 2008 Dec 20.

Abstract

One of the main challenges in systems biology is the establishment of the metabolome: a catalogue of the metabolites and biochemical reactions present in a specific organism. Current knowledge of biochemical pathways as stored in public databases such as KEGG, is based on carefully curated genomic evidence for the presence of specific metabolites and enzymes that activate particular biochemical reactions. In this paper, we present an efficient method to build a substantial portion of the artificial chemistry defined by the metabolites and biochemical reactions in a given metabolic pathway, which is based on bidirectional chemical search. Computational results on the pathways stored in KEGG reveal novel biochemical pathways.

摘要

系统生物学的主要挑战之一是建立代谢组

特定生物体中存在的代谢物和生化反应的目录。目前存储在公共数据库(如KEGG)中的生化途径知识,是基于对特定代谢物和激活特定生化反应的酶的存在进行精心策划的基因组证据。在本文中,我们提出了一种基于双向化学搜索的有效方法,用于构建给定代谢途径中由代谢物和生化反应定义的大部分人工化学。对KEGG中存储的途径的计算结果揭示了新的生化途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/81c9/2784519/be082975231f/11538_2008_Article_9380_Fig1.jpg

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