Imieliński Marcin, Belta Călin, Halász Adám, Rubin Harvey
Genomics and Computational Biology Graduate Group, University of Pennsylvania School of Medicine, Philadelphia, 19104, USA.
Bioinformatics. 2005 May 1;21(9):2008-16. doi: 10.1093/bioinformatics/bti245. Epub 2005 Jan 25.
A phenotype mechanism is classically derived through the study of a set of mutants and comparison of their biochemical capabilities. One method of comparing mutant capabilities is to characterize producible and knocked out metabolites. However such an effect is difficult to manually assess, especially for a large biochemical network and a complex media. Current algorithmic approaches towards analyzing metabolic networks either do not address this specific property or are computationally infeasible on the genome-scale.
We have developed a novel genome-scale computational approach that identifies the full set of biochemical species that are knocked out from the metabolome following a gene deletion. Results from this approach are combined with data from in vivo mutant screens to examine the essentiality of metabolite production for a phenotype. This approach can also be a useful tool for metabolic network annotation validation and refinement in newly sequenced organisms. Combining an in silico genome-scale model of Escherichia coli metabolism with in vivo survival data, we uncover possible essential roles for several cell membranes, cell walls, and quinone species. We also identify specific biomass components whose production appears to be non-essential for survival, contrary to the assumptions of previous models.
Programs are available upon request from the authors in the form of Matlab script files.
http://www.cis.upenn.edu/biocomp/manuscripts/bioinformatics_bti245/supp-info.html.
经典的表型机制是通过对一组突变体的研究及其生化能力的比较推导出来的。比较突变体能力的一种方法是对可产生和敲除的代谢物进行表征。然而,这种效应很难手动评估,尤其是对于大型生化网络和复杂培养基而言。当前分析代谢网络的算法方法要么没有解决这个特定属性,要么在基因组规模上计算上不可行。
我们开发了一种新的基因组规模计算方法,该方法可以识别基因缺失后从代谢组中敲除的全套生化物质。该方法的结果与体内突变体筛选的数据相结合,以检查代谢物产生对表型的必要性。这种方法也可以成为新测序生物体中代谢网络注释验证和完善的有用工具。将大肠杆菌代谢的计算机基因组规模模型与体内生存数据相结合,我们发现了几种细胞膜、细胞壁和醌类物质可能的重要作用。我们还确定了特定的生物质成分,其产生似乎对生存并非必不可少,这与先前模型的假设相反。
可根据作者要求以Matlab脚本文件的形式提供程序。
http://www.cis.upenn.edu/biocomp/manuscripts/bioinformatics_bti245/supp-info.html。