用于识别生化途径的代谢图加权方案。

Systems and Synthetic Biology Pub Date : 2014-03-01 Epub Date: 2013-11-06 DOI:10.1007/s11693-013-9128-0
S Ghosh, P Baloni, S Vishveshwara, N Chandra
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引用次数: 3

摘要

代谢是所有细胞不可分割的一部分,对它的研究对于理解系统的功能、理解疾病状态下发生的变化以及随后在药物发现中的应用都很重要。从基因组学和其他分子或生化数据重建基因组尺度的代谢图现在是可行的。从这些网络中推断生化途径的方法也很少。然而,考虑到网络中的大规模和复杂的相互联系,识别生化途径的问题并非微不足道,一些问题仍未解决。特别是,给定的路径在扰动条件下如何改变仍然是一个难题,需要开发改进的方法。在这里,我们报告了6种不同的加权方案的比较,以获得代谢图的节点和边权重,权重反映了各种动力学,热力学参数以及从转录组数据推断的丰度。利用碳水化合物代谢的50个节点和107个边的网络,我们表明动力学参数派生的加权方案[公式:见文本]效果最好。然而,这些数据受到可用性的限制,突出了组学数据在这种情况下的有用性。有趣的是,转录组衍生的权重产生了得分最高的路径,但不足以区分理论路径。该方法在大肠杆菌应激反应系统上进行了试验。这里展示的方法本质上是通用的,可以用于分析任何物种的代谢网络,也许更重要的是用于比较特定条件的网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Weighting schemes in metabolic graphs for identifying biochemical routes.

Weighting schemes in metabolic graphs for identifying biochemical routes.

Weighting schemes in metabolic graphs for identifying biochemical routes.

Weighting schemes in metabolic graphs for identifying biochemical routes.

Metabolism forms an integral part of all cells and its study is important to understand the functioning of the system, to understand alterations that occur in disease state and hence for subsequent applications in drug discovery. Reconstruction of genome-scale metabolic graphs from genomics and other molecular or biochemical data is now feasible. Few methods have also been reported for inferring biochemical pathways from these networks. However, given the large scale and complex inter-connections in the networks, the problem of identifying biochemical routes is not trivial and some questions still remain open. In particular, how a given path is altered in perturbed conditions remains a difficult problem, warranting development of improved methods. Here we report a comparison of 6 different weighting schemes to derive node and edge weights for a metabolic graph, weights reflecting various kinetic, thermodynamic parameters as well as abundances inferred from transcriptome data. Using a network of 50 nodes and 107 edges of carbohydrate metabolism, we show that kinetic parameter derived weighting schemes [Formula: see text] fare best. However, these are limited by their extent of availability, highlighting the usefulness of omics data under such conditions. Interestingly, transcriptome derived weights yield paths with best scores, but are inadequate to discriminate the theoretical paths. The method is tested on a system of Escherichia coli stress response. The approach illustrated here is generic in nature and can be used in the analysis for metabolic network from any species and perhaps more importantly for comparing condition-specific networks.

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