Shanghai Key Lab of Intelligent Information Processing, Fudan University, Shanghai, China.
Brief Bioinform. 2011 Mar;12(2):132-50. doi: 10.1093/bib/bbp068. Epub 2010 Jan 7.
Correlated reaction sets (Co-Sets) are mathematically defined modules in biochemical reaction networks which facilitate the study of biological processes by decomposing complex reaction networks into conceptually simple units. According to the degree of association, Co-Sets can be classified into three types: perfect, partial and directional. Five approaches have been developed to calculate Co-Sets, including network-based pathway analysis, Monte Carlo sampling, linear optimization, enzyme subsets and hard-coupled reaction sets. However, differences in design and implementation of these methods lead to discrepancies in the resulted Co-Sets as well as in their use in biotechnology which need careful interpretation. In this paper, we provide a comparative study of the methods for Co-Sets computing in detail from four aspects: (i) sensitivity, (ii) completeness and soundness, (iii) flexibility and (iv) scalability. By applying them to Escherichia coli core metabolic network, the differences and relationships among these methods are clearly articulated which may be useful for potential users.
关联反应集 (Co-Sets) 是生化反应网络中数学定义的模块,通过将复杂的反应网络分解为概念上简单的单元,有助于研究生物过程。根据关联程度,Co-Sets 可以分为三种类型:完美型、部分型和有向型。已经开发了五种方法来计算 Co-Sets,包括基于网络的途径分析、蒙特卡罗采样、线性优化、酶子集和硬耦合反应集。然而,这些方法在设计和实现上的差异导致生成的 Co-Sets 以及它们在生物技术中的应用存在差异,需要仔细解释。在本文中,我们从四个方面详细比较了 Co-Sets 计算方法:(i)敏感性,(ii)完整性和正确性,(iii)灵活性和(iv)可扩展性。通过将它们应用于大肠杆菌核心代谢网络,清楚地阐明了这些方法之间的差异和关系,这对于潜在用户可能是有用的。