论文标题
酶相似性网络
Enzyme Similarity Networks
论文作者
论文摘要
在多个行业和科学中,新月形使用酶,从材料和燃料合成到药品和食品生产。它们在各种领域的适用性不仅取决于其生化功能,还取决于其理化特性。在目前的工作中,我们描述了如何采用巧合方法来构建糖苷水解酶家族的70个良好研究酶的相似性网络,并确定与物理化学相关的酶的群落。更具体地说,每个选定的酶都映射到网络节点中,而酶对之间的链接取决于所选的感兴趣的物理化学特征之间的一致性相似性。所获得的网络具有分别优化到巧合方法参与的两个参数的隔离节点的模块化和数量,从而产生了高度模块化的网络。为了研究所考虑的物理化学特征对酶关系的影响,还采用基于重合的方法来创建元网络,在该方法中,通过每个可能的特征组合获得的酶相似性网络获得的酶相似性网络成为特征组合网络的节点,并且这些网络之间的相似性定义了友好的链接。获得的特征组合网络系统和全面地表明了所选物理化学特征对酶相似性的影响。报告和讨论了几个有趣的结果,包括鉴定催化类别中具有相似物理化学特征的酶亚组,为目标生物技术应用的选择和设计提供了重要信息。
There is a crescent use of enzymes in multiple industries and sciences, ranging from materials and fuel synthesis to pharmaceutical and food production. Their applicability in this variety of fields depends not only on their biochemical function but also on their physicochemical properties. In the present work, we describe how the coincidence methodology can be employed to construct similarity networks of seventy well-studied enzymes of the Glycoside Hydrolase Family 13 and to identify communities of physicochemically related enzymes. More specifically, each of the selected enzymes is mapped into a network node, while the links between pairs of enzymes are determined by the coincidence similarity between selected physicochemical features of interest. The obtained networks have modularity and number of isolated nodes optimized respectively to two parameters involved in the coincidence methodology, resulting in highly modular networks. In order to investigate the effect of the considered physicochemical features on the enzymes relationships, the coincidence-based method also is applied to create a meta-network, in which the enzymes similarity networks obtained by the combination of every possible feature becomes nodes of a feature combination network, and the coincidence similarity between those networks defines the respective links. The obtained feature combination network systematically and comprehensively indicates the impact of the selected physicochemical features on enzyme similarity. Several interesting results are reported and discussed, including the identification of subgroups of enzymes with similar physicochemical features within catalytical classes, providing important information for the selection and design of enzymes for targeted biotechnological applications.