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E-zyme: predicting potential EC numbers from the chemical transformation pattern of substrate-product pairs

机译:E-ZYME:从基质 - 产品对的化学转化模式预测潜在的EC号码

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Motivation: The IUBMB's Enzyme Nomenclature system, commonly known as the Enzyme Commission (EC) numbers, plays key roles in classifying enzymatic reactions and in linking the enzyme genes or proteins to reactions in metabolic pathways. There are numerous reactions known to be present in various pathways but without any official EC numbers, most of which have no hope to be given ones because of the lack of the published articles on enzyme assays. Results: In this article we propose a new method to predict the potential EC numbers to given reactant pairs (substrates and products) or uncharacterized reactions, and a web-server named E-zyme as an application. This technology is based on our original biochemical transformation pattern which we call an 'RDM pattern', and consists of three steps: () graph alignment of a query reactant pair (substrates and products) for computing the query RDM pattern, OD multi-layered partial template matching by comparing the query RDM pattem with template patterns related with known EC numbers and (ii) weighted major voting scheme for selecting appropriate EC numbers. As the result, cross-validation experiments show that the proposed method achieves both high coverage and high prediction accuracy at a practical level, and consistently outperforms the previous method.
机译:动机:IUBMB的酶命名系统,通常称为酶委员会(EC)数,在分类酶促反应中起着关键作用,并将酶基因或蛋白质连接到代谢途径中的反应中。已知有许多反应存在于各种途径中,但没有任何官方EC数字,其中大多数是由于缺乏关于酶测定的已发表的文章而无法给予那些。结果:在本文中,我们提出了一种新方法来预测给给给定反应物对(底物和产物)或非特征化反应的潜在EC编号,以及名为E-ZYME作为应用的网站服务器。这项技术基于我们的原始生化转换模式,我们称之为“rdm模式”,并由三个步骤组成:()查询反应对对对齐(基板和产品)的图表对齐,用于计算查询RDM模式,OD多层通过比较与已知的EC编号以及用于选择适当的EC编号(ⅱ)主要加权表决方案相关的模板模式查询RDM pattem部分模板匹配。结果,交叉验证实验表明,该方法在实际水平下实现了高覆盖率和高预测精度,并始终如一地优于先前的方法。

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