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Alignment-Free Method to Predict Enzyme Classes and Subclasses

机译:预测酶类和亚类的免比对方法

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摘要

The Enzyme Classification (EC) number is a numerical classification scheme for enzymes, established using the chemical reactions they catalyze. This classification is based on the recommendation of the Nomenclature Committee of the International Union of Biochemistry and Molecular Biology. Six enzyme classes were recognised in the first Enzyme Classification and Nomenclature List, reported by the International Union of Biochemistry in 1961. However, a new enzyme group was recently added as the six existing EC classes could not describe enzymes involved in the movement of ions or molecules across membranes. Such enzymes are now classified in the new EC class of translocases (EC 7). Several computational methods have been developed in order to predict the EC number. However, due to this new change, all such methods are now outdated and need updating. In this work, we developed a new multi-task quantitative structure–activity relationship (QSAR) method aimed at predicting all 7 EC classes and subclasses. In so doing, we developed an alignment-free model based on artificial neural networks that proved to be very successful.
机译:酶分类(EC)编号是酶的数字分类方案,使用它们催化的化学反应建立。该分类基于国际生物化学与分子生物学联盟命名委员会的建议。 1961年,国际生物化学联合会在第一份酶分类和命名法列表中确认了六种酶类别。但是,由于六个现有的EC类无法描述参与离子或离子运动的酶,最近又增加了一个新的酶类别。分子跨膜。现在,这类酶被归类为新的EC转运酶类(EC 7)。为了预测EC数,已经开发了几种计算方法。但是,由于此新更改,所有这些方法现在已过时,需要更新。在这项工作中,我们开发了一种新的多任务定量结构-活动关系(QSAR)方法,旨在预测所有7个EC类和子类。通过这样做,我们开发了基于人工神经网络的免比对模型,事实证明该模型非常成功。

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