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A Machine-Learning Approach for the Prediction of Enzymatic Activity of Proteins in Metagenomic Samples

机译:预测超基因组样品中蛋白质酶活性的机器学习方法

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In this work, a machine-learning approach was developed, which performs the prediction of the putative enzymatic function of unknown proteins, based on the PFAM protein domain database and the Enzyme Commission (EC) numbers that describe the enzymatic activities. The classifier was trained with well annotated protein datasets from the Uniprot database, in order to define the characteristic domains of each enzymatic sub-category in the class of Hydrolases. As a conclusion, the machine-learning procedure based on Hmmer3 scores against the PFAM database can accurately predict the enzymatic activity of unknown proteins as a part of metagenomic analysis workflows.
机译:在这项工作中,开发了一种机器学习方法,该方法基于PFAM蛋白质域数据库和描述酶活性的酶委员会(EC)编号对未知蛋白质的假定酶功能进行了预测。分类器使用Uniprot数据库中带有注释良好的蛋白质数据集进行训练,以便定义水解酶类别中每个酶亚类的特征域。结论是,基于PFAM数据库基于Hmmer3分数的机器学习过程可以准确预测未知蛋白质的酶活性,作为宏基因组学分析工作流程的一部分。

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