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A Survey for Predicting Enzyme Family Classes Using Machine Learning Methods

机译:用机器学习方法预测酶家庭类别的调查

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Enzymes are proteins that act as biological catalysts to speed up cellular biochemical processes. According to their main Enzyme Commission (EC) numbers, enzymes are divided into six categories: EC-1: oxidoreductase; EC-2: transferase; EC-3: hydrolase; EC-4: lyase; EC-5: isomerase and EC-6: synthetase. Different enzymes have different biological functions and acting objects. Therefore, knowing which family an enzyme belongs to can help infer its catalytic mechanism and provide information about the relevant biological function. With the large amount of protein sequences influxing into databanks in the post-genomics age, the annotation of the family for an enzyme is very important. Since the experimental methods are cost ineffective, bioinformatics tool will be a great help for accurately classifying the family of the enzymes. In this review, we summarized the application of machine learning methods in the prediction of enzyme family from different aspects. We hope that this review will provide insights and inspirations for the researches on enzyme family classification.
机译:酶是用作生物催化剂的蛋白质,以加速细胞生化方法。根据它们的主要酶委员会(EC)数量,酶分为六类:EC-1:氧化还原酶; EC-2:转移酶; EC-3:水解酶; EC-4:Lyase; EC-5:异构酶和EC-6:合成酶。不同的酶具有不同的生物学功能和作用物。因此,知道酶属于哪种家庭可以帮助推断其催化机制并提供有关相关生物学功能的信息。随着大量蛋白质序列在后基因组学年中涌入数据库,为酶的家庭注释非常重要。由于实验方法是成本无效,因此生物信息化工具将是准确分类酶的家庭的巨大帮助。在本综述中,我们总结了机器学习方法在不同方面预测酶家族中的应用。我们希望本综述将为酶家庭分类的研究提供见解和灵感。

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