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Identification of Penicillin-binding proteins employing support vector machines and random forest

机译:利用支持向量机和随机森林鉴定青霉素结合蛋白

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摘要

Penicillin-Binding Proteins are peptidases that play an important role in cell-wall biogenesis in bacteria and thus maintaining bacterial infections. A wide class of β-lactam drugs are known to act on these proteins and inhibit bacterial infections by disrupting the cell-wall biogenesis pathway. Penicillin-Binding proteins have recently gained importance with the increase in the number of multi-drug resistant bacteria. In this work, we have collected a dataset of over 700 Penicillin-Binding and non-Penicillin Binding Proteins and extracted various sequence-related features. We then created models to classify the proteins into Penicillin-Binding and non-binding using supervised machine learning algorithms such as Support Vector Machines and Random Forest. We obtain a good classification performance for both the models using both the methods.
机译:青霉素结合蛋白是在细菌的细胞壁生物发生中起重要作用并因此维持细菌感染的肽酶。已知各种各样的β-内酰胺药物可作用于这些蛋白质并通过破坏细胞壁生物发生途径来抑制细菌感染。随着多药耐药细菌数量的增加,青霉素结合蛋白最近变得越来越重要。在这项工作中,我们收集了700多种青霉素结合和非青霉素结合蛋白的数据集,并提取了各种与序列相关的特征。然后,我们使用有监督的机器学习算法(例如支持向量机和随机森林)创建了将蛋白质分类为青霉素结合和非结合的模型。我们使用这两种方法对这两种模型都获得了良好的分类性能。

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