A two-stage SVM architecture for predicting the disulfide bonding state of cysteines

P. Frasconi, Andrea Passerini, A. Vullo
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引用次数: 40

Abstract

Cysteines may form covalent bonds, known as disulfide bridges, that have an important role in stabilizing the native conformation of proteins. Several methods have been proposed for predicting the bonding state of cysteines, either using local context or using global protein descriptors. In this paper we introduce an SVM based predictor that operates in two stages. The first stage is a multi-class classifier that operates at the protein level. The second stage is a binary classifier that refines the prediction by exploiting local context enriched with evolutionary information in the form of multiple alignment profiles. The prediction accuracy of the system is 83.6% measured by 5-fold cross validation, on a set of 716 proteins from the September 2001 PDB Select dataset.
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半胱氨酸二硫键态预测的两阶段支持向量机结构
半胱氨酸可以形成共价键,称为二硫桥,在稳定蛋白质的天然构象方面起着重要作用。已经提出了几种方法来预测半胱氨酸的结合状态,要么使用局部背景,要么使用全局蛋白质描述符。本文介绍了一种基于支持向量机的预测器,它分两个阶段运行。第一阶段是在蛋白质水平上操作的多类分类器。第二阶段是二元分类器,该分类器通过利用以多个对齐概况的形式丰富进化信息的局部上下文来改进预测。通过5倍交叉验证,该系统对2001年9月PDB Select数据集的716个蛋白质的预测精度为83.6%。
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