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Accurate prediction of protein structural classes by incorporating predicted secondary structure information into the general form of Chou's pseudo amino acid composition

机译:通过将预测的二级结构信息整合到周氏假氨基酸组成的一般形式中,准确预测蛋白质的结构类别

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摘要

Extracting good representation from protein sequence is fundamental for protein structural classes prediction tasks. In this paper, we propose a novel and powerful method to predict protein structural classes based on the predicted secondary structure information. At the feature extraction stage, a 13-dimensional feature vector is extracted to characterize general contents and spatial arrangements of the secondary structural elements of a given protein sequence. Specially, four segment-level features are designed to elevate discriminative ability for proteins from the α / β and α + β classes. After the features are extracted, a multi-class non-linear support vector machine classifier is used to implement protein structural classes prediction. We report extensive experiments comparing the proposed method to the state-of-the-art in protein structural classes prediction on three widely used low-similarity benchmark datasets: FC699, 1189 and 640. Our method achieves competitive performance on prediction accuracies, especially for the overall prediction accuracies which have exceeded the best reported results on all of the three datasets.
机译:从蛋白质序列中提取良好的表征是蛋白质结构类别预测任务的基础。在本文中,我们提出了一种基于预测的二级结构信息来预测蛋白质结构类别的新颖而强大的方法。在特征提取阶段,将提取13维特征向量,以表征给定蛋白质序列二级结构元素的一般内容和空间排列。特别地,设计了四个段级特征以提高对α/β和α+β类蛋白质的判别能力。特征提取后,使用多类非线性支持向量机分类器进行蛋白质结构分类预测。我们报告了广泛的实验,对三种广泛使用的低相似性基准数据集(FC699、1189和640)的蛋白质结构类别预测中的拟议方法与最新技术进行了比较。我们的方法在预测准确度方面具有竞争优势,尤其是对于总体预测准确度已超过三个数据集中所有报告的最佳结果。

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