Frequent Substring-Based Sequence Classification with an Ensemble of Support Vector Machines Trained Using Reduced Amino Acid Alphabets

Charith D. Chitraranjan, Loai Al Nimer, O. Azzam, Saeed Salem, A. Denton, M. Iqbal, S. Kianian
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引用次数: 4

Abstract

We propose a frequent pattern-based algorithm for predicting functions and localizations of proteins from their primary structure (amino acid sequence). We use reduced alphabets that capture the higher rate of substitution between amino acids that are physiochemically similar. Frequent sub strings are mined from the training sequences, transformed into different alphabets, and used as features to train an ensemble of SVMs. We evaluate the performance of our algorithm using protein sub-cellular localization and protein function datasets. Pair-wise sequence-alignment-based nearest neighbor and basic SVM k-gram classifiers are included as comparison algorithms. Results show that the frequent sub string-based SVM classifier demonstrates better performance compared with other classifiers on the sub-cellular localization datasets and it performs competitively with the nearest neighbor classifier on the protein function datasets. Our results also show that the use of reduced alphabets provides statistically significant performance improvements for half of the classes studied.
基于频繁子字符串的序列分类,支持向量机集合使用约简氨基酸字母表训练
我们提出了一种基于频繁模式的算法,用于预测蛋白质的初级结构(氨基酸序列)的功能和定位。我们使用简化的字母表来捕获物理化学上相似的氨基酸之间更高的取代率。从训练序列中挖掘频繁子字符串,转换成不同的字母,并将其用作特征来训练支持向量机集合。我们使用蛋白质亚细胞定位和蛋白质功能数据集来评估算法的性能。比较算法包括基于成对序列对齐的最近邻和基本SVM k-gram分类器。结果表明,基于频繁子字符串的SVM分类器在亚细胞定位数据集上的性能优于其他分类器,在蛋白质功能数据集上的性能优于最近邻分类器。我们的结果还表明,使用简化的字母为所研究的一半的类提供了统计上显着的性能改进。
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