Predicting of Oxidoreductase and Lyase Subclasses by Using Support Vector Machine

Y. Wang, Xiuzhen Hu
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引用次数: 4

Abstract

Based on enzyme sequence, using composite vector with amino acid composition, low frequency of power spectral density, predicted secondary structure, value of autocorrelation function and motif frequency to express the information of sequence, an approach of support vector machine (SVM) for predicting 18 subclasses of oxidoreductases and 6 subclasses of lyases is proposed. By the Jackknife test, the overall success rates are 89. 9% and 95.1%, our predictive results are better than pervious results Keywords-enzyme, ¦Â-hairpin motif, ligand binding site, support vector machine, minimum redundancy maximum relevance.
用支持向量机预测氧化还原酶和裂解酶亚类
以酶序列为基础,利用氨基酸组成、功率谱密度低频、预测二级结构、自相关函数值和基序频率等复合载体表达酶序列信息,提出了一种支持向量机(SVM)预测氧化还原酶18个亚类和酶解酶6个亚类的方法。通过Jackknife测试,总体成功率为89。关键词:酶,Â-hairpin基序,配体结合位点,支持向量机,最小冗余,最大相关性。
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