Classification of Protein Sequences Based on Word Segmentation Methods

Yang Yang, Bao-Liang Lu, Wen-Yun Yang
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引用次数: 15

Abstract

Protein sequences contain great potential revealing protein function, structure families and evolution information. Classifying protein sequences into different functional groups or families based on their sequence patterns has attracted lots of research efforts in the last decade. A key issue of these classification systems is how to interpret and represent protein sequences, which largely determines the performance of classifiers. Inspired by text classification and Chinese word segmentation techniques, we propose a segmentation-based feature extraction method. The extracted features include selected words, i.e., substrings of the sequences, and also motifs specified in public database. They are segmented out and their occurrence frequencies are recorded as the feature vector values. We conducted experiments on two protein data sets. One is a set of SCOP families, and the other is GPCR family. Experiments in classification of SCOP protein families show that the proposed method not only results in an extremely condensed feature set but also achieves higher accuracy than the methods based on whole k-spectrum feature space. And it also performs comparably to the most powerful classifiers for GPCR level I and level II subfamily recognition with 92.6 and 88.8% accuracy, respectively.
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基于分词方法的蛋白质序列分类
蛋白质序列具有揭示蛋白质功能、结构家族和进化信息的巨大潜力。基于蛋白质序列模式将蛋白质序列划分为不同的功能基团或家族是近十年来研究的热点。这些分类系统的一个关键问题是如何解释和表示蛋白质序列,这在很大程度上决定了分类器的性能。受文本分类和中文分词技术的启发,我们提出了一种基于分词的特征提取方法。提取的特征包括选定的词,即序列的子串,以及公共数据库中指定的motif。它们被分割出来,它们的出现频率被记录为特征向量值。我们在两个蛋白质数据集上进行了实验。一个是SCOP家族,另一个是GPCR家族。对SCOP蛋白家族的分类实验表明,该方法不仅得到了一个极为浓缩的特征集,而且比基于整个k谱特征空间的方法具有更高的分类精度。在GPCR I级和II级亚家族识别方面,它的准确率分别为92.6%和88.8%,与最强大的分类器相当。
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