Fast and accurate multi-class protein fold recognition with spatial sample kernels.

Pavel Kuksa, Pai-Hsi Huang, Vladimir Pavlovic
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引用次数: 0

Abstract

Establishing structural or functional relationship between sequences, for instance to infer the structural class of an unannotated protein, is a key task in biological sequence analysis. Recent computational methods such as profile and neighborhood mismatch kernels have shown very promising results for protein sequence classification, at the cost of high computational complexity. In this study we address the multi-class sequence classification problems using a class of string-based kernels, the sparse spatial sample kernels (SSSK), that are both biologically motivated and efficient to compute. The proposed methods can work with very large databases of protein sequences and show substantial improvements in computing time over the existing methods. Application of the SSSK to the multi-class protein prediction problems (fold recognition and remote homology detection) yields significantly better performance than existing state-of-the-art algorithms.

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利用空间样本核快速准确地识别多类蛋白质折叠。
建立序列之间的结构或功能关系,例如推断未注释蛋白质的结构类别,是生物序列分析的关键任务。最近的计算方法,如轮廓和邻域不匹配核,在蛋白质序列分类中显示出非常有希望的结果,但代价是计算复杂度很高。在本研究中,我们使用一类基于字符串的核,即稀疏空间样本核(SSSK)来解决多类序列分类问题,该核既具有生物动机又具有计算效率。所提出的方法可以处理非常大的蛋白质序列数据库,并且在计算时间上比现有方法有了实质性的改进。将SSSK应用于多类蛋白质预测问题(折叠识别和远程同源性检测)的性能明显优于现有的最先进算法。
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