蛋白质序列的自动聚类

Jiong Yang, Wei Wang
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引用次数: 17

摘要

近年来,分析蛋白质序列数据变得越来越重要。以前在这个领域的大部分工作主要集中在建立分类模型上。本文研究了未标记蛋白序列的自动聚类问题。作为统计学和计算机科学中被广泛认可的技术,聚类在检测未知对象类别和揭示对象之间隐藏的相关性方面非常有用。阻碍直接对蛋白质序列进行聚类的一个困难是缺乏一种可以有效计算的有效的相似性度量。因此,我们通过探索蛋白质序列所具有的显著统计特性,提出了一种新的蛋白质序列聚类模型。在原有的概率后缀树中引入了不精确概率的概念,以监控经验测度的收敛性,指导聚类过程。结果表明,该方法可以成功地发现有意义的家庭,而不需要从预先标记的“训练数据”中学习不同家庭的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards automatic clustering of protein sequences
Analyzing protein sequence data becomes increasingly important recently. Most previous work on this area has mainly focused on building classification models. In this paper we investigate in the problem of automatic clustering of unlabeled protein sequences. As a widely recognized technique in statistics and computer science, clustering has been proven very useful in detecting unknown object categories and revealing hidden correlations among objects. One difficulty, that prevents clustering from being performed directly on protein sequence is the lack of an effective similarity measure that can be computed efficiently. Therefore, we propose a novel model for protein sequence cluster by exploring significant statistical properties possessed by the sequences. The concept of imprecise probabilities are introduced to the original probabilistic suffix tree to monitor the convergence of the empirical measurement and to guide the clustering process. It is demonstrated that the proposed method can successfully discover meaningful families without the necessity of learning models of different families from pre-labeled "training data".
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