A generalization of Profile Hidden Markov Model (PHMM) using one-by-one dependency between sequences

Vahid Rezaei Tabar, H. Pezeshk
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Abstract

The Profile Hidden Markov Model (PHMM) can be poor at capturing dependency between observations because of the statistical assumptions it makes. To overcome this limitation, the dependency between residues in a multiple sequence alignment (MSA) which is the representative of a PHMM can be combined with the PHMM. Based on the fact that sequences appearing in the final MSA are written based on their similarity; the one-by-one dependency between corresponding amino acids of two current sequences can be append to PHMM. This perspective makes it possible to consider a generalization of PHMM. For estimating the parameters of generalized PHMM (emission and transition probabilities), we introduce new forward and backward algorithms. The performance of generalized PHMM is discussed by applying it to the twenty protein families in Pfam database. Results show that the generalized PHMM significantly increases the accuracy of ordinary PHMM.
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利用序列间一一依赖关系的轮廓隐马尔可夫模型(PHMM)的推广
剖面隐马尔可夫模型(PHMM)在捕捉观测值之间的依赖性方面可能很差,因为它所做的统计假设。为了克服这一限制,可以将多序列比对(multiple sequence alignment, MSA)中残基之间的依赖关系与多序列比对(PHMM)相结合。基于出现在最终MSA中的序列是基于它们的相似性来编写的事实;两个当前序列对应氨基酸之间的一一依赖关系可以附加到PHMM中。从这个角度来看,可以考虑PHMM的泛化。为了估计广义PHMM的参数(发射和跃迁概率),我们引入了新的前向和后向算法。通过对Pfam数据库中20个蛋白质家族的分析,讨论了广义PHMM的性能。结果表明,广义PHMM显著提高了普通PHMM的准确率。
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