ProbPFP:一种结合配分函数、隐马尔可夫模型和粒子群优化的多序列比对算法

Qing Zhan, Nan Wang, Shuilin Jin, Renjie Tan, Qinghua Jiang, Yadong Wang
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引用次数: 6

摘要

在进行多序列比对(MSA)时,两两序列比对的替代分数是必不可少的。隐马尔可夫模型(HMM)和配分函数是两种被广泛选择的方法。近年来的研究表明,将配分函数与隐马尔可夫算法相结合,或对隐马尔可夫算法的参数进行优化,可以提高对齐精度。然而,这些研究忽略了优化HMM与配分函数的结合,而配分函数可以大大提高对准精度。本文提出了一种将配分函数与粒子群优化算法(PSO)优化的HMM相结合的新算法ProbPFP。本文首先利用粒子群算法对隐马尔可夫模型的参数进行优化,然后将隐马尔可夫模型的后验概率与配分函数的后验概率相结合,计算出综合替代评分。为了评估ProbPFP的有效性,将ProbPFP与Probalign、CONTRAlign、ProbCons、MUSCLE、MAFFT、COBALT、T-Coffee、ClustalΩ、ClustalW、DIALIGN、PicXAA、Align-m和KALIGN2这13种领先的矫正器进行比较。结果表明,ProbPFP在两个基准集OXBench和SABmark上的平均和对(sum-of-pairs, SP)得分最高(0.9015,0.5984),平均总列(total - column, TC)得分最高(0.8170,0.3956),在基准集BAliBASE上的平均SP得分第二高(0.8250),平均TC得分第二高(0.6703)。我们还利用ProbPFP和其他4种领先的比对工具生成的比对结果,从TreeFam数据库中重建了6个家族的系统发育树。结果表明,ProbPFP生成的比对树更接近参考树。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ProbPFP: A Multiple Sequence Alignment Algorithm Combining Partition Function and Hidden Markov Model with Particle Swarm Optimization
The substitution score for pairwise sequence alignment is essential in conducting multiple sequence alignment (MSA). The Hidden Markov Model (HMM) and partition function are two methods that are widely chosen for this purpose. Recent studies showed that the accuracy of alignment could be improved by combining the partition function and HMM algorithms or optimizing the parameters of HMM. However, the combination of optimized HMM and partition function, which could greatly improve the accuracy of alignment, was ignored in these studies. This study presents a new MSA algorithm known as ProbPFP that combines the partition function and the HMM optimized by particle swarm optimization (PSO). In this work, the parameters of HMM were first optimized by the PSO algorithm, and the posterior probabilities derived from the HMM were subsequently combined with the results derived from the partition function to compute a comprehensive substitution score for alignment. To assess the effectiveness, ProbPFP was compared with 13 leading aligners, namely, Probalign, CONTRAlign, ProbCons, MUSCLE, MAFFT, COBALT, T-Coffee, ClustalΩ, ClustalW, DIALIGN, PicXAA, Align-m and KALIGN2. The results showed that ProbPFP achieved the highest average sum-of-pairs (SP) scores (0.9015, 0.5984) and average total column (TC) scores (0.8170, 0.3956) on two benchmark sets OXBench and SABmark, as well as the second highest average SP score (0.8250) and average TC score (0.6703) on the benchmark set BAliBASE. We also used the alignments generated by ProbPFP and 4 other leading aligners to rebuild the phylogenetic trees of 6 families from the TreeFam database. The result suggests that the trees from the alignments generated by ProbPFP are closer to the reference trees.
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