gPartition: An Efficient Alignment Partitioning Program for Genome Datasets

Le Kim Thu, Do Duc Dong, Bui Ngoc Thang, Hoang Thi Diep, Nguyen Phuong Thao, L. Vinh
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Abstract

Phylogenomics, or evolutionary inference based on genome alignment, is becoming prominent thanks to next-generation sequencing technologies. In model-based phylogenomics, the partition scheme has a significant impact on inference performance, both in terms of log-likelihoods and computation time. Therefore, finding an optimal partition scheme, or partitioning, is critical in a phylogenomic inference pipeline. To accomplish this, one needs to divide the alignment sites into disjoint partitions so that the sites of similar evolutionary models are in the same partition. Computational partitioning is a recent approach of increasing interest due to its capability of modeling the site-rate heterogeneity within a single gene. State-of-the-art computational partitioning methods, such as mPartition or RatePartition, are, however, ineffective on long alignments of millions of sites. In this paper, we introduce gPartition, a new computational partitioning method leveraging both the site rate and the best-fit substitution model. We conducted experiments on recently published alignments to compare gPartition with mPartition and RatePartition. gPartition was orders of magnitude faster than other methods. The AIC score demonstrated that gPartition produced partition schemes that were better or comparable to mPartition. gPartition outperformed RatePartition on all examined alignments. We implemented our proposed method in the gPartition program to help researchers partition genome alignments with millions of sites more efficiently.
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gPartition:一个高效的基因组数据集比对分区程序
由于下一代测序技术,系统基因组学或基于基因组比对的进化推断正变得越来越突出。在基于模型的系统基因组学中,划分方案在对数似然和计算时间方面对推理性能有显著影响。因此,在系统基因组推断管道中,找到一个最优的分区方案或分区是至关重要的。要做到这一点,需要将对齐位点划分为不相交的分区,以便相似进化模型的位点在同一分区中。计算划分是最近的一种越来越受关注的方法,因为它能够模拟单个基因内的位点率异质性。然而,最先进的计算分区方法,如mPartition或RatePartition,在数百万个站点的长对齐上是无效的。在本文中,我们介绍了gPartition,一种利用站点率和最佳拟合替代模型的新的计算分区方法。我们对最近发布的对齐进行了实验,以比较gPartition与mPartition和RatePartition。gPartition的速度比其他方法快几个数量级。AIC分数表明gPartition产生的分区方案比mPartition更好或相当。gPartition在所有检查的对齐上都优于RatePartition。我们在gPartition程序中实现了我们提出的方法,以帮助研究人员更有效地划分数百万个位点的基因组比对。
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