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Evolutionary inference via the Poisson Indel Process

机译:通过Poisson Indel过程进行进化推理

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摘要

We address the problem of the joint statistical inference of phylo-genetic trees and multiple sequence alignments from unaligned molecular sequences. This problem is generally formulated in terms of string-valued evolutionary processes along the branches of a phylogenetic tree. The classic evolutionary process, the TKF91 model [Thome JL, Kishino H, Felsenstein J (1991) J Mol Evol 33(2):114-124] is a continuous-time Markov chain model composed of insertion, deletion, and substitution events. Unfortunately, this model gives rise to an intractable computational problem: The computation of the marginal likelihood under the TKF91 model is exponential in the number of taxa. In this work, we present a stochastic process, the Poisson Indel Process (PIP), in which the complexity of this computation is reduced to linear. The Poisson Indel Process is closely related to the TKF91 model, differing only in its treatment of insertions, but it has a global characterization as a Poisson process on the phylogeny. Standard results for Poisson processes allow key computations to be decoupled, which yields the favorable computational profile of inference under the PIP model. We present illustrative experiments in which Bayesian inference under the PIP model is compared with separate inference of phytogenies and alignments.
机译:我们解决了系统进化树和来自未比对分子序列的多序列比对的联合统计推断问题。通常根据沿系统发育树的分支的字符串值进化过程来表达此问题。经典的进化过程TKF91模型[Thome JL,Kishino H,Felsenstein J(1991)J Mol Evol 33(2):114-124]是由插入,删除和取代事件组成的连续时间马尔可夫链模型。不幸的是,这个模型引起了一个棘手的计算问题:在TKF91模型下边际可能性的计算在分类单元数量上是指数级的。在这项工作中,我们提出了一个随机过程,即Poisson Indel过程(PIP),其中该计算的复杂性降低为线性。 Poisson Indel过程与TKF91模型密切相关,仅在插入处理方面有所不同,但它在系统发育上具有Poisson过程的全局特征。泊松过程的标准结果允许对关键计算进行解耦,从而在PIP模型下产生有利的推理计算轮廓。我们提供了说明性实验,其中在PIP模型下进行了贝叶斯推理,并与单独的植物遗传学和比对推理进行了比较。

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