在线树扩展有助于解决贝叶斯系统发育中的可扩展性问题。

IF 6.1 1区 生物学 Q1 EVOLUTIONARY BIOLOGY
Jakub Truszkowski, Allison Perrigo, David Broman, Fredrik Ronquist, Alexandre Antonelli
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引用次数: 0

摘要

贝叶斯系统发育学现在正面临一个临界点。在过去的20年里,贝叶斯方法重塑了系统发育推断,并因其高准确性、量化推断不确定性的能力以及在所使用的模型中适应进化过程多个方面的可能性而广受欢迎。不幸的是,贝叶斯方法在计算上是昂贵的,并且典型的应用最多涉及几百个序列。在基因组数据迅速扩展和进化分析范围不断扩大的时代,这是一个问题,迫使研究人员采用不太准确但更快的方法,如最大简约和最大可能性。这是否意味着贝叶斯方法的末日?不一定。在这里,我们讨论了一些最近提出的方法,这些方法可以帮助大大扩大进化问题的贝叶斯分析。我们专注于两个特定的方面:在线系统发育学,其中新的数据序列被添加到现有的分析中,以及用于可扩展贝叶斯推理的马尔可夫链蒙特卡罗(MCMC)的替代方案。我们确定了5个具体挑战,并讨论了如何克服这些挑战。我们相信,在线系统发育方法和序列蒙特卡罗方法具有很大的前景,并有可能将树推断速度提高几个数量级。我们呼吁共同努力,通过在线系统发育学加快实时树扩展方法的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Online tree expansion could help solve the problem of scalability in Bayesian phylogenetics.

Online tree expansion could help solve the problem of scalability in Bayesian phylogenetics.

Bayesian phylogenetics is now facing a critical point. Over the last 20 years, Bayesian methods have reshaped phylogenetic inference and gained widespread popularity due to their high accuracy, the ability to quantify the uncertainty of inferences and the possibility of accommodating multiple aspects of evolutionary processes in the models that are used. Unfortunately, Bayesian methods are computationally expensive, and typical applications involve at most a few hundred sequences. This is problematic in the age of rapidly expanding genomic data and increasing scope of evolutionary analyses, forcing researchers to resort to less accurate but faster methods, such as maximum parsimony and maximum likelihood. Does this spell doom for Bayesian methods? Not necessarily. Here, we discuss some recently proposed approaches that could help scale up Bayesian analyses of evolutionary problems considerably. We focus on two particular aspects: online phylogenetics, where new data sequences are added to existing analyses, and alternatives to Markov chain Monte Carlo (MCMC) for scalable Bayesian inference. We identify 5 specific challenges and discuss how they might be overcome. We believe that online phylogenetic approaches and Sequential Monte Carlo hold great promise and could potentially speed up tree inference by orders of magnitude. We call for collaborative efforts to speed up the development of methods for real-time tree expansion through online phylogenetics.

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来源期刊
Systematic Biology
Systematic Biology 生物-进化生物学
CiteScore
13.00
自引率
7.70%
发文量
70
审稿时长
6-12 weeks
期刊介绍: Systematic Biology is the bimonthly journal of the Society of Systematic Biologists. Papers for the journal are original contributions to the theory, principles, and methods of systematics as well as phylogeny, evolution, morphology, biogeography, paleontology, genetics, and the classification of all living things. A Points of View section offers a forum for discussion, while book reviews and announcements of general interest are also featured.
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