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基于谱系的长期物种形成模型中的重建树。

The reconstructed tree in the lineage-based model of protracted speciation.

作者信息

Lambert Amaury, Morlon Hélène, Etienne Rampal S

机构信息

Laboratoire de Probabilités et Modèles Aléatoires CNRS UMR 7599, UPMC Univ Paris 06, Paris, France,

出版信息

J Math Biol. 2015 Jan;70(1-2):367-97. doi: 10.1007/s00285-014-0767-x. Epub 2014 Mar 11.

Abstract

A popular line of research in evolutionary biology is the use of time-calibrated phylogenies for the inference of diversification processes. This requires computing the likelihood of a given ultrametric tree as the reconstructed tree produced by a given model of diversification. Etienne and Rosindell in Syst Biol 61(2):204-213, (2012) proposed a lineage-based model of diversification, called protracted speciation, where species remain incipient during a random duration before turning good species, and showed that this can explain the slowdown in lineage accumulation observed in real phylogenies. However, they were unable to provide a general likelihood formula. Here, we present a likelihood formula for protracted speciation models, where rates at which species turn good or become extinct can depend both on their age and on time. Our only restrictive assumption is that speciation rate does not depend on species status. Our likelihood formula utilizes a new technique, based on the contour of the phylogenetic tree and first developed by Lambert in Ann Probab 38(1):348-395, (2010). We consider the reconstructed trees spanned by all extant species, by all good extant species, or by all representative species, which are either good extant species or incipient species representative of some good extinct species. Specifically, we prove that each of these trees is a coalescent point process, that is, a planar, ultrametric tree where the coalescence times between two consecutive tips are independent, identically distributed random variables. We characterize the common distribution of these coalescence times in some, biologically meaningful, special cases for which the likelihood reduces to an elegant analytical formula or becomes numerically tractable.

摘要

进化生物学中一个热门的研究方向是利用时间校准的系统发育树来推断物种分化过程。这需要计算给定超度量树的似然性,将其作为由给定物种分化模型产生的重建树。艾蒂安和罗辛德尔在《系统生物学》61(2):204 - 213,(2012)中提出了一种基于谱系的物种分化模型,称为“长期物种形成”,其中物种在转变为成熟物种之前会在一段随机时间内处于初始状态,并表明这可以解释在实际系统发育中观察到的谱系积累放缓现象。然而,他们无法给出一个通用的似然性公式。在这里,我们给出了长期物种形成模型的似然性公式,其中物种转变为成熟物种或灭绝的速率既可以取决于它们的年龄,也可以取决于时间。我们唯一的限制性假设是物种形成速率不依赖于物种状态。我们的似然性公式利用了一种新技术,该技术基于系统发育树的轮廓,最初由兰伯特在《概率论年刊》38(1):348 - 395,(2010)中开发。我们考虑由所有现存物种、所有现存成熟物种或所有代表性物种(即现存成熟物种或代表某些已灭绝成熟物种的初始物种)所跨越的重建树。具体来说,我们证明这些树中的每一个都是一个合并点过程,即一个平面超度量树,其中两个连续末端之间的合并时间是独立同分布的随机变量。我们在一些具有生物学意义的特殊情况下刻画了这些合并时间的共同分布,在这些情况下,似然性简化为一个简洁的解析公式或变得易于数值计算。

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