Leveraging graphical model techniques to study evolution on phylogenetic networks.

IF 4.7 2区 生物学 Q1 BIOLOGY Philosophical Transactions of the Royal Society B: Biological Sciences Pub Date : 2025-02-13 Epub Date: 2025-02-20 DOI:10.1098/rstb.2023.0310
Benjamin Teo, Paul Bastide, Cécile Ané
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Abstract

The evolution of molecular and phenotypic traits is commonly modelled using Markov processes along a phylogeny. This phylogeny can be a tree, or a network if it includes reticulations, representing events such as hybridization or admixture. Computing the likelihood of data observed at the leaves is costly as the size and complexity of the phylogeny grows. Efficient algorithms exist for trees, but cannot be applied to networks. We show that a vast array of models for trait evolution along phylogenetic networks can be reformulated as graphical models, for which efficient belief propagation algorithms exist. We provide a brief review of belief propagation on general graphical models, then focus on linear Gaussian models for continuous traits. We show how belief propagation techniques can be applied for exact or approximate (but more scalable) likelihood and gradient calculations, and prove novel results for efficient parameter inference of some models. We highlight the possible fruitful interactions between graphical models and phylogenetic methods. For example, approximate likelihood approaches have the potential to greatly reduce computational costs for phylogenies with reticulations.This article is part of the theme issue '"A mathematical theory of evolution": phylogenetic models dating back 100 years'.

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利用图形模型技术研究系统发育网络上的进化。
分子和表型性状的进化通常使用沿系统发育的马尔可夫过程进行建模。这个系统发育可以是一个树,也可以是一个网络,如果它包含网状结构,则表示杂交或混合等事件。随着系统发育的规模和复杂性的增长,计算在叶子上观察到的数据的可能性是昂贵的。对于树存在有效的算法,但不能应用于网络。我们表明,沿着系统发育网络的大量特征进化模型可以重新表述为图形模型,其中存在有效的信念传播算法。我们简要回顾了一般图形模型上的信念传播,然后重点讨论了连续特征的线性高斯模型。我们展示了如何将信念传播技术应用于精确或近似(但更具可扩展性)的似然和梯度计算,并证明了一些模型的有效参数推断的新结果。我们强调了图形模型和系统发育方法之间可能富有成效的相互作用。例如,近似似然方法有可能大大减少网络系统发育的计算成本。这篇文章是主题“进化的数学理论”的一部分:追溯到100年前的系统发育模型。
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来源期刊
CiteScore
11.80
自引率
1.60%
发文量
365
审稿时长
3 months
期刊介绍: The journal publishes topics across the life sciences. As long as the core subject lies within the biological sciences, some issues may also include content crossing into other areas such as the physical sciences, social sciences, biophysics, policy, economics etc. Issues generally sit within four broad areas (although many issues sit across these areas): Organismal, environmental and evolutionary biology Neuroscience and cognition Cellular, molecular and developmental biology Health and disease.
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