从系统发生学中进行深度学习,以进行多样化分析。

IF 6.1 1区 生物学 Q1 EVOLUTIONARY BIOLOGY Systematic Biology Pub Date : 2023-12-30 DOI:10.1093/sysbio/syad044
Sophia Lambert, Jakub Voznica, Hélène Morlon
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引用次数: 0

摘要

出生-死亡(BD)模型与物种系统发生相结合,被广泛用于研究过去的物种多样化动态。目前的推断方法通常依赖于基于似然法的方法。这些方法不具有通用性,因为每次提出一个新模型时,都必须建立一个新的似然公式;对于某些模型,这样的公式甚至是不可行的。在这种情况下,深度学习可以带来解决方案,因为深度神经网络可以通过训练来学习模拟与参数值之间的关系,将其作为一个回归问题。在本文中,我们将最近从病原体系统动力学中开发的一种深度学习方法应用于多样化推断,并将其适用性扩展到从与性状数据相关的系统发育中推断与状态相关的多样化模型。我们展示了该方法在时间恒定同质 BD 模型和二元状态物种分化与灭绝模型中的准确性和时间效率。最后,我们通过重新分析灵长类动物的系统发育及其作为种子传播者的相关生态角色,说明了所提出的推断机制的用途。深度学习推断至少提供了与基于似然法的推断相同的准确性,同时速度快了几个数量级,为在该领域部署未来模型提供了一种前景广阔的新推断方法。
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Deep Learning from Phylogenies for Diversification Analyses.

Birth-death (BD) models are widely used in combination with species phylogenies to study past diversification dynamics. Current inference approaches typically rely on likelihood-based methods. These methods are not generalizable, as a new likelihood formula must be established each time a new model is proposed; for some models, such a formula is not even tractable. Deep learning can bring solutions in such situations, as deep neural networks can be trained to learn the relation between simulations and parameter values as a regression problem. In this paper, we adapt a recently developed deep learning method from pathogen phylodynamics to the case of diversification inference, and we extend its applicability to the case of the inference of state-dependent diversification models from phylogenies associated with trait data. We demonstrate the accuracy and time efficiency of the approach for the time-constant homogeneous BD model and the Binary-State Speciation and Extinction model. Finally, we illustrate the use of the proposed inference machinery by reanalyzing a phylogeny of primates and their associated ecological role as seed dispersers. Deep learning inference provides at least the same accuracy as likelihood-based inference while being faster by several orders of magnitude, offering a promising new inference approach for the deployment of future models in the field.

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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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