Deep Learning from Phylogenies for Diversification Analyses

Author:

Lambert Sophia12ORCID,Voznica Jakub34ORCID,Morlon Hélène1ORCID

Affiliation:

1. Institut de Biologie de l'École Normale Supérieure, École Normale Supérieure, CNRS, INSERM, Université Paris Sciences et Lettres , 46 Rue d'Ulm, 75005 Paris , France

2. Institute of Ecology and Evolution, Department of Biology , 5289 University of Oregon, Eugene, OR 97403 , USA

3. Institut Pasteur, Université Paris Cité, Unité Bioinformatique Evolutive , 25-28 Rue du Dr Roux, 75015 Paris , France

4. Unité de Biologie Computationnelle, USR 3756 CNRS , 25-28 Rue du Dr Roux, 75015 Paris , France

Abstract

Abstract 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. [Birth–death models; convolutional neural networks; deep learning; diversification; phylogeny representation; macroevolution.]

Funder

PSL IRIS Science des données, données de la science and the Fondation pour la Recherche Médicale

Ecole Normale Supérieure Paris-Saclay

ED Frontières de l’Innovation en Recherche et Education, Programme Bettencourt

Publisher

Oxford University Press (OUP)

Subject

Genetics,Ecology, Evolution, Behavior and Systematics

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