Lagrange-NG: The next generation of Lagrange

Author:

Bettisworth Ben1ORCID,Smith Stephen A2ORCID,Stamatakis Alexandros13ORCID

Affiliation:

1. Computational Molecular Evolution Group, Heidelberg Institute for Theoretical Studies , Heidelberg , Germany

2. Ecology and Evolutionary Biology, University of Michigan , Ann Arbor , United States

3. Institute for Theoretical Informatics, Karlsruhe Institute of Technology , Karlsruhe , Germany

Abstract

Abstract Computing ancestral ranges via the Dispersion Extinction and Cladogensis (DEC) model of biogeography is characterized by an exponential number of states relative to the number of regions considered. This is because the DEC model requires computing a large matrix exponential, which typically accounts for up to 80% of overall runtime. Therefore, the kinds of biogeographical analyses that can be conducted under the DEC model are limited by the number of regions under consideration. In this work, we present a completely redesigned efficient version of the popular tool Lagrange which is up to 49 times faster with multithreading enabled, and is also 26 times faster when using only one thread. We call this new version Lagrange-NG (Lagrange-Next Generation). The increased computational efficiency allows Lagrange-NG to analyze datasets with a large number of regions in a reasonable amount of time, up to 12 regions in approximately 18 min. We achieve these speedups using a relatively new method of computing the matrix exponential based on Krylov subspaces. In order to validate the correctness of Lagrange-NG, we also introduce a novel metric on range distributions for trees so that researchers can assess the difference between any two range inferences. Finally, Lagrange-NG exhibits substantially higher adherence to coding quality standards. It improves a respective software quality indicator as implemented in the SoftWipe tool from average (5.5; Lagrange) to high (7.8; Lagrange-NG). Lagrange-NG is freely available under GPL2. [Biogeography; Phylogenetics; DEC Model.]

Funder

European Union’s Horizon 2020

Marie Sklodowska-Curie

Klaus Tschira Foundation

Publisher

Oxford University Press (OUP)

Subject

Genetics,Ecology, Evolution, Behavior and Systematics

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