Abstract

When organisms need to perform multiple tasks they face a fundamental tradeoff: no phenotype can be optimal at all tasks. This situation was recently analyzed using Pareto optimality, showing that tradeoffs between tasks lead to phenotypes distributed on low dimensional polygons in trait space. The vertices of these polygons are archetypes—phenotypes optimal at a single task. This theory was applied to examples from animal morphology and gene expression. Here we ask whether Pareto optimality theory can apply to life history traits, which include longevity, fecundity and mass. To comprehensively explore the geometry of life history trait space, we analyze a dataset of life history traits of 2105 endothermic species. We find that, to a first approximation, life history traits fall on a triangle in log-mass log-longevity space. The vertices of the triangle suggest three archetypal strategies, exemplified by bats, shrews and whales, with specialists near the vertices and generalists in the middle of the triangle. To a second approximation, the data lies in a tetrahedron, whose extra vertex above the mass-longevity triangle suggests a fourth strategy related to carnivory. Each animal species can thus be placed in a coordinate system according to its distance from the archetypes, which may be useful for genome-scale comparative studies of mammalian aging and other biological aspects. We further demonstrate that Pareto optimality can explain a range of previous studies which found animal and plant phenotypes which lie in triangles in trait space. This study demonstrates the applicability of multi-objective optimization principles to understand life history traits and to infer archetypal strategies that suggest why some mammalian species live much longer than others of similar mass.

Highlights

  • Mammals can have very different lifespans, and it is of great interest to understand why longevity differs between species

  • We find that the mass-longevity dataset for mammals and birds is well-described by a triangle in trait space

  • To comprehensively study the geometry of life history space of endothermic animals, we analyzed a large dataset of life history traits taken from AnAge build 13 [43]

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Summary

Introduction

Mammals can have very different lifespans, and it is of great interest to understand why longevity differs between species. More recent work used multi-dimensional linear [12] regression to connect multiple traits such as brain size with longevity [13,14,15,16,17].This diversity of lifespan is of interest, since it may point to ways of understanding the regulation of longevity [2,3,18,19,20,21]. Life history traits such as longevity and reproductive parameters are closely linked with the ecological niche and environmental interactions of each species [22,23,24,25,26]

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