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Long-term experimental evolution decouples size and production costs in Escherichia coli
journal contribution
posted on 2023-10-23, 02:31 authored by D J Marshall, Martino MalerbaMartino Malerba, T Lines, A L Sezmis, C M Hasan, R E Lenski, M J McDonaldBody size covaries with population dynamics across life's domains. Metabolism may impose fundamental constraints on the coevolution of size and demography, but experimental tests of the causal links remain elusive. We leverage a 60,000-generation experiment in which Escherichia coli populations evolved larger cells to examine intraspecific metabolic scaling and correlations with demographic parameters. Over the course of their evolution, the cells have roughly doubled in size relative to their ancestors. These larger cells have metabolic rates that are absolutely higher, but relative to their size, they are lower. Metabolic theory successfully predicted the relations between size, metabolism, and maximum population density, including support for Damuth's law of energy equivalence, such that populations of larger cells achieved lower maximum densities but higher maximum biomasses than populations of smaller cells. The scaling of metabolism with cell size thus predicted the scaling of size with maximum population density. In stark contrast to standard theory, however, populations of larger cells grew faster than those of smaller cells, contradicting the fundamental and intuitive assumption that the costs of building new individuals should scale directly with their size. The finding that the costs of production can be decoupled from size necessitates a reevaluation of the evolutionary drivers and ecological consequences of biological size more generally.
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Journal
Proceedings of the National Academy of Sciences of the United States of AmericaVolume
119Article number
e220071311Pagination
1-AugLocation
Washington, D.C.Publisher DOI
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ISSN
0027-8424eISSN
1091-6490Language
engPublication classification
C1 Refereed article in a scholarly journalUsage metrics
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