Evaluating kin and group selection as tools for quantitative analysis of microbial data
Smith, Jeff; Inglis, Fredrik (2021), Evaluating kin and group selection as tools for quantitative analysis of microbial data, Dryad, Dataset, https://doi.org/10.5061/dryad.g4f4qrfm5
Kin selection and multilevel selection theory are often used to interpret experiments about the evolution of cooperation and social behaviour among microbes. But while these experiments provide rich, detailed fitness data, theory is mostly used as a conceptual heuristic. Here, evaluate how kin and multilevel selection theory perform as quantitative analysis tools. We reanalyse published microbial datasets and show that the canonical fitness models of both theories are almost always poor fits because they use statistical regressions misspecified for the strong selection and non- additive effects we show are widespread in microbial systems. We identify analytical practices in empirical research that suggest how theory might be improved and show that analysing both individual and group fitness outcomes helps clarify the biology of selection. A data-driven approach to theory thus shows how kin and multilevel selection both have untapped potential as tools for quantitative understanding of social evolution in all branches of life.
Division of Environmental Biology, Award: DEB1146375,DEB1204352
Division of Integrative Organismal Systems, Award: IOS1256416