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September 25, 2017, Filed Under: 2018

Gene expression signatures of mating system evolution

Citation:

Renn SCP, Machado HE, Duftner N, Sessa AK, Harris RM, Hofmann HA. Gene expression signatures of mating system evolution. Genome [Internet].

Publisher’s Version

Abstract

The diversity of mating systems among animals is astounding. Importantly, similar mating systems have evolved even across distantly related taxa. However, our understanding of the mechanisms underlying these convergently evolved phenotypes is limited. Here, we examine on a genomic scale the neuromolecular basis of social organization in Ectodini cichlids from Lake Tanganyika. Using field collected males and females of four closely related species representing two independent evolutionary transitions from polygyny to monogamy, we take a comparative transcriptomic approach to test the hypothesis that these independent transitions have recruited similar gene sets. Our results demonstrate that while lineage and species exert a strong influence on neural gene expression profiles, social phenotype can also drive gene expression evolution. Specifically, 331 genes (~6% of those assayed) were associated with monogamous mating systems independent of species or sex. Among these genes, we find a strong bias (4:1 ratio) toward genes with increased expression in monogamous individuals. A highly conserved nonapeptide system known to be involved in the regulation of social behavior across animals was not associated with mating system in our analysis. Overall, our findings suggest deep molecular homologies underlying the convergent or parallel evolution of monogamy in different lineages of Ectodini cichlids.

renn_et_al_2018.pdf

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