4.7 Article

Heterostyly accelerates diversification via reduced extinction in primroses

出版社

ROYAL SOC
DOI: 10.1098/rspb.2014.0075

关键词

angiosperm evolution; heterostyly; phylogenetic methods; plant breeding system; speciation

资金

  1. University of Zurich
  2. G. & A. Claraz Foundation
  3. Austrian Science Fund (FWF) [P16104]
  4. Austrian Science Fund (FWF) [P16104] Funding Source: Austrian Science Fund (FWF)

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The exceptional species diversity of flowering plants, exceeding that of their sister group more than 250-fold, is especially evident in floral innovations, interactions with pollinators and sexual systems. Multiple theories, emphasizing flower-pollinator interactions, genetic effects of mating systems or high evolvability, predict that floral evolution profoundly affects angiosperm diversification. However, consequences for speciation and extinction dynamics remain poorly understood. Here, we investigate trajectories of species diversification focusing on heterostyly, a remarkable floral syndrome where outcrossing is enforced via cross-compatible floral morphs differing in placement of their respective sexual organs. Heterostyly evolved at least 20 times independently in angiosperms. Using Darwin's model for heterostyly, the primrose family, we show that heterostyly accelerates species diversification via decreasing extinction rates rather than increasing speciation rates, probably owing to avoidance of the negative genetic effects of selfing. However, impact of heterostyly appears to differ over short and long evolutionary time-scales: the accelerating effect of heterostyly on lineage diversification is manifest only over long evolutionary time-scales, whereas recent losses of heterostyly may prompt ephemeral bursts of speciation. Our results suggest that temporal or clade-specific conditions may ultimately determine the net effects of specific traits on patterns of species diversification.

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