PLoS Genetics (Sep 2017)

Incomplete dominance of deleterious alleles contributes substantially to trait variation and heterosis in maize.

  • Jinliang Yang,
  • Sofiane Mezmouk,
  • Andy Baumgarten,
  • Edward S Buckler,
  • Katherine E Guill,
  • Michael D McMullen,
  • Rita H Mumm,
  • Jeffrey Ross-Ibarra

DOI
https://doi.org/10.1371/journal.pgen.1007019
Journal volume & issue
Vol. 13, no. 9
p. e1007019

Abstract

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Deleterious alleles have long been proposed to play an important role in patterning phenotypic variation and are central to commonly held ideas explaining the hybrid vigor observed in the offspring of a cross between two inbred parents. We test these ideas using evolutionary measures of sequence conservation to ask whether incorporating information about putatively deleterious alleles can inform genomic selection (GS) models and improve phenotypic prediction. We measured a number of agronomic traits in both the inbred parents and hybrids of an elite maize partial diallel population and re-sequenced the parents of the population. Inbred elite maize lines vary for more than 350,000 putatively deleterious sites, but show a lower burden of such sites than a comparable set of traditional landraces. Our modeling reveals widespread evidence for incomplete dominance at these loci, and supports theoretical models that more damaging variants are usually more recessive. We identify haplotype blocks using an identity-by-decent (IBD) analysis and perform genomic prediction analyses in which we weigh blocks on the basis of complementation for segregating putatively deleterious variants. Cross-validation results show that incorporating sequence conservation in genomic selection improves prediction accuracy for grain yield and other fitness-related traits as well as heterosis for those traits. Our results provide empirical support for an important role for incomplete dominance of deleterious alleles in explaining heterosis and demonstrate the utility of incorporating functional annotation in phenotypic prediction and plant breeding.