Genome association study through nonlinear mixed models revealed new candidate genes for pig growth curves

Authors

  • Fabyano Fonseca e Silva Federal University of Viçosa; Dept. of Animal Science
  • Maria Fernanda Betancur Zambrano University of Nariño; Dept. of Animal Science
  • Luis Varona University of Zaragoza; Dept. of Anatomy, Embryology and Genetics
  • Leonardo Siqueira Glória Federal University of Viçosa; Dept. of Animal Science
  • Paulo Sávio Lopes Federal University of Viçosa; Dept. of Animal Science
  • Marcos Vinícius Gualberto Barbosa Silva Embrapa Dairy Cattle; R. Eugênio do Nascimento
  • Wagner Arbex Embrapa Dairy Cattle; R. Eugênio do Nascimento
  • Sirlene Fernandes Lázaro Federal University of Viçosa; Dept. of Animal Science
  • Marcos Deon Vilela de Resende Embrapa Forestry; Estrada da Ribeira
  • Simone Eliza Facioni Guimarães Federal University of Viçosa; Dept. of Animal Science

DOI:

https://doi.org/10.1590/1678-992x-2016-0023

Keywords:

SNP markers, body weight, longitudinal data

Abstract

Genome association analyses have been successful in identifying quantitative trait loci (QTLs) for pig body weights measured at a single age. However, when considering the whole weight trajectories over time in the context of genome association analyses, it is important to look at the markers that affect growth curve parameters. The easiest way to consider them is via the two-step method, in which the growth curve parameters and marker effects are estimated separately, thereby resulting in a reduction of the statistical power and the precision of estimates. One efficient solution is to adopt nonlinear mixed models (NMM), which enables a joint modeling of the individual growth curves and marker effects. Our aim was to propose a genome association analysis for growth curves in pigs based on NMM as well as to compare it with the traditional two-step method. In addition, we also aimed to identify the nearest candidate genes related to significant SNP (single nucleotide polymorphism) markers. The NMM presented a higher number of significant SNPs for adult weight (A) and maturity rate (K), and provided a direct way to test SNP significance simultaneously for both the A and K parameters. Furthermore, all significant SNPs from the two-step method were also reported in the NMM analysis. The ontology of the three candidate genes (SH3BGRL2, MAPK14, and MYL9) derived from significant SNPs (simultaneously affecting A and K) allows us to make inferences with regards to their contribution to the pig growth process in the population studied.

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Published

2017-02-01

Issue

Section

Biometry, Modeling and Statistics

How to Cite

Genome association study through nonlinear mixed models revealed new candidate genes for pig growth curves. (2017). Scientia Agricola, 74(1), 1-7. https://doi.org/10.1590/1678-992x-2016-0023