4.7 Article

Genome-wide association analyses based on a multiple-trait approach for modeling feed efficiency

Journal

JOURNAL OF DAIRY SCIENCE
Volume 101, Issue 4, Pages 3140-3154

Publisher

ELSEVIER SCIENCE INC
DOI: 10.3168/jds.2017-13364

Keywords

feed efficiency; genome-wide association; multiple trait

Funding

  1. USDA National Institute of Food and Agriculture (Washington, DC) [2011-68004-30340, 2011-67015-30338]
  2. BBSRC [BB/M010635/1] Funding Source: UKRI
  3. Biotechnology and Biological Sciences Research Council [BB/M010635/1] Funding Source: researchfish

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Genome-wide association (GWA) of feed efficiency (FE) could help target important genomic regions influencing FE. Data provided by an international dairy FE research consortium consisted of phenotypic records on dry matter intakes (DMI), milk energy (MILKE), and metabolic body weight (MBW) on 6,937 cows from 16 stations in 4 counties. Of these cows, 4,916 had genotypes on 57,347 single nucleotide polymorphism (SNP) markers. We compared a GWA analysis based on the more classical residual feed intake (RFI) model with one based on a previously proposed multiple trait (MT) approach for modeling FE using an alternative measure (DMI vertical bar MILKE, MBW). Both models were based on a single-step genomic BLUP procedure that allowed the use of phenotypes from both genotyped and nongenotyped cows. Estimated effects for single SNP markers were small and not statistically important but virtually identical for either FE measure (RFI vs. DMI vertical bar MILKE, MBW). However, upon further refining this analysis to develop joint tests within nonoverlapping 1-Mb windows, significant associations were detected between either measure of FE with a window on each of Bos taurus autosomes BTA12 and BTA26. There was, as expected, no overlap between detected genomic regions for DMI vertical bar MILKE, MBW and genomic regions influencing the energy sink traits (i.e., MILKE and MBW) because of orthogonal relationships clearly defined between the various traits. Conversely, GWA inferences on DMI can be demonstrated to be partly driven by genetic associations between DMI with these same energy sink traits, thereby having clear implications when comparing GWA studies on DMI to GWA studies on FE-like measures such as RFI.

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