Abstract
AbstractMetabolites represent the ultimate response of biological systems, so metabolomics is considered to link the genotypes and phenotypes. Feed efficiency is one of the most important phenotypes in sustainable pig production and is the main breeding goal trait. We utilized metabolic and genomic datasets from a total of 108 pigs from our own previously published studies that involved 59 Duroc and 49 Landrace pigs with data on feed efficiency (residual feed intake or RFI), genotype (PorcineSNP80 BeadChip) data and metabolomic data (45 final metabolite datasets derived from LC-MS system). Utilizing these datasets, our main aim was to identify genetic variants (single-nucleotide polymorphisms or SNPs) that affect 45 different metabolite concentrations in plasma collected at the start and end of the performance testing of pigs categorized as high or low in their feed efficiency (based on RFI values). Genome-wide significant genetic variants could be then used as potential genetic or biomarkers in breeding programs for feed efficiency. The other objective was to reveal the biochemical mechanisms underlying genetic variations for pigs’ feed efficiency. In order to achieve these objectives, we firstly conducted a metabolite genome-wide association study (mGWAS) based on mixed linear models and found 152 genome-wide significant SNPs (P-value < 1.06E-06) in association with 17 metabolites that included 90 significant SNPs annotated to 52 genes. On chromosome one alone, 51 significant SNPs associated with isovalerylcarnitine and propionylcarnitine were found to be in strong linkage disequilibrium (LD). SNPs in strong LD annotated to FBXL4 and CCNC consisted of two haplotype blocks where three SNPs (ALGA0004000, ALGA0004041 and ALGA0004042) were in the intron regions of FBXL4 and CCNC. The interaction network revealed that CCNC and FBXL4 were linked by the hub gene N6AMT1 that was associated with isovalerylcarnitine and propionylcarnitine. Moreover, three metabolites (i.e., isovalerylcarnitine, propionylcarnitine and pyruvic acid) were clustered in one group based on the low-high RFI pigs.This study performed a comprehensive metabolite-based GWAS analysis for pigs with differences in feed efficiency and provided significant metabolites for which there is a significant genetic variation as well as biological interaction networks. The identified metabolite genetic variants, genes and networks in high versus low feed efficient pigs could be considered as potential genetic or biomarkers for feed efficiency.
Publisher
Cold Spring Harbor Laboratory
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