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Including gene networks to predict calving difficulty in Holstein, Brown Swiss and Jersey cattle

TLDR
Regions identified in the genome were in the proximity of previously described quantitative trait loci that would most likely affect calving difficulty by altering the feto-pelvic proportion and did not outperform regular GBLUP models.
Abstract
Calving difficulty or dystocia has a great economic impact in the US dairy industry. Reported risk factors associated with calving difficulty are feto-pelvic disproportion, gestation length and conformation. Different dairy cattle breeds have different incidence of calving difficulty, with Holstein having the highest dystocia rates and Jersey the lowest. Genomic selection becomes important especially for complex traits with low heritability, where the accuracy of conventional selection is lower. However, for complex traits where a large number of genes influence the phenotype, genome-wide association studies showed limitations. Biological networks could overcome some of these limitations and better capture the genetic architecture of complex traits. In this paper, we characterize Holstein, Brown Swiss and Jersey breed-specific dystocia networks and employ them in genomic predictions. Marker association analysis identified single nucleotide polymorphisms explaining the largest average proportion of genetic variance on BTA18 in Holstein, BTA25 in Brown Swiss, and BTA15 in Jersey. Gene networks derived from the genome-wide association included 1272 genes in Holstein, 1454 genes in Brown Swiss, and 1455 genes in Jersey. Furthermore, 256 genes in Holstein network, 275 genes in the Brown Swiss network, and 253 genes in the Jersey network were within previously reported dystocia quantitative trait loci. The across-breed network included 80 genes, with 9 genes being within previously reported dystocia quantitative trait loci. The gene-gene interactions in this network differed in the different breeds. Gene ontology enrichment analysis of genes in the networks showed Regulation of ARF GTPase was very significant (FDR ≤ 0.0098) on Holstein. Neuron morphogenesis and differentiation was the term most enriched (FDR ≤ 0.0539) on the across-breed network. Genomic prediction models enriched with network-derived relationship matrices did not outperform regular GBLUP models. Regions identified in the genome were in the proximity of previously described quantitative trait loci that would most likely affect calving difficulty by altering the feto-pelvic proportion. Inclusion of identified networks did not increase prediction accuracy. The approach used in this paper could be extended to any instance with asymmetric distribution of phenotypes, for example, resistance to disease data.

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Journal ArticleDOI

Genetic and epigenetic architecture of paternal origin contribute to gestation length in cattle.

TL;DR: The findings support that the paternal genome and epigenome can impact gestation length potentially through regulation of the embryonic development and reveal that gestation length shares genetic and epigenetic architecture in sperm with calving ability, body depth, and conception rate.

Distribution and location of genetic effects for dairy traits.

TL;DR: Results validate quantitative genetic assumptions that most traits are due to the contributions of a large number of genes of small additive effect, rather than support the finite locus model.
Journal ArticleDOI

Breed- and trait-specific associations define the genetic architecture of calving performance traits in cattle.

TL;DR: Several putative quantitative trait loci (QTL) regions associated with calving performance both within and across dairy and beef breeds were identified, although the majority were both breed- and trait-specific.
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Genetic Features of Reproductive Traits in Bovine and Buffalo: Lessons From Bovine to Buffalo.

TL;DR: In this paper, a review aimed to compile the heritability and genome-wide association studies (GWASs) related to reproductive traits in both bovine and buffalos and tried to highlight the possible disciplines which should benefit buffalo breeding.
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Genomic evaluation of binary traits in dairy cattle by considering genotype × environment interactions

TL;DR: In this paper , the genotype by environment (G×E) interaction via single-and multi-trait animal models for binary traits in dairy cattle was assessed via phenotypic and genomic data.
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