| Literature DB >> 30940077 |
Juan Pablo Nani1,2, Fernanda M Rezende1,3, Francisco Peñagaricano4,5.
Abstract
BACKGROUND: Fertility is among the most important economic traits in dairy cattle. Genomic prediction for cow fertility has received much attention in the last decade, while bull fertility has been largely overlooked. The goal of this study was to assess genomic prediction of dairy bull fertility using markers with large effect and functional annotation data. Sire conception rate (SCR) was used as a measure of service sire fertility. Dataset consisted of 11.5 k U.S. Holstein bulls with SCR records and about 300 k single nucleotide polymorphism (SNP) markers. The analyses included the use of both single-kernel and multi-kernel predictive models fitting either all SNPs, markers with large effect, or markers with presumed functional roles, such as non-synonymous, synonymous, or non-coding regulatory variants.Entities:
Keywords: Biological informed models; Kernel-based prediction; Sire conception rate
Mesh:
Substances:
Year: 2019 PMID: 30940077 PMCID: PMC6444482 DOI: 10.1186/s12864-019-5644-y
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Fig. 1Whole-genome scan for dominance effects on Sire Conception Rate. a Manhattan plot showing the SNP significance across the bovine genome for dominance effects on Sire Conception Rate. b Boxplots showing the observed differences in Sire Conception Rate for each genotype of the five significant dominant markers
Number of genetic markers mapped to different functional SNP classes
| Class | Definition | Variant description | Number of SNP |
|---|---|---|---|
| 5′ Region | Upstream gene variant | Located within 5000 bases of the 5′ of an annotated gene | 7280 |
| 5’UTR | Located in the 5′ untranslated region of an annotated gene | ||
| 3′ Region | Downstream gene variant | Located within 5000 bases of the 3′ of an annotated gene | 4122 |
| 3’UTR | Located in the 3′ untranslated region of an annotated gene | ||
| Non-synonymous | Missense | Changes one base resulting in a different amino acid sequence, but the length of the polypeptide is preserved. | 1144 |
| Nonsense | Changes one base resulting in a premature stop codon, leading to a shortened polypeptide. | ||
| Synonymous | Synonymous | Changes one base but resulting in the same amino acid. | 2090 |
| ncRNA | ncRNA | Located in a non-coding RNA gene | 1556 |
Fig. 2Predicting ability of alternative whole-genome predictive models. Predictive correlation (left) and mean squared error of prediction (right) was evaluated for each model. Blue boxes represent the ‘Base’ model that includes the whole SNP dataset (295,159 SNP). Light blue boxes represent the ‘Base + 5 SNP’ model that includes five non-additive SNPs fitted as fixed effects
Fig. 3Predictive ability of different functional SNP subsets. Predictive correlation (top) and mean squared error of prediction (bottom) for each set of functional SNPs (blue), compared with the same number of SNPs but randomly sampled across the entire genome (light blue)
Fig. 4Predicting ability of alternative single-kernel and multi-kernel whole-genome predictive models. Predictive correlation (top) and mean squared error of prediction (bottom) for alternative single-kernel and multi-kernel whole-genome predictive models