27 results on '"Daetwyler, Hans D."'
Search Results
2. Correction: In it for the long run: perspectives on exploiting long-read sequencing in livestock for population scale studies of structural variants
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Nguyen, Tuan V., Vander Jagt, Christy J., Wang, Jianghui, Daetwyler, Hans D., Xiang, Ruidong, Goddard, Michael E., Nguyen, Loan T., Ross, Elizabeth M., Hayes, Ben J., Chamberlain, Amanda J., and MacLeod, Iona M.
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- 2023
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3. In it for the long run: perspectives on exploiting long-read sequencing in livestock for population scale studies of structural variants
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Nguyen, Tuan V., Vander Jagt, Christy J., Wang, Jianghui, Daetwyler, Hans D., Xiang, Ruidong, Goddard, Michael E., Nguyen, Loan T., Ross, Elizabeth M., Hayes, Ben J., Chamberlain, Amanda J., and MacLeod, Iona M.
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- 2023
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4. Correction to: Expression of mitochondrial protein genes encoded by nuclear and mitochondrial genomes correlate with energy metabolism in dairy cattle
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Dorji, Jigme, Vander Jagt, Christy J., Garner, Josie B., Marett, Leah C., Mason, Brett A., Reich, Coralie M., Xiang, Ruidong, Clark, Emily L., Cocks, Benjamin G., Chamberlain, Amanda J., MacLeod, Iona M., and Daetwyler, Hans D.
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- 2022
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5. Mitochondrial sequence variants: testing imputation accuracy and their association with dairy cattle milk traits.
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Dorji, Jigme, Chamberlain, Amanda J., Reich, Coralie M., VanderJagt, Christy J., Nguyen, Tuan V., Daetwyler, Hans D., and MacLeod, Iona M.
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MITOCHONDRIAL DNA ,PEARSON correlation (Statistics) ,SINGLE nucleotide polymorphisms ,GENOME-wide association studies ,DAIRY cattle - Abstract
Background: Mitochondrial genomes differ from the nuclear genome and in humans it is known that mitochondrial variants contribute to genetic disorders. Prior to genomics, some livestock studies assessed the role of the mitochondrial genome but these were limited and inconclusive. Modern genome sequencing provides an opportunity to re-evaluate the potential impact of mitochondrial variation on livestock traits. This study first evaluated the empirical accuracy of mitochondrial sequence imputation and then used real and imputed mitochondrial sequence genotypes to study the role of mitochondrial variants on milk production traits of dairy cattle. Results: The empirical accuracy of imputation from Single Nucleotide Polymorphism (SNP) panels to mitochondrial sequence genotypes was assessed in 516 test animals of Holstein, Jersey and Red breeds using Beagle software and a sequence reference of 1883 animals. The overall accuracy estimated as the Pearson's correlation squared (R
2 ) between all imputed and real genotypes across all animals was 0.454. The low accuracy was attributed partly to the majority of variants having low minor allele frequency (MAF < 0.005) but also due to variants in the hypervariable D-loop region showing poor imputation accuracy. Beagle software provides an internal estimate of imputation accuracy (DR2), and 10 percent of the total 1927 imputed positions showed DR2 greater than 0.9 (N = 201). There were 151 sites with empirical R2 > 0.9 (of 954 variants segregating in the test animals) and 138 of these overlapped the sites with DR2 > 0.9. This suggests that the DR2 statistic is a reasonable proxy to select sites that are imputed with higher accuracy for downstream analyses. Accordingly, in the second part of the study mitochondrial sequence variants were imputed from real mitochondrial SNP panel genotypes of 9515 Australian Holstein, Jersey and Red dairy cattle. Then, using only sites with DR2 > 0.900 and real genotypes, we undertook a genome-wide association study (GWAS) for milk, fat and protein yields. The GWAS mitochondrial SNP effects were not significant. Conclusion: The accuracy of imputation of mitochondrial genotypes from the SNP panel to sequence was generally low. The Beagle DR2 statistic enabled selection of sites imputed with higher empirical accuracy. We recommend building larger reference populations with mitochondrial sequence to improve the accuracy of imputing less common variants and ensuring that SNP panels include common variants in the D-loop region. [ABSTRACT FROM AUTHOR]- Published
- 2024
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6. A conditional multi-trait sequence GWAS discovers pleiotropic candidate genes and variants for sheep wool, skin wrinkle and breech cover traits
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Bolormaa, Sunduimijid, Swan, Andrew A., Stothard, Paul, Khansefid, Majid, Moghaddar, Nasir, Duijvesteijn, Naomi, van der Werf, Julius H. J., Daetwyler, Hans D., and MacLeod, Iona M.
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- 2021
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7. Expression quantitative trait loci in sheep liver and muscle contribute to variations in meat traits
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Yuan, Zehu, Sunduimijid, Bolormaa, Xiang, Ruidong, Behrendt, Ralph, Knight, Matthew I., Mason, Brett A., Reich, Coralie M., Prowse-Wilkins, Claire, Vander Jagt, Christy J., Chamberlain, Amanda J., MacLeod, Iona M., Li, Fadi, Yue, Xiangpeng, and Daetwyler, Hans D.
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- 2021
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8. From FAANG to fork: application of highly annotated genomes to improve farmed animal production
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Clark, Emily L., Archibald, Alan L., Daetwyler, Hans D., Groenen, Martien A. M., Harrison, Peter W., Houston, Ross D., Kühn, Christa, Lien, Sigbjørn, Macqueen, Daniel J., Reecy, James M., Robledo, Diego, Watson, Mick, Tuggle, Christopher K., and Giuffra, Elisabetta
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- 2020
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9. Expression of mitochondrial protein genes encoded by nuclear and mitochondrial genomes correlate with energy metabolism in dairy cattle
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Dorji, Jigme, Vander Jagt, Christy J., Garner, Josie B., Marett, Leah C., Mason, Brett A., Reich, Coralie M., Xiang, Ruidong, Clark, Emily L., Cocks, Benjamin G., Chamberlain, Amanda J., MacLeod, Iona M., and Daetwyler, Hans D.
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- 2020
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10. Genomic prediction based on selected variants from imputed whole-genome sequence data in Australian sheep populations
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Moghaddar, Nasir, Khansefid, Majid, van der Werf, Julius H. J., Bolormaa, Sunduimijid, Duijvesteijn, Naomi, Clark, Samuel A., Swan, Andrew A., Daetwyler, Hans D., and MacLeod, Iona M.
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- 2019
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11. Accuracy of imputation to whole-genome sequence in sheep
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Bolormaa, Sunduimijid, Chamberlain, Amanda J., Khansefid, Majid, Stothard, Paul, Swan, Andrew A., Mason, Brett, Prowse-Wilkins, Claire P., Duijvesteijn, Naomi, Moghaddar, Nasir, van der Werf, Julius H., Daetwyler, Hans D., and MacLeod, Iona M.
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- 2019
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12. Analyses of inter-individual variations of sperm DNA methylation and their potential implications in cattle
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Liu, Shuli, Fang, Lingzhao, Zhou, Yang, Santos, Daniel J.A., Xiang, Ruidong, Daetwyler, Hans D., Chamberlain, Amanda J., Cole, John B., Li, Cong-jun, Yu, Ying, Ma, Li, Zhang, Shengli, and Liu, George E.
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- 2019
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13. Using imputed whole-genome sequence data to improve the accuracy of genomic prediction for parasite resistance in Australian sheep
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Al Kalaldeh, Mohammad, Gibson, John, Duijvesteijn, Naomi, Daetwyler, Hans D., MacLeod, Iona, Moghaddar, Nasir, Lee, Sang Hong, and van der Werf, Julius H. J.
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- 2019
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14. Genome variants associated with RNA splicing variations in bovine are extensively shared between tissues
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Xiang, Ruidong, Hayes, Ben J., Vander Jagt, Christy J., MacLeod, Iona M., Khansefid, Majid, Bowman, Phil J., Yuan, Zehu, Prowse-Wilkins, Claire P., Reich, Coralie M., Mason, Brett A., Garner, Josie B., Marett, Leah C., Chen, Yizhou, Bolormaa, Sunduimijid, Daetwyler, Hans D., Chamberlain, Amanda J., and Goddard, Michael E.
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- 2018
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15. Genomic prediction of the polled and horned phenotypes in Merino sheep
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Duijvesteijn, Naomi, Bolormaa, Sunduimijid, Daetwyler, Hans D., and van der Werf, Julius H. J.
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- 2018
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16. Selection signatures in tropical cattle are enriched for promoter and coding regions and reveal missense mutations in the damage response gene HELB.
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Naval-Sánchez, Marina, Porto-Neto, Laercio R., Cardoso, Diercles F., Hayes, Ben J., Daetwyler, Hans D., Kijas, James, and Reverter, Antonio
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CATTLE genetics ,MISSENSE mutation ,BREEDING ,CATTLE ,BEEF cattle ,ZEBUS ,DNA helicases ,DOMESTICATION of animals - Abstract
Background: Distinct domestication events, adaptation to different climatic zones, and divergent selection in productive traits have shaped the genomic differences between taurine and indicine cattle. In this study, we assessed the impact of artificial selection and environmental adaptation by comparing whole-genome sequences from European taurine and Asian indicine breeds and from African cattle. Next, we studied the impact of divergent selection by exploiting predicted and experimental functional annotation of the bovine genome. Results: We identified selective sweeps in beef cattle taurine and indicine populations, including a 430-kb selective sweep on indicine cattle chromosome 5 that is located between 47,670,001 and 48,100,000 bp and spans five genes, i.e. HELB, IRAK3, ENSBTAG00000026993, GRIP1 and part of HMGA2. Regions under selection in indicine cattle display significant enrichment for promoters and coding genes. At the nucleotide level, sites that show a strong divergence in allele frequency between European taurine and Asian indicine are enriched for the same functional categories. We identified nine single nucleotide polymorphisms (SNPs) in coding regions that are fixed for different alleles between subspecies, eight of which were located within the DNA helicase B (HELB) gene. By mining information from the 1000 Bull Genomes Project, we found that HELB carries mutations that are specific to indicine cattle but also found in taurine cattle, which are known to have been subject to indicine introgression from breeds, such as N'Dama, Anatolian Red, Marchigiana, Chianina, and Piedmontese. Based on in-house genome sequences, we proved that mutations in HELB segregate independently of the copy number variation HMGA2-CNV, which is located in the same region. Conclusions: Major genomic sequence differences between Bos taurus and Bos indicus are enriched for promoter and coding regions. We identified a 430-kb selective sweep in Asian indicine cattle located on chromosome 5, which carries SNPs that are fixed in indicine populations and located in the coding sequences of the HELB gene. HELB is involved in the response to DNA damage including exposure to ultra-violet light and is associated with reproductive traits and yearling weight in tropical cattle. Thus, HELB likely contributed to the adaptation of tropical cattle to their harsh environment. [ABSTRACT FROM AUTHOR]
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- 2020
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17. Meta-analysis of sequence-based association studies across three cattle breeds reveals 25 QTL for fat and protein percentages in milk at nucleotide resolution.
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Pausch, Hubert, Emmerling, Reiner, Gredler-Grandl, Birgit, Fries, Ruedi, Daetwyler, Hans D., and Goddard, Michael E.
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NUCLEOTIDES ,NUCLEIC acids ,DATA analysis ,CATTLE breeds ,LIVESTOCK breeds - Abstract
Background: Genotyping and whole-genome sequencing data have been generated for hundreds of thousands of cattle. International consortia used these data to compile imputation reference panels that facilitate the imputation of sequence variant genotypes for animals that have been genotyped using dense microarrays. Association studies with imputed sequence variant genotypes allow for the characterization of quantitative trait loci (QTL) at nucleotide resolution particularly when individuals from several breeds are included in the mapping populations. Results: We imputed genotypes for 28 million sequence variants in 17,229 cattle of the Braunvieh, Fleckvieh and Holstein breeds in order to compile large mapping populations that provide high power to identify QTL for milk production traits. Association tests between imputed sequence variant genotypes and fat and protein percentages in milk uncovered between six and thirteen QTL (P < 1e-8) per breed. Eight of the detected QTL were significant in more than one breed. We combined the results across breeds using meta-analysis and identified a total of 25 QTL including six that were not significant in the within-breed association studies. Two missense mutations in the ABCG2 (p.Y581S, rs43702337, P = 4.3e-34) and GHR (p.F279Y, rs385640152, P = 1.6e-74) genes were the top variants at QTL on chromosomes 6 and 20. Another known causal missense mutation in the DGAT1 gene (p.A232K, rs109326954, P = 8.4e-1436) was the second top variant at a QTL on chromosome 14 but its allelic substitution effects were inconsistent across breeds. It turned out that the conflicting allelic substitution effects resulted from flaws in the imputed genotypes due to the use of a multi-breed reference population for genotype imputation. Conclusions: Many QTL for milk production traits segregate across breeds and across-breed meta-analysis has greater power to detect such QTL than within-breed association testing. Association testing between imputed sequence variant genotypes and phenotypes of interest facilitates identifying causal mutations provided the accuracy of imputation is high. However, true causal mutations may remain undetected when the imputed sequence variant genotypes contain flaws. It is highly recommended to validate the effect of known causal variants in order to assess the ability to detect true causal mutations in association studies with imputed sequence variants. [ABSTRACT FROM AUTHOR]
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- 2017
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18. Multiple-trait QTL mapping and genomic prediction for wool traits in sheep.
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Bolormaa, Sunduimijid, Swan, Andrew A., Brown, Daniel J., Hatcher, Sue, Moghaddar, Nasir, van der Werf, Julius H., Goddard, Michael E., and Daetwyler, Hans D.
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SHEEP genetics ,GENOMES ,SHEEP breeding - Abstract
Background: The application of genomic selection to sheep breeding could lead to substantial increases in profitability of wool production due to the availability of accurate breeding values from single nucleotide polymorphism (SNP) data. Several key traits determine the value of wool and influence a sheep's susceptibility to fleece rot and fly strike. Our aim was to predict genomic estimated breeding values (GEBV) and to compare three methods of combining information across traits to map polymorphisms that affect these traits. Methods: GEBV for 5726 Merino and Merino crossbred sheep were calculated using BayesR and genomic best linear unbiased prediction (GBLUP) with real and imputed 510,174 SNPs for 22 traits (at yearling and adult ages) including wool production and quality, and breech conformation traits that are associated with susceptibility to fly strike. Accuracies of these GEBV were assessed using fivefold cross-validation. We also devised and compared three approximate multi-trait analyses to map pleiotropic quantitative trait loci (QTL): a multi-trait genome-wide association study and two multi-trait methods that use the output from BayesR analyses. One BayesR method used local GEBV for each trait, while the other used the posterior probabilities that a SNP had an effect on each trait. Results: BayesR and GBLUP resulted in similar average GEBV accuracies across traits (~0.22). BayesR accuracies were highest for wool yield and fibre diameter (>0.40) and lowest for skin quality and dag score (<0.10). Generally, accuracy was higher for traits with larger reference populations and higher heritability. In total, the three multi-trait analyses identified 206 putative QTL, of which 20 were common to the three analyses. The two BayesR multi-trait approaches mapped QTL in a more defined manner than the multi-trait GWAS. We identified genes with known effects on hair growth (i.e. FGF5, STAT3, KRT86, and ALX4) near SNPs with pleiotropic effects on wool traits. Conclusions: The mean accuracy of genomic prediction across wool traits was around 0.22. The three multi-trait analyses identified 206 putative QTL across the ovine genome. Detailed phenotypic information helped to identify likely candidate genes. [ABSTRACT FROM AUTHOR]
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- 2017
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19. Evaluation of the accuracy of imputed sequence variant genotypes and their utility for causal variant detection in cattle.
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Pausch, Hubert, MacLeod, Iona M., Fries, Ruedi, Emmerling, Reiner, Bowman, Phil J., Daetwyler, Hans D., and Goddard, Michael E.
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CATTLE locomotion ,ANIMAL locomotion ,GENOTYPES ,NUCLEOTIDE sequencing ,HEMOGLOBIN polymorphisms - Abstract
Background: The availability of dense genotypes and whole-genome sequence variants from various sources offers the opportunity to compile large datasets consisting of tens of thousands of individuals with genotypes at millions of polymorphic sites that may enhance the power of genomic analyses. The imputation of missing genotypes ensures that all individuals have genotypes for a shared set of variants. Results: We evaluated the accuracy of imputation from dense genotypes to whole-genome sequence variants in 249 Fleckvieh and 450 Holstein cattle using Minimac and FImpute. The sequence variants of a subset of the animals were reduced to the variants that were included on the Illumina BovineHD genotyping array and subsequently inferred in silico using either within- or multi-breed reference populations. The accuracy of imputation varied considerably across chromosomes and dropped at regions where the bovine genome contains segmental duplications. Depending on the imputation strategy, the correlation between imputed and true genotypes ranged from 0.898 to 0.952. The accuracy of imputation was higher with Minimac than FImpute particularly for variants with a low minor allele frequency. Using a multi-breed reference population increased the accuracy of imputation, particularly when FImpute was used to infer genotypes. When the sequence variants were imputed using Minimac, the true genotypes were more correlated to predicted allele dosages than best-guess genotypes. The computing costs to impute 23,256,743 sequence variants in 6958 animals were ten-fold higher with Minimac than FImpute. Association studies with imputed sequence variants revealed seven quantitative trait loci (QTL) for milk fat percentage. Two causal mutations in the DGAT1 and GHR genes were the most significantly associated variants at two QTL on chromosomes 14 and 20 when Minimac was used to infer genotypes. Conclusions: The population-based imputation of millions of sequence variants in large cohorts is computationally feasible and provides accurate genotypes. However, the accuracy of imputation is low in regions where the genome contains large segmental duplications or the coverage with array-derived single nucleotide polymorphisms is poor. Using a reference population that includes individuals from many breeds increases the accuracy of imputation particularly at low-frequency variants. Considering allele dosages rather than best-guess genotypes as explanatory variables is advantageous to detect causal mutations in association studies with imputed sequence variants. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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20. Detection and validation of structural variations in bovine whole-genome sequence data.
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Long Chen, Chamberlain, Amanda J., Reich, Coralie M., Daetwyler, Hans D., and Hayes, Ben J.
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BOS ,CATTLE genetics ,GENOMES ,SINGLE nucleotide polymorphisms ,ANIMAL variation ,ANIMAL mutation ,GENETICS - Abstract
Background: Several examples of structural variation (SV) affecting phenotypic traits have been reported in cattle. Currently the identification of SV from whole-genome sequence data (WGS) suffers from a high false positive rate. Our aim was to construct a high quality set of SV calls in cattle using WGS data. First, we tested two SV detection programs, Breakdancer and Pindel, and the overlap of these methods, on simulated sequence data to determine their precision and sensitivity. We then identified population SV from WGS of 252 Holstein and 64 Jersey bulls based on the overlapping calls from the two programs. In addition, we validated an overlapped SV set in 28 twice-sequenced Holstein individuals, and in another two validated sets (one for each breed) that were transmitted from sire to son. We also tested whether highly conserved gene sets across eukaryotes and recently expanded gene families in bovine were depleted and enriched, respectively, for SV. Results: In empirical WGS data, 17,518 SV covering 27.36 Mb were found in the Holstein population and 4285 SV covering 8.74 Mb in the Jersey population, of which 4.62 Mb of SV overlapped between Holsteins and Jerseys. A total of 11,534 candidate SV covering 5.64 Mb were validated in the 28 twice-sequenced individuals, while 3.49 and 0.67 Mb of SV were validated from Holstein and Jersey sire-son transmission, respectively. Only eight of 237 core eukaryotic genes had at least a 50-bp overlap with an SV from our validated sets, suggesting that conserved genes are depleted for SV (p < 0.05). In addition, we observed that recently expanded gene families were significantly more associated with SV than other genes. Long interspersed nuclear elements-1 were enriched for deletions when compared to the rest of the genome (p = 0.0035). Conclusions: We reported SV from 252 Holstein and 64 Jersey individuals. A considerable proportion of Jersey population SV (53.5%) were also found in Holstein. In contrast, about 76.90% sire-son transmission validated SV were present in Jerseys and Holsteins. The enrichment of SV in expanding gene families suggests that SV can be a source of genetic variation for evolution. [ABSTRACT FROM AUTHOR]
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- 2017
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21. Detailed phenotyping identifies genes with pleiotropic effects on body composition.
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Bolormaa, Sunduimijid, Hayes, Ben J., van der Werf, Julius H. J., Pethick, David, Goddard, Michael E., and Daetwyler, Hans D.
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BODY composition ,HUMAN genetic variation ,GENETIC pleiotropy ,GLYCOGEN synthases ,PHENOTYPES - Abstract
Background: Genetic variation in both the composition and distribution of fat and muscle in the body is important to human health as well as the healthiness and value of meat from cattle and sheep. Here we use detailed phenotyping and a multi-trait approach to identify genes explaining variation in body composition traits. Results: A multi-trait genome wide association analysis of 56 carcass composition traits measured on 10,613 sheep with imputed and real genotypes on 510,174 SNPs was performed. We clustered 71 significant SNPs into five groups based on their pleiotropic effects across the 56 traits. Among these 71 significant SNPs, one group of 11 SNPs affected the fatty acid profile of themuscle and were close to 8 genes involved in fatty acid or triglyceride synthesis. Another group of 23 SNPs had an effect on mature size, based on their pattern of effects across traits, but the genes near this group of SNPs did not share any obvious function. Many of the likely candidate genes near SNPs with significant pleiotropic effects on the 56 traits are involved in intra-cellular signalling pathways. Among the significant SNPs were some with a convincing candidate gene due to the function of the gene (e.g. glycogen synthase affecting glycogen concentration) or because the same gene was associated with similar traits in other species. Conclusions: Using a multi-trait analysis increased the power to detect associations between SNP and body composition traits compared with the single trait analyses. Detailed phenotypic information helped to identify a convincing candidate in some cases as did information from other species. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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22. Accuracy of genotype imputation based on random and selected reference sets in purebred and crossbred sheep populations and its effect on accuracy of genomic prediction.
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Moghaddar, Nasir, Gore, Klint P., Daetwyler, Hans D., Hayes, Ben J., and van der Werf, Julius H. J.
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GENOTYPES ,SHEEP crossbreeding ,SHEEP genetics ,SINGLE nucleotide polymorphisms ,GENOMICS - Abstract
Background: The objectives of this study were to investigate the accuracy of genotype imputation from low (12k) to medium (50k Illumina-Ovine) SNP (single nucleotide polymorphism) densities in purebred and crossbred Merino sheep based on a random or selected reference set and to evaluate the impact of using imputed genotypes on accuracy of genomic prediction. Methods: Imputation validation sets were composed of random purebred or crossbred Merinos, while imputation reference sets were of variable sizes and included random purebred or crossbred Merinos or a group of animals that were selected based on high genetic relatedness to animals in the validation set. The Beagle software program was used for imputation and accuracy of imputation was assessed based on the Pearson correlation coefficient between observed and imputed genotypes. Genomic evaluation was performed based on genomic best linear unbiased prediction and its accuracy was evaluated as the Pearson correlation coefficient between genomic estimated breeding values using either observed (12k/50k) or imputed genotypes with varying levels of imputation accuracy and accurate estimated breeding values based on progeny-tests. Results: Imputation accuracy increased as the size of the reference set increased. However, accuracy was higher for purebred Merinos that were imputed from other purebred Merinos (on average 0.90 to 0.95 based on 1000 to 3000 animals) than from crossbred Merinos (0.78 to 0.87 based on 1000 to 3000 animals) or from non-Merino purebreds (on average 0.50). The imputation accuracy for crossbred Merinos based on 1000 to 3000 other crossbred Merino ranged from 0.86 to 0.88. Considerably higher imputation accuracy was observed when a selected reference set with a high genetic relationship to target animals was used vs. a random reference set of the same size (0.96 vs. 0.88, respectively). Accuracy of genomic prediction based on 50k genotypes imputed with high accuracy (0.88 to 0.99) decreased only slightly (0.0 to 0.67 % across traits) compared to using observed 50k genotypes. Accuracy of genomic prediction based on observed 12k genotypes was higher than accuracy based on lowly accurate (0.62 to 0.86) imputed 50k genotypes. [ABSTRACT FROM AUTHOR]
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- 2015
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23. Accuracy of pedigree and genomic predictions of carcass and novel meat quality traits in multi-breed sheep data assessed by cross-validation.
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Daetwyler, Hans D., Swan, Andrew A., van der Werf, Julius H. J., and Hayes, Ben J.
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ANIMAL carcasses ,MEAT quality ,SHEEP ,BAYESIAN analysis ,REGRESSION analysis - Abstract
Background: Genomic predictions can be applied early in life without impacting selection candidates. This is especially useful for meat quality traits in sheep. Carcass and novel meat quality traits were predicted in a multi-breed sheep population that included Merino, Border Leicester, Polled Dorset and White Suffolk sheep and their crosses. Methods: Prediction of breeding values by best linear unbiased prediction (BLUP) based on pedigree information was compared to prediction based on genomic BLUP (GBLUP) and a Bayesian prediction method (BayesR). Cross-validation of predictions across sire families was used to evaluate the accuracy of predictions based on the correlation of predicted and observed values and the regression of observed on predicted values was used to evaluate bias of methods. Accuracies and regression coefficients were calculated using either phenotypes or adjusted phenotypes as observed variables. Results and conclusions: Genomic methods increased the accuracy of predicted breeding values to on average 0.2 across traits (range 0.07 to 0.31), compared to an average accuracy of 0.09 for pedigree-based BLUP. However, for some traits with smaller reference population size, there was no increase in accuracy or it was small. No clear differences in accuracy were observed between GBLUP and BayesR. The regression of phenotypes on breeding values was close to 1 for all methods, indicating little bias, except for GBLUP and adjusted phenotypes (regression = 0.78). Accuracies calculated with adjusted (for fixed effects) phenotypes were less variable than accuracies based on unadjusted phenotypes, indicating that fixed effects influence the latter. Increasing the reference population size increased accuracy, indicating that adding more records will be beneficial. For the Merino, Polled Dorset and White Suffolk breeds, accuracies were greater than for the Border Leicester breed due to the smaller sample size and limited across-breed prediction. BayesR detected only a few large marker effects but one region on chromosome 6 was associated with large effects for several traits. Cross-validation produced very similar variability of accuracy and regression coefficients for BLUP, GBLUP and BayesR, showing that this variability is not a property of genomic methods alone. Our results show that genomic selection for novel difficult-to-measure traits is a feasible strategy to achieve increased genetic gain. [ABSTRACT FROM AUTHOR]
- Published
- 2012
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24. The importance of information on relatives for the prediction of genomic breeding values and the implications for the makeup of reference data sets in livestock breeding schemes.
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Clark, Samuel A., Hickey, John M., Daetwyler, Hans D., and van der Werf, Julius H. J.
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GENOMICS ,LIVESTOCK breeding ,GENETIC markers ,LINKAGE disequilibrium ,SHEEP breeding - Abstract
Background: The theory of genomic selection is based on the prediction of the effects of genetic markers in linkage disequilibrium with quantitative trait loci. However, genomic selection also relies on relationships between individuals to accurately predict genetic value. This study aimed to examine the importance of information on relatives versus that of unrelated or more distantly related individuals on the estimation of genomic breeding values. Methods: Simulated and real data were used to examine the effects of various degrees of relationship on the accuracy of genomic selection. Genomic Best Linear Unbiased Prediction (gBLUP) was compared to two pedigree based BLUP methods, one with a shallow one generation pedigree and the other with a deep ten generation pedigree. The accuracy of estimated breeding values for different groups of selection candidates that had varying degrees of relationships to a reference data set of 1750 animals was investigated. Results: The gBLUP method predicted breeding values more accurately than BLUP. The most accurate breeding values were estimated using gBLUP for closely related animals. Similarly, the pedigree based BLUP methods were also accurate for closely related animals, however when the pedigree based BLUP methods were used to predict unrelated animals, the accuracy was close to zero. In contrast, gBLUP breeding values, for animals that had no pedigree relationship with animals in the reference data set, allowed substantial accuracy. Conclusions: An animal's relationship to the reference data set is an important factor for the accuracy of genomic predictions. Animals that share a close relationship to the reference data set had the highest accuracy from genomic predictions. However a baseline accuracy that is driven by the reference data set size and the overall population effective population size enables gBLUP to estimate a breeding value for unrelated animals within a population (breed), using information previously ignored by pedigree based BLUP methods. [ABSTRACT FROM AUTHOR]
- Published
- 2012
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25. Erratum to: Detection and validation of structural variations in bovine whole-genome sequence data.
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Chen L, Chamberlain AJ, Reich CM, Daetwyler HD, and Hayes BJ
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- 2017
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26. Detection and validation of structural variations in bovine whole-genome sequence data.
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Chen L, Chamberlain AJ, Reich CM, Daetwyler HD, and Hayes BJ
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- Animals, Breeding, Cattle, Computational Biology methods, Computer Simulation, DNA Copy Number Variations, Evolution, Molecular, Genetics, Population, High-Throughput Nucleotide Sequencing, INDEL Mutation, Multigene Family, Polymorphism, Single Nucleotide, Reproducibility of Results, Genetic Variation, Genome, Genome-Wide Association Study, Genomics methods
- Abstract
Background: Several examples of structural variation (SV) affecting phenotypic traits have been reported in cattle. Currently the identification of SV from whole-genome sequence data (WGS) suffers from a high false positive rate. Our aim was to construct a high quality set of SV calls in cattle using WGS data. First, we tested two SV detection programs, Breakdancer and Pindel, and the overlap of these methods, on simulated sequence data to determine their precision and sensitivity. We then identified population SV from WGS of 252 Holstein and 64 Jersey bulls based on the overlapping calls from the two programs. In addition, we validated an overlapped SV set in 28 twice-sequenced Holstein individuals, and in another two validated sets (one for each breed) that were transmitted from sire to son. We also tested whether highly conserved gene sets across eukaryotes and recently expanded gene families in bovine were depleted and enriched, respectively, for SV., Results: In empirical WGS data, 17,518 SV covering 27.36 Mb were found in the Holstein population and 4285 SV covering 8.74 Mb in the Jersey population, of which 4.62 Mb of SV overlapped between Holsteins and Jerseys. A total of 11,534 candidate SV covering 5.64 Mb were validated in the 28 twice-sequenced individuals, while 3.49 and 0.67 Mb of SV were validated from Holstein and Jersey sire-son transmission, respectively. Only eight of 237 core eukaryotic genes had at least a 50-bp overlap with an SV from our validated sets, suggesting that conserved genes are depleted for SV (p < 0.05). In addition, we observed that recently expanded gene families were significantly more associated with SV than other genes. Long interspersed nuclear elements-1 were enriched for deletions when compared to the rest of the genome (p = 0.0035)., Conclusions: We reported SV from 252 Holstein and 64 Jersey individuals. A considerable proportion of Jersey population SV (53.5%) were also found in Holstein. In contrast, about 76.90% sire-son transmission validated SV were present in Jerseys and Holsteins. The enrichment of SV in expanding gene families suggests that SV can be a source of genetic variation for evolution.
- Published
- 2017
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27. Assessment of genetic variation within a global collection of lentil (Lens culinaris Medik.) cultivars and landraces using SNP markers.
- Author
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Lombardi M, Materne M, Cogan NO, Rodda M, Daetwyler HD, Slater AT, Forster JW, and Kaur S
- Subjects
- Cluster Analysis, Genetic Markers, Phylogeny, Genes, Plant, Lens Plant genetics, Polymorphism, Single Nucleotide
- Abstract
Background: Lentil is a self-pollinated annual diploid (2n = 2× = 14) crop with a restricted history of genetic improvement through breeding, particularly when compared to cereal crops. This limited breeding has probably contributed to the narrow genetic base of local cultivars, and a corresponding potential to continue yield increases and stability. Therefore, knowledge of genetic variation and relationships between populations is important for understanding of available genetic variability and its potential for use in breeding programs. Single nucleotide polymorphism (SNP) markers provide a method for rapid automated genotyping and subsequent data analysis over large numbers of samples, allowing assessment of genetic relationships between genotypes., Results: In order to investigate levels of genetic diversity within lentil germplasm, 505 cultivars and landraces were genotyped with 384 genome-wide distributed SNP markers, of which 266 (69.2%) obtained successful amplification and detected polymorphisms. Gene diversity and PIC values varied between 0.108-0.5 and 0.102-0.375, with averages of 0.419 and 0.328, respectively. On the basis of clarity and interest to lentil breeders, the genetic structure of the germplasm collection was analysed separately for cultivars and landraces. A neighbour-joining (NJ) dendrogram was constructed for commercial cultivars, in which lentil cultivars were sorted into three major groups (G-I, G-II and G-III). These results were further supported by principal coordinate analysis (PCoA) and STRUCTURE, from which three clear clusters were defined based on differences in geographical location. In the case of landraces, a weak correlation between geographical origin and genetic relationships was observed. The landraces from the Mediterranean region, predominantly Greece and Turkey, revealed very high levels of genetic diversity., Conclusions: Lentil cultivars revealed clear clustering based on geographical origin, but much more limited correlation between geographic origin and genetic diversity was observed for landraces. These results suggest that selection of divergent parental genotypes for breeding should be made actively on the basis of systematic assessment of genetic distance between genotypes, rather than passively based on geographical distance.
- Published
- 2014
- Full Text
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