436 results on '"Lund, Mogens Sandø"'
Search Results
202. Biometrical Methods for the Analysis of Molecular Information
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Lund, Mogens Sandø, Guldbrandtsen, Bernt, Sorensen, Daniel, and Jensen, Just
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- 2002
203. Linkage analysis in longitudinal data using random regression
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Lund, Mogens Sandø, Sørensen, Peter, and Madsen, Per
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- 2002
204. QTL mapping in longitudinal data
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Lund, Mogens Sandø
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- 2001
205. Robustness of a fine mapping method of QTL based on closely linked markers
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Sabry, Ayman, Lund, Mogens Sandø, and Guldbrandtsen, Bernt
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- 2001
206. Anvendelse af QTL-information i Holstein-Avlen
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Guldbrandtsen, Bernt, Lund, Mogens Sandø, and Thomasen, Jørn Rind
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- 2001
207. Multi trait QTL fine mapping using combined linkage disequilibria and linkage analysis
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Lund, Mogens Sandø, Sørensen, Peter, Guldbrandtsen, Bernt, and Sorensen, Daniel
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- 2001
208. Estimation of (co)variances for genomic regions of flexible sizes:application to complex infectious udder diseases in dairy cattle
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Sørensen, Lars Peter, Janss, Luc, Madsen, Per, Mark, Thomas, Lund, Mogens Sandø, Sørensen, Lars Peter, Janss, Luc, Madsen, Per, Mark, Thomas, and Lund, Mogens Sandø
- Abstract
BACKGROUND: Multi-trait genomic models in a Bayesian context can be used to estimate genomic (co)variances, either for a complete genome or for genomic regions (e.g. per chromosome) for the purpose of multi-trait genomic selection or to gain further insight into the genomic architecture of related traits such as mammary disease traits in dairy cattle. METHODS: Data on progeny means of six traits related to mastitis resistance in dairy cattle (general mastitis resistance and five pathogen-specific mastitis resistance traits) were analyzed using a bivariate Bayesian SNP-based genomic model with a common prior distribution for the marker allele substitution effects and estimation of the hyperparameters in this prior distribution from the progeny means data. From the Markov chain Monte Carlo samples of the allele substitution effects, genomic (co)variances were calculated on a whole-genome level, per chromosome, and in regions of 100 SNP on a chromosome. RESULTS: Genomic proportions of the total variance differed between traits. Genomic correlations were lower than pedigree-based genetic correlations and they were highest between general mastitis and pathogen-specific traits because of the part-whole relationship between these traits. The chromosome-wise genomic proportions of the total variance differed between traits, with some chromosomes explaining higher or lower values than expected in relation to chromosome size. Few chromosomes showed pleiotropic effects and only chromosome 19 had a clear effect on all traits, indicating the presence of QTL with a general effect on mastitis resistance. The region-wise patterns of genomic variances differed between traits. Peaks indicating QTL were identified but were not very distinctive because a common prior for the marker effects was used. There was a clear difference in the region-wise patterns of genomic correlation among combinations of traits, with distinctive peaks indicat
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- 2012
209. Genetisk analyse af kuldstørrelse, overlevelse og fostre og overlevelse af smågrise
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Lund, Mogens Sandø, Luttinen, P, Rydhmer, L, and Jensen, Just
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- 2000
210. Estimation of genetic parameters for different causes of death in piglets
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Grandinson, K, Rydhmer, L, Strandberg, E, and Lund, Mogens Sandø
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- 2000
211. Genetic Parameters of Dairy Character, Protein Yield, Clinical Mastitis, and other Diseases in the Danish Holstein Cattle
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Hansen, Morten, Christensen, Lars Gjøl, Lund, Mogens Sandø, and Kargo Sørensen, Morten
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- 2000
212. Analysis of litter size and piglet survival using a multivariate model with direct and maternal effects
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Lund, Mogens Sandø, Luttinen, P, Rydhmer, L, Henryon, Mark, and Jensen, Just
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- 1999
213. Piglet survival - can it be improved through selection?
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Grandinson, K, Rydhmer, L, and Lund, Mogens Sandø
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- 1999
214. Comparison of analyses of the QTLMAS XII common dataset. II : genome-wide association and fine mapping.
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Crooks, Lucy, Sahana, Goutam, de Koning, Dirk-Jan, Lund, Mogens Sandø, Carlborg, Örjan, Crooks, Lucy, Sahana, Goutam, de Koning, Dirk-Jan, Lund, Mogens Sandø, and Carlborg, Örjan
- Abstract
As part of the QTLMAS XII workshop, a simulated dataset was distributed and participants were invited to submit analyses of the data based on genome-wide association, fine mapping and genomic selection. We have evaluated the findings from the groups that reported fine mapping and genome-wide association (GWA) efforts to map quantitative trait loci (QTL). Generally the power to detect QTL was high and the Type 1 error was low. Estimates of QTL locations were generally very accurate. Some methods were much better than others at estimating QTL effects, and with some the accuracy depended on simulated effect size or minor allele frequency. There were also indications of bias in the effect estimates. No epistasis was simulated, but the two studies that included searches for epistasis reported several interacting loci, indicating a problem with controlling the Type I error rate in these analyses. Although this study is based on a single dataset, it indicates that there is a need to improve fine mapping and GWA methods with respect to estimation of genetic effects, appropriate choice of significance thresholds and analysis of epistasis.
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- 2009
215. Comparison of analyses of the QTLMAS XII common dataset. I : Genomic selection.
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Lund, Mogens Sandø, Sahana, Goutam, de Koning, Dirk-Jan, Su, Guosheng, Carlborg, Örjan, Lund, Mogens Sandø, Sahana, Goutam, de Koning, Dirk-Jan, Su, Guosheng, and Carlborg, Örjan
- Abstract
A dataset was simulated and distributed to participants of the QTLMAS XII workshop who were invited to develop genomic selection models. Each contributing group was asked to describe the model development and validation as well as to submit genomic predictions for three generations of individuals, for which they only knew the genotypes. The organisers used these genomic predictions to perform the final validation by comparison to the true breeding values, which were known only to the organisers. Methods used by the 5 groups fell in 3 classes 1) fixed effects models 2) BLUP models, and 3) Bayesian MCMC based models. The Bayesian analyses gave the highest accuracies, followed by the BLUP models, while the fixed effects models generally had low accuracies and large error variance. The best BLUP models as well as the best Bayesian models gave unbiased predictions. The BLUP models are clearly sensitive to the assumed SNP variance, because they do not estimate SNP variance, but take the specified variance as the true variance. The current comparison suggests that Bayesian analyses on haplotypes or SNPs are the most promising approach for Genomic selection although the BLUP models may provide a computationally attractive alternative with little loss of efficiency. On the other hand fixed effect type models are unlikely to provide any gain over traditional pedigree indexes for selection.
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- 2009
216. Multivariate updating of genotypes in a Gibbs sampling algorithm of the mixed inheritance model
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Lund, Mogens Sandø and Jensen, C S
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- 1998
217. Blok Gibbs Sampling i en grafisk model for kombineret polygen/enkeltgen nedarvning
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Lund, Mogens Sandø and Jensen, C S
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- 1998
218. Comparison of gene-based rare variant association mapping methods for quantitative traits in a bovine population with complex familial relationships.
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Qianqian Zhang, Guldbrandtsen, Bernt, Calus, Mario P. L., Lund, Mogens Sandø, and Sahana, Goutam
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CATTLE genetics ,GENE expression ,CATTLE genome mapping ,GENETIC polymorphisms ,CATTLE population genetics ,CATTLE - Abstract
Background: There is growing interest in the role of rare variants in the variation of complex traits due to increasing evidence that rare variants are associated with quantitative traits. However, association methods that are commonly used for mapping common variants are not effective to map rare variants. Besides, livestock populations have large half-sib families and the occurrence of rare variants may be confounded with family structure, which makes it difficult to disentangle their effects from family mean effects. We compared the power of methods that are commonly applied in human genetics to map rare variants in cattle using whole-genome sequence data and simulated phenotypes. We also studied the power of mapping rare variants using linear mixed models (LMM), which are the method of choice to account for both family relationships and population structure in cattle. Results: We observed that the power of the LMM approach was low for mapping a rare variant (defined as those that have frequencies lower than 0.01) with a moderate effect (5 to 8 % of phenotypic variance explained by multiple rare variants that vary from 5 to 21 in number) contributing to a QTL with a sample size of 1000. In contrast, across the scenarios studied, statistical methods that are specialized for mapping rare variants increased power regardless of whether multiple rare variants or a single rare variant underlie a QTL. Different methods for combining rare variants in the test single nucleotide polymorphism set resulted in similar power irrespective of the proportion of total genetic variance explained by the QTL. However, when the QTL variance is very small (only 0.1 % of the total genetic variance), these specialized methods for mapping rare variants and LMM generally had no power to map the variants within a gene with sample sizes of 1000 or 5000. Conclusions: We observed that the methods that combine multiple rare variants within a gene into a meta-variant generally had greater power to map rare variants compared to LMM. Therefore, it is recommended to use rare variant association mapping methods to map rare genetic variants that affect quantitative traits in livestock, such as bovine populations. [ABSTRACT FROM AUTHOR]
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- 2016
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219. Bayesian Segregation analysis under the mixed inheritance model of continuous an binary traits in dairy cattle
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Lund, Mogens Sandø
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- 1997
220. Genetic parameters for stillbirth in Dansk Holstein cows using a Bayesian threshold model
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Hansen, M., Lund, Mogens Sandø, Pedersen, Jørgen, Christensen, Lars Gjøl, Hansen, M., Lund, Mogens Sandø, Pedersen, Jørgen, and Christensen, Lars Gjøl
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- 2004
221. Local Genealogies in a Linear Mixed Model for Genome-Wide Association Mapping in Complex Pedigreed Populations
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Sahana, Goutam, primary, Mailund, Thomas, additional, Lund, Mogens Sandø, additional, and Guldbrandtsen, Bernt, additional
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- 2011
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222. Comparison of analyses of the QTLMAS XII common dataset. I: Genomic selection
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Lund, Mogens Sandø, primary, Sahana, Goutam, additional, de Koning, Dirk-Jan, additional, Su, Guosheng, additional, and Carlborg, Örjan, additional
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- 2009
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223. Comparison of analyses of the QTLMAS XII common dataset. II: genome-wide association and fine mapping
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Crooks, Lucy, primary, Sahana, Goutam, additional, de Koning, Dirk-Jan, additional, Lund, Mogens Sandø, additional, and Carlborg, Örjan, additional
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- 2009
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224. Analysis of the real EADGENE data set: Comparison of methods and guidelines for data normalisation and selection of differentially expressed genes (Open Access publication)
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Jaffrézic, Florence, primary, de Koning, Dirk-Jan, additional, Boettcher, Paul J, additional, Bonnet, Agnès, additional, Buitenhuis, Bart, additional, Closset, Rodrigue, additional, Déjean, Sébastien, additional, Delmas, Céline, additional, Detilleux, Johanne C, additional, Dovč, Peter, additional, Duval, Mylène, additional, Foulley, Jean-Louis, additional, Hedegaard, Jakob, additional, Hornshøj, Henrik, additional, Hulsegge, Ina, additional, Janss, Luc, additional, Jensen, Kirsty, additional, Jiang, Li, additional, Lavrič, Miha, additional, Cao, Kim-Anh Lê, additional, Lund, Mogens Sandø, additional, Malinverni, Roberto, additional, Marot, Guillemette, additional, Nie, Haisheng, additional, Petzl, Wolfram, additional, Pool, Marco H, additional, Robert-Granié, Christèle, additional, San Cristobal, Magali, additional, van Schothorst, Evert M, additional, Schuberth, Hans-Joachim, additional, Sørensen, Peter, additional, Stella, Alessandra, additional, Tosser-Klopp, Gwenola, additional, Waddington, David, additional, Watson, Michael, additional, Yang, Wei, additional, Zerbe, Holm, additional, and Seyfert, Hans-Martin, additional
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- 2007
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225. Analysis of the real EADGENE data set: Multivariate approaches and post analysis (Open Access publication)
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Sørensen, Peter, primary, Bonnet, Agnès, additional, Buitenhuis, Bart, additional, Closset, Rodrigue, additional, Déjean, Sébastien, additional, Delmas, Céline, additional, Duval, Mylène, additional, Glass, Liz, additional, Hedegaard, Jakob, additional, Hornshøj, Henrik, additional, Hulsegge, Ina, additional, Jaffrézic, Florence, additional, Jensen, Kirsty, additional, Jiang, Li, additional, de Koning, Dirk-Jan, additional, Cao, Kim-Anh Lê, additional, Nie, Haisheng, additional, Petzl, Wolfram, additional, Pool, Marco H, additional, Robert-Granié, Christèle, additional, San Cristobal, Magali, additional, Lund, Mogens Sandø, additional, van Schothorst, Evert M, additional, Schuberth, Hans-Joachim, additional, Seyfert, Hans-Martin, additional, Tosser-Klopp, Gwenola, additional, Waddington, David, additional, Watson, Michael, additional, Yang, Wei, additional, and Zerbe, Holm, additional
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- 2007
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226. The efficiency of mapping of quantitative trait loci using cofactor analysis in half-sib design
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Sahana, Goutam, primary, de Koning, Dirk Jan, additional, Guldbrandtsen, Bernt, additional, Sørensen, Peter, additional, and Lund, Mogens Sandø, additional
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- 2006
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227. Genetic Parameters for the Piglet Mortality Traits Crushing, Stillbirth and Total Mortality, and their Relation to Birth Weight
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Grandinson, Katja, primary, Lund, Mogens Sandø, additional, Rydhmer, Lotta, additional, and Strandberg, Erling, additional
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- 2002
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228. Accuracy of genomic prediction for growth and carcass traits in Chinese triple-yellow chickens.
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Tianfei Liu, Hao Qu, Chenglong Luo, Dingming Shu, Jie Wang, Lund, Mogens Sandø, and Guosheng Su
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ANIMAL carcasses ,BROILER chickens ,IN situ hybridization ,ANIMAL genetics ,CHICKENS ,LIVESTOCK carcasses ,COMPARATIVE genomic hybridization - Abstract
Background Growth and carcass traits are very important traits for broiler chickens. However, carcass traits can only be measured postmortem. Genomic selection may be a powerful tool for such traits because of its accurate prediction of breeding values of animals without own phenotypic information. This study investigated the efficiency of genomic prediction in Chinese triple-yellow chickens. As a new line, Chinese triple-yellow chicken was developed by cross-breeding and had a small effective population. Two growth traits and three carcass traits were analyzed: body weight at 6 weeks, body weight at 12 weeks, eviscerating percentage, breast muscle percentage and leg muscle percentage. Results Genomic prediction was assessed using a 4-fold cross-validation procedure for two validation scenarios. In the first scenario, each test data set comprised two half-sib families (family sample) and the rest represented the reference data. In the second scenario, the whole data were randomly divided into four subsets (random sample). In each fold of validation, one subset was used as the test data and the others as the reference data in each single validation. Genomic breeding values were predicted using a genomic best linear unbiased prediction model, a Bayesian least absolute shrinkage and selection operator model, and a Bayesian mixture model with four distributions. The accuracy of genomic estimated breeding value (GEBV) was measured as the correlation between GEBV and the corrected phenotypic value. Using the three models, the correlations ranged from 0.448 to 0.468 for the two growth traits and from 0.176 to 0.255 for the three carcass traits in the family sample scenario, and were between 0.487 and 0.536 for growth traits and between 0.312 and 0.430 for carcass traits in the random sample scenario. The differences in the prediction accuracies between the three models were very small; the Bayesian mixture model was slightly more accurate. According to the results from the random sample scenario, the accuracy of GEBV was 0.197 higher than the conventional pedigree index, averaged over the five traits. Conclusions The results indicated that genomic selection could greatly improve the accuracy of selection in chickens, compared with conventional selection. Genomic selection for growth and carcass traits in broiler chickens is promising. [ABSTRACT FROM AUTHOR]
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- 2014
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229. Strategies for imputation to whole genome sequence using a single or multi-breed reference population in cattle.
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Brøndum, Rasmus Froberg, Guldbrandtsen, Bernt, Sahana, Goutam, Lund, Mogens Sandø, and Guosheng Su
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Background: The advent of low cost next generation sequencing has made it possible to sequence a large number of dairy and beef bulls which can be used as a reference for imputation of whole genome sequence data. The aim of this study was to investigate the accuracy and speed of imputation from a high density SNP marker panel to whole genome sequence level. Data contained 132 Holstein, 42 Jersey, 52 Nordic Red and 16 Brown Swiss bulls with whole genome sequence data; 16 Holstein, 27 Jersey and 29 Nordic Reds had previously been typed with the bovine high density SNP panel and were used for validation. We investigated the effect of enlarging the reference population by combining data across breeds on the accuracy of imputation, and the accuracy and speed of both IMPUTE2 and BEAGLE using either genotype probability reference data or pre-phased reference data. All analyses were done on Bovine autosome 29 using 387,436 bi-allelic variants and 13,612 SNP markers from the bovine HD panel. Results: A combined breed reference population led to higher imputation accuracies than did a single breed reference. The highest accuracy of imputation for all three test breeds was achieved when using BEAGLE with un-phased reference data (mean genotype correlations of 0.90, 0.89 and 0.87 for Holstein, Jersey and Nordic Red respectively) but IMPUTE2 with un-phased reference data gave similar accuracies for Holsteins and Nordic Red. Pre-phasing the reference data only lead to a minor decrease in the imputation accuracy, but gave a large improvement in computation time. Pre-phasing with BEAGLE was substantially faster than pre-phasing with SHAPEIT2 (2.5 hours vs. 52 hours for 242 individuals), and imputation with pre-phased data was faster in IMPUTE2 than in BEAGLE (5 minutes vs. 50 minutes per individual). Conclusion: Combining reference populations across breeds is a good option to increase the size of the reference data and in turn the accuracy of imputation when only few animals are available. Pre-phasing the reference data only slightly decreases the accuracy but gives substantial improvements in speed. Using BEAGLE for pre-phasing and IMPUTE2 for imputation is a fast and accurate strategy. [ABSTRACT FROM AUTHOR]
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- 2014
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230. Dissecting closely linked association signals in combination with the mammalian phenotype database can identify candidate genes in dairy cattle.
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Cai, Zexi, Guldbrandtsen, Bernt, Lund, Mogens Sandø, and Sahana, Goutam
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DAIRY cattle genetics ,CELLULAR signal transduction ,MAMMAL genetics ,PLOIDY ,PHENOTYPES - Abstract
Background: Genome-wide association studies (GWAS) have been successfully implemented in cattle research and breeding. However, moving from the associations to identifying the causal variants and revealing underlying mechanisms have proven complicated. In dairy cattle populations, we face a challenge due to long-range linkage disequilibrium (LD) arising from close familial relationships in the studied individuals. Long range LD makes it difficult to distinguish if one or multiple quantitative trait loci (QTL) are segregating in a genomic region showing association with a phenotype. We had two objectives in this study: 1) to distinguish between multiple QTL segregating in a genomic region, and 2) use of external information to prioritize candidate genes for a QTL along with the candidate variant. Results: We observed fixing the lead SNP as a covariate can help to distinguish additional close association signal(s). Thereafter, using the mammalian phenotype database, we successfully found candidate genes, in concordance with previous studies, demonstrating the power of this strategy. Secondly, we used variant annotation information to search for causative variants in our candidate genes. The variant information successfully identified known causal mutations and showed the potential to pinpoint the causative mutation(s) which are located in coding regions. Conclusions: Our approach can distinguish multiple QTL segregating on the same chromosome in a single analysis without manual input. Moreover, utilizing information from the mammalian phenotype database and variant effect predictor as post-GWAS analysis could benefit in candidate genes and causative mutations finding in cattle. Our study not only identified additional candidate genes for milk traits, but also can serve as a routine method for GWAS in dairy cattle. [ABSTRACT FROM AUTHOR]
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- 2018
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231. Dissecting closely linked association signals in combination with the mammalian phenotype database can identify candidate genes in dairy cattle.
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Cai, Zexi, Guldbrandtsen, Bernt, Lund, Mogens Sandø, and Sahana, Goutam
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PHENOTYPES , *DAIRY cattle , *LOCUS (Genetics) , *CHROMOSOMES , *GENOMES - Abstract
Background: Genome-wide association studies (GWAS) have been successfully implemented in cattle research and breeding. However, moving from the associations to identify the causal variants and reveal underlying mechanisms have proven complicated. In dairy cattle populations, we face a challenge due to long-range linkage disequilibrium (LD) arising from close familial relationships in the studied individuals. Long range LD makes it difficult to distinguish if one or multiple quantitative trait loci (QTL) are segregating in a genomic region showing association with a phenotype. We had two objectives in this study: 1) to distinguish between multiple QTL segregating in a genomic region, and 2) use of external information to prioritize candidate genes for a QTL along with the candidate variants. Results: We observed fixing the lead SNP as a covariate can help to distinguish additional close association signal(s). Thereafter, using the mammalian phenotype database, we successfully found candidate genes, in concordance with previous studies, demonstrating the power of this strategy. Secondly, we used variant annotation information to search for causative variants in our candidate genes. The variant information successfully identified known causal mutations and showed the potential to pinpoint the causative mutation(s) which are located in coding regions. Conclusions: Our approach can distinguish multiple QTL segregating on the same chromosome in a single analysis without manual input. Moreover, utilizing information from the mammalian phenotype database and variant effect predictor as post-GWAS analysis could benefit in candidate genes and causative mutations finding in cattle. Our study not only identified additional candidate genes for milk traits, but also can serve as a routine method for GWAS in dairy cattle. [ABSTRACT FROM AUTHOR]
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- 2019
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232. Genome-wide association study identifies functional genomic variants associated with young stock survival in Nordic Red Dairy Cattle.
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Cai, Zexi, Wu, Xiaoping, Thomsen, Bo, Lund, Mogens Sandø, and Sahana, Goutam
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GENOME-wide association studies , *DAIRY cattle , *LOCUS (Genetics) , *CATTLE , *CATTLE industry - Abstract
Identifying quantitative trait loci (QTL) associated with calf survival is essential for both reducing economic loss in cattle industry and understanding the genetic basis of the trait. To identify mutations and genes underlying young stock survival (YSS), we performed GWAS using de-regressed estimated breeding values of a YSS index and its component traits defined by sex and age in 3,077 Nordic Red Dairy Cattle (RDC) bulls and 2 stillbirth traits (first lactation and later lactations) in 5,141 RDC bulls. Two associated QTL regions on Bos taurus autosome (BTA) 4 and 6 were identified for the YSS index. The results of 4 YSS component traits indicate that same QTL regions were associated with bull and heifer calf mortality, but the effects were different over the growing period and suggested an additional QTL on BTA23. The GWAS on stillbirth identified 3 additional QTL regions on BTA5, 14, and 24 compared with YSS and its component traits. The conditional test of BTA6 showed at least 2 closely located QTL segregating for YSS component traits and stillbirth. We found 2 independent QTL for stillbirth on BTA23. The post-GWAS revealed LCORL , PPM1K , SSP1 , MED28 , and LAP3 are putative causal genes on BTA6, and a frame shift variant within LCORL , BTA6:37401770 (rs384548488) could be the putative causal variant. On BTA4, the GRB10 gene is the putative causal gene and BTA4:5296018 is the putative causal variant. In addition, NDUFA9 and FGF23 on BTA5, LYN on BTA14, and KCNK5 on BTA23 are putative causal genes for QTL for stillbirth. The gene analysis also proposed several candidate genes. Our findings shed new light on the candidate genes affecting calf survival, and the knowledge could be utilized to reduce calf mortality and thereby enhance welfare of dairy cattle. [ABSTRACT FROM AUTHOR]
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- 2023
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233. Prioritizing candidate genes post-GWAS using multiple sources of data for mastitis resistance in dairy cattle.
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Cai, Zexi, Guldbrandtsen, Bernt, Lund, Mogens Sandø, and Sahana, Goutam
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BOVINE mastitis , *BREAST diseases , *DAIRY cattle , *DAIRY cattle breeding , *DAIRY cattle genetics , *DAIRY processing - Abstract
Background: Improving resistance to mastitis, one of the costliest diseases in dairy production, has become an important objective in dairy cattle breeding. However, mastitis resistance is influenced by many genes involved in multiple processes, including the response to infection, inflammation, and post-infection healing. Low genetic heritability, environmental variations, and farm management differences further complicate the identification of links between genetic variants and mastitis resistance. Consequently, studies of the genetics of variation in mastitis resistance in dairy cattle lack agreement about the responsible genes. Results: We associated 15,552,968 imputed whole-genome sequencing markers for 5147 Nordic Holstein cattle with mastitis resistance in a genome-wide association study (GWAS). Next, we augmented P-values for markers in genes in the associated regions using Gene Ontology terms, Kyoto Encyclopedia of Genes and Genomes pathway analysis, and mammalian phenotype database. To confirm results of gene-based analyses, we used gene expression data from E. coli-challenged cow udders. We identified 22 independent quantitative trait loci (QTL) that collectively explained 14% of the variance in breeding values for resistance to clinical mastitis (CM). Using association test statistics with multiple pieces of independent information on gene function and differential expression during bacterial infection, we suggested putative causal genes with biological relevance for 12 QTL affecting resistance to CM in dairy cattle. Conclusion: Combining information on the nearest positional genes, gene-based analyses, and differential gene expression data from RNA-seq, we identified putative causal genes (candidate genes with biological evidence) in QTL for mastitis resistance in Nordic Holstein cattle. The same strategy can be applied for other traits. [ABSTRACT FROM AUTHOR]
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- 2018
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234. Association analysis for udder index and milking speed with imputed whole-genome sequence variants in Nordic Holstein cattle.
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Jardim, Júlia Gazzoni, Guldbrandtsen, Bernt, Lund, Mogens Sandø, and Sahana, Goutam
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HOLSTEIN-Friesian cattle , *LACTATION in cattle , *MILK yield , *ANIMAL genome mapping , *BOVINE mastitis - Abstract
Genome-wide association testing facilitates the identification of genetic variants associated with complex traits. Mapping genes that promote genetic resistance to mastitis could reduce the cost of antibiotic use and enhance animal welfare and milk production by improving outcomes of breeding for udder health. Using imputed whole-genome sequence variants, we carried out association studies for 2 traits related to udder health, udder index, and milking speed in Nordic Holstein cattle. A total of 4,921 bulls genotyped with the BovineSNP50 BeadChip array were imputed to high-density genotypes (Illumina BovineHD Bead- Chip, Illumina, San Diego, CA) and, subsequently, to whole-genome sequence variants. An association analysis was carried out using a linear mixed model. Phenotypes used in the association analyses were deregressed breeding values. Multitrait meta-analysis was carried out for these 2 traits. We identified 10 and 8 chromosomes harboring markers that were significantly associated with udder index and milking speed, respectively. Strongest association signals were observed on chromosome 20 for udder index and chromosome 19 for milking speed. Multitrait meta-analysis identified 13 chromosomes harboring associated markers for the combination of udder index and milking speed. The associated region on chromosome 20 overlapped with earlier reported quantitative trait loci for similar traits in other cattle populations. Moreover, this region was located close to the FYB gene, which is involved in platelet activation and controls IL-2 expression; FYB is a strong candidate gene for udder health and worthy of further investigation. [ABSTRACT FROM AUTHOR]
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- 2018
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235. Association analysis for young stock survival index with imputed whole-genome sequence variants in Nordic Holstein cattle.
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Xiaoping Wu, Guldbrandtsen, Bernt, Lund, Mogens Sandø, Sahana, Goutam, and Nielsen, Ulrik Sander
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DAIRY cattle mortality , *GENOMES , *HOLSTEIN-Friesian cattle , *HAPLOTYPES , *STILLBIRTH in animals - Abstract
Identification of the genetic variants associated with calf survival in dairy cattle will aid in the elimination of harmful mutations from the cattle population and the reduction of calf and young stock mortality rates. We used de-regressed estimated breeding values for the young stock survival (YSS) index as response variables in a genome-wide association study with imputed whole-genome sequence variants. A total of 4,610 bulls with estimated breeding values were genotyped with the Illumina BovineSNP50 (Illumina, San Diego, CA) single nucleotide polymorphism (SNP) genotyping array. Genotypes were imputed to whole-genome sequence variants. After quality control, 15,419,550 SNP on 29 Bos taurus autosomes (BTA) were used for association analysis. A modified mixed-model association analysis was used for a genome scan, followed by a linear mixed-model analysis for selected genetic variants. We identified 498 SNP on BTA5 and BTA18 that were associated with the YSS index in Nordic Holstein. The SNP rs440345507 (Chr5:94721790) on BTA5 was the putative causal mutation affecting YSS. Two haplotype-based models were used to identify haplotypes with the largest detrimental effects on YSS index. For each association signal, 1 haplotype region with harmful effects and the lead associated SNP were identified. Detected haplotypes on BTA5 and BTA18 explained 1.16 and 1.20%, respectively, of genetic variance for the YSS index. We examined whether YSS quantitative trait loci (QTL) on BTA5 and BTA18 were associated with stillbirth. YSS QTL on BTA18 overlapped a QTL region for stillbirth, but most likely 2 different causal variants were responsible for these 2 QTL. Four component traits of the YSS index, defined by sex and age, were analyzed separately by the modified mixed-model approach. The same genomic regions were associated with both bull and heifer calf mortality. Several genes (EPS8, LOC100138951, and KLK family genes) contained a lead associated SNP or were included in haplotypes with large detrimental effects on YSS in Nordic Holstein cattle. [ABSTRACT FROM AUTHOR]
- Published
- 2017
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236. The impact of genotyping strategies and statistical models on accuracy of genomic prediction for survival in pigs.
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Liu, Tianfei, Nielsen, Bjarne, Christensen, Ole F., Lund, Mogens Sandø, and Su, Guosheng
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STATISTICAL accuracy , *STATISTICAL models , *SWINE , *LOGISTIC regression analysis , *PROBIT analysis , *ANIMAL welfare , *SURVIVAL analysis (Biometry) - Abstract
Background: Survival from birth to slaughter is an important economic trait in commercial pig productions. Increasing survival can improve both economic efficiency and animal welfare. The aim of this study is to explore the impact of genotyping strategies and statistical models on the accuracy of genomic prediction for survival in pigs during the total growing period from birth to slaughter. Results: We simulated pig populations with different direct and maternal heritabilities and used a linear mixed model, a logit model, and a probit model to predict genomic breeding values of pig survival based on data of individual survival records with binary outcomes (0, 1). The results show that in the case of only alive animals having genotype data, unbiased genomic predictions can be achieved when using variances estimated from pedigree-based model. Models using genomic information achieved up to 59.2% higher accuracy of estimated breeding value compared to pedigree-based model, dependent on genotyping scenarios. The scenario of genotyping all individuals, both dead and alive individuals, obtained the highest accuracy. When an equal number of individuals (80%) were genotyped, random sample of individuals with genotypes achieved higher accuracy than only alive individuals with genotypes. The linear model, logit model and probit model achieved similar accuracy. Conclusions: Our conclusion is that genomic prediction of pig survival is feasible in the situation that only alive pigs have genotypes, but genomic information of dead individuals can increase accuracy of genomic prediction by 2.06% to 6.04%. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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237. Comparing power and precision of within-breed and multibreed genome-wide association studies of production traits using whole-genome sequence data for 5 French and Danish dairy cattle breeds.
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van den Berg, Irene, Boichard, Didier, and Lund, Mogens Sandø
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CATTLE breeds , *CATTLE breeding , *HEREDITY , *NUCLEOTIDE sequencing , *CATTLE genetics , *CATTLE nutrition , *GENETICS , *CATTLE - Abstract
The objective of this study was to compare mapping precision and power of within-breed and multibreed genome-wide association studies (GWAS) and to compare the results obtained by the multibreed GWAS with 3 meta-analysis methods. The multibreed GWAS was expected to improve mapping precision compared with a within-breed GWAS because linkage disequilibrium is conserved over shorter distances across breeds than within breeds. The multibreed GWAS was also expected to increase detection power for quantitative trait loci (QTL) segregating across breeds. GWAS were performed for production traits in dairy cattle, using imputed full genome sequences of 16,031 bulls, originating from 6 French and Danish dairy cattle populations. Our results show that a multibreed GWAS can be a valuable tool for the detection and fine mapping of quantitative trait loci. The number of QTL detected with the multibreed GWAS was larger than the number detected by the within-breed GWAS, indicating an increase in power, especially when the 2 Holstein populations were combined. The largest number of QTL was detected when all populations were combined. The analysis combining all breeds was, however, dominated by Holstein, and QTL segregating in other breeds but not in Holstein were sometimes overshadowed by larger QTL segregating in Holstein. Therefore, the GWAS combining all breeds except Holstein was useful to detect such peaks. Combining all breeds except Holstein resulted in smaller QTL intervals on average, but this outcome was not the case when the Holstein populations were included in the analysis. Although no decrease in the average QTL size was observed, mapping precision did improve for several QTL. Out of 3 different multibreed meta-analysis methods, the weighted z-scores model resulted in the most similar results to the full multibreed GWAS and can be useful as an alternative to a full multibreed GWAS. Differences between the multibreed GWAS and the meta-analyses were larger when different breeds were combined than when the 2 Holstein populations were combined. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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238. A comparison of bivariate and univariate QTL mapping in livestock populations
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Sørensen, Peter, Lund, Mogens Sandø, Guldbrandtsen, Bernt, Jensen, Just, and Sorensen, Daniel
- Abstract
This study presents a multivariate, variance component-based QTL mapping model implemented viarestricted maximum likelihood (REML). The method was applied to investigate bivariate and univariate QTL mapping analyses, using simulated data. Specifically, we report results on the statistical power to detect a QTL and on the precision of parameter estimates using univariate and bivariate approaches. The model and methodology were also applied to study the effectiveness of partitioning the overall genetic correlation between two traits into a component due to many genes of small effect, and one due to the QTL. It is shown that when the QTL has a pleiotropic effect on two traits, a bivariate analysis leads to a higher statistical power of detecting the QTL and to a more precise estimate of the QTL's map position, in particular in the case when the QTL has a small effect on the trait. The increase in power is most marked in cases where the contributions of the QTL and of the polygenic components to the genetic correlation have opposite signs. The bivariate REML analysis can successfully partition the two components contributing to the genetic correlation between traits.
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- 2003
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239. Multivariate Bayesian analysis of Gaussian, right censored Gaussian, ordered categorical and binary traits using Gibbs sampling
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Korsgaard, Inge Riis, Lund, Mogens Sandø, Sorensen, Daniel, Gianola, Daniel, Madsen, Per, and Jensen, Just
- Abstract
A fully Bayesian analysis using Gibbs sampling and data augmentation in a multivariate model of Gaussian, right censored, and grouped Gaussian traits is described. The grouped Gaussian traits are either ordered categorical traits (with more than two categories) or binary traits, where the grouping is determined viathresholds on the underlying Gaussian scale, the liability scale. Allowances are made for unequal models, unknown covariance matrices and missing data. Having outlined the theory, strategies for implementation are reviewed. These include joint sampling of location parameters; efficient sampling from the fully conditional posterior distribution of augmented data, a multivariate truncated normal distribution; and sampling from the conditional inverse Wishart distribution, the fully conditional posterior distribution of the residual covariance matrix. Finally, a simulated dataset was analysed to illustrate the methodology. This paper concentrates on a model where residuals associated with liabilities of the binary traits are assumed to be independent. A Bayesian analysis using Gibbs sampling is outlined for the model where this assumption is relaxed.
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- 2003
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240. Blocking Gibbs sampling in the mixed inheritance model using graph theory
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Lund, Mogens Sandø and Jensen, Claus Skaanning
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- 1999
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241. Genome-wide association study with imputed whole-genome sequence variants including large deletions for female fertility in 3 Nordic dairy cattle breeds.
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Mesbah-Uddin, Md, Guldbrandtsen, Bernt, Capitan, Aurélien, Lund, Mogens Sandø, Boichard, Didier, and Sahana, Goutam
- Subjects
- *
GENOME-wide association studies , *CATTLE breeds , *DAIRY cattle , *LOCUS (Genetics) , *CATTLE breeding , *CATTLE fertility , *CATTLE genetics - Abstract
Fertility is an economically important trait in livestock. Poor fertility in dairy cattle can be due to loss-of-function variants affecting any essential gene that causes early embryonic mortality in homozygotes. To identify fertility-associated quantitative trait loci, we performed single-marker association analyses for 8 fertility traits in Holstein, Jersey, and Nordic Red Dairy cattle using imputed whole-genome sequence variants including SNPs, indels, and large deletion. We then performed stepwise selection of independent markers from GWAS loci using conditional and joint association analyses. From single-marker analyses for fertility traits, we reported genome-wide significant associations of 30,384 SNPs, 178 indels, and 3 deletions in Holstein; 23,481 SNPs, 189 indels, and 13 deletions in Nordic Red; and 17 SNPs in Jersey cattle. Conditional and joint association analyses identified 37 and 23 independent associations in Holstein and Nordic Red Dairy cattle, respectively. Fertility-associated GWAS loci were enriched for developmental and cellular processes (Gene Ontology enrichment, false discovery rate < 0.05). For these quantitative trait loci regions (top marker and 500 kb of surrounding regions), we proposed several candidate genes with functional annotations corresponding to embryonic lethality and various fertility-related phenotypes in mouse and cattle. The inclusion of these top markers in future releases of the custom SNP chip used for genomic evaluations will enable their validation in independent populations and improve the accuracy of genomic predictions. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
242. MeSCoT: the tool for quantitative trait simulation through the mechanistic modeling of genes' regulatory interactions.
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Milkevych, Viktor, Karaman, Emre, Sahana, Goutam, Janss, Luc, Zexi Cai, and Lund, Mogens Sandø
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REGULATOR genes , *GENETIC models , *SOFTWARE frameworks , *GENETIC regulation , *PHENOTYPES , *GENE regulatory networks - Abstract
This work represents a novel mechanistic approach to simulate and study genomic networks with accompanying regulatory interactions and complex mechanisms of quantitative trait formation. The approach implemented in MeSCoT software is conceptually based on the omnigenic genetic model of quantitative (complex) trait, and closely imitates the basic in vivo mechanisms of quantitative trait realization. The software provides a framework to study molecular mechanisms of gene-by-gene and gene-by-environment interactions underlying quantitative trait's realization and allows detailed mechanistic studies of impact of genetic and phenotypic variance on gene regulation. MeSCoT performs a detailed simulation of genes' regulatory interactions for variable genomic architectures and generates complete set of transcriptional and translational data together with simulated quantitative trait values. Such data provide opportunities to study, for example, verification of novel statistical methods aiming to integrate intermediate phenotypes together with final phenotype in quantitative genetic analyses or to investigate novel approaches for exploiting gene-by-gene and gene-by-environment interactions. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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243. Genomic diversity revealed by whole-genome sequencing in three Danish commercial pig breeds.
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Zexi Cai, Sarup, Pernille, Ostersen, Tage, Nielsen, Bjarne, Fredholm, Merete, Karlskov-Mortensen, Peter, Sørensen, Peter, Jensen, Just, Guldbrandtsen, Bernt, Lund, Mogens Sandø, Christensen, Ole Fredslund, and Sahana, Goutam
- Abstract
Whole-genome sequencing of 217 animals from three Danish commercial pig breeds (Duroc, Landrace [LL], and Yorkshire [YY]) was performed. Twenty-six million single-nucleotide polymorphisms (SNPs) and 8 million insertions or deletions (indels) were uncovered. Among the SNPs, 493,099 variants were located in coding sequences, and 29,430 were predicted to have a high functional impact such as gain or loss of stop codon. Using the whole-genome sequence dataset as the reference, the imputation accuracy for pigs genotyped with high-density SNP chips was examined. The overall average imputation accuracy for all biallelic variants (SNP and indel) was 0.69, while it was 0.83 for variants with minor allele frequency > 0.1. This study provides whole-genome reference data to impute SNP chip-genotyped animals for further studies to fine map quantitative trait loci as well as improving the prediction accuracy in genomic selection. Signatures of selection were identified both through analyses of fixation and differentiation to reveal selective sweeps that may have had prominent roles during breed development or subsequent divergent selection. However, the fixation indices did not indicate a strong divergence among these three breeds. In LL and YY, the integrated haplotype score identified genomic regions under recent selection. These regions contained genes for olfactory receptors and oxidoreductases. Olfactory receptor genes that might have played a major role in the domestication were previously reported to have been under selection in several species including cattle and swine. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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- View/download PDF
244. Comparisons of improved genomic predictions generated by different imputation methods for genotyping by sequencing data in livestock populations.
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Wang, Xiao, Su, Guosheng, Hao, Dan, Lund, Mogens Sandø, and Kadarmideen, Haja N.
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MULTIPLE imputation (Statistics) , *LIVESTOCK , *DATA editing , *GENE frequency , *MISSING data (Statistics) - Abstract
Background: Genotyping by sequencing (GBS) still has problems with missing genotypes. Imputation is important for using GBS for genomic predictions, especially for low depths, due to the large number of missing genotypes. Minor allele frequency (MAF) is widely used as a marker data editing criteria for genomic predictions. In this study, three imputation methods (Beagle, IMPUTE2 and FImpute software) based on four MAF editing criteria were investigated with regard to imputation accuracy of missing genotypes and accuracy of genomic predictions, based on simulated data of livestock population. Results: Four MAFs (no MAF limit, MAF ≥ 0.001, MAF ≥ 0.01 and MAF ≥ 0.03) were used for editing marker data before imputation. Beagle, IMPUTE2 and FImpute software were applied to impute the original GBS. Additionally, IMPUTE2 also imputed the expected genotype dosage after genotype correction (GcIM). The reliability of genomic predictions was calculated using GBS and imputed GBS data. The results showed that imputation accuracies were the same for the three imputation methods, except for the data of sequencing read depth (depth) = 2, where FImpute had a slightly lower imputation accuracy than Beagle and IMPUTE2. GcIM was observed to be the best for all of the imputations at depth = 4, 5 and 10, but the worst for depth = 2. For genomic prediction, retaining more SNPs with no MAF limit resulted in higher reliability. As the depth increased to 10, the prediction reliabilities approached those using true genotypes in the GBS loci. Beagle and IMPUTE2 had the largest increases in prediction reliability of 5 percentage points, and FImpute gained 3 percentage points at depth = 2. The best prediction was observed at depth = 4, 5 and 10 using GcIM, but the worst prediction was also observed using GcIM at depth = 2. Conclusions: The current study showed that imputation accuracies were relatively low for GBS with low depths and high for GBS with high depths. Imputation resulted in larger gains in the reliability of genomic predictions for GBS with lower depths. These results suggest that the application of IMPUTE2, based on a corrected GBS (GcIM) to improve genomic predictions for higher depths, and FImpute software could be a good alternative for routine imputation. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
245. Retraction Note: Dissecting closely linked association signals in combination with the mammalian phenotype database can identify candidate genes in dairy cattle.
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Cai, Zexi, Guldbrandtsen, Bernt, Lund, Mogens Sandø, and Sahana, Goutam
- Subjects
- *
PHENOTYPES , *MAMMALS , *DAIRY cattle genetics - Abstract
ᅟ [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
246. Suitability of existing commercial single nucleotide polymorphism chips for genomic studies in Bos indicus cattle breeds and their Bos taurus crosses.
- Author
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Nayee, Nilesh, Sahana, Goutam, Gajjar, Swapnil, Sudhakar, Ananthasayanam, Trivedi, Kamlesh, Lund, Mogens Sandø, and Guldbrandtsen, Bernt
- Subjects
- *
SINGLE nucleotide polymorphisms , *CATTLE , *ANIMAL breeding , *HOLSTEIN-Friesian cattle , *GENEALOGY - Abstract
Bos indicus cattle breeds are genetically distinct from Bos taurus breeds. We examined the performance of three SNP arrays, the Illumina BovineHD BeadChip (777k; Illumina Inc.), the Illumina BovineSNP50 BeadChip (50k) and the GeneSeek 70k Indicus chip (75Ki; GeneSeek) in four B. indicus breeds (Gir, Kankrej, Sahiwal and Red Sindhi) and their B. taurus crosses, along with two B. taurus breeds, Holstein and Jersey. More SNPs on both Illumina SNP chips were monomorphic in B. indicus breeds (average 20.3%–29.3% on the 777k chip, 35.5%–45.5% on the 50k chip) than in Holstein (19.7% on the 777k chip, 17.1% on the 50k chip). The proportion of monomorphic SNPs on the 75Ki chip was much lower, 4% (2.8%–7%) in B. indicus breeds, while it was 33.5% in Holstein. With on average 164,357 heterozygous loci in B. indicus breeds, the 777k SNP chip has sufficient heterozygous loci to design a chip customized for B. indicus breeds. Principal component analysis clearly differentiated B. indicus from B. taurus breeds. Differentiation among B. indicus breeds was only achieved by plotting the third and fifth principal components using 777k genotype data. Admixture analysis showed that many B. indicus animals, previously believed to be of pure origin, are in fact had mixed ancestry. The extent of linkage disequilibrium showed comparatively higher effective population sizes in four B. indicus breeds compared to two B. taurus breeds. The results of admixture analyses show that it is important to assess the genomic composition of a bull before using it in a breeding programme. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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247. Human-Mediated Introgression of Haplotypes in a Modern Dairy Cattle Breed.
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Qianqian Zhang, Calus, Mario P. L., Bosse, Mirte, Sahana, Goutam, Lund, Mogens Sandø, and Guldbrandtsen, Bernt
- Subjects
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CATTLE , *FERTILITY , *GENOMES , *MILK , *NUCLEIC acid hybridization , *DNA-binding proteins , *HAPLOTYPES - Abstract
Domestic animals can serve as model systems of adaptive introgression and their genomic signatures. In part, their usefulness as model systems is due to their well-known histories. Different breeding strategies such as introgression and artificial selection have generated numerous desirable phenotypes and superior performance in domestic animals. The modern Danish Red Dairy Cattle is studied as an example of an introgressed population. It originates from crossing the traditional Danish Red Dairy Cattle with the Holstein and Brown Swiss breeds, both known for high milk production. This crossing happened, among other things due to changes in the production system, to raise milk production and overall performance. The genomes of modern Danish Red Dairy Cattle are heavily influenced by regions introgressed from the Holstein and Brown Swiss breeds and under subsequent selection in the admixed population. The introgressed proportion of the genome was found to be highly variable across the genome. Haplotypes introgressed from Holstein and Brown Swiss contained or overlapped known genes affecting milk production, as well as protein and fat content (CD14, ZNF215, BCL2L12, and THRSP for Holstein origin and ITPR2, BCAT1, LAP3, and MED28 for Brown Swiss origin). Genomic regions with high introgression signals also contained genes and enriched QTL associated with calving traits, body confirmation, feed efficiency, carcass, and fertility traits. These introgressed signals with relative identity-by-descent scores larger than the median showing Holstein or Brown Swiss introgression are mostly significantly correlated with the corresponding test statistics from signatures of selection analyses in modern Danish Red Dairy Cattle. Meanwhile, the putative significant introgressed signals have a significant dependency with the putative significant signals from signatures of selection analyses. Artificial selection has played an important role in the genomic footprints of introgression in the genome of modern Danish Red Dairy Cattle. Our study on a modern cattle breed contributes to an understanding of genomic consequences of selective introgression by demonstrating the extent to which adaptive effects contribute to shape the specific genomic consequences of introgression. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
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248. Genome-wide association study for milking speed in French Holstein cows.
- Author
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Marete, Andrew, Sahana, Goutam, Fritz, Sébastien, Lefebvre, Rachel, Barbat, Anne, Lund, Mogens Sandø, Guldbrandtsen, Bernt, and Boichard, Didier
- Subjects
- *
MASTITIS , *SINGLE nucleotide polymorphisms , *GENOMES , *MILKING , *CHROMOSOMES - Abstract
Using a combination of data from the BovineSNP50 BeadChip SNP array (Illumina, San Diego, CA) and a EuroGenomics (Amsterdam, the Netherlands) custom single nucleotide polymorphism (SNP) chip with SNP pre-selected from whole genome sequence data, we carried out an association study of milking speed in 32,491 French Holstein dairy cows. Milking speed was measured by a score given by the farmer. Phenotypes were yield deviations as obtained from the French evaluation system. They were analyzed with a linear mixed model for association studies. We identified SNP on 22 chromosomes significantly associated with milking speed. As clinical mastitis and somatic cell score have an unfavorable genetic correlation with milking speed, we tested whether the most significant SNP on these 22 chromosomes associated with milking speed were also associated with clinical mastitis or somatic cell score. Nine hundred seventy-one genome-wide significant SNP were associated with milking speed. Of these, 86 were associated with clinical mastitis and 198 with somatic cell score. The most significant association signals for milking speed were observed on chromosomes 7, 8, 10, 14, and 18. The most significant signal was located on chromosome 14 (ZFAT gene). Eleven novel milking speed quantitative trait loci (QTL) were observed on chromosomes 7, 10, 11, 14, 18, 25, and 26. Twelve candidate SNP for milking speed mapped directly within genes. Of these 10 were QTL lead SNP, which mapped within the genes HMHA1, POLR2E, GNB5, KLHL29, ZFAT, KCNB2, CEACAM18, CCL24, and LHPP. Limited pleiotropy was observed between milking speed QTL and clinical mastitis. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
249. Improving genetic evaluation using a multitrait single-step genomic model for ability to resume cycling after calving, measured by activity tags in Holstein cows.
- Author
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Ismael, Ahmed, Løvendahl, Peter, Fogh, Anders, Lund, Mogens Sandø, and Guosheng Su
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COWS , *CATTLE parturition , *CATTLE breeding , *GENOMES , *ANIMAL behavior - Abstract
The objective of this study was to evaluate the improvement of the accuracy of estimated breeding values for ability to recycle after calving by using information of genomic markers and phenotypic information of correlated traits. The traits in this study were the interval from calving to first insemination (CFI), based on artificial insemination data, and the interval from calving to first high activity (CFHA), recorded from activity tags, which could better measure ability to recycle after caving. The phenotypic data set included 1,472,313 records from 820,218 cows for CFI, and 36,504 records from 25,733 cows for CFHA. The genomic information was available for 3,159 progeny-tested sires, which were genotyped using Illumina Bovine SNP50 BeadChip (Illumina, San Diego, CA). Heritability estimates were 0.06 for the interval from calving to first insemination and 0.14 for the interval from calving to first high activity, and the genetic correlation between both traits was strong (0.87). Breeding values were obtained using 4 models: conventional single-trait BLUP; conventional multitrait BLUP with pedigree-based relationship matrix; single-trait single-step genomic BLUP; and multitrait single-step genomic BLUP model with joint relationship matrix combining pedigree and genomic information. The results showed that reliabilities of estimated breeding values (EBV) from single-step genomic BLUP models were about 40% higher than those from conventional BLUP models for both traits. Furthermore, using a multitrait model doubled the reliability of breeding values for CFHA, whereas no gain was observed for CFI. The best model was the multitrait single-step genomic BLUP, which resulted in a reliability of EBV 0.19 for CFHA and 0.14 for CFI. The results indicate that even though a relatively small number of records for CFHA were available, with genomic information and using multitrait model, the reliability of EBV for CFHA is acceptable. Thus, it is feasible to include CFHA in Nordic Holstein breeding evaluations to improve fertility performance. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
250. Assessment of the genomic prediction accuracy for feed efficiency traits in meat-type chickens.
- Author
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Liu, Tianfei, Luo, Chenglong, Wang, Jie, Ma, Jie, Shu, Dingming, Lund, Mogens Sandø, Su, Guosheng, and Qu, Hao
- Subjects
- *
POULTRY feeding , *ANIMAL genetics , *SINGLE nucleotide polymorphisms , *GREENHOUSE gas mitigation , *POULTRY breeding , *CHICKENS - Abstract
Feed represents the major cost of chicken production. Selection for improving feed utilization is a feasible way to reduce feed cost and greenhouse gas emissions. The objectives of this study were to investigate the efficiency of genomic prediction for feed conversion ratio (FCR), residual feed intake (RFI), average daily gain (ADG) and average daily feed intake (ADFI) and to assess the impact of selection for feed efficiency traits FCR and RFI on eviscerating percentage (EP), breast muscle percentage (BMP) and leg muscle percentage (LMP) in meat-type chickens. Genomic prediction was assessed using a 4-fold cross-validation for two validation scenarios. The first scenario was a random family sampling validation (CVF), and the second scenario was a random individual sampling validation (CVR). Variance components were estimated based on the genomic relationship built with single nucleotide polymorphism markers. Genomic estimated breeding values (GEBV) were predicted using a genomic best linear unbiased prediction model. The accuracies of GEBV were evaluated in two ways: the correlation between GEBV and corrected phenotypic value divided by the square root of heritability, i.e., the correlation-based accuracy, and model-based theoretical accuracy. Breeding values were also predicted using a conventional pedigree-based best linear unbiased prediction model in order to compare accuracies of genomic and conventional predictions. The heritability estimates of FCR and RFI were 0.29 and 0.50, respectively. The heritability estimates of ADG, ADFI, EP, BMP and LMP ranged from 0.34 to 0.53. In the CVF scenario, the correlation-based accuracy and the theoretical accuracy of genomic prediction for FCR were slightly higher than those for RFI. The correlation-based accuracies for FCR, RFI, ADG and ADFI were 0.360, 0.284, 0.574 and 0.520, respectively, and the model-based theoretical accuracies were 0.420, 0.414, 0.401 and 0.382, respectively. In the CVR scenario, the correlation-based accuracy and the theoretical accuracy of genomic prediction for FCR was lower than RFI, which was different from the CVF scenario. The correlation-based accuracies for FCR, RFI, ADG and ADFI were 0.449, 0.593, 0.581 and 0.627, respectively, and the model-based theoretical accuracies were 0.577, 0.629, 0.631 and 0.638, respectively. The accuracies of genomic predictions were 0.371 and 0.322 higher than the conventional pedigree-based predictions for the CVF and CVR scenarios, respectively. The genetic correlations of FCR with EP, BMP and LMP were -0.427, -0.156 and -0.338, respectively. The correlations between RFI and the three carcass traits were -0.320, -0.404 and -0.353, respectively. These results indicate that RFI and FCR have a moderate accuracy of genomic prediction. Improving RFI and FCR could be favourable for EP, BMP and LMP. Compared with FCR, which can be improved by selection for ADG in typical meat-type chicken breeding programs, selection for RFI could lead to extra improvement in feed efficiency. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
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