Statistical considerations for genomic selection
Genomic selection is becoming increasingly important in animal and plant breeding, and is attracting greater attention for human disease risk prediction. This review covers the most commonly used statistical methods and some extensions of them, i.e., ridge regression and genomic best linear unbiased...
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doaj-3ea0eb8841e54f5b8a1cc31c376ab2312020-11-24T20:59:45ZengHigher Education PressFrontiers of Agricultural Science and Engineering2095-75052017-09-014326827810.15302/J-FASE-2017164Statistical considerations for genomic selectionHuimin KANG, Lei ZHOU, Jianfeng LIU0National Engineering Laboratory for Animal Breeding/Key Laboratory of Animal Genetics, Breeding and Reproduction, Ministry of Agriculture/College of Animal Science and Technology, China Agricultural University, Beijing 100193, ChinaGenomic selection is becoming increasingly important in animal and plant breeding, and is attracting greater attention for human disease risk prediction. This review covers the most commonly used statistical methods and some extensions of them, i.e., ridge regression and genomic best linear unbiased prediction, Bayesian alphabet, and least absolute shrinkage and selection operator. Then it discusses the measurement of the performance of genomic selection and factors affecting the prediction of performance. Among the measurements of prediction performance, the most important and commonly used measurement is prediction accuracy. In simulation studies where true breeding values are available, accuracy of genomic estimated breeding value can be calculated directly. In real or industrial data studies, either training-testing approach or k-fold cross-validation is commonly employed to validate methods. Factors influencing the accuracy of genomic selection include linkage disequilibrium between markers and quantitative trait loci, genetic architecture of the trait, and size and composition of the training population. Genomic selection has been implemented in the breeding programs of dairy cattle, beef cattle, pigs and poultry. Genomic selection in other species has also been intensively researched, and is likely to be implemented in the near future.http://academic.hep.com.cn/fase/fileup/2095-7505/PDF/1498800634634-1990637865.pdfgenomic estimated breeding value|genomic selection|linkage disequilibrium|statistical methods |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Huimin KANG, Lei ZHOU, Jianfeng LIU |
spellingShingle |
Huimin KANG, Lei ZHOU, Jianfeng LIU Statistical considerations for genomic selection Frontiers of Agricultural Science and Engineering genomic estimated breeding value|genomic selection|linkage disequilibrium|statistical methods |
author_facet |
Huimin KANG, Lei ZHOU, Jianfeng LIU |
author_sort |
Huimin KANG, Lei ZHOU, Jianfeng LIU |
title |
Statistical considerations for genomic selection |
title_short |
Statistical considerations for genomic selection |
title_full |
Statistical considerations for genomic selection |
title_fullStr |
Statistical considerations for genomic selection |
title_full_unstemmed |
Statistical considerations for genomic selection |
title_sort |
statistical considerations for genomic selection |
publisher |
Higher Education Press |
series |
Frontiers of Agricultural Science and Engineering |
issn |
2095-7505 |
publishDate |
2017-09-01 |
description |
Genomic selection is becoming increasingly important in animal and plant breeding, and is attracting greater attention for human disease risk prediction. This review covers the most commonly used statistical methods and some extensions of them, i.e., ridge regression and genomic best linear unbiased prediction, Bayesian alphabet, and least absolute shrinkage and selection operator. Then it discusses the measurement of the performance of genomic selection and factors affecting the prediction of performance. Among the measurements of prediction performance, the most important and commonly used measurement is prediction accuracy. In simulation studies where true breeding values are available, accuracy of genomic estimated breeding value can be calculated directly. In real or industrial data studies, either training-testing approach or k-fold cross-validation is commonly employed to validate methods. Factors influencing the accuracy of genomic selection include linkage disequilibrium between markers and quantitative trait loci, genetic architecture of the trait, and size and composition of the training population. Genomic selection has been implemented in the breeding programs of dairy cattle, beef cattle, pigs and poultry. Genomic selection in other species has also been intensively researched, and is likely to be implemented in the near future. |
topic |
genomic estimated breeding value|genomic selection|linkage disequilibrium|statistical methods |
url |
http://academic.hep.com.cn/fase/fileup/2095-7505/PDF/1498800634634-1990637865.pdf |
work_keys_str_mv |
AT huiminkangleizhoujianfengliu statisticalconsiderationsforgenomicselection |
_version_ |
1716781691506262016 |