Use of whole-genome sequence data and novel genomic selection strategies to improve selection for age at puberty in tropically-adapted beef heifers

被引:21
|
作者
Warburton, Christie L. [1 ]
Engle, Bailey N. [1 ]
Ross, Elizabeth M. [1 ]
Costilla, Roy [1 ]
Moore, Stephen S. [1 ]
Corbet, Nicholas J. [2 ]
Allen, Jack M. [3 ]
Laing, Alan R. [4 ]
Fordyce, Geoffry [1 ]
Lyons, Russell E. [5 ,6 ]
McGowan, Michael R. [5 ]
Burns, Brian M. [7 ]
Hayes, Ben J. [1 ]
机构
[1] Univ Queensland, Ctr Anim Sci, Queensland Alliance Agr & Food Innovat, St Lucia, Qld, Australia
[2] Cent Queensland Univ, Sch Hlth Med & Appl Sci, Rockhampton, Qld, Australia
[3] Univ New England, Agr Business Res Inst, Armidale, NSW, Australia
[4] Dept Agr & Fisheries, Ayr, Qld, Australia
[5] Univ Queensland, Sch Vet Sci, St Lucia, Qld, Australia
[6] Univ Queensland, Neogen, Gatton, Qld, Australia
[7] Dept Agr & Fisheries, Rockhampton, Qld, Australia
基金
澳大利亚研究理事会;
关键词
REPRODUCTIVE EFFICIENCY; GENETIC CORRELATIONS; CATTLE; TRAITS; VARIANTS; PARAMETERS; AUSTRALIA; PREGNANCY; GENOTYPES; ACCURACY;
D O I
10.1186/s12711-020-00547-5
中图分类号
S8 [畜牧、 动物医学、狩猎、蚕、蜂];
学科分类号
0905 ;
摘要
Background In tropically-adapted beef heifers, application of genomic prediction for age at puberty has been limited due to low prediction accuracies. Our aim was to investigate novel methods of pre-selecting whole-genome sequence (WGS) variants and alternative analysis methodologies; including genomic best linear unbiased prediction (GBLUP) with multiple genomic relationship matrices (MGRM) and Bayesian (BayesR) analyses, to determine if prediction accuracy for age at puberty can be improved. Methods Genotypes and phenotypes were obtained from two research herds. In total, 868 Brahman and 960 Tropical Composite heifers were recorded in the first population and 3695 Brahman, Santa Gertrudis and Droughtmaster heifers were recorded in the second population. Genotypes were imputed to 23 million whole-genome sequence variants. Eight strategies were used to pre-select variants from genome-wide association study (GWAS) results using conditional or joint (COJO) analyses. Pre-selected variants were included in three models, GBLUP with a single genomic relationship matrix (SGRM), GBLUP MGRM and BayesR. Five-way cross-validation was used to test the effect of marker panel density (6 K, 50 K and 800 K), analysis model, and inclusion of pre-selected WGS variants on prediction accuracy. Results In all tested scenarios, prediction accuracies for age at puberty were highest in BayesR analyses. The addition of pre-selected WGS variants had little effect on the accuracy of prediction when BayesR was used. The inclusion of WGS variants that were pre-selected using a meta-analysis with COJO analyses by chromosome, fitted in a MGRM model, had the highest prediction accuracies in the GBLUP analyses, regardless of marker density. When the low-density (6 K) panel was used, the prediction accuracy of GBLUP was equal (0.42) to that with the high-density panel when only six additional sequence variants (identified using meta-analysis COJO by chromosome) were included. Conclusions While BayesR consistently outperforms other methods in terms of prediction accuracies, reasonable improvements in accuracy can be achieved when using GBLUP and low-density panels with the inclusion of a relatively small number of highly relevant WGS variants.
引用
收藏
页数:13
相关论文
共 40 条
  • [1] Use of whole-genome sequence data and novel genomic selection strategies to improve selection for age at puberty in tropically-adapted beef heifers
    Christie L. Warburton
    Bailey N. Engle
    Elizabeth M. Ross
    Roy Costilla
    Stephen S. Moore
    Nicholas J. Corbet
    Jack M. Allen
    Alan R. Laing
    Geoffry Fordyce
    Russell E. Lyons
    Michael R. McGowan
    Brian M. Burns
    Ben J. Hayes
    Genetics Selection Evolution, 52
  • [2] Multivariate genomic predictions for age at puberty in tropically adapted beef heifers
    Engle, Bailey N.
    Corbet, Nicholas J.
    Allen, Jamie M.
    Laing, Alan R.
    Fordyce, Geoffry
    McGowan, Michael R.
    Burns, Brian M.
    Lyons, Russell E.
    Hayes, Ben J.
    JOURNAL OF ANIMAL SCIENCE, 2019, 97 (01) : 90 - 100
  • [3] Accuracy of genomic selection for age at puberty in a multi-breed population of tropically adapted beef cattle
    Farah, M. M.
    Swan, A. A.
    Fortes, M. R. S.
    Fonseca, R.
    Moore, S. S.
    Kelly, M. J.
    ANIMAL GENETICS, 2016, 47 (01) : 3 - 11
  • [4] Variable selection models for genomic selection using whole-genome sequence data and singular value decomposition
    Theo H. E. Meuwissen
    Ulf G. Indahl
    Jørgen Ødegård
    Genetics Selection Evolution, 49
  • [5] Variable selection models for genomic selection using whole-genome sequence data and singular value decomposition
    Meuwissen, Theo H. E.
    Indahl, Ulf G.
    Odegard, Jorgen
    GENETICS SELECTION EVOLUTION, 2017, 49
  • [6] Strategies for Obtaining and Pruning Imputed Whole-Genome Sequence Data for Genomic Prediction
    Ye, Shaopan
    Gao, Ning
    Zheng, Rongrong
    Chen, Zitao
    Teng, Jinyan
    Yuan, Xiaolong
    Zhang, Hao
    Chen, Zanmou
    Zhang, Xiquan
    Li, Jiaqi
    Zhang, Zhe
    FRONTIERS IN GENETICS, 2019, 10
  • [7] Whole-genome sequence data uncover loss of genetic diversity due to selection
    Eynard, Sonia E.
    Windig, Jack J.
    Hiemstra, Sipke J.
    Calus, Mario P. L.
    GENETICS SELECTION EVOLUTION, 2016, 48
  • [8] Whole-genome sequence data uncover loss of genetic diversity due to selection
    Sonia E. Eynard
    Jack J. Windig
    Sipke J. Hiemstra
    Mario P. L. Calus
    Genetics Selection Evolution, 48
  • [9] Detection of genomic variations and selection signatures in Wagyu using whole-genome sequencing data
    Shi, Lulu
    Hu, Mingyue
    Lai, Weining
    Yi, Wenfeng
    Liu, Zhengxi
    Sun, Hao
    Li, Feng
    Yan, Shouqing
    ANIMAL GENETICS, 2023, 54 (06) : 808 - 812
  • [10] Efficient genomic prediction based on whole-genome sequence data using split-and-merge Bayesian variable selection
    Mario P. L. Calus
    Aniek C. Bouwman
    Chris Schrooten
    Roel F. Veerkamp
    Genetics Selection Evolution, 48