Predictive ability of multi-population genomic prediction methods of phenotypes for reproduction traits in Chinese and Austrian pigs

被引:1
作者
Wang, Xue [1 ]
Zhang, Zipeng [1 ]
Du, Hehe [1 ]
Pfeiffer, Christina [2 ]
Meszaros, Gabor [2 ]
Ding, Xiangdong [1 ]
机构
[1] China Agr Univ, Coll Anim Sci & Technol, State Key Lab Anim Biotech Breeding, Key Lab Anim Genet & Breeding,Minist Agr & Rural A, Beijing, Peoples R China
[2] Univ Nat Resources & Life Sci, Vienna, Austria
关键词
GENETIC CORRELATIONS; SELECTION; REGRESSION; HOLSTEIN;
D O I
10.1186/s12711-024-00915-5
中图分类号
S8 [畜牧、 动物医学、狩猎、蚕、蜂];
学科分类号
0905 ;
摘要
BackgroundMulti-population genomic prediction can rapidly expand the size of the reference population and improve genomic prediction ability. Machine learning (ML) algorithms have shown advantages in single-population genomic prediction of phenotypes. However, few studies have explored the effectiveness of ML methods for multi-population genomic prediction.ResultsIn this study, 3720 Yorkshire pigs from Austria and four breeding farms in China were used, and single-trait genomic best linear unbiased prediction (ST-GBLUP), multitrait GBLUP (MT-GBLUP), Bayesian Horseshoe (BayesHE), and three ML methods (support vector regression (SVR), kernel ridge regression (KRR) and AdaBoost.R2) were compared to explore the optimal method for joint genomic prediction of phenotypes of Chinese and Austrian pigs through 10 replicates of fivefold cross-validation. In this study, we tested the performance of different methods in two scenarios: (i) including only one Austrian population and one Chinese pig population that were genetically linked based on principal component analysis (PCA) (designated as the "two-population scenario") and (ii) adding reference populations that are unrelated based on PCA to the above two populations (designated as the "multi-population scenario"). Our results show that, the use of MT-GBLUP in the two-population scenario resulted in an improvement of 7.1% in predictive ability compared to ST-GBLUP, while the use of SVR and KKR yielded improvements in predictive ability of 4.5 and 5.3%, respectively, compared to MT-GBLUP. SVR and KRR also yielded lower mean square errors (MSE) in most population and trait combinations. In the multi-population scenario, improvements in predictive ability of 29.7, 24.4 and 11.1% were obtained compared to ST-GBLUP when using, respectively, SVR, KRR, and AdaBoost.R2. However, compared to MT-GBLUP, the potential of ML methods to improve predictive ability was not demonstrated.ConclusionsOur study demonstrates that ML algorithms can achieve better prediction performance than multitrait GBLUP models in multi-population genomic prediction of phenotypes when the populations have similar genetic backgrounds; however, when reference populations that are unrelated based on PCA are added, the ML methods did not show a benefit. When the number of populations increased, only MT-GBLUP improved predictive ability in both validation populations, while the other methods showed improvement in only one population.
引用
收藏
页数:17
相关论文
共 57 条
  • [1] International single-step SNPBLUP beef cattle evaluations for Limousin weaning weight
    Bonifazi, Renzo
    Calus, Mario P. L.
    ten Napel, Jan
    Veerkamp, Roel F.
    Michenet, Alexis
    Savoia, Simone
    Cromie, Andrew
    Vandenplas, Jeremie
    [J]. GENETICS SELECTION EVOLUTION, 2022, 54 (01)
  • [2] Impact of sub-setting the data of the main Limousin beef cattle population on the estimates of across-country genetic correlations
    Bonifazi, Renzo
    Vandenplas, Jeremie
    ten Napel, Jan
    Matilainen, Kaarina
    Veerkamp, Roel F.
    Calus, Mario P. L.
    [J]. GENETICS SELECTION EVOLUTION, 2020, 52 (01)
  • [3] Transethnic Genetic-Correlation Estimates from Summary Statistics
    Brown, Brielin C.
    Ye, Chun Jimmie
    Price, Alkes L.
    Zaitlen, Noah
    [J]. AMERICAN JOURNAL OF HUMAN GENETICS, 2016, 99 (01) : 76 - 88
  • [4] A Unified Approach to Genotype Imputation and Haplotype-Phase Inference for Large Data Sets of Trios and Unrelated Individuals
    Browning, Brian L.
    Browning, Sharon R.
    [J]. AMERICAN JOURNAL OF HUMAN GENETICS, 2009, 84 (02) : 210 - 223
  • [5] An atlas of genetic correlations across human diseases and traits
    Bulik-Sullivan, Brendan
    Finucane, Hilary K.
    Anttila, Verneri
    Gusev, Alexander
    Day, Felix R.
    Loh, Po-Ru
    Duncan, Laramie
    Perry, John R. B.
    Patterson, Nick
    Robinson, Elise B.
    Daly, Mark J.
    Price, Alkes L.
    Neale, Benjamin M.
    [J]. NATURE GENETICS, 2015, 47 (11) : 1236 - +
  • [6] Multiple Country and Breed Genomic Prediction of Tick Resistance in Beef Cattle
    Cardoso, Fernando Flores
    Matika, Oswald
    Djikeng, Appolinaire
    Mapholi, Ntanganedzeni
    Burrow, Heather M.
    Yokoo, Marcos Jun Iti
    Campos, Gabriel Soares
    Gulias-Gomes, Claudia Cristina
    Riggio, Valentina
    Pong-Wong, Ricardo
    Engle, Bailey
    Porto-Neto, Laercio
    Maiwashe, Azwihangwisi
    Hayes, Ben J.
    [J]. FRONTIERS IN IMMUNOLOGY, 2021, 12
  • [7] Second-generation PLINK: rising to the challenge of larger and richer datasets
    Chang, Christopher C.
    Chow, Carson C.
    Tellier, Laurent C. A. M.
    Vattikuti, Shashaank
    Purcell, Shaun M.
    Lee, James J.
    [J]. GIGASCIENCE, 2015, 4
  • [8] Effects of genomic selection on genetic improvement, inbreeding, and merit of young versus proven bulls
    de Roos, A. P. W.
    Schrooten, C.
    Veerkamp, R. F.
    van Arendonk, J. A. M.
    [J]. JOURNAL OF DAIRY SCIENCE, 2011, 94 (03) : 1559 - 1567
  • [9] Nonlinear forecasting with many predictors using kernel ridge regression
    Exterkate, Peter
    Groenen, Patrick J. F.
    Heij, Christiaan
    van Dijk, Dick
    [J]. INTERNATIONAL JOURNAL OF FORECASTING, 2016, 32 (03) : 736 - 753
  • [10] Predicting human protein function with multi-task deep neural networks
    Fa, Rui
    Cozzetto, Domenico
    Wan, Cen
    Jones, David T.
    [J]. PLOS ONE, 2018, 13 (06):