Maximizing efficiency of genomic selection in CIMMYT's tropical maize breeding program

被引:44
作者
Atanda, Sikiru Adeniyi [1 ,2 ,3 ]
Olsen, Michael [4 ]
Burgueno, Juan [2 ]
Crossa, Jose [2 ]
Dzidzienyo, Daniel [1 ]
Beyene, Yoseph [4 ]
Gowda, Manje [4 ]
Dreher, Kate [2 ]
Zhang, Xuecai [2 ]
Prasanna, Boddupalli M. [4 ]
Tongoona, Pangirayi [1 ]
Danquah, Eric Yirenkyi [1 ]
Olaoye, Gbadebo [5 ]
Robbins, Kelly R. [3 ]
机构
[1] Univ Ghana, West Africa Ctr Crop Improvement WACCI, Accra, Ghana
[2] Int Maize & Wheat Improvement Ctr CIMMYT, Texcoco, Mexico
[3] Cornell Univ, Sch Integrat Plant Sci, Sect Plant Breeding & Genet, Ithaca, NY 14850 USA
[4] Int Maize & Wheat Improvement Ctr CIMMYT, Nairobi, Kenya
[5] Univ Ilorin, Agron Dept, Ilorin, Nigeria
关键词
GENETIC VALUES; PREDICTION; ACCURACY; IMPLEMENTATION; INFORMATION; POPULATIONS; PEDIGREE; YIELD; MODEL;
D O I
10.1007/s00122-020-03696-9
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Key message Historical data from breeding programs can be efficiently used to improve genomic selection accuracy, especially when the training set is optimized to subset individuals most informative of the target testing set. The current strategy for large-scale implementation of genomic selection (GS) at the International Maize and Wheat Improvement Center (CIMMYT) global maize breeding program has been to train models using information from full-sibs in a "test-half-predict-half approach." Although effective, this approach has limitations, as it requires large full-sib populations and limits the ability to shorten variety testing and breeding cycle times. The primary objective of this study was to identify optimal experimental and training set designs to maximize prediction accuracy of GS in CIMMYT's maize breeding programs. Training set (TS) design strategies were evaluated to determine the most efficient use of phenotypic data collected on relatives for genomic prediction (GP) using datasets containing 849 (DS1) and 1389 (DS2) DH-lines evaluated as testcrosses in 2017 and 2018, respectively. Our results show there is merit in the use of multiple bi-parental populations as TS when selected using algorithms to maximize relatedness between the training and prediction sets. In a breeding program where relevant past breeding information is not readily available, the phenotyping expenditure can be spread across connected bi-parental populations by phenotyping only a small number of lines from each population. This significantly improves prediction accuracy compared to within-population prediction, especially when the TS for within full-sib prediction is small. Finally, we demonstrate that prediction accuracy in either sparse testing or "test-half-predict-half" can further be improved by optimizing which lines are planted for phenotyping and which lines are to be only genotyped for advancement based on GP.
引用
收藏
页码:279 / 294
页数:16
相关论文
共 41 条
[1]   Linkage disequilibrium in related breeding lines of chickens [J].
Andreescu, Cristina ;
Avendano, Santiago ;
Brown, Stewart R. ;
Hassen, Abebe ;
Lamont, Susan J. ;
Dekkers, Jack C. M. .
GENETICS, 2007, 177 (04) :2161-2169
[2]   Breeding schemes for the implementation of genomic selection in wheat (Triticum spp.) [J].
Bassi, Filippo M. ;
Bentley, Alison R. ;
Charmet, Gilles ;
Ortiz, Rodomiro ;
Crossa, Jose .
PLANT SCIENCE, 2016, 242 :23-36
[3]   Genomic prediction in early selection stages using multi-year data in a hybrid rye breeding program [J].
Bernal-Vasquez, Angela-Maria ;
Gordillo, Andres ;
Schmidt, Malthe ;
Piepho, Hans-Peter .
BMC GENETICS, 2017, 18
[4]   Empirical Comparison of Tropical Maize Hybrids Selected Through Genomic and Phenotypic Selections [J].
Beyene, Yoseph ;
Gowda, Manje ;
Olsen, Michael ;
Robbins, Kelly P. ;
Perez-Rodriguez, Paulino ;
Alvarado, Gregorio ;
Dreher, Kate ;
Gaol, Star Yanxin ;
Mugo, Stephen ;
Prasanna, Boddupalli M. ;
Crossa, Jose .
FRONTIERS IN PLANT SCIENCE, 2019, 10
[5]   Genetic Gains in Grain Yield Through Genomic Selection in Eight Bi-parental Maize Populations under Drought Stress [J].
Beyene, Yoseph ;
Semagn, Kassa ;
Mugo, Stephen ;
Tarekegne, Amsal ;
Babu, Raman ;
Meisel, Barbara ;
Sehabiague, Pierre ;
Makumbi, Dan ;
Magorokosho, Cosmos ;
Oikeh, Sylvester ;
Gakunga, John ;
Vargas, Mateo ;
Olsen, Michael ;
Prasanna, Boddupalli M. ;
Banziger, Marianne ;
Crossa, Jose .
CROP SCIENCE, 2015, 55 (01) :154-163
[6]  
Buckler ES., 2016, rAmpSeq: Using repetitive sequences for robust genotyping, DOI DOI 10.1101/096628
[7]   Genomic Prediction of Breeding Values when Modeling Genotype x Environment Interaction using Pedigree and Dense Molecular Markers [J].
Burgueno, Juan ;
de los Campos, Gustavo ;
Weigel, Kent ;
Crossa, Jose .
CROP SCIENCE, 2012, 52 (02) :707-719
[8]  
Butler D.G., 2017, ASREML R REFERENCE M
[9]   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 [J].
Clark, Samuel A. ;
Hickey, John M. ;
Daetwyler, Hans D. ;
van der Werf, Julius H. J. .
GENETICS SELECTION EVOLUTION, 2012, 44 :4
[10]   Enhancing the rate of genetic gain in public-sector plant breeding programs: lessons from the breeder's equation [J].
Cobb, Joshua N. ;
Juma, Roselyne U. ;
Biswas, Partha S. ;
Arbelaez, Juan D. ;
Rutkoski, Jessica ;
Atlin, Gary ;
Hagen, Tom ;
Quinn, Michael ;
Ng, Eng Hwa .
THEORETICAL AND APPLIED GENETICS, 2019, 132 (03) :627-645