Utilization of Multiyear Plant Breeding Data to Better Predict Genotype Performance

被引:14
作者
Arief, Vivi N. [1 ]
Desmae, Haile [2 ]
Hardner, Craig [3 ]
DeLacy, Ian H. [1 ]
Gilmour, Arthur [4 ]
Bull, Jason K. [5 ]
Basford, Kaye E. [1 ]
机构
[1] Univ Queensland, Sch Agr & Food Sci, St Lucia, Qld 4072, Australia
[2] ICRISAT WCA, Bamako, Mali
[3] Univ Queensland, Queensland Alliance Agr & Food Innovat, Brisbane, Qld 4072, Australia
[4] Stat & ASReml Consultant, Cargo, NSW 2800, Australia
[5] Climate Corp, 4 Cityplace Dr, St Louis, MO 63141 USA
关键词
X ENVIRONMENT INTERACTIONS; SPATIAL-ANALYSIS; VARIETY; SELECTION; DESIGNS; MODELS; YIELD;
D O I
10.2135/cropsci2018.03.0182
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Despite the availability of multiyear, multicycle, and multiphase data in plant breeding programs for annual crops, selection is often based on single-year, single-cycle, and single-phase data. As genotypes in the same fields are usually grown under the same management practice, data from these fields can and should be analyzed together. In Monsanto's North American maize (Zea mays L.) breeding program, this approach enables a spatial model to be fitted in each field, providing an estimate of spatial trend and a better estimate of residual variance in each field. Multiyear, multicycle analysis showed that the estimates of genotype x year variance (V-GY) and genotype x year x location variance (V-GYL) were still the largest components of the estimated phenotypic variance. Analysis of any single-year subset of the data inflated the estimate of genotypic variance (V-G) by the size of the estimate of V-GY, resulting in potential bias in the estimates of genotype performance. These results demonstrate the advantage of a combined analysis of data across years and cycles to make selection decisions for genotype advancement.
引用
收藏
页码:480 / 490
页数:11
相关论文
共 26 条
[1]   Evaluating Testing Strategies for Plant Breeding Field Trials: Redesigning a CIMMYT International Wheat Nursery [J].
Arief, Vivi N. ;
DeLacy, Ian H. ;
Crossa, Jose ;
Payne, Thomas ;
Singh, Ravi ;
Braun, Hans-J. ;
Tian, Ting ;
Basford, Kaye E. ;
Dieters, Mark J. .
CROP SCIENCE, 2015, 55 (01) :164-177
[2]  
Basford K. E., 1996, P125
[3]   Genotype x environment interactions and some considerations of their implications for wheat breeding in Australia [J].
Basford, KE ;
Cooper, M .
AUSTRALIAN JOURNAL OF AGRICULTURAL RESEARCH, 1998, 49 (02) :153-174
[4]  
Butler D, 2009, ASREML R REFERENCE M
[5]   Analysis of line x environment interactions for yield in navy beans. 1. Components of variance [J].
Butler, DG ;
Redden, RJ ;
DeLacy, IH ;
Usher, T .
AUSTRALIAN JOURNAL OF AGRICULTURAL RESEARCH, 2000, 51 (05) :597-605
[6]  
Cochran W. G., 1951, 2ND P BERK S MATH ST, P449
[7]  
Comstock R.E., 1963, Statistical genetics and plant breeding, P164
[8]   Spatial analysis of multi-environment early generation variety trials [J].
Cullis, B ;
Gogel, B ;
Verbyla, A ;
Thompson, R .
BIOMETRICS, 1998, 54 (01) :1-18
[9]   The analysis of the NSW wheat variety database .2. Variance component estimation [J].
Cullis, BR ;
Thomson, FM ;
Fisher, JA ;
Gilmour, AR ;
Thompson, R .
THEORETICAL AND APPLIED GENETICS, 1996, 92 (01) :28-39
[10]   SPATIAL-ANALYSIS OF FIELD EXPERIMENTS - AN EXTENSION TO 2 DIMENSIONS [J].
CULLIS, BR ;
GLEESON, AC .
BIOMETRICS, 1991, 47 (04) :1449-1460