Improving wheat grain yield genomic prediction accuracy using historical data

被引:0
|
作者
Vitale, Paolo [1 ]
Montesinos-Lopez, Osval [2 ]
Gerard, Guillermo [1 ]
Velu, Govindan [1 ]
Tadesse, Zerihun [1 ]
Montesinos-Lopez, Abelardo [3 ]
Dreisigacker, Susanne [1 ]
Pacheco, Angela [1 ]
Toledo, Fernando [1 ]
Saint Pierre, Carolina [1 ]
Perez-Rodriguez, Paulino
Gardner, Keith [1 ]
Crespo-Herrera, Leonardo [1 ]
Crossa, Jose [1 ,4 ]
机构
[1] Int Maize & Wheat Improvement Ctr CIMMYT, Km 45 Carretera Mexico Veracruz, El Batan 5623, Edo De Mexico, Mexico
[2] Univ Colima, Fac Telematica, Colima 28040, Mexico
[3] Univ Guadalajara, Ctr Univ Ciencias Exactas & Ingn CUCEI, Guadalajara 44430, Jalisco, Mexico
[4] Colegio Postgrad, Montecillo 56231, Edo De Mexico, Mexico
来源
G3-GENES GENOMES GENETICS | 2025年 / 15卷 / 04期
基金
比尔及梅琳达.盖茨基金会;
关键词
Genomic Prediction; plant breeding; wheat breeding; historical data; prediction accuracy; X ENVIRONMENT INTERACTION; TRAINING POPULATION DESIGN; SELECTION; RELATEDNESS; PEDIGREE;
D O I
10.1093/g3journal/jkaf038
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
Genomic selection is an essential tool to improve genetic gain in wheat breeding. This study aimed to enhance prediction accuracy for grain yield across various selection environments using CIMMYT's (International Maize and Wheat Improvement Center) historical dataset. Ten years of grain yield data from 6 selection environments were analyzed, with the populations of 5 years (2018-2023) as the validation population and earlier years (back to 2013-2014) as the training population. Generally, we observed that as the number of training years increased, the prediction accuracy tended to improve or stabilize. For instance, in the late heat stress selection environment (beds late heat stress), prediction accuracy increased from 0.11 (1 training year) to 0.23 (5 years), stabilizing at 0.26. Similar trends were observed in the intermediate drought selection environment (beds with 2 irrigations), with prediction accuracy rising from 0.12 (1 year) to 0.21 (4 years) but minimal improvement beyond that. Conversely, some selection environments, such as flat 5 irrigations (flat optimal environment), did not significantly increase, with the prediction accuracy fluctuating around 0.09-0.14 regardless of the number of training years used. Additionally, average genetic diversity within the training population and the validation population influenced prediction accuracy. Indeed, a negative correlation between prediction accuracy and the genetic distance was observed. This highlights the need to balance genetic diversity to enhance the predictive power of genomic selection models. These findings exhibit the benefits of using an extended historical dataset while considering genetic diversity to maximize prediction accuracy in genomic selection strategies for wheat breeding, ultimately supporting the development of high-yielding varieties.
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页数:12
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