Abstract
AbstractGenomic selection (GS) has proven to be an efficient tool for predicting crop-rank performance of untested genotypes; however, when the traits have intermediate optima (phenology stages), this implementation might not be the most convenient. GS might deliver high-rank correlations but incurring in serious bias. Days to heading (DTH) is a crucial development stage in rice for regional adaptability with a significant impact on yield potential. The objective of this research consisted in develop a novel method that accurately predicts time-related traits such as DTH in unobserved environments. For this, we propose an implementation that incorporates day length information (DL) in the prediction process for two relevant scenarios: CV0, predicting tested genotypes in unobserved environments (C method); and CV00, predicting untested genotypes in unobserved environments (CB method). The use of DL has advantages over weather data since it can be determined in advance just by knowing the location and planting date. The proposed methods showed that DL information significantly helps to improve the predictive ability of DTH in unobserved environments. Under CV0, the C method returned a root-mean-square error (RMSE) of 3.9 days, a Pearson correlation (PC) of 0.98 and the differences between the predicted and observed environmental means (EMD) ranged between -4.95 and 4.67 days. For CV00, the CB method returned an RMSE of 7.3 days, a PC of 0.93 and the EMD ranged between -6.4 and 4.1 days while the conventional GS implementation produced an RMSE of 18.1 days, a PC of 0.41 and the EMD ranged between -31.5 and 28.7 days.
Funder
JST CREST
USDA National Institute of Food and Agriculture, Plant Health and Production and Plant Products
MEXT KAKENHI
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. FAO, IFAD, UNICEF, WFP and WHO. The State of Food Security and Nutrition in the World. Building climate resilience for food security and nutrition. Rome, FAO (2018).
2. Bernardo, R. Breeding for Quantitative Traits in Plants (Stemma Press, Woodbury, 2002).
3. Meuwissen, T. H., Hayes, B. J. & Goddard, M. E. Prediction of total genetic value using genome-wide dense marker maps. Genetics157, 1819–1829 (2001).
4. Heffner, H. L., Sorrells, M. E. & Jannink, J. L. Genomic selection for crop improvement. Crop Sci.49, 1–2 (2009).
5. Jannink, J. L., Lorenz, A. J. & Iwata, H. Genomic selection in plant breeding: From theory to practice. Brief. Funct. Genom.9, 166–177 (2010).
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