4.7 Article

Phenomic selection in wheat breeding: identification and optimisation of factors influencing prediction accuracy and comparison to genomic selection

期刊

THEORETICAL AND APPLIED GENETICS
卷 135, 期 3, 页码 895-914

出版社

SPRINGER
DOI: 10.1007/s00122-021-04005-8

关键词

Bread wheat; Genomic selection (GS); Genomic-like omics-based (GLOB) prediction; Near-infrared spectroscopy (NIRS); Phenomic selection (PS); Plant breeding

资金

  1. Florimond Desprez
  2. Association Nationale de la Recherche et de la Technologie (ANRT) [2019/0060]
  3. Agri-Obtentions

向作者/读者索取更多资源

The study suggests that phenomic selection (PS) could be a promising alternative or complement to genomic selection (GS) in wheat breeding. Models combining spectra from different environments have high accuracy in predicting grain yield and heading date of wheat breeding lines.
Key message Phenomic selection is a promising alternative or complement to genomic selection in wheat breeding. Models combining spectra from different environments maximise the predictive ability of grain yield and heading date of wheat breeding lines. Phenomic selection (PS) is a recent breeding approach similar to genomic selection (GS) except that genotyping is replaced by near-infrared (NIR) spectroscopy. PS can potentially account for non-additive effects and has the major advantage of being low cost and high throughput. Factors influencing GS predictive abilities have been intensively studied, but little is known about PS. We tested and compared the abilities of PS and GS to predict grain yield and heading date from several datasets of bread wheat lines corresponding to the first or second years of trial evaluation from two breeding companies and one research institute in France. We evaluated several factors affecting PS predictive abilities including the possibility of combining spectra collected in different environments. A simple H-BLUP model predicted both traits with prediction ability from 0.26 to 0.62 and with an efficient computation time. Our results showed that the environments in which lines are grown had a crucial impact on predictive ability based on the spectra acquired and was specific to the trait considered. Models combining NIR spectra from different environments were the best PS models and were at least as accurate as GS in most of the datasets. Furthermore, a GH-BLUP model combining genotyping and NIR spectra was the best model of all (prediction ability from 0.31 to 0.73). We demonstrated also that as for GS, the size and the composition of the training set have a crucial impact on predictive ability. PS could therefore replace or complement GS for efficient wheat breeding programs.

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