Genomic selection for tolerance to aluminum toxicity in a synthetic population of upland rice

PLoS One. 2024 Aug 22;19(8):e0307009. doi: 10.1371/journal.pone.0307009. eCollection 2024.

Abstract

Over half of the world's arable land is acidic, which constrains cereal production. In South America, different rice-growing regions (Cerrado in Brazil and Llanos in Colombia and Venezuela) are particularly affected due to high aluminum toxicity levels. For this reason, efforts have been made to breed for tolerance to aluminum toxicity using synthetic populations. The breeding program of CIAT-CIRAD is a good example of the use of recurrent selection to increase productivity for the Llanos in Colombia. In this study, we evaluated the performance of genomic prediction models to optimize the breeding scheme by hastening the development of an improved synthetic population and elite lines. We characterized 334 families at the S0:4 generation in two conditions. One condition was the control, managed with liming, while the other had high aluminum toxicity. Four traits were considered: days to flowering (FL), plant height (PH), grain yield (YLD), and zinc concentration in the polished grain (ZN). The population presented a high tolerance to aluminum toxicity, with more than 72% of the families showing a higher yield under aluminum conditions. The performance of the families under the aluminum toxicity condition was predicted using four different models: a single-environment model and three multi-environment models. The multi-environment models differed in the way they integrated genotype-by-environment interactions. The best predictive abilities were achieved using multi-environment models: 0.67 for FL, 0.60 for PH, 0.53 for YLD, and 0.65 for ZN. The gain of multi-environment over single-environment models ranged from 71% for YLD to 430% for FL. The selection of the best-performing families based on multi-trait indices, including the four traits mentioned above, facilitated the identification of suitable families for recombination. This information will be used to develop a new cycle of recurrent selection through genomic selection.

MeSH terms

  • Aluminum* / toxicity
  • Genome, Plant
  • Genomics
  • Oryza* / drug effects
  • Oryza* / genetics
  • Oryza* / growth & development
  • Phenotype
  • Plant Breeding*
  • Selection, Genetic*

Substances

  • Aluminum

Grants and funding

This research was conducted with the support of the OMICAS program (Optimización Multiescala In-Silico de Cultivos Agrícolas Sostenibles—Infraestructura y Validación en Arroz y Caña de Azúcar), sponsored within the Colombian Scientific Ecosystem by the World Bank, The Colombian Ministry of Science, Technology and Innovation (MINCIENCIAS), ICETEX, The Colombian Ministry of Education, and the Colombian Ministry of Industry and Tourism under Grant ID FP-44842-217-2018. Additional funding was received from the CGIAR Research Programs A4NH (Agriculture for Nutrition and Health) and RICE for genotyping and grain quality evaluation. There was no additional external funding received for this study. The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.