ISSN: 2375-4338

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  • Research Article   
  • JRR,
  • DOI: 10.4172/2375-4338.1000264

Breeding for Nitrogen use Efficiency: Lessons from Two Genomic Prediction Experiments Within a Broad-based Population of Upland Rice

Joël Rakotomalala1*, Kirsten Vom Brocke1,2,3, Julien Frouin2,4, David Pot2,4, Ravo Rabekijana1,3, Alain Ramanantsoaniriana1, Isabelle Ramonta Ratsimilala5, Cecile Grenier2,4 and Tuong-Vi Cao2,4
1National Center for Applied Research on Rural Development, Regional Research Station Antsirabe, Antsirabe 110, Madagascar
2UMR AGAP, Highland Production Systems and Sustainability in Madagascar Platform in Partnership, CIRAD, Antsirabe 110, Madagascar
3UMR AGAP Institut, Univ Montpellier, CIRAD, INRAE, Institut Agro, F-34398 Montpellier, France
4CIRAD, UMR AGAP Institut, F-34398 Montpellier, France
5Faculty of Sciences, University of Antananarivo, Antananarivo 101, Madagascar
*Corresponding Author : Joël Rakotomalala, National Center for Applied Research on Rural Development, Regional Research Station Antsirabe, Antsirabe 110, Madagascar, Tel: +261340369431, Email: satahjo@yahoo.fr

Received Date: Jul 23, 2021 / Accepted Date: Sep 02, 2021 / Published Date: Sep 09, 2021

Abstract

In the context of subsistence farming in Madagascar, upland rice producers have limited access to mineral fertilizers and yields remain very low. Genetic improvement of yield through the nitrogen use efficiency (NUE) component is an avenue to be explored in breeding programs. A recent GWAS study carried out on an upland rice diversity panel allowed to detect genomic regions involved in NUE variability, nevertheless these regions explained only a moderate part of the total genetic diversity observed in the panel. We investigated the potential of genomic prediction for NUE in order to optimize our upland rice breeding program for this trait. We evaluated the predictive ability of genomic prediction using two validation experiments. The first consisted of a standard cross-validation with 5-fold subdivision of the diversity panel (DP) and the second consisted of an independent experiment involving a breeding population (BP) derived from the DP. The DP was structured into five genetic clusters of different sizes and with some degree of admixture, while the BP was composed of two main clusters. The best prediction ability for NUE was obtained in crossvalidation within the DP. The predictive ability in the independent validation experiment was weak (r = 0.25), about three times less than those obtained in the cross-validation. The low kinship between DP and BP, different genetic structures and slightly different LD patterns probably explains the low predictive ability of across populations genomic prediction. Practical implications for our rice breeding program are discussed.

Keywords: Genomic Prediction; Nitrogen use Efficiency; Upland Rice

Citation: Rakotomalala J, Brocke KV, Frouin J, Pot D, Rabekijana R, et al. (2021) Breeding for Nitrogen use Efficiency: Lessons from Two Genomic Prediction Experiments Within a Broad-based Population of Upland Rice. J Rice Res 9: 264. Doi: 10.4172/2375-4338.1000264

Copyright: © 2021 Rakotomalala J, et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

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