Breeding rice for nitrogen use efficiency

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C. N. Neeraja
S. R. Voleti
D. Subrahmanyam
K. Surekha
P. Raghuveer Rao

Abstract

Development of nitrogen use efficient (NUE) rice varieties is inevitable for sustainability of environmental friendly and economical agricultural practices. Several management practices are being studied for increasing efficiency of spatial and temporal inputs of N under National Innovations for Climate Resilient Agriculture (NICRA). Attempts are being made to develop NUE rice varieties with multidisciplinary approach and conventional selection along with mapping and next generation sequencing strategies. Around 800 rice genotypes were characterized under low and recommended nitrogen for two consecutive seasons and the promising donors further evaluated to identify consistent NUE rice genotypes. Several mapping populations were developed using the NUE donors and popular rice varieties. QTL/genomic regions were identified for yield under low N using biparental and association mapping. Using minimum marker set of 50 rice SSR markers, 12 genomic regions were identified for yield and yield associated traits under low nitrogen. Several promising recombinants of yield and NUE were identified and these breeding lines were evaluated under multi-locations and stable performers were identified under AICRIP Trial - Evaluation of Radiation and Nitrogen use efficient promising rice genotypes -Plant Physiology during Kharif 2016, 2017 and 2018. As nitrogen is the building block of biomass, an optimum N is required for realizing the yield. The strategy should be to maximise uptake and improve utilization, so that remobilization of N to yield is achieved under low N.

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How to Cite
Neeraja, C. N., Voleti, S. R., Subrahmanyam, D., Surekha, K., & Rao, P. R. (2019). Breeding rice for nitrogen use efficiency. INDIAN JOURNAL OF GENETICS AND PLANT BREEDING, 79(Sup-01), 208–215. Retrieved from https://isgpb.org/journal/index.php/IJGPB/article/view/3159
Section
Research Article

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