Enhanced OsNLP4‐OsNiR cascade confers nitrogen use efficiency by promoting tiller number in rice

Jun Yu(Nanjing Agricultural University), Wei Xuan(Nanjing Agricultural University), Yunlu Tian(Nanjing Agricultural University), Lei Fan(Nanjing Agricultural University), Juan Sun(Nanjing Agricultural University), Weijie Tang(Nanjing Agricultural University), Gaoming Chen(Nanjing Agricultural University), Baoxiang Wang(Liaoning Academy of Agricultural Sciences), Yan Liu(Liaoning Academy of Agricultural Sciences), Wei Wu(Nanjing Agricultural University), Xiaolan Liu(Nanjing Agricultural University), Xingzhou Jiang(Nanjing Agricultural University), Cong Zhou(Nanjing Agricultural University), Zhaoyang Dai(Nanjing Agricultural University), Dayong Xu(Liaoning Academy of Agricultural Sciences), Chunming Wang(Nanjing Agricultural University), Jianmin Wan(Nanjing Agricultural University)
Plant Biotechnology Journal
July 25, 2020
Cited by 139Open Access
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Abstract

Increased use of nitrogen fertilizers has deleterious impact on the environment. Increase in yield potential at low nitrogen supply is regarded as a cereal breeding goal for future agricultural sustainability. Although natural variations of nitrogen transporters have been investigated, key genes associated with assimilation remain largely unexplored for nitrogen use efficiency (NUE) enhancement. Here, we identified a NIN-like protein NLP4 associated with NUE through a GWAS in rice. We found that OsNLP4 transactivated OsNiR encoding nitrite reductase that was critical in nitrogen assimilation in rice. We further constructed quadrupling NREs (Nitrate-responsive cis-elements) in the promoter of OsNiR (p4xNRE:OsNiR) and enhanced nitrogen assimilation significantly. We demonstrated that OsNLP4-OsNiR increased tiller number and yield through enhancing nitrogen assimilation and NUE. Our discovery highlights the genetic modulation of OsNLP4-OsNiR signalling cascade as a strategy for high NUE and yield breeding in rice.


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