Ding Guohui, Shen Liyan, Dai Jie, Jackson Robert, Liu Shuchen, Ali Mujahid, Sun Li, Wen Mingxing, Xiao Jin, Deakin Greg, Jiang Dong, Wang Xiu-E, Zhou Ji
College of Agriculture, Plant Phenomics Research Centre, Academy for Advanced Interdisciplinary Studies, Nanjing Agricultural University, Nanjing 210095, China.
Cambridge Crop Research, National Institute of Agricultural Botany (NIAB), Cambridge CB3 0LE, UK.
Plant Phenomics. 2023 Dec 22;5:0128. doi: 10.34133/plantphenomics.0128. eCollection 2023.
Inefficient nitrogen (N) utilization in agricultural production has led to many negative impacts such as excessive use of N fertilizers, redundant plant growth, greenhouse gases, long-lasting toxicity in ecosystem, and even effect on human health, indicating the importance to optimize N applications in cropping systems. Here, we present a multiseasonal study that focused on measuring phenotypic changes in wheat plants when they were responding to different N treatments under field conditions. Powered by drone-based aerial phenotyping and the AirMeasurer platform, we first quantified 6 N response-related traits as targets using plot-based morphological, spectral, and textural signals collected from 54 winter wheat varieties. Then, we developed dynamic phenotypic analysis using curve fitting to establish profile curves of the traits during the season, which enabled us to compute static phenotypes at key growth stages and dynamic phenotypes (i.e., phenotypic changes) during N response. After that, we combine 12 yield production and N-utilization indices manually measured to produce N efficiency comprehensive scores (NECS), based on which we classified the varieties into 4 N responsiveness (i.e., N-dependent yield increase) groups. The NECS ranking facilitated us to establish a tailored machine learning model for N responsiveness-related varietal classification just using N-response phenotypes with high accuracies. Finally, we employed the Wheat55K SNP Array to map single-nucleotide polymorphisms using N response-related static and dynamic phenotypes, helping us explore genetic components underlying N responsiveness in wheat. In summary, we believe that our work demonstrates valuable advances in N response-related plant research, which could have major implications for improving N sustainability in wheat breeding and production.
农业生产中氮素利用效率低下已导致诸多负面影响,如氮肥过量使用、作物生长冗余、温室气体排放、生态系统中长期毒性,甚至对人类健康产生影响,这表明优化作物种植系统中的氮素施用至关重要。在此,我们开展了一项多季节研究,重点测量田间条件下小麦植株对不同氮处理的表型变化。借助基于无人机的航空表型分析和AirMeasurer平台,我们首先利用从54个冬小麦品种收集的基于地块的形态、光谱和纹理信号,将6个与氮响应相关的性状作为目标进行量化。然后,我们通过曲线拟合开发动态表型分析,以建立该季节性状的轮廓曲线,这使我们能够计算关键生长阶段的静态表型和氮响应期间的动态表型(即表型变化)。之后,我们将人工测量的12个产量和氮利用指标相结合以生成氮效率综合得分(NECS),并据此将品种分为4个氮响应性(即依赖氮增加产量)组。NECS排名有助于我们仅使用氮响应表型建立一个针对氮响应相关品种分类的定制机器学习模型,且准确率很高。最后,我们利用小麦55K SNP芯片,使用与氮响应相关的静态和动态表型来定位单核苷酸多态性,帮助我们探索小麦氮响应性的遗传成分。总之,我们认为我们的工作在与氮响应相关的植物研究中取得了有价值的进展,这可能对提高小麦育种和生产中的氮素可持续性具有重大意义。