Liang Ting, Duan Bo, Luo Xiaoyun, Ma Yi, Yuan Zhengqing, Zhu Renshan, Peng Yi, Gong Yan, Fang Shenghui, Wu Xianting
State Key Laboratory of Hybrid Rice, Wuhan University, Wuhan, China.
College of Life Sciences, Wuhan University, Wuhan, China.
Front Plant Sci. 2021 Dec 3;12:740414. doi: 10.3389/fpls.2021.740414. eCollection 2021.
Identification of high Nitrogen Use Efficiency (NUE) phenotypes has been a long-standing challenge in breeding rice and sustainable agriculture to reduce the costs of nitrogen (N) fertilizers. There are two main challenges: (1) high NUE genetic sources are biologically scarce and (2) on the technical side, few easy, non-destructive, and reliable methodologies are available to evaluate plant N variations through the entire growth duration (GD). To overcome the challenges, we captured a unique higher NUE phenotype in rice as a dynamic time-series N variation curve through the entire GD analysis by canopy reflectance data collected by Unmanned Aerial Vehicle Remote Sensing Platform (UAV-RSP) for the first time. LY9348 was a high NUE rice variety with high Nitrogen Uptake Efficiency (NUpE) and high Nitrogen Utilization Efficiency (NUtE) shown in nitrogen dosage field analysis. Its canopy nitrogen content (CNC) was analyzed by the high-throughput UAV-RSP to screen two mixed categories (51 versus 42 varieties) selected from representative higher NUE rice collections. Five Vegetation Indices (VIs) were compared, and the Normalized Difference Red Edge Index (NDRE) showed the highest correlation with CNC ( = 0.80). Six key developmental stages of rice varieties were compared from transplantation to maturation, and the high NUE phenotype of LY9348 was shown as a dynamic N accumulation curve, where it was moderately high during the vegetative developmental stages but considerably higher in the reproductive developmental stages with a slower reduction rate. CNC curves of different rice varieties were analyzed to construct two non-linear regression models between N% or N% × leaf area index (LAI) with NDRE separately. Both models could determine the specific phenotype with the coefficient of determination ( ) above 0.61 (Model I) and 0.86 (Model II). Parameters influencing the correlation accuracy between NDRE and N% were found to be better by removing the tillering stage data, separating the short and long GD varieties for the analysis and adding canopy structures, such as LAI, into consideration. The high NUE phenotype of LY9348 could be traced and reidentified across different years, locations, and genetic germplasm groups. Therefore, an effective and reliable high-throughput method was proposed for assisting the selection of the high NUE breeding phenotype.
鉴定高氮利用效率(NUE)表型一直是水稻育种和可持续农业领域的一项长期挑战,目的是降低氮肥成本。主要存在两个挑战:(1)高NUE遗传资源在生物学上稀缺;(2)在技术方面,几乎没有简便、无损且可靠的方法可用于评估植物在整个生长周期(GD)内的氮素变化。为了克服这些挑战,我们首次通过无人机遥感平台(UAV-RSP)收集的冠层反射率数据进行全生长周期分析,捕捉到水稻中一种独特的更高NUE表型,呈现为动态时间序列氮素变化曲线。LY9348是一个高NUE水稻品种,在氮肥用量田间分析中表现出高氮吸收效率(NUpE)和高氮利用效率(NUtE)。通过高通量UAV-RSP分析其冠层氮含量(CNC),以筛选从具有代表性的高NUE水稻品种集合中选出的两个混合类别(分别为51个和42个品种)。比较了五种植被指数(VIs),归一化差值红边指数(NDRE)与CNC的相关性最高(r = 0.80)。比较了水稻品种从移栽到成熟的六个关键发育阶段,LY9348的高NUE表型呈现为动态氮积累曲线,在营养发育阶段氮积累量中等偏高,但在生殖发育阶段显著更高,且下降速率较慢。分析不同水稻品种的CNC曲线,分别构建了氮含量百分比(N%)或N%×叶面积指数(LAI)与NDRE之间的两个非线性回归模型。两个模型都能确定特定表型,决定系数(R²)分别高于0.61(模型I)和0.86(模型II)。发现通过去除分蘖期数据、区分生长周期长短不同的品种进行分析并考虑冠层结构(如LAI),可提高NDRE与N%之间相关性的准确性。LY9348的高NUE表型可在不同年份、地点和遗传种质组中追踪和重新鉴定。因此,提出了一种有效且可靠的高通量方法来辅助高NUE育种表型的选择。