Liu Wenjian, Li Yanjie, Tomasetto Federico, Yan Weiqi, Tan Zifeng, Liu Jun, Jiang Jingmin
Research Institute of Subtropical Forestry, Chinese Academy of Forestry, Hangzhou, China.
AgResearch Ltd., Christchurch, New Zealand.
Front Plant Sci. 2022 Jan 21;12:809828. doi: 10.3389/fpls.2021.809828. eCollection 2021.
Drought is a climatic event that considerably impacts plant growth, reproduction and productivity. is a tree species with high economic, edible and medicinal value, and has drought resistance. Thus, the objective of this study was to dynamically monitor the physiological indicators of in real time to ensure the selection of drought-resistant varieties of . In this study, we used near-infrared spectroscopy as a high-throughput method along with five preprocessing methods combined with four variable selection approaches to establish a cross-validated partial least squares regression model to establish the relationship between the near infrared reflectance spectroscopy (NIRS) spectrum and physiological characteristics (i.e., chlorophyll content and nitrogen content) of leaves. We also tested optimal model prediction for the dynamic changes in chlorophyll and nitrogen content under five separate watering regimes to mimic non-destructive and dynamic detection of plant leaf physiological changes. Among them, the accuracy of the chlorophyll content prediction model was as high as 72%, with root mean square error (RMSE) of 0.25, and the RPD index above 2.26. Ideal nitrogen content prediction model should have of 0.63, with RMSE of 0.87, and the RPD index of 1.12. The results showed that the PLSR model has a good prediction effect. Overall, under diverse drought stress treatments, the chlorophyll content of leaves showed a decreasing trend over time. Furthermore, the chlorophyll content was the most stable under the 75% field capacity treatment. However, the nitrogen content of the plant leaves was found to have a different and variable trend, with the greatest drop in content under the 10% field capacity treatment. This study showed that NIRS has great potential for analyzing chlorophyll nitrogen and other elements in plant leaf tissues in non-destructive dynamic monitoring.
干旱是一种对植物生长、繁殖和生产力有重大影响的气候事件。[具体树种名称]是一种具有高经济、食用和药用价值且具有抗旱性的树种。因此,本研究的目的是实时动态监测[具体树种名称]的生理指标,以确保选择[具体树种名称]的抗旱品种。在本研究中,我们使用近红外光谱作为一种高通量方法,结合五种预处理方法和四种变量选择方法,建立了交叉验证的偏最小二乘回归模型,以建立近红外反射光谱(NIRS)与[具体树种名称]叶片生理特征(即叶绿素含量和氮含量)之间的关系。我们还测试了在五种不同浇水制度下对[具体树种名称]叶绿素和氮含量动态变化的最优模型预测,以模拟对植物叶片生理变化的无损动态检测。其中,叶绿素含量预测模型的准确率高达72%,均方根误差(RMSE)为0.25,RPD指数高于2.26。理想的氮含量预测模型的[具体指标名称]应为0.63,RMSE为0.87,RPD指数为1.12。结果表明,PLSR模型具有良好的预测效果。总体而言,在不同的干旱胁迫处理下,[具体树种名称]叶片的叶绿素含量随时间呈下降趋势。此外,在75%田间持水量处理下,叶绿素含量最为稳定。然而,发现植物叶片的氮含量呈现不同且变化的趋势,在10%田间持水量处理下含量下降最大。本研究表明,近红外光谱在植物叶片组织中叶绿素氮等元素的无损动态监测分析方面具有巨大潜力。