Tohoku Agricultural Research Center, National Agriculture and Food Research Organization, Morioka, Japan.
Department of Plant Biology, University of Illinois at Urbana-Champaign, Urbana, Illinois, USA.
Plant Cell Environ. 2022 Jan;45(1):80-94. doi: 10.1111/pce.14204. Epub 2021 Oct 28.
Traditional gas exchange measurements are cumbersome, which makes it difficult to capture variation in biochemical parameters, namely the maximum rate of carboxylation measured at a reference temperature (V ) and the maximum electron transport at a reference temperature (J ), in response to growth temperature over time from days to weeks. Hyperspectral reflectance provides reliable measures of V and J ; however, the capability of this method to capture biochemical acclimations of the two parameters to high growth temperature over time has not been demonstrated. In this study, V and J were measured over multiple growth stages during two growing seasons for field-grown soybeans using both gas exchange techniques and leaf spectral reflectance under ambient and four elevated canopy temperature treatments (ambient+1.5, +3, +4.5, and +6°C). Spectral vegetation indices and machine learning methods were used to build predictive models for V and J , based on the leaf reflectance. Results showed that these models yielded an R of 0.57-0.65 and 0.48-0.58 for V and J , respectively. Hyperspectral reflectance captured biochemical acclimation of leaf photosynthesis to high temperature in the field, improving spatial and temporal resolution in the ability to assess the impact of future warming on crop productivity.
传统的气体交换测量方法繁琐,难以捕捉生化参数的变化,例如在参考温度下测量的最大羧化速率(V)和最大电子传递速率(J),这些参数随时间从几天到几周而变化。高光谱反射率可提供 V 和 J 的可靠测量值;然而,该方法在一段时间内捕获生化适应两个参数以适应高生长温度的能力尚未得到证明。在这项研究中,使用气体交换技术和叶光谱反射率,在两个生长季节的多个生长阶段,对田间生长的大豆进行了 V 和 J 的测量,同时在环境和四个升高的冠层温度处理(环境+1.5、+3、+4.5 和+6°C)下进行了测量。基于叶片反射率,使用光谱植被指数和机器学习方法为 V 和 J 建立了预测模型。结果表明,这些模型的 R 值分别为 0.57-0.65 和 0.48-0.58。高光谱反射率在田间捕获了叶片光合作用对高温的生化适应,提高了评估未来变暖对作物生产力影响的空间和时间分辨率。