Li Cheng, Czyż Ewa A, Halitschke Rayko, Baldwin Ian T, Schaepman Michael E, Schuman Meredith C
Department of Geography, Faculty of Science, University of Zurich, Winterthurerstrasse 190, 8057, Zurich, Switzerland.
Department of Molecular Ecology, Max Planck Institute for Chemical Ecology, Hans-Knoell-Strasse 8, 07745, Jena, Germany.
Plant Methods. 2023 Oct 14;19(1):108. doi: 10.1186/s13007-023-01089-9.
Remote sensing of vegetation by spectroscopy is increasingly used to characterize trait distributions in plant communities. How leaves interact with electromagnetic radiation is determined by their structure and contents of pigments, water, and abundant dry matter constituents like lignins, phenolics, and proteins. High-resolution ("hyperspectral") spectroscopy can characterize trait variation at finer scales, and may help to reveal underlying genetic variation-information important for assessing the potential of populations to adapt to global change. Here, we use a set of 360 inbred genotypes of the wild coyote tobacco Nicotiana attenuata: wild accessions, recombinant inbred lines (RILs), and transgenic lines (TLs) with targeted changes to gene expression, to dissect genetic versus non-genetic influences on variation in leaf spectra across three experiments. We calculated leaf reflectance from hand-held field spectroradiometer measurements covering visible to short-wave infrared wavelengths of electromagnetic radiation (400-2500 nm) using a standard radiation source and backgrounds, resulting in a small and quantifiable measurement uncertainty. Plants were grown in more controlled (glasshouse) or more natural (field) environments, and leaves were measured both on- and off-plant with the measurement set-up thus also in more to less controlled environmental conditions. Entire spectra varied across genotypes and environments. We found that the greatest variance in leaf reflectance was explained by between-experiment and non-genetic between-sample differences, with subtler and more specific variation distinguishing groups of genotypes. The visible spectral region was most variable, distinguishing experimental settings as well as groups of genotypes within experiments, whereas parts of the short-wave infrared may vary more specifically with genotype. Overall, more genetically variable plant populations also showed more varied leaf spectra. We highlight key considerations for the application of field spectroscopy to assess genetic variation in plant populations.
通过光谱学对植被进行遥感越来越多地用于表征植物群落中的性状分布。叶片与电磁辐射的相互作用方式取决于其结构以及色素、水和木质素、酚类和蛋白质等大量干物质成分的含量。高分辨率(“高光谱”)光谱学可以在更精细的尺度上表征性状变异,并可能有助于揭示潜在的遗传变异信息,这对于评估种群适应全球变化的潜力非常重要。在这里,我们使用了一组360个野生草原烟草(Nicotiana attenuata)的近交基因型:野生种质、重组自交系(RIL)和基因表达有针对性变化的转基因系(TL),通过三个实验来剖析遗传和非遗传因素对叶片光谱变异的影响。我们使用标准辐射源和背景,通过手持野外光谱辐射计测量,计算了覆盖电磁辐射可见光到短波红外波长(400 - 2500纳米)的叶片反射率,测量不确定度小且可量化。植物在更可控的(温室)或更自然的(田间)环境中生长,并且在植物上和植物外都对叶片进行了测量,测量设置也因此涵盖了从更可控到较不可控的环境条件。整个光谱因基因型和环境而异。我们发现,叶片反射率的最大差异是由实验间和样本间的非遗传差异造成的,基因型组之间的差异更细微、更具特异性。可见光谱区域变化最大,区分了实验设置以及实验中的基因型组,而短波红外的部分区域可能随基因型有更具体的变化。总体而言,遗传变异更大的植物种群也表现出更多样化的叶片光谱。我们强调了在应用野外光谱学评估植物种群遗传变异时的关键注意事项。