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Hyperspectral Leaf Reflectance as Proxy for Photosynthetic Capacities: An Ensemble Approach Based on Multiple Machine Learning Algorithms

机译:高光谱叶片反射作为光合作用能力的代名词:基于多种机器学习算法的集成方法

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摘要

Global agriculture production is challenged by increasing demands from rising population and a changing climate, which may be alleviated through development of genetically improved crop cultivars. Research into increasing photosynthetic energy conversion efficiency has proposed many strategies to improve production but have yet to yield real-world solutions, largely because of a phenotyping bottleneck. Partial least squares regression (PLSR) is a statistical technique that is increasingly used to relate hyperspectral reflectance to key photosynthetic capacities associated with carbon uptake (maximum carboxylation rate of Rubisco, Vc,max) and conversion of light energy (maximum electron transport rate supporting RuBP regeneration, Jmax) to alleviate this bottleneck. However, its performance varies significantly across different plant species, regions, and growth environments. Thus, to cope with the heterogeneous performances of PLSR, this study aims to develop a new approach to estimate photosynthetic capacities. A framework was developed that combines six machine learning algorithms, including artificial neural network (ANN), support vector machine (SVM), least absolute shrinkage and selection operator (LASSO), random forest (RF), Gaussian process (GP), and PLSR to optimize high-throughput analysis of the two photosynthetic variables. Six tobacco genotypes, including both transgenic and wild-type lines, with a range of photosynthetic capacities were used to test the framework. Leaf reflectance spectra were measured from 400 to 2500 nm using a high-spectral-resolution spectroradiometer. Corresponding photosynthesis vs. intercellular CO2 concentration response curves were measured for each leaf using a leaf gas-exchange system. Results suggested that the mean R2 value of the six regression techniques for predicting Vc,max (Jmax) ranged from 0.60 (0.45) to 0.65 (0.56) with the mean RMSE value varying from 47.1 (40.1) to 54.0 (44.7) μmol m-2 s-1. Regression stacking for Vc,max (Jmax) performed better than the individual regression techniques with increases in R2 of 0.1 (0.08) and decreases in RMSE by 4.1 (6.6) μmol m-2 s-1, equal to 8% (15%) reduction in RMSE. Better predictive performance of the regression stacking is likely attributed to the varying coefficients (or weights) in the level-2 model (the LASSO model) and the diverse ability of each individual regression technique to utilize spectral information for the best modeling performance. Further refinements can be made to apply this stacked regression technique to other plant phenotypic traits.
机译:不断增长的人口需求和不断变化的气候对全球农业生产提出了挑战,而通过改良遗传改良的作物品种可以缓解这一问题。关于提高光合作用能量转换效率的研究提出了许多提高产量的策略,但尚未产生实际解决方案,这在很大程度上是由于表型瓶颈。偏最小二乘回归(PLSR)是一种统计技术,越来越多地用于将高光谱反射率与与碳吸收(Rubisco的最大羧化率,Vc,max)和光能转换(支持RuBP的最大电子传输率)相关的关键光合能力相关再生,Jmax)来缓解这一瓶颈。但是,其性能在不同的植物物种,地区和生长环境中差异很大。因此,为应对PLSR的异质性,本研究旨在开发一种估算光合作用能力的新方法。开发了一个框架,该框架结合了六种机器学习算法,包括人工神经网络(ANN),支持向量机(SVM),最小绝对收缩和选择算子(LASSO),随机森林(RF),高斯过程(GP)和PLSR优化两个光合变量的高通量分析。使用六种烟草基因型(包括转基因和野生型品系)具有一定的光合作用能力来测试框架。使用高光谱分辨率分光光度计在400至2500 nm范围内测量叶片反射光谱。使用叶片气体交换系统测量了每片叶片的相应光合作用与细胞间CO2浓度响应曲线。结果表明,六种用于预测Vc,max(Jmax)的回归技术的平均R 2 值在0.60(0.45)至0.65(0.56)之间,RMSE平均值在47.1(40.1)之间变化至54.0(44.7)μmolm -2 s -1 。 Vc,max(Jmax)的回归叠加表现优于单个回归技术,R 2 增加0.1(0.08),RMSE减少4.1(6.6)μmolm -2 < / sup> s -1 ,等于RMSE降低了8%(15%)。回归堆叠更好的预测性能可能归因于2级模型(LASSO模型)中变化的系数(或权重)以及每种单独的回归技术利用光谱信息以获得最佳建模性能的多样化能力。可以进行进一步的改进,以将这种堆叠回归技术应用于其他植物的表型性状。

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