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基于叶片反射光谱的作物光合能力预测的机器学习技术。

Machine Learning Techniques for Predicting Crop Photosynthetic Capacity from Leaf Reflectance Spectra.

机构信息

Heinrich-Heine-Universität, Institute for Computer Science, 40225 Düsseldorf, Germany.

Heinrich-Heine-Universität, Institute of Plant Biochemistry, 40225 Düsseldorf, Germany.

出版信息

Mol Plant. 2017 Jun 5;10(6):878-890. doi: 10.1016/j.molp.2017.04.009. Epub 2017 Apr 28.

DOI:10.1016/j.molp.2017.04.009
PMID:28461269
Abstract

Harnessing natural variation in photosynthetic capacity is a promising route toward yield increases, but physiological phenotyping is still too laborious for large-scale genetic screens. Here, we evaluate the potential of leaf reflectance spectroscopy to predict parameters of photosynthetic capacity in Brassica oleracea and Zea mays, a C and a C crop, respectively. To this end, we systematically evaluated properties of reflectance spectra and found that they are surprisingly similar over a wide range of species. We assessed the performance of a wide range of machine learning methods and selected recursive feature elimination on untransformed spectra followed by partial least squares regression as the preferred algorithm that yielded the highest predictive power. Learning curves of this algorithm suggest optimal species-specific sample sizes. Using the Brassica relative Moricandia, we evaluated the model transferability between species and found that cross-species performance cannot be predicted from phylogenetic proximity. The final intra-species models predict crop photosynthetic capacity with high accuracy. Based on the estimated model accuracy, we simulated the use of the models in selective breeding experiments, and showed that high-throughput photosynthetic phenotyping using our method has the potential to greatly improve breeding success. Our results indicate that leaf reflectance phenotyping is an efficient method for improving crop photosynthetic capacity.

摘要

利用光合作用能力的自然变异是提高产量的一种有前途的途径,但生理表型仍然过于繁琐,无法进行大规模的遗传筛选。在这里,我们评估了叶片反射光谱在预测拟南芥和玉米(分别为 C 和 C 作物)光合作用能力参数方面的潜力。为此,我们系统地评估了反射光谱的特性,发现它们在广泛的物种范围内非常相似。我们评估了多种机器学习方法的性能,并选择了未变换光谱上的递归特征消除,然后是偏最小二乘回归作为首选算法,该算法产生了最高的预测能力。该算法的学习曲线表明最佳的物种特异性样本量。使用拟南芥相对 Moricandia,我们评估了物种间模型的可转移性,并发现种间性能不能从系统发育的接近程度来预测。最终的种内模型可以高精度地预测作物的光合作用能力。基于估计的模型准确性,我们模拟了在选择性育种实验中使用模型的情况,并表明使用我们的方法进行高通量光合作用表型分析有潜力大大提高育种成功率。我们的结果表明,叶片反射光谱表型是提高作物光合作用能力的有效方法。

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