Pineda Mónica, Pérez-Bueno María Luisa, Barón Matilde
Department of Biochemistry and Molecular and Cell Biology of Plants, Estación Experimental del Zaidín, Spanish National Research Council (CSIC), Granada, Spain.
Department of Plant Physiology, Facultad de Farmacia, University of Granada, Granada, Spain.
Front Plant Sci. 2022 Jun 23;13:790268. doi: 10.3389/fpls.2022.790268. eCollection 2022.
A rapid diagnosis of black rot in brassicas, a devastating disease caused by pv. (Xcc), would be desirable to avoid significant crop yield losses. The main aim of this work was to develop a method of detection of Xcc infection on broccoli leaves. Such method is based on the use of imaging sensors that capture information about the optical properties of leaves and provide data that can be implemented on machine learning algorithms capable of learning patterns. Based on this knowledge, the algorithms are able to classify plants into categories (healthy and infected). To ensure the robustness of the detection method upon future alterations in climate conditions, the response of broccoli plants to Xcc infection was analyzed under a range of growing environments, taking current climate conditions as reference. Two projections for years 2081-2100 were selected, according to the Assessment Report of Intergovernmental Panel on Climate Change. Thus, the response of broccoli plants to Xcc infection and climate conditions has been monitored using leaf temperature and five conventional vegetation indices (VIs) derived from hyperspectral reflectance. In addition, three novel VIs, named diseased broccoli indices (DBI-DBI), were defined based on the spectral reflectance signature of broccoli leaves upon Xcc infection. Finally, the nine parameters were implemented on several classifying algorithms. The detection method offering the best performance of classification was a multilayer perceptron-based artificial neural network. This model identified infected plants with accuracies of 88.1, 76.9, and 83.3%, depending on the growing conditions. In this model, the three Vis described in this work proved to be very informative parameters for the disease detection. To our best knowledge, this is the first time that future climate conditions have been taken into account to develop a robust detection model using classifying algorithms.
甘蓝黑腐病是由野油菜黄单胞菌(Xcc)引起的一种毁灭性病害,快速诊断甘蓝黑腐病有助于避免严重的作物产量损失。这项工作的主要目的是开发一种检测西兰花叶片上Xcc感染的方法。该方法基于使用成像传感器,这些传感器可捕获叶片光学特性的信息,并提供可在能够学习模式的机器学习算法上实施的数据。基于这些知识,算法能够将植物分类为不同类别(健康和感染)。为确保检测方法在未来气候条件变化时的稳健性,以当前气候条件为参考,在一系列生长环境下分析了西兰花植株对Xcc感染的反应。根据政府间气候变化专门委员会的评估报告,选择了2081 - 2100年的两种预测。因此,利用叶片温度和从高光谱反射率导出的五个常规植被指数(VIs)监测了西兰花植株对Xcc感染和气候条件的反应。此外,根据Xcc感染后西兰花叶片的光谱反射特征定义了三个新的植被指数,称为患病西兰花指数(DBI - DBI)。最后,将这九个参数应用于几种分类算法。性能最佳的分类检测方法是基于多层感知器的人工神经网络。根据生长条件,该模型识别感染植株的准确率分别为88.1%、76.9%和83.3%。在该模型中,这项工作中描述的三个植被指数被证明是疾病检测中非常有用的参数。据我们所知,这是首次在开发使用分类算法的稳健检测模型时考虑未来气候条件。