Reis Pereira Mafalda, Dos Santos Filipe Neves, Tavares Fernando, Cunha Mário
Faculdade de Ciências da Universidade do Porto (FCUP), Rua do Campo Alegre, Porto, Portugal.
Institute for Systems and Computer Engineering, Technology and Science (INESC TEC), Campus da Faculdade de Engenharia da Universidade do Porto, Rua Dr. Roberto Frias, Porto, Portugal.
Front Plant Sci. 2023 Aug 16;14:1242201. doi: 10.3389/fpls.2023.1242201. eCollection 2023.
Early diagnosis of plant diseases is needed to promote sustainable plant protection strategies. Applied predictive modeling over hyperspectral spectroscopy (HS) data can be an effective, fast, cost-effective approach for improving plant disease diagnosis. This study aimed to investigate the potential of HS point-of-measurement (POM) data for in-situ, non-destructive diagnosis of tomato bacterial speck caused by pv. (Pst), and bacterial spot, caused by (Xeu), on leaves (cv. cherry). Bacterial artificial infection was performed on tomato plants at the same phenological stage. A sensing system composed by a hyperspectral spectrometer, a transmission optical fiber bundle with a slitted probe and a white light source were used for spectral data acquisition, allowing the assessment of 3478 spectral points. An applied predictive classification model was developed, consisting of a normalizing pre-processing strategy allied with a Linear Discriminant Analysis (LDA) for reducing data dimensionality and a supervised machine learning algorithm (Support Vector Machine - SVM) for the classification task. The predicted model achieved classification accuracies of 100% and 74% for Pst and Xeu test set assessments, respectively, before symptom appearance. Model predictions were coherent with host-pathogen interactions mentioned in the literature (e.g., changes in photosynthetic pigment levels, production of bacterial-specific molecules, and activation of plants' defense mechanisms). Furthermore, these results were coherent with visual phenotyping inspection and PCR results. The reported outcomes support the application of spectral point measurements acquired for plant disease diagnosis, aiming for more precise and eco-friendly phytosanitary approaches.
为了促进可持续的植物保护策略,需要对植物病害进行早期诊断。对高光谱数据应用预测模型可以成为一种有效、快速且经济高效的方法,用于改进植物病害诊断。本研究旨在探究高光谱测量点(POM)数据在原位、无损诊断由丁香假单胞菌番茄致病变种(Pst)引起的番茄细菌性斑点病以及由野油菜黄单胞菌(Xeu)引起的细菌性叶斑病方面的潜力,研究对象为樱桃番茄叶片。在相同物候期对番茄植株进行细菌人工感染。使用由高光谱光谱仪、带狭缝探头的传输光纤束和白光源组成的传感系统进行光谱数据采集,可评估3478个光谱点。开发了一种应用预测分类模型,该模型包括一种归一化预处理策略,与用于降低数据维度的线性判别分析(LDA)以及用于分类任务的监督机器学习算法(支持向量机 - SVM)相结合。在症状出现之前,预测模型对Pst和Xeu测试集评估的分类准确率分别达到了100%和74%。模型预测与文献中提到的宿主 - 病原体相互作用一致(例如光合色素水平的变化、细菌特异性分子的产生以及植物防御机制的激活)。此外,这些结果与视觉表型检查和PCR结果一致。所报告的结果支持将获取的光谱测量点应用于植物病害诊断,旨在实现更精确和生态友好的植物检疫方法。