Unravelling Plant-Pathogen Interactions: Proximal Optical Sensing as an Effective Tool for Early Detect Plant Diseases

Mafalda Reis-Pereira, R. C. Martins, Aníbal Filipe Silva, F. Tavares, F. Santos, Mário Cunha
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引用次数: 2

Abstract

This study analyzed the potential of proximal optical sensing as an effective approach for early disease detection. A compact, modular sensing system, combining direct UV–Vis spectroscopy with optical fibers, supported by a principal component analysis (PCA), was applied to evaluate the modifications promoted by the bacteria Xanthomonas euvesicatoria in tomato leaves (cv. cherry). Plant infection was achieved by spraying a bacterial suspension (108 CFU mL−1) until run-off occurred, and a similar approach was followed for the control group, where only water was applied. A total of 270 spectral measurements were performed on leaves, on five different time instances, including pre- and post-inoculation measurements. PCA was then applied to the acquired data from both healthy and inoculated leaves, which allowed their distinction and differentiation, three days after inoculation, when unhealthy plants were still asymptomatic.
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揭示植物与病原体的相互作用:近端光学传感作为早期检测植物疾病的有效工具
本研究分析了近端光学传感作为早期疾病检测的有效方法的潜力。采用一种紧凑、模块化的传感系统,结合直接紫外-可见光谱和光纤,在主成分分析(PCA)的支持下,研究了番茄叶片黄单胞菌(Xanthomonas euvesicatoria)对番茄叶片的修饰作用。樱桃)。通过喷洒细菌悬浮液(108 CFU mL−1)直到发生径流,实现植物感染,并且对对照组采用类似的方法,仅施用水。在5个不同的时间点对叶片进行了270次光谱测量,包括接种前和接种后的测量。然后将PCA应用于从健康和接种的叶片中获得的数据,从而在接种后三天,当不健康的植株仍然无症状时进行区分和分化。
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