Early plant disease detection by Raman spectroscopy: An open-source software designed for the automation of preprocessing and analysis of spectral dataset

IF 2.5 2区 农林科学 Q1 AGRONOMY
Moisés R. Vallejo Pérez , Juan J. Cetina Denis , Mariana A. Chan Ley , Jesús A. Sosa Herrera , Juan C. Delgado Ortiz , Ángel G. Rodríguez Vázquez , Hugo R. Navarro Contreras
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Abstract

This study introduces a reliable, non-coding software named qREAD-Raman, written in the JavaScript® language, for analyzing and interpreting Raman spectral information. It is designed with a focus on the early detection of diseases in tomato plants (S. lycopersicum) during the asymptomatic stage. The platform integrates a set of machine learning algorithms necessary for the preprocessing consisting of outlier removal, baseline correction, fluorescence removal, smoothing, and normalization. For classification, we applied a Consensus of five different classifiers: Multilayer Perceptron (MLP), Partial Least Squares-Discriminant Analysis (PLS-DA), Linear Discriminant Analysis (LDA), Long Short-Term Memory (LSTM), and K-nearest neighbors (kNN). The experiments were conducted on two bacterial diseases: bacterial canker of tomato induced by Clavibacter michiganesis subsp. michiganensis (Cmm), and the tomato vein-greening associated with Candidatus Liberibacter solanacearum (CLso), a non-culturable bacteria transmitted by Bactericera cockerelli insect. Binary models (Cmm-Healthy and CLso-Healthy) demonstrated excellent classification ability. Asymptomatic Cmm-infected plants were distinguished with an accuracy of 88–95 %, while CLso-infected plants showed an accuracy of 68–77 %. The three-class model (CLso-Cmm-Healthy) exhibited acceptable performance in differentiating between Cmm and CLso, with accuracy rates of 71–83% and 58–67%, respectively. The model's performance highlights differences in the relevant spectral regions associated with the biochemical changes induced by each studied disease. The qREAD-Raman software, implemented for the purpose of this research, was found to be a valuable and comprehensive tool that effectively differentiate diseased tomato plants during their asymptomatic stage.

Abstract Image

利用拉曼光谱进行早期植物病害检测:为自动预处理和分析光谱数据集而设计的开源软件
本研究介绍了一种可靠的非编码软件 qREAD-Raman,它是用 JavaScript® 语言编写的,用于分析和解释拉曼光谱信息。该软件主要用于番茄植物(S. lycopersicum)无症状阶段的早期病害检测。该平台集成了一套必要的机器学习算法,用于预处理,包括离群点去除、基线校正、荧光去除、平滑和归一化。在分类方面,我们应用了五种不同分类器的共识:多层感知器 (MLP)、部分最小二乘判别分析 (PLS-DA)、线性判别分析 (LDA)、长短期记忆 (LSTM) 和 K 最近邻 (kNN)。实验针对两种细菌性病害进行:由密歇根氏棒状杆菌亚种(Cmm)诱发的番茄细菌性腐烂病,以及由鸡冠霉菌(Bactericera cockerelli)昆虫传播的一种不可培养的细菌--茄自由杆菌(CLso)引起的番茄脉绿病。二元模型(Cmm-健康和 CLso-健康)显示了出色的分类能力。区分无症状 Cmm 感染植物的准确率为 88-95%,而 CLso 感染植物的准确率为 68-77%。三类模型(CLso-Cmm-Healthy)在区分 Cmm 和 CLso 方面的表现尚可,准确率分别为 71-83% 和 58-67%。该模型的性能突出显示了与所研究的每种疾病引起的生化变化相关的光谱区域的差异。为本研究目的而实施的 qREAD-Raman 软件被认为是一种有价值的综合工具,能在番茄无症状阶段有效地区分患病的番茄植株。
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来源期刊
Crop Protection
Crop Protection 农林科学-农艺学
CiteScore
6.10
自引率
3.60%
发文量
200
审稿时长
29 days
期刊介绍: The Editors of Crop Protection especially welcome papers describing an interdisciplinary approach showing how different control strategies can be integrated into practical pest management programs, covering high and low input agricultural systems worldwide. Crop Protection particularly emphasizes the practical aspects of control in the field and for protected crops, and includes work which may lead in the near future to more effective control. The journal does not duplicate the many existing excellent biological science journals, which deal mainly with the more fundamental aspects of plant pathology, applied zoology and weed science. Crop Protection covers all practical aspects of pest, disease and weed control, including the following topics: -Abiotic damage- Agronomic control methods- Assessment of pest and disease damage- Molecular methods for the detection and assessment of pests and diseases- Biological control- Biorational pesticides- Control of animal pests of world crops- Control of diseases of crop plants caused by microorganisms- Control of weeds and integrated management- Economic considerations- Effects of plant growth regulators- Environmental benefits of reduced pesticide use- Environmental effects of pesticides- Epidemiology of pests and diseases in relation to control- GM Crops, and genetic engineering applications- Importance and control of postharvest crop losses- Integrated control- Interrelationships and compatibility among different control strategies- Invasive species as they relate to implications for crop protection- Pesticide application methods- Pest management- Phytobiomes for pest and disease control- Resistance management- Sampling and monitoring schemes for diseases, nematodes, pests and weeds.
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