利用电子鼻和气相色谱-质谱仪预测番茄植株在不同病害严重程度下受真菌病原体感染的情况

IF 2.1 4区 农林科学 Q2 AGRICULTURE, MULTIDISCIPLINARY Journal of Plant Diseases and Protection Pub Date : 2024-02-08 DOI:10.1007/s41348-024-00864-7
Yubing Sun, Yutong Zheng
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引用次数: 0

摘要

病害是番茄种植中的一个严重问题,会造成巨大的经济损失。病害检测作为保护的前提,具有重要意义。本文采用电子鼻(E-nose)和气相色谱-质谱仪(GC-MS)作为辅助技术,预测番茄植株的病害类型及其严重程度。利用气相色谱-质谱仪鉴定了 25 种挥发性成分。计算了这些成分的浓度,并显示了不同组别的差异。此外,还对电子鼻和气相色谱-质谱的结果进行了比较,结果显示两者具有良好的相关性。此外,基于主成分分析法(PCA)或判别函数分析法(DFA),证明了电子鼻在对分别或同时感染不同类型和严重程度疾病的番茄植株进行分类方面的可能性。然后,引入了反向传播神经网络(BPNN),结果表明,在预测疾病类型和严重程度方面,训练集的正确分类率为 98.3%,测试集的正确分类率为 97.5%。此外,对疾病组的正确分类率达到了 100%,这对预防疾病传播非常有意义,符合实际应用需求。这项研究证明了电子鼻在预测番茄植株感染不同类型和严重程度病害方面的可行性。
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Prediction of tomato plants infected by fungal pathogens at different disease severities using E-nose and GC–MS

Disease is a serious problem in tomato plants, causing huge economic losses. Disease detection, as the premise of protection, is important. This paper employed Electronic nose (E-nose) and Gas Chromatography–Mass Spectrometer (GC–MS), as an auxiliary technique, to predict disease type and its severity in the tomato plant. Twenty-five volatile constituents were identified using GC–MS. Their concentrations were calculated and showed the difference in different groups. Furthermore, the results of E-nose and GC–MS were compared and showed a good correlation. Moreover, the possibility of E-nose in classifying tomato plants infected with different types and severities of disease either respectively or together was proved based on either Principal Component Analysis (PCA) or Discriminant Functions Analysis (DFA). Then, Backpropagation neural network (BPNN) was introduced and showed that the correct classification rates were 98.3% for the training set and 97.5% for the testing set for predicting disease type and severity. Moreover, 100% correct classification rate was obtained for the diseased groups, which was very meaningful for the prevention of disease spread and met actual application needs. This study demonstrates the feasibility of E-nose in predicting tomato plants infected with disease in different types and severities.

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来源期刊
Journal of Plant Diseases and Protection
Journal of Plant Diseases and Protection 农林科学-农业综合
CiteScore
4.30
自引率
5.00%
发文量
124
审稿时长
3 months
期刊介绍: The Journal of Plant Diseases and Protection (JPDP) is an international scientific journal that publishes original research articles, reviews, short communications, position and opinion papers dealing with applied scientific aspects of plant pathology, plant health, plant protection and findings on newly occurring diseases and pests. "Special Issues" on coherent themes often arising from International Conferences are offered.
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