Cargando…

Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling

The early detection of pathogen infections in plants has become an important aspect of integrated disease management. Although previous research demonstrated the idea of applying digital technologies to monitor and predict plant health status, there is no effective system for detecting pathogen infe...

Descripción completa

Detalles Bibliográficos
Autores principales: Feng, Hanyue, Gonzalez Viejo, Claudia, Vaghefi, Niloofar, Taylor, Paul W. J., Tongson, Eden, Fuentes, Sigfredo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9693623/
https://www.ncbi.nlm.nih.gov/pubmed/36433241
http://dx.doi.org/10.3390/s22228645
_version_ 1784837590926491648
author Feng, Hanyue
Gonzalez Viejo, Claudia
Vaghefi, Niloofar
Taylor, Paul W. J.
Tongson, Eden
Fuentes, Sigfredo
author_facet Feng, Hanyue
Gonzalez Viejo, Claudia
Vaghefi, Niloofar
Taylor, Paul W. J.
Tongson, Eden
Fuentes, Sigfredo
author_sort Feng, Hanyue
collection PubMed
description The early detection of pathogen infections in plants has become an important aspect of integrated disease management. Although previous research demonstrated the idea of applying digital technologies to monitor and predict plant health status, there is no effective system for detecting pathogen infection before symptomatology appears. This paper presents the use of a low-cost and portable electronic nose coupled with machine learning (ML) models for early disease detection. Several artificial neural network models were developed to predict plant physiological data and classify processing tomato plants and soil samples according to different levels of pathogen inoculum by using e-nose outputs as inputs, plant physiological data, and the level of infection as targets. Results showed that the pattern recognition models based on different infection levels had an overall accuracy of 94.4–96.8% for tomato plants and between 94.81% and 96.22% for soil samples. For the prediction of plant physiological parameters (photosynthesis, stomatal conductance, and transpiration) using regression models or tomato plants, the overall correlation coefficient was 0.97–0.99, with very significant slope values in the range 0.97–1. The performance of all models shows no signs of under or overfitting. It is hence proven accurate and valid to use the electronic nose coupled with ML modeling for effective early disease detection of processing tomatoes and could also be further implemented to monitor other abiotic and biotic stressors.
format Online
Article
Text
id pubmed-9693623
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-96936232022-11-26 Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling Feng, Hanyue Gonzalez Viejo, Claudia Vaghefi, Niloofar Taylor, Paul W. J. Tongson, Eden Fuentes, Sigfredo Sensors (Basel) Article The early detection of pathogen infections in plants has become an important aspect of integrated disease management. Although previous research demonstrated the idea of applying digital technologies to monitor and predict plant health status, there is no effective system for detecting pathogen infection before symptomatology appears. This paper presents the use of a low-cost and portable electronic nose coupled with machine learning (ML) models for early disease detection. Several artificial neural network models were developed to predict plant physiological data and classify processing tomato plants and soil samples according to different levels of pathogen inoculum by using e-nose outputs as inputs, plant physiological data, and the level of infection as targets. Results showed that the pattern recognition models based on different infection levels had an overall accuracy of 94.4–96.8% for tomato plants and between 94.81% and 96.22% for soil samples. For the prediction of plant physiological parameters (photosynthesis, stomatal conductance, and transpiration) using regression models or tomato plants, the overall correlation coefficient was 0.97–0.99, with very significant slope values in the range 0.97–1. The performance of all models shows no signs of under or overfitting. It is hence proven accurate and valid to use the electronic nose coupled with ML modeling for effective early disease detection of processing tomatoes and could also be further implemented to monitor other abiotic and biotic stressors. MDPI 2022-11-09 /pmc/articles/PMC9693623/ /pubmed/36433241 http://dx.doi.org/10.3390/s22228645 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Feng, Hanyue
Gonzalez Viejo, Claudia
Vaghefi, Niloofar
Taylor, Paul W. J.
Tongson, Eden
Fuentes, Sigfredo
Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling
title Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling
title_full Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling
title_fullStr Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling
title_full_unstemmed Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling
title_short Early Detection of Fusarium oxysporum Infection in Processing Tomatoes (Solanum lycopersicum) and Pathogen–Soil Interactions Using a Low-Cost Portable Electronic Nose and Machine Learning Modeling
title_sort early detection of fusarium oxysporum infection in processing tomatoes (solanum lycopersicum) and pathogen–soil interactions using a low-cost portable electronic nose and machine learning modeling
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9693623/
https://www.ncbi.nlm.nih.gov/pubmed/36433241
http://dx.doi.org/10.3390/s22228645
work_keys_str_mv AT fenghanyue earlydetectionoffusariumoxysporuminfectioninprocessingtomatoessolanumlycopersicumandpathogensoilinteractionsusingalowcostportableelectronicnoseandmachinelearningmodeling
AT gonzalezviejoclaudia earlydetectionoffusariumoxysporuminfectioninprocessingtomatoessolanumlycopersicumandpathogensoilinteractionsusingalowcostportableelectronicnoseandmachinelearningmodeling
AT vaghefiniloofar earlydetectionoffusariumoxysporuminfectioninprocessingtomatoessolanumlycopersicumandpathogensoilinteractionsusingalowcostportableelectronicnoseandmachinelearningmodeling
AT taylorpaulwj earlydetectionoffusariumoxysporuminfectioninprocessingtomatoessolanumlycopersicumandpathogensoilinteractionsusingalowcostportableelectronicnoseandmachinelearningmodeling
AT tongsoneden earlydetectionoffusariumoxysporuminfectioninprocessingtomatoessolanumlycopersicumandpathogensoilinteractionsusingalowcostportableelectronicnoseandmachinelearningmodeling
AT fuentessigfredo earlydetectionoffusariumoxysporuminfectioninprocessingtomatoessolanumlycopersicumandpathogensoilinteractionsusingalowcostportableelectronicnoseandmachinelearningmodeling