The use of infrared spectroscopy and machine learning tools for detection of Meloidogyne infestations
Abstract
Plant parasitic nematodes are generally soilborne pathogens that attack plants and cause economic losses in many crops. The infested plants show nonspecific symptoms or, often, are symptomless; therefore, diagnosis is performed by taking soil and root tissue samples. Here, we show that a combination of different infrared spectra analysis and machine learning algorithms can be used to detect plant parasitic nematode infestations before symptoms become visible, using leaves instead of roots and soil as samples. We found that tomato and guava plants infested withMeloidogyne enterorlobiiproduced different spectral patterns compared to uninfested plants. Using partial spectra from 1,450 to 900/cm as the "fingerprint region", principal component analyses indicated that after 5 (tomatoes) or 8 weeks (guava), plants with no visible symptoms of infestations were positively diagnosed. To improve the early detection response, we used machine learning modelling. A support vector machine (SVM) was used to obtain more robust, accurate models. The SVM model contained 34 support vectors, 17 for each level. The overall performance of the model was >97% and the total accuracy was significantly higher, demonstrating the absence of chance prediction. The best prediction of infestation was obtained at the second and fourth weeks for tomatoes and guavas, respectively, reducing the diagnostic time by half. The combined application of these techniques reduces the processing time from field to laboratory and shows enormous advantages by avoiding root and soil sampling.
Más información
Título según WOS: | The use of infrared spectroscopy and machine learning tools for detection of Meloidogyne infestations |
Título de la Revista: | PLANT PATHOLOGY |
Volumen: | 69 |
Número: | 8 |
Editorial: | Wiley |
Fecha de publicación: | 2020 |
Página de inicio: | 1589 |
Página final: | 1600 |
DOI: |
10.1111/PPA.13246 |
Notas: | ISI |