Literature DB >> 18944597

Neural network classification of tan spot and stagonospora blotch infection periods in a wheat field environment.

E D De Wolf, L J Francl.   

Abstract

ABSTRACT Tan spot and Stagonospora blotch of hard red spring wheat served as a model system for evaluating disease forecasts by artificial neural networks. Pathogen infection periods on susceptible wheat plants were measured in the field from 1993 to 1998, and incidence data were merged with 24-h summaries of accumulated growing degree days, temperature, relative humidity, precipitation, and leaf wetness duration. The resulting data set of 202 discrete periods was randomly assigned to 10 modeldevelopment or -validation (n = 50) data sets. Backpropagation neural networks, general regression neural networks, logistic regression, and parametric and nonparametric methods of discriminant analysis were chosen for comparison. Mean validation classification of tan spot incidence was between 71% for logistic regression and 76% for backpropagation models. No significant difference was found between methods of modeling tan spot infection periods. Mean validation prediction accuracy of Stagonospora blotch incidence was 86 and 81% for backpropagation and logistic regression, respectively. Prediction accuracies of other modeling methods were </=78% and were significantly different (P = 0.01) from backpropagation, but not logistic regression, results. The best backpropagation models of tan spot and Stagonospora blotch incidences correctly classified 82 and 84% of validation cases, respectively. High classification accuracy and consistently good performance demonstrate the applicability of neural network technology to plant disease forecasting.

Entities:  

Year:  2000        PMID: 18944597     DOI: 10.1094/PHYTO.2000.90.2.108

Source DB:  PubMed          Journal:  Phytopathology        ISSN: 0031-949X            Impact factor:   4.025


  5 in total

1.  High-resolution analysis of a QTL for resistance to Stagonospora nodorum glume blotch in wheat reveals presence of two distinct resistance loci in the target interval.

Authors:  Margarita Shatalina; Monika Messmer; Catherine Feuillet; Fabio Mascher; Etienne Paux; Frédéric Choulet; Thomas Wicker; Beat Keller
Journal:  Theor Appl Genet       Date:  2013-12-04       Impact factor: 5.699

2.  Machine learning techniques in disease forecasting: a case study on rice blast prediction.

Authors:  Rakesh Kaundal; Amar S Kapoor; Gajendra P S Raghava
Journal:  BMC Bioinformatics       Date:  2006-11-03       Impact factor: 3.169

3.  Low soil moisture predisposes field-grown chickpea plants to dry root rot disease: evidence from simulation modeling and correlation analysis.

Authors:  Ranjita Sinha; Vadivelmurugan Irulappan; Basavanagouda S Patil; Puli Chandra Obul Reddy; Venkategowda Ramegowda; Basavaiah Mohan-Raju; Krishnappa Rangappa; Harvinder Kumar Singh; Sharad Bhartiya; Muthappa Senthil-Kumar
Journal:  Sci Rep       Date:  2021-03-22       Impact factor: 4.379

4.  Modeling risk of Sclerotinia sclerotiorum-induced disease development on canola and dry bean using machine learning algorithms.

Authors:  F Shahoveisi; M Riahi Manesh; L E Del Río Mendoza
Journal:  Sci Rep       Date:  2022-01-17       Impact factor: 4.379

5.  Predicting Pre-planting Risk of Stagonospora nodorum blotch in Winter Wheat Using Machine Learning Models.

Authors:  Lucky K Mehra; Christina Cowger; Kevin Gross; Peter S Ojiambo
Journal:  Front Plant Sci       Date:  2016-03-30       Impact factor: 5.753

  5 in total

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