Deep Learning-Based Barley Disease Quantification for Sustainable Crop Production.

IF 2.6 2区 农林科学 Q2 PLANT SCIENCES
Phytopathology Pub Date : 2024-09-01 Epub Date: 2024-09-13 DOI:10.1094/PHYTO-02-24-0056-KC
Yassine Bouhouch, Qassim Esmaeel, Nicolas Richet, Essaïd Aït Barka, Aurélie Backes, Luiz Angelo Steffenel, Majida Hafidi, Cédric Jacquard, Lisa Sanchez
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引用次数: 0

Abstract

Net blotch disease caused by Drechslera teres is a major fungal disease that affects barley (Hordeum vulgare) plants and can result in significant crop losses. In this study, we developed a deep learning model to quantify net blotch disease symptoms on different days postinfection on seedling leaves using Cascade R-CNN (region-based convolutional neural network) and U-Net (a convolutional neural network) architectures. We used a dataset of barley leaf images with annotations of net blotch disease to train and evaluate the model. The model achieved an accuracy of 95% for Cascade R-CNN in net blotch disease detection and a Jaccard index score of 0.99, indicating high accuracy in disease quantification and location. The combination of Cascade R-CNN and U-Net architectures improved the detection of small and irregularly shaped lesions in the images at 4 days postinfection, leading to better disease quantification. To validate the model developed, we compared the results obtained by automated measurement with a classical method (necrosis diameter measurement) and a pathogen detection by real-time PCR. The proposed deep learning model could be used in automated systems for disease quantification and to screen the efficacy of potential biocontrol agents to protect against disease.

基于深度学习的大麦病害定量分析促进可持续作物生产
由 Drechslera teres 引起的网斑病是影响大麦(Hordeum vulgare)植株的一种主要真菌病害,可导致严重的作物损失。在这项研究中,我们开发了一种深度学习模型,利用级联 R-CNN(基于区域的卷积神经网络)和 U-Net(一种卷积神经网络)架构来量化幼苗叶片感染后不同天数的净斑病症状。我们使用带有网斑病注释的大麦叶片图像数据集来训练和评估该模型。该模型的级联 R-CNN 净斑病检测准确率达到 95%,Jaccard 指数为 0.99,表明疾病定量和定位的准确率很高。级联 R-CNN 和 U-Net 架构的结合提高了对感染后 4 天图像中形状不规则的小病灶的检测,从而更好地量化了疾病。为了验证所开发的模型,我们将自动测量的结果与经典方法(坏死直径测量)和实时 PCR 的病原体检测结果进行了比较。所提出的深度学习模型可用于病害定量的自动化系统,也可用于筛选潜在生物防治剂的防病效果。
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来源期刊
Phytopathology
Phytopathology 生物-植物科学
CiteScore
5.90
自引率
9.40%
发文量
505
审稿时长
4-8 weeks
期刊介绍: Phytopathology publishes articles on fundamental research that advances understanding of the nature of plant diseases, the agents that cause them, their spread, the losses they cause, and measures that can be used to control them. Phytopathology considers manuscripts covering all aspects of plant diseases including bacteriology, host-parasite biochemistry and cell biology, biological control, disease control and pest management, description of new pathogen species description of new pathogen species, ecology and population biology, epidemiology, disease etiology, host genetics and resistance, mycology, nematology, plant stress and abiotic disorders, postharvest pathology and mycotoxins, and virology. Papers dealing mainly with taxonomy, such as descriptions of new plant pathogen taxa are acceptable if they include plant disease research results such as pathogenicity, host range, etc. Taxonomic papers that focus on classification, identification, and nomenclature below the subspecies level may also be submitted to Phytopathology.
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