用于谷物真菌检测的深度学习光谱分析工具 Sága--检测冬小麦镰刀菌的案例研究。

IF 3.9 3区 医学 Q2 FOOD SCIENCE & TECHNOLOGY Toxins Pub Date : 2024-08-13 DOI:10.3390/toxins16080354
Xinxin Wang, Gerrit Polder, Marlous Focker, Cheng Liu
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引用次数: 0

摘要

镰刀菌头疫病(FHB)是由多种镰刀菌引起的植物病害。与镰刀菌属相关的主要问题之一是它们产生霉菌毒素的能力。小粒谷物中的霉菌毒素污染对人类和动物健康构成风险,并导致重大经济损失。因此,需要一种可靠的、针对具体地点的精确镰刀菌属感染预警模型,通过及早发现污染热点来确保食品和饲料安全,使杀真菌剂的应用切实有效,并提供 FHB 预防管理建议。这种精准农业技术有助于实现环境友好型生产和可持续农业。本研究利用成像光谱学和深度学习技术开发了一个用于现场检测小麦 FHB 的预测模型 Sága。数据采集自 2021 年的一块实验田,包括(1)接种镰刀菌的实验田(52.5 m × 3 m)和(2)未接种镰刀菌但喷洒了杀菌剂的对照田(52.5 m × 3 m)。从实验田和对照田收集了成像光谱数据(高光谱图像),地面实况分别为镰刀菌感染耳和健康耳。使用深度学习方法(在全球麦头检测(GWHD)数据集上预训练的 YOLOv5 和 DeepMAC)对麦穗进行分割,并使用 XGBoost 分析与麦穗相关的高光谱信息,预测镰刀菌感染麦穗和健康麦穗。结果表明,深度学习方法可以通过应用预训练模型自动检测和分割麦穗。预测模型可以准确检测麦田中的感染区域,平均准确率和 F1 分数均超过 89%。所提出的模型 Sága 可以促进镰刀菌属的早期检测,从而提高杀菌剂的使用效率并限制霉菌毒素的污染。
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Sága, a Deep Learning Spectral Analysis Tool for Fungal Detection in Grains-A Case Study to Detect Fusarium in Winter Wheat.

Fusarium head blight (FHB) is a plant disease caused by various species of the Fusarium fungus. One of the major concerns associated with Fusarium spp. is their ability to produce mycotoxins. Mycotoxin contamination in small grain cereals is a risk to human and animal health and leads to major economic losses. A reliable site-specific precise Fusarium spp. infection early warning model is, therefore, needed to ensure food and feed safety by the early detection of contamination hotspots, enabling effective and efficient fungicide applications, and providing FHB prevention management advice. Such precision farming techniques contribute to environmentally friendly production and sustainable agriculture. This study developed a predictive model, Sága, for on-site FHB detection in wheat using imaging spectroscopy and deep learning. Data were collected from an experimental field in 2021 including (1) an experimental field inoculated with Fusarium spp. (52.5 m × 3 m) and (2) a control field (52.5 m × 3 m) not inoculated with Fusarium spp. and sprayed with fungicides. Imaging spectroscopy data (hyperspectral images) were collected from both the experimental and control fields with the ground truth of Fusarium-infected ear and healthy ear, respectively. Deep learning approaches (pretrained YOLOv5 and DeepMAC on Global Wheat Head Detection (GWHD) dataset) were used to segment wheat ears and XGBoost was used to analyze the hyperspectral information related to the wheat ears and make predictions of Fusarium-infected wheat ear and healthy wheat ear. The results showed that deep learning methods can automatically detect and segment the ears of wheat by applying pretrained models. The predictive model can accurately detect infected areas in a wheat field, achieving mean accuracy and F1 scores exceeding 89%. The proposed model, Sága, could facilitate the early detection of Fusarium spp. to increase the fungicide use efficiency and limit mycotoxin contamination.

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来源期刊
Toxins
Toxins TOXICOLOGY-
CiteScore
7.50
自引率
16.70%
发文量
765
审稿时长
16.24 days
期刊介绍: Toxins (ISSN 2072-6651) is an international, peer-reviewed open access journal which provides an advanced forum for studies related to toxins and toxinology. It publishes reviews, regular research papers and short communications. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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