利用深度学习早期检测牛的结节性皮肤病--预训练模型的比较分析。

IF 2 2区 农林科学 Q2 VETERINARY SCIENCES
Chamirti Senthilkumar, Sindhu C, G Vadivu, Suresh Neethirajan
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引用次数: 0

摘要

结节性皮肤病(LSD)对农业经济构成重大威胁,尤其是在印度等依赖畜牧业的国家,因为它的高传播率导致牛的严重发病和死亡。这凸显了对早期准确检测的迫切需求,以有效管理和缓解疾病的爆发。利用计算机视觉和人工智能的进步,我们的研究利用深度学习技术开发了牛只 LSD 自动检测系统。我们利用了两个公开可用的数据集,其中包括健康牛和患有 LSD 的牛的图像,还包括受其他疾病影响的牛的额外图像,以提高特异性,确保模型能专门检测到 LSD,而不是一般的疾病症状。我们的方法包括预处理图像、应用数据增强和平衡数据集,以提高模型的普适性。我们利用迁移学习评估了十多个经过预训练的深度学习模型--Xception、VGG16、VGG19、ResNet152V2、InceptionV3、MobileNetV2、DenseNet201、NASNetMobile、NASNetLarge 和 EfficientNetV2S。这些模型在不同条件下进行了严格的训练和测试,并使用准确度、灵敏度、特异性、精确度、F1-分数和 AUC-ROC 等指标对其性能进行了评估。值得注意的是,VGG16 和 MobileNetV2 最为有效,准确率分别为 96.07% 和 96.39%,灵敏度分别为 93.75% 和 98.57%,特异性分别为 97.14% 和 94.59%。我们的研究批判性地强调了每个模型的优势和局限性,表明虽然可以实现高准确度,但灵敏度和特异性对临床应用至关重要。通过对性能特征进行细致入微的分析,并加入患有其他疾病的牛的图像,我们确保了模型的稳健性和可靠性。这项全面的比较分析丰富了我们对深度学习在兽医诊断中的应用的理解,并为畜牧业中的自动疾病识别领域做出了重大贡献。我们的研究结果表明,采用这种人工智能驱动的诊断工具可以加强对 LSD 的早期检测和控制,最终有利于动物健康和农业经济。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Detection of Lumpy Skin Disease in Cattle Using Deep Learning-A Comparative Analysis of Pretrained Models.

Lumpy Skin Disease (LSD) poses a significant threat to agricultural economies, particularly in livestock-dependent countries like India, due to its high transmission rate leading to severe morbidity and mortality among cattle. This underscores the urgent need for early and accurate detection to effectively manage and mitigate outbreaks. Leveraging advancements in computer vision and artificial intelligence, our research develops an automated system for LSD detection in cattle using deep learning techniques. We utilized two publicly available datasets comprising images of healthy cattle and those with LSD, including additional images of cattle affected by other diseases to enhance specificity and ensure the model detects LSD specifically rather than general illness signs. Our methodology involved preprocessing the images, applying data augmentation, and balancing the datasets to improve model generalizability. We evaluated over ten pretrained deep learning models-Xception, VGG16, VGG19, ResNet152V2, InceptionV3, MobileNetV2, DenseNet201, NASNetMobile, NASNetLarge, and EfficientNetV2S-using transfer learning. The models were rigorously trained and tested under diverse conditions, with performance assessed using metrics such as accuracy, sensitivity, specificity, precision, F1-score, and AUC-ROC. Notably, VGG16 and MobileNetV2 emerged as the most effective, achieving accuracies of 96.07% and 96.39%, sensitivities of 93.75% and 98.57%, and specificities of 97.14% and 94.59%, respectively. Our study critically highlights the strengths and limitations of each model, demonstrating that while high accuracy is achievable, sensitivity and specificity are crucial for clinical applicability. By meticulously detailing the performance characteristics and including images of cattle with other diseases, we ensured the robustness and reliability of the models. This comprehensive comparative analysis enriches our understanding of deep learning applications in veterinary diagnostics and makes a substantial contribution to the field of automated disease recognition in livestock farming. Our findings suggest that adopting such AI-driven diagnostic tools can enhance the early detection and control of LSD, ultimately benefiting animal health and the agricultural economy.

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来源期刊
Veterinary Sciences
Veterinary Sciences VETERINARY SCIENCES-
CiteScore
2.90
自引率
8.30%
发文量
612
审稿时长
6 weeks
期刊介绍: Veterinary Sciences is an international and interdisciplinary scholarly open access journal. It publishes original that are relevant to any field of veterinary sciences, including prevention, diagnosis and treatment of disease, disorder and injury in animals. This journal covers almost all topics related to animal health and veterinary medicine. Research fields of interest include but are not limited to: anaesthesiology anatomy bacteriology biochemistry cardiology dentistry dermatology embryology endocrinology epidemiology genetics histology immunology microbiology molecular biology mycology neurobiology oncology ophthalmology parasitology pathology pharmacology physiology radiology surgery theriogenology toxicology virology.
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