人工智能智能农业:增强对小反刍动物贫血的检测

IF 2.2 2区 农林科学 Q2 PARASITOLOGY
Aftab Siddique , Sophia Khan , Thomas H. Terrill , Ajit K. Mahaptra , Sudhanshu S. Panda , Eric R. Morgan , Andres A. Pech-Cervantes , Reginald Randall , Anurag Singh , Phaneendra Batchu , Priyanka Gurrapu , Jan A. van Wyk
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引用次数: 0

摘要

FAMACHA©评分的准确分类对于评估小型反刍动物贫血和优化畜牧业寄生虫管理策略至关重要。FAMACHA©系统将贫血严重程度按1到5分进行分类,其中1分和2分表示健康动物,3分表示边缘状况,4分和5分表示严重贫血。在这项研究中,使用三星A54智能手机在六个月内每周收集4700张年轻雄性山羊下眼结膜图像的数据集。传统的FAMACHA©评估方法依赖于主观视觉检查,这是劳动密集型的,容易受到观察者偏见的影响。为了解决这一限制,本研究利用支持向量机(SVM)、反向传播神经网络(BPNN)和卷积神经网络(CNN)模型,实现了机器学习算法来自动化FAMACHA©分类。使用精确度、召回率、f1评分和准确度指标对这些模型进行比较分析。CNN模型的分类准确率最高(97.8% %),优于BPNN和SVM。SVM模型的平均准确率为84.6 %,在重度贫血检测中表现较好,但在中级类别中存在局限性。BPNN模型获得的总体准确率为84% %,在精度和召回率之间进行了平衡权衡。CNN模型的优异性能归功于其从图像中学习空间和上下文模式的能力,确保了所有FAMACHA©类别的鲁棒分类。这些发现强调了CNN作为一种可靠的、可扩展的牲畜贫血自动检测解决方案的潜力,有助于早期干预和改善畜群健康管理。该研究还强调了未来研究的必要性,以探索集成学习方法和与移动应用程序的集成,以便为商业和资源有限的牲畜生产者进行实时部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart farming with AI: Enhancing anemia detection in small ruminants
Accurate classification of FAMACHA© scores is essential for assessing anemia in small ruminants and optimizing parasite management strategies in livestock agriculture. The FAMACHA© system categorizes anemia severity on a scale from 1 to 5, where scores 1 and 2 indicate healthy animals, score 3 represents a borderline condition, and scores 4 and 5 indicate severe anemia. In this study, a dataset of 4700 images of the lower eye conjunctiva of young male goats was collected weekly over six months using a Samsung A54 smartphone. Traditional FAMACHA© assessment methods rely on subjective visual examination, which is labor-intensive and susceptible to observer bias. To address this limitation, this study implemented machine learning algorithms to automate FAMACHA© classification, leveraging Support Vector Machine (SVM), Backpropagation Neural Network (BPNN), and Convolutional Neural Network (CNN) models. A comparative analysis of these models was conducted using precision, recall, F1-score, and accuracy metrics. The CNN model demonstrated the highest classification accuracy (97.8 %), outperforming both BPNN and SVM. The SVM model achieved a mean accuracy of 84.6 %, with strong performance in severe anemia detection, but limitations in intermediate classes. The overall accuracy of 84 % attained by the BPNN model provided a balanced tradeoff between precision and recall. The CNN model’s superior performance was attributed to its ability to learn spatial and contextual patterns from images, ensuring robust classification across all FAMACHA© categories. These findings underscore CNN’s potential as a reliable, scalable solution for automated anemia detection in livestock, facilitating early intervention and improving herd health management. The study also highlights the need for future research to explore ensemble learning approaches and integration with mobile applications for real-time deployment for both commercial and resource-limited livestock producers.
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来源期刊
Veterinary parasitology
Veterinary parasitology 农林科学-寄生虫学
CiteScore
5.30
自引率
7.70%
发文量
126
审稿时长
36 days
期刊介绍: The journal Veterinary Parasitology has an open access mirror journal,Veterinary Parasitology: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. This journal is concerned with those aspects of helminthology, protozoology and entomology which are of interest to animal health investigators, veterinary practitioners and others with a special interest in parasitology. Papers of the highest quality dealing with all aspects of disease prevention, pathology, treatment, epidemiology, and control of parasites in all domesticated animals, fall within the scope of the journal. Papers of geographically limited (local) interest which are not of interest to an international audience will not be accepted. Authors who submit papers based on local data will need to indicate why their paper is relevant to a broader readership. Parasitological studies on laboratory animals fall within the scope of the journal only if they provide a reasonably close model of a disease of domestic animals. Additionally the journal will consider papers relating to wildlife species where they may act as disease reservoirs to domestic animals, or as a zoonotic reservoir. Case studies considered to be unique or of specific interest to the journal, will also be considered on occasions at the Editors'' discretion. Papers dealing exclusively with the taxonomy of parasites do not fall within the scope of the journal.
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