Machine Learning Techniques Associated With Infrared Thermography to Optimize the Diagnosis of Bovine Subclinical Mastitis.

IF 1.9 Q2 VETERINARY SCIENCES
Veterinary Medicine International Pub Date : 2025-02-08 eCollection Date: 2025-01-01 DOI:10.1155/vmi/5585458
Raul Costa Mascarenhas Santana, Edilson da Silva Guimarães, Fernando David Caracuschanski, Larissa Cristina Brassolatti, Maria Laura da Silva, Alexandre Rossetto Garcia, José Ricardo Macedo Pezzopane, Teresa Cristina Alves, Patrícia Tholon, Marcos Veiga Dos Santos, Luiz Francisco Zafalon
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引用次数: 0

Abstract

Bovine subclinical mastitis (SCM) is the costliest disease for the dairy industry. Technologies aimed at the early diagnosis of this condition, such as infrared thermography (IRT), can be used to generate large amounts of data that provide valuable information when analyzed using learning techniques. The objective of this study was to evaluate and optimize the use of machine learning by applying the Extreme Gradient Boosting (XGBoost) algorithm in the diagnosis of bovine SCM, based on udder thermogram analysis. Over 14 months, a total of 1035 milk samples were collected from 97 dairy cows subjected to an automatic milking system. Somatic cell counts were performed by flow cytometry, and the health status of the mammary gland was determined based on a cutoff of 200,000 cells/mL of milk. The attributes analyzed collectively included air temperature, relative humidity, temperature-humidity index, breed, body temperature, teat dirtiness score, parity, days in milk, mammary gland position, milk yield, electrical conductivity, milk fat, coldest and hottest points in the mammary gland region of interest, average mammary gland temperature, thermal amplitude, and the difference between the average temperature of the region of interest and the animal's body temperature, as well as the microbiological evaluation of the milk. Using the XGBoost algorithm, the most relevant variables for solving the classification problem were identified and selected to construct the final model with the best fit and performance. The best area under the receiver operating characteristic curve (AUC: 0.843) and specificity (Sp: 93.3%) were obtained when using all thermographic variables. The coldest point in the region of interest was considered the most important for decision making in mastitis diagnosis. The use of XGBoost can enhance the diagnostic capability for SCM when IRT is employed. The developed optimized model can be used as a confirmatory mechanism for SCM.

机器学习技术与红外热成像优化牛亚临床乳腺炎的诊断。
牛亚临床乳腺炎(SCM)是乳品行业最昂贵的疾病。旨在早期诊断这种疾病的技术,如红外热成像(IRT),可用于生成大量数据,在使用学习技术进行分析时提供有价值的信息。本研究的目的是基于乳房热像图分析,通过应用极限梯度增强(XGBoost)算法来评估和优化机器学习在牛SCM诊断中的应用。在14个月的时间里,从97头奶牛中采集了1035份牛奶样本,这些奶牛接受了自动挤奶系统。通过流式细胞术进行体细胞计数,并通过切断200,000个细胞/mL乳汁来确定乳腺的健康状况。综合分析的属性包括气温、相对湿度、温湿指数、品种、体温、乳头脏度评分、胎次、泌乳天数、乳腺位置、产奶量、电导率、乳脂、感兴趣乳腺区域最冷和最热点、乳腺平均温度、热幅值、感兴趣区域平均温度与动物体温之差。以及牛奶的微生物评价。利用XGBoost算法,识别并选择与分类问题最相关的变量,构建拟合和性能最优的最终模型。在使用所有热成像变量时,获得了最佳的受试者工作特征曲线下面积(AUC: 0.843)和特异性(Sp: 93.3%)。感兴趣区域的最冷点被认为是乳腺炎诊断决策的最重要因素。当采用IRT时,XGBoost可以提高单片机的诊断能力。所建立的优化模型可作为供应链管理的验证机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Veterinary Medicine International
Veterinary Medicine International Veterinary-Veterinary (all)
CiteScore
3.50
自引率
3.20%
发文量
55
审稿时长
17 weeks
期刊介绍: Veterinary Medicine International is a peer-reviewed, Open Access journal that publishes original research articles and review articles in all areas of veterinary research. The journal will consider articles on the biological basis of disease, as well as diagnosis, prevention, treatment, and epidemiology.
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