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利用反刍和活动数据早期检测奶牛小母牛的无形体病

Using rumination and activity data for early detection of anaplasmosis disease in dairy heifer calves.

作者信息

Teixeira V A, Lana A M Q, Bresolin T, Tomich T R, Souza G M, Furlong J, Rodrigues J P P, Coelho S G, Gonçalves L C, Silveira J A G, Ferreira L D, Facury Filho E J, Campos M M, Dorea J R R, Pereira L G R

机构信息

Department of Animal Science, School of Veterinary Medicine, Federal University of Minas Gerais, Minas Gerais, 30161-970, Brazil.

Department of Animal and Dairy Science, University of Wisconsin-Madison, Madison 53706-1205.

出版信息

J Dairy Sci. 2022 May;105(5):4421-4433. doi: 10.3168/jds.2021-20952. Epub 2022 Mar 10.

Abstract

Bovine anaplasmosis causes considerable economic losses in dairy cattle production systems worldwide, ranging from $300 million to $900 million annually. It is commonly detected through rectal temperature, blood smear microscopy, and packed cell volume (PCV). Such methodologies are laborious, costly, and difficult to systematically implement in large-scale operations. The objectives of this study were to evaluate (1) rumination and activity data collected by Hr-Tag sensors (SCR Engineers Ltd.) in heifer calves exposed to anaplasmosis; and (2) the predictive ability of recurrent neural networks in early identification of anaplasmosis. Additionally, we aimed to investigate the effect of time series length before disease diagnosis (5, 7, 10, or 12 consecutive days) on the predictive performance of recurrent neural networks, and how early anaplasmosis disease can be detected in dairy calves (5, 3, and 1 d in advance). Twenty-three heifer calves aged 119 ± 15 (mean ± SD) d and weighing 148 ± 20 kg of body weight were challenged with 2 × 10 erythrocytes infected with UFMG1 strain (GenBank no. EU676176) isolated from Anaplasma marginale. After inoculation, animals were monitored daily by assessing PCV. The lowest PCV value (14 ± 1.8%) and the finding of rickettsia on blood smears were used as a criterion to classify an animal as sick (d 0). Rumination and activity data were collected continuously and automatically at 2-h intervals, using SCR Heatime Hr-Tag collars. Two time series were built including last sequence of -5, -7, -10, or -12 d preceding d 0 or a sequence of 5, 7, 10, or 12 d randomly selected in a window from -50 to -15 d before d 0 to ensure a sequence of days in which PCV was considered normal (32 ± 2.4%). Long short-term memory was used as a predictive approach, and a leave-one-animal-out cross-validation (LOAOCV) was used to assess prediction quality. Anaplasmosis disease reduced 34 and 11% of rumination and activity, respectively. The accuracy, sensitivity, and specificity of long short-term memory in detecting anaplasmosis ranged from 87 to 98%, 83 to 100%, and 83 to 100%, respectively, using rumination data. For activity data, the accuracy, sensitivity, and specificity varied from 70 to 98%, 61 to 100%, and 74 to 100%, respectively. Predictive performance did not improve when combining rumination and activity. The use of longer time-series did not improve the performance of models to predict anaplasmosis. The accuracy and sensitivity in predicting anaplasmosis up to 3 d before clinical diagnosis (d 0) were greater than 80%, confirming the possibility for early identification of anaplasmosis disease. These findings indicate the great potential of wearable sensors in early identification of anaplasmosis diseases. This could positively affect the profitability of dairy farmers and animal welfare.

摘要

牛无形体病在全球奶牛生产系统中造成了相当大的经济损失,每年损失达3亿美元至9亿美元。通常通过直肠温度、血液涂片显微镜检查和红细胞压积(PCV)来检测该病。这些方法费力、成本高,且难以在大规模养殖场系统地实施。本研究的目的是评估:(1)通过Hr-Tag传感器(SCR Engineers Ltd.)收集的处于无形体病感染风险下的小母牛的反刍和活动数据;(2)循环神经网络在早期识别无形体病方面的预测能力。此外,我们旨在研究疾病诊断前的时间序列长度(连续5、7、10或12天)对循环神经网络预测性能的影响,以及在奶牛犊中无形体病能多早被检测到(提前5、3和1天)。23头年龄为119±15(均值±标准差)天、体重为148±20千克的小母牛,用2×10个感染了从边缘无形体分离出的UFMG1菌株(GenBank编号EU676176)的红细胞进行攻毒。接种后,通过评估红细胞压积对动物进行每日监测。最低红细胞压积值(14±1.8%)以及在血液涂片中发现立克次氏体被用作将动物分类为患病(第0天)的标准。使用SCR Heatime Hr-Tag项圈,以2小时间隔连续自动收集反刍和活动数据。构建了两个时间序列,包括第0天前-5、-7、-10或-12天的最后序列,或在第0天前-50至-15天的窗口中随机选择的5、7、10或12天的序列,以确保红细胞压积被认为正常(32±2.4%)的一系列天数。使用长短期记忆作为预测方法,并采用留一动物交叉验证(LOAOCV)来评估预测质量。无形体病分别使反刍和活动减少了34%和11%。使用反刍数据时,长短期记忆检测无形体病的准确度、灵敏度和特异性分别为87%至98%、83%至100%和83%至100%。对于活动数据,准确度、灵敏度和特异性分别为70%至98%、61%至100%和74%至100%。结合反刍和活动数据时,预测性能并未提高。使用更长的时间序列并未改善模型预测无形体病的性能。在临床诊断(第0天)前3天预测无形体病的准确度和灵敏度大于80%,证实了早期识别无形体病的可能性。这些发现表明可穿戴传感器在早期识别无形体病方面具有巨大潜力。这可能对奶农的盈利能力和动物福利产生积极影响。

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