Application of behavior data to predictive exploratory models of metritis self-cure and treatment failure in dairy cows

IF 3.7 1区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Journal of Dairy Science Pub Date : 2024-07-01 DOI:10.3168/jds.2023-23611
Jessica G. Prim , Segundo Casaro , Ahmadreza Mirzaei , Tomas D. Gonzalez , Eduardo B. de Oliveira , Anderson Veronese , Ricardo C. Chebel , J.E.P. Santos , K.C. Jeong , F.S. Lima , Paulo R. Menta , Vinicius S. Machado , Klibs N. Galvão
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Abstract

The objective was to evaluate the performance of exploratory models containing routinely available on-farm data, behavior data, and the combination of both to predict metritis self-cure (SC) and treatment failure (TF). Holstein cows (n = 1,061) were fitted with a collar-mounted automated-health monitoring device (AHMD) from −21 ± 3 to 60 ± 3 d relative to calving to monitor rumination time and activity. Cows were examined for diagnosis of metritis at 4 ± 1, 7 ± 1, and 9 ± 1 d in milk (DIM). Cows diagnosed with metritis (n = 132), characterized by watery, fetid, reddish/brownish vaginal discharge (VD), were randomly allocated to 1 of 2 treatments: control (CON; n = 62), no treatment at the time of metritis diagnosis (d 0); or ceftiofur (CEF; n = 70), subcutaneous injection of 6.6 mg/kg of ceftiofur crystalline-free acid on d 0 and 3 relative to diagnosis. Cure was determined 12 d after diagnosis and was considered when VD became mucoid and not fetid. Cows in CON were used to determine SC, and cows in CEF were used to determine TF. Univariable analyses were performed using farm-collected data (parity, calving season, calving-related disorders, body condition score, rectal temperature, and DIM at metritis diagnosis) and behavior data (i.e., daily averages of rumination time, activity generated by AHMD, and derived variables) to assess their association with metritis SC or TF. Variables with P-values ≤0.20 were included in the multivariable logistic regression exploratory models. To predict SC, the area under the curve (AUC) for the exploratory model containing only data routinely available on-farm was 0.75. The final exploratory model to predict SC combining routinely available on-farm data and behavior data increased the AUC to 0.87, with sensitivity (Se) of 89% and specificity (Sp) of 77%. To predict TF, the AUC for the exploratory model containing only data routinely available on-farm was 0.90. The final exploratory model combining routinely available on-farm data and behavior data increased the AUC to 0.93, with Se of 93% and Sp of 87%. Cross-validation analysis revealed that generalizability of the exploratory models was poor, which indicates that the findings are applicable to the conditions of the present exploratory study. In summary, the addition of behavior data contributed to increasing the prediction of SC and TF. Developing and validating accurate prediction models for SC could lead to a reduction in antimicrobial use, whereas accurate prediction of cows that would have TF may allow for better management decisions.

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将行为数据应用于奶牛变态反应自愈和治疗失败的预测探索模型
目的是评估包含农场常规可用数据、行为数据以及两者结合的探索性模型的性能,以预测元气大伤自愈(SC)和治疗失败(TF)。荷斯坦奶牛(n = 1,061 头)在产犊后 -21 ± 3 天至 60 ± 3 天期间安装了颈圈式自动健康监测装置 (AHMD),以监测反刍和活动。分别在产犊后 4 ± 1 天、7 ± 1 天和 9 ± 1 天对奶牛进行检查,以诊断是否患有元气大伤。被诊断出患玄关炎的奶牛(n = 132),其阴道分泌物(VD)呈水样、腥臭、淡红/褐色,被随机分配到两个处理中的一个:对照组(CON;n = 62)--在诊断出母牛甲形腺炎时(第 0 天)不进行治疗;头孢噻呋组(CEF;n = 70)--在诊断后的第 0 天和第 3 天皮下注射 6.6 mg/kg 的头孢噻呋无结晶酸。痊愈在确诊 12 d 后确定,当 VD 呈粘液状而非腥臭时视为痊愈。CON奶牛用于确定SC,CEF奶牛用于确定TF。使用牧场收集的数据(奇数、产犊季节、产犊相关疾病、体况评分、直肠温度和元气大伤诊断时的产奶天数)和行为数据(即反刍的日平均值、AHMD产生的活动量和衍生变量)进行单变量分析,以评估它们与元气大伤SC或TF的关系。P≤0.20的变量被纳入多变量逻辑回归探索性模型。为预测SC,仅包含农场常规可用数据的探索性模型的曲线下面积(AUC)为0.75。预测 SC 的最终探索性模型结合了农场常规可用数据和行为数据,使 AUC 增加到 0.87,灵敏度 (Se) 为 87%,特异度 (Sp) 为 71%。在预测 TF 时,仅包含农场常规可用数据的探索性模型的 AUC 为 0.90。结合农场常规数据和行为数据的最终探索性模型将 AUC 提高到 0.93,Se 为 93%,Sp 为 82%。交叉验证分析表明,探索性模型的通用性较差,这表明研究结果适用于本探索性研究的条件。总之,增加行为数据有助于提高 SC 和 TF 的预测能力。开发并验证SC的准确预测模型可减少抗菌药的使用,而准确预测奶牛是否会出现TF则可帮助做出更好的管理决策。
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来源期刊
Journal of Dairy Science
Journal of Dairy Science 农林科学-奶制品与动物科学
CiteScore
7.90
自引率
17.10%
发文量
784
审稿时长
4.2 months
期刊介绍: The official journal of the American Dairy Science Association®, Journal of Dairy Science® (JDS) is the leading peer-reviewed general dairy research journal in the world. JDS readers represent education, industry, and government agencies in more than 70 countries with interests in biochemistry, breeding, economics, engineering, environment, food science, genetics, microbiology, nutrition, pathology, physiology, processing, public health, quality assurance, and sanitation.
期刊最新文献
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