Lu Xubin, Long Mingxue, Zhu Zhijian, Zhang Haoran, Zhou Fuzhen, Liu Zongping, Mao Yongjiang, Yang Zhangping
College of Animal Science and Technology, Yangzhou University, Yangzhou, 225009, P.R. China.
Zhejiang Key Laboratory of Cow Genetic Improvement and Milk Quality Research, Wenzhou, 325000, P.R. China.
BMC Genomics. 2024 Dec 20;25(1):1230. doi: 10.1186/s12864-024-11157-6.
Bovine mastitis significantly impacts the dairy industry, causing economic losses through reduced milk production, lower milk quality, and increased health risks, and early detection is critical for effective treatment. This study analyzed milk electrical conductivity data from 9,846 Chinese Holstein cows over a two-year period, collected during three daily milking sessions, alongside smart collar data and dairy herd improvement test results. The aim was to conduct a comprehensive genetic analysis and assess the potential of milk electrical conductivity as a biomarker for the early detection of bovine subclinical mastitis.
The results revealed significant phenotypic and strong genetic correlations (-0.286 to 0.457) between milk electrical conductivity, somatic cell score, milk yield, activity quantity, and milking speed. Logistic regression models yielded area under the curve values ranging from 0.636 to 0.697 and odds ratio values from 9.70 to 10.69, demonstrating a certain predictive capability of milk electrical conductivity for identifying subclinical mastitis. Various factors influencing milk electrical conductivity, including lactation stage, environmental conditions, age at first calving, parity, and body condition score, were identified. The random regression model demonstrated moderate to high heritability of milk electrical conductivity (0.458 to 0.487), particularly during the early to mid-lactation periods, with all estimates exceeding 0.35 However, after day 275 of lactation, the heritability decreased to below 0.2. Notably, shifts in genetic factors affecting milk components were observed around 60 and 270 days into lactation, with increased environmental sensitivity to milk electrical conductivity during these periods.
This study demonstrates that milk electrical conductivity is influenced by multiple factors, such as age at first calving, parity, and body condition score, and exhibits significant phenotypic associations with somatic cell score, milk yield, activity quantity, and milking speed. Although milk electrical conductivity showed moderate to high heritability and potential as a predictor for subclinical mastitis, its low genetic correlations with SCS limit its effectiveness as a standalone indicator. Future research should focus on combining EC with other indicators to improve the accuracy of mastitis detection.
奶牛乳腺炎对乳制品行业有重大影响,通过降低产奶量、降低牛奶质量和增加健康风险造成经济损失,早期检测对于有效治疗至关重要。本研究分析了9846头中国荷斯坦奶牛在两年期间每天三次挤奶过程中收集的牛奶电导率数据,以及智能项圈数据和奶牛群改良测试结果。目的是进行全面的遗传分析,并评估牛奶电导率作为奶牛亚临床乳腺炎早期检测生物标志物的潜力。
结果显示,牛奶电导率、体细胞评分、产奶量、活动量和挤奶速度之间存在显著的表型和强遗传相关性(-0.286至0.457)。逻辑回归模型得出的曲线下面积值在0.636至0.697之间,优势比在9.70至10.69之间,表明牛奶电导率对识别亚临床乳腺炎具有一定的预测能力。确定了影响牛奶电导率的各种因素,包括泌乳阶段、环境条件、初产年龄、胎次和体况评分。随机回归模型显示牛奶电导率具有中度至高度遗传性(0.458至0.487),特别是在泌乳早期至中期,所有估计值均超过0.35。然而,在泌乳第275天后,遗传性降至0.2以下。值得注意的是,在泌乳60天和270天左右观察到影响牛奶成分的遗传因素发生变化,在此期间对牛奶电导率的环境敏感性增加。
本研究表明,牛奶电导率受初产年龄、胎次和体况评分等多种因素影响,与体细胞评分、产奶量、活动量和挤奶速度存在显著的表型关联。虽然牛奶电导率显示出中度至高度遗传性以及作为亚临床乳腺炎预测指标的潜力,但其与体细胞评分的低遗传相关性限制了其作为独立指标的有效性。未来的研究应侧重于将电导率与其他指标结合起来,以提高乳腺炎检测的准确性。