Hailemariam D, Mandal R, Saleem F, Dunn S M, Wishart D S, Ametaj B N
Department of Agricultural, Food and Nutritional Science, Edmonton, Alberta, Canada T6G 2P5.
Departments of Computer and Biological Sciences, University of Alberta, Edmonton, Alberta, Canada T6G 2M9.
J Dairy Sci. 2014 May;97(5):2680-93. doi: 10.3168/jds.2013-6803. Epub 2014 Mar 13.
In dairy cows, periparturient disease states, such as metritis, mastitis, and laminitis, are leading to increasingly significant economic losses for the dairy industry. Treatments for these pathologies are often expensive, ineffective, or not cost-efficient, leading to production losses, high veterinary bills, or early culling of the cows. Early diagnosis or detection of these conditions before they manifest themselves could lower their incidence, level of morbidity, and the associated economic losses. In an effort to identify predictive biomarkers for postpartum or periparturient disease states in dairy cows, we undertook a cross-sectional and longitudinal metabolomics study to look at plasma metabolite levels of dairy cows during the transition period, before and after becoming ill with postpartum diseases. Specifically we employed a targeted quantitative metabolomics approach that uses direct flow injection mass spectrometry to track the metabolite changes in 120 different plasma metabolites. Blood plasma samples were collected from 12 dairy cows at 4 time points during the transition period (-4 and -1 wk before and 1 and 4 wk after parturition). Out of the 12 cows studied, 6 developed multiple periparturient disorders in the postcalving period, whereas the other 6 remained healthy during the entire experimental period. Multivariate data analysis (principal component analysis and partial least squares discriminant analysis) revealed a clear separation between healthy controls and diseased cows at all 4 time points. This analysis allowed us to identify several metabolites most responsible for separating the 2 groups, especially before parturition and the start of any postpartum disease. Three metabolites, carnitine, propionyl carnitine, and lysophosphatidylcholine acyl C14:0, were significantly elevated in diseased cows as compared with healthy controls as early as 4 wk before parturition, whereas 2 metabolites, phosphatidylcholine acyl-alkyl C42:4 and phosphatidylcholine diacyl C42:6, could be used to discriminate healthy controls from diseased cows 1 wk before parturition. A 3-metabolite plasma biomarker profile was developed that could predict which cows would develop periparturient diseases, up to 4 wk before clinical symptoms appearing, with a sensitivity of 87% and a specificity of 85%. This is the first report showing that periparturient diseases can be predicted in dairy cattle before their development using a multimetabolite biomarker model. Further research is warranted to validate these potential predictive biomarkers.
在奶牛中,围产期疾病状态,如子宫炎、乳腺炎和蹄叶炎,给乳制品行业带来了日益显著的经济损失。针对这些病症的治疗通常成本高昂、效果不佳或不具有成本效益,导致产量损失、高额兽医费用或奶牛的过早淘汰。在这些疾病显现之前进行早期诊断或检测,可以降低其发病率、发病程度以及相关的经济损失。为了确定奶牛产后或围产期疾病状态的预测生物标志物,我们开展了一项横断面和纵向代谢组学研究,以观察奶牛在过渡期、产后患病前后的血浆代谢物水平。具体而言,我们采用了一种靶向定量代谢组学方法,该方法使用直接流动注射质谱法来追踪120种不同血浆代谢物的变化。在过渡期的4个时间点(分娩前4周和1周以及分娩后1周和4周)从12头奶牛采集血浆样本。在研究的12头奶牛中,6头在产后出现了多种围产期疾病,而另外6头在整个实验期间保持健康。多变量数据分析(主成分分析和偏最小二乘判别分析)显示,在所有4个时间点,健康对照组和患病奶牛之间都有明显的区分。该分析使我们能够确定几种对区分两组最为关键的代谢物,尤其是在分娩前和任何产后疾病开始之前。与健康对照组相比,早在分娩前4周,患病奶牛体内的三种代谢物肉碱、丙酰肉碱和溶血磷脂酰胆碱酰基C14:0就显著升高,而两种代谢物磷脂酰胆碱酰基-烷基C42:4和磷脂酰胆碱二酰基C42:6可用于在分娩前1周区分健康对照组和患病奶牛。开发了一种由三种代谢物组成的血浆生物标志物谱,它可以在临床症状出现前4周预测哪些奶牛会发生围产期疾病,灵敏度为87%,特异性为85%。这是第一份表明可以使用多代谢物生物标志物模型在奶牛围产期疾病发生之前进行预测的报告。有必要进行进一步的研究来验证这些潜在的预测生物标志物。