Wisnieski L, Norby B, Pierce S J, Becker T, Gandy J C, Sordillo L M
Department of Large Animal Clinical Sciences, Michigan State University, 784 Wilson Rd, East Lansing, MI, 48824, USA.
Center for Statistical Training and Consulting, Michigan State University, 293 Farm Lane, East Lansing, MI, 48824, USA.
Prev Vet Med. 2019 Aug 1;169:104692. doi: 10.1016/j.prevetmed.2019.104692. Epub 2019 May 20.
Dairy cattle experience metabolic stress during the transition from late gestation to early lactation resulting in higher risk for several economically important diseases (e.g. mastitis, metritis, and ketosis). Metabolic stress is described as a physiological state composed of 3 processes: nutrient metabolism, oxidative stress, and inflammation. Current strategies for monitoring transition cow nutrient metabolism include assessment of plasma non-esterified fatty acids and beta-hydroxybutyrate concentrations around the time of calving. Although this method is effective at identifying cows with higher disease risk, there is often not enough time to implement intervention strategies to prevent health disorders from occurring around the time of calving. Previously, we published predictive models for early lactation diseases at the individual cow level at dry-off. However, it is unknown if predictive probabilities from individual-level models can be aggregated to the cohort level to predict cohort-level incidence. Therefore, our objective was to test different data aggregation methods using previously published models that represented the 3 components of metabolic stress (nutrient metabolism, oxidative stress, and inflammation). We included 277 cows from five Michigan dairy herds for this prospective cohort study. On each farm, two to four calving cohorts were formed, totaling 18 cohorts. We measured biomarker data at dry-off and followed the cows until 30 days post-parturition for cohort disease incidence, which was defined as the number of cows: 1) having one or more clinical transition disease outcome, and/or 2) having an adverse health event (abortion or death of calf or cow) within each cohort. We tested three different aggregation methods that we refer to as the p-central, p-dispersion, and p-count methods. For the p-central method, we calculated the averaged predicted probability within each cohort. For the p-dispersion method, we calculated the standard deviation of the predicted probabilities within a cohort. For the p-count method, we counted the number of cows above a specified threshold of predicted probability within each cohort. We built four sets of models: one for each aggregation method and one that included all three aggregation methods (p-combined method). We found that the p-dispersion method was the only method that produced viable predictive models. However, these models tended to overestimate incidence in cohorts with low observed counts and underestimate risk in cohorts with high observed counts.
奶牛在从妊娠晚期到泌乳早期的过渡阶段会经历代谢应激,这会导致几种经济上重要疾病(如乳腺炎、子宫炎和酮病)的风险增加。代谢应激被描述为一种由三个过程组成的生理状态:营养物质代谢、氧化应激和炎症。目前监测围产母牛营养物质代谢的策略包括评估产犊前后血浆非酯化脂肪酸和β-羟基丁酸的浓度。虽然这种方法在识别疾病风险较高的奶牛方面很有效,但通常没有足够的时间实施干预策略来预防产犊前后健康问题的发生。此前,我们发表了干奶期个体奶牛早期泌乳疾病的预测模型。然而,个体水平模型的预测概率是否可以汇总到群体水平以预测群体水平的发病率尚不清楚。因此,我们的目标是使用先前发表的代表代谢应激三个组成部分(营养物质代谢、氧化应激和炎症)的模型来测试不同的数据汇总方法。我们纳入了来自密歇根州五个奶牛场的277头奶牛进行这项前瞻性队列研究。在每个农场,形成了两到四个产犊队列,总共18个队列。我们在干奶期测量了生物标志物数据,并跟踪这些奶牛直到产后30天,以确定队列疾病发病率,队列疾病发病率定义为每个队列中:1)发生一种或多种临床围产疾病结局和/或2)发生不良健康事件(流产或犊牛或母牛死亡)的奶牛数量。我们测试了三种不同的汇总方法,我们称之为p-中心法、p-离散法和p-计数法。对于p-中心法,我们计算了每个队列内的平均预测概率。对于p-离散法,我们计算了一个队列内预测概率的标准差。对于p-计数法,我们计算了每个队列中预测概率高于指定阈值的奶牛数量。我们构建了四组模型:每组汇总方法各一个模型,以及一个包含所有三种汇总方法的模型(p-组合法)。我们发现p-离散法是唯一产生可行预测模型的方法。然而,这些模型往往高估了观察计数低的队列中的发病率,而低估了观察计数高的队列中的风险。