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Predicting cumulative risk of bovine respiratory disease complex (BRDC) using feedlot arrival data and daily morbidity and mortality counts

机译:使用饲养场到来数据和每日发病率和死亡率计数预测牛呼吸系统疾病综合症(BRDC)的累积风险

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摘要

Although bovine respiratory disease complex (BRDC) is common in post-weaning cattle, BRDC prediction models are seldom analyzed. The objectives of this study were to assess the ability to predict cumulative cohort-level BRDC morbidity using on-arrival risk factors and to evaluate whether or not adding BRDC risk classification and daily BRDC morbidity and mortality data to the models enhanced their predictive ability. Retrospective cohort-level and individual animal health data were used to create mixed negative binomial regression (MNBR) models for predicting cumulative risk of BRDC morbidity. Logistic regression models were used to illustrate that the percentage of correctly (within |5%| of actual) classified cohorts increased across days, but the effect of day was modified by arrival weight, arrival month, and feedlot. Cattle arriving in April had the highest (77%) number of lots correctly classified at arrival and cattle arriving in December had the lowest (28%). Classification accuracy at arrival varied according to initial weight, ranging from 17% (< 182 kg) to 91% (> 409 kg). Predictive accuracy of the models improved from 64% at arrival to 74% at 8 days on feed (DOF) when risk code was known compared to 56% accuracy at arrival and 69% at 8 DOF when risk classification was not known. The results of this study demonstrate how the predictive ability of models can be improved by utilizing more refined data on the prior history of cohorts, thus making these models more useful to operators of commercial feedlots.
机译:尽管牛呼吸系统疾病复合物(BRDC)在断奶后的牛中很常见,但很少分析BRDC预测模型。这项研究的目的是评估使用到达风险因素来预测累积队列水平BRDC发病率的能力,以及评估是否将BRDC风险分类以及每日BRDC发病率和死亡率数据添加到模型中增强了其预测能力。回顾性队列研究和个体动物健康数据用于创建混合阴性二项式回归(MNBR)模型,以预测BRDC发病率的累积风险。 Logistic回归模型用于说明正确分类的队列百分比(在实际值的5%以内)随着天数的增加而增加,但一天的影响因到达重量,到达月份和育肥场而被修改。正确分类的4月份到达牛群数量最高(77%),12月到达的牲畜数量最低(28%)。到达时的分类精度根据初始重量变化,范围从17%(<182千克)到91%(> 409千克)。当知道风险代码时,模型的预测准确性从到达时的64%提高到进食8天(DOF)时的74%,相比之下,当不知道风险分类时,到达时的准确性为56%,在8 DOF时达到69%。这项研究的结果表明,如何通过利用同类人群先前的历史记录中的更精确数据来提高模型的预测能力,从而使这些模型对商业饲养场的经营者更加有用。

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