White Brad J, Goehl Dan R, Amrine David E, Booker Calvin, Wildman Brian, Perrett Tye
Precision Animal Solutions, Manhattan, KS 66503, United States; Department of Clinical Sciences, Kansas State University, Manhattan, KS 66506, United States.
Precision Animal Solutions, Manhattan, KS 66503, United States.
Prev Vet Med. 2016 Apr 1;126:74-80. doi: 10.1016/j.prevetmed.2016.01.027. Epub 2016 Feb 2.
Accurate diagnosis of bovine respiratory disease (BRD) in beef cattle is a critical facet of therapeutic programs through promotion of prompt treatment of diseased calves in concert with judicious use of antimicrobials. Despite the known inaccuracies, visual observation (VO) of clinical signs is the conventional diagnostic modality for BRD diagnosis. Objective methods of remotely monitoring cattle wellness could improve diagnostic accuracy; however, little information exists describing the accuracy of this method compared to traditional techniques. The objective of this research is to employ Bayesian methodology to elicit diagnostic characteristics of conventional VO compared to remote early disease identification (REDI) to diagnose BRD. Data from previous literature on the accuracy of VO were combined with trial data consisting of direct comparison between VO and REDI for BRD in two populations. No true gold standard diagnostic test exists for BRD; therefore, estimates of diagnostic characteristics of each test were generated using Bayesian latent class analysis. Results indicate a 90.0% probability that the sensitivity of REDI (median 81.3%; 95% probability interval [PI]: 55.5, 95.8) was higher than VO sensitivity (64.5%; PI: 57.9, 70.8). The specificity of REDI (median 92.9%; PI: 88.2, 96.9) was also higher compared to VO (median 69.1%; PI: 66.3, 71.8). The differences in sensitivity and specificity resulted in REDI exhibiting higher positive and negative predictive values in both high (41.3%) and low (2.6%) prevalence situations. This research illustrates the potential of remote cattle monitoring to augment conventional methods of BRD diagnosis resulting in more accurate identification of diseased cattle.
准确诊断肉牛的牛呼吸道疾病(BRD)是治疗方案的关键环节,通过促进对患病犊牛的及时治疗并合理使用抗菌药物来实现。尽管已知存在不准确之处,但临床症状的视觉观察(VO)仍是BRD诊断的传统方法。远程监测牛健康状况的客观方法可提高诊断准确性;然而,与传统技术相比,描述该方法准确性的信息较少。本研究的目的是采用贝叶斯方法来确定传统VO与远程早期疾病识别(REDI)诊断BRD的诊断特征。将先前关于VO准确性的文献数据与由VO和REDI在两个群体中对BRD进行直接比较组成的试验数据相结合。BRD不存在真正的金标准诊断测试;因此,使用贝叶斯潜在类别分析生成每个测试的诊断特征估计值。结果表明,REDI的敏感性(中位数81.3%;95%概率区间[PI]:55.5,95.8)高于VO敏感性(64.5%;PI:57.9,70.8)的概率为90.0%。与VO(中位数69.1%;PI:66.3,71.8)相比,REDI的特异性(中位数92.9%;PI:88.2,96.9)也更高。敏感性和特异性的差异导致REDI在高患病率(41.3%)和低患病率(2.6%)情况下均表现出更高的阳性和阴性预测值。本研究说明了远程监测牛群对增强BRD传统诊断方法的潜力,从而更准确地识别患病牛。