Hartnack Sonja, Nathues Christina, Nathues Heiko, Grosse Beilage Elisabeth, Lewis Fraser Iain
Section of Epidemiology, Vetsuisse Faculty, Zurich, Switzerland.
Veterinary Public Health Institute, Vetsuisse Faculty, Liebefeld, Switzerland.
PLoS One. 2014 Jun 6;9(6):e98534. doi: 10.1371/journal.pone.0098534. eCollection 2014.
For swine dysentery, which is caused by Brachyspira hyodysenteriae infection and is an economically important disease in intensive pig production systems worldwide, a perfect or error-free diagnostic test ("gold standard") is not available. In the absence of a gold standard, Bayesian latent class modelling is a well-established methodology for robust diagnostic test evaluation. In contrast to risk factor studies in food animals, where adjustment for within group correlations is both usual and required for good statistical practice, diagnostic test evaluation studies rarely take such clustering aspects into account, which can result in misleading results. The aim of the present study was to estimate test accuracies of a PCR originally designed for use as a confirmatory test, displaying a high diagnostic specificity, and cultural examination for B. hyodysenteriae. This estimation was conducted based on results of 239 samples from 103 herds originating from routine diagnostic sampling. Using Bayesian latent class modelling comprising of a hierarchical beta-binomial approach (which allowed prevalence across individual herds to vary as herd level random effect), robust estimates for the sensitivities of PCR and culture, as well as for the specificity of PCR, were obtained. The estimated diagnostic sensitivity of PCR (95% CI) and culture were 73.2% (62.3; 82.9) and 88.6% (74.9; 99.3), respectively. The estimated specificity of the PCR was 96.2% (90.9; 99.8). For test evaluation studies, a Bayesian latent class approach is well suited for addressing the considerable complexities of population structure in food animals.
猪痢疾由猪痢疾短螺旋体感染引起,是全球集约化养猪生产系统中一种具有重要经济影响的疾病,目前尚无完美或无误差的诊断检测方法(“金标准”)。在缺乏金标准的情况下,贝叶斯潜在类别建模是一种成熟的用于可靠诊断检测评估的方法。与食用动物的风险因素研究不同,在食用动物风险因素研究中,对组内相关性进行调整是良好统计实践中常见且必需的,而诊断检测评估研究很少考虑此类聚类因素,这可能导致结果产生误导。本研究的目的是估计最初设计用作确证检测、具有高诊断特异性的聚合酶链反应(PCR)以及猪痢疾短螺旋体培养检查的检测准确性。该估计是基于来自103个猪群的239份常规诊断采样样本的结果进行的。使用包含分层贝塔二项式方法的贝叶斯潜在类别建模(该方法允许各猪群中的患病率作为猪群水平随机效应而变化),获得了PCR和培养的敏感性以及PCR特异性的可靠估计值。估计的PCR诊断敏感性(95%可信区间)和培养的诊断敏感性分别为73.2%(62.3;82.9)和88.6%(74.9;99.3)。估计的PCR特异性为96.2%(90.9;99.8)。对于检测评估研究,贝叶斯潜在类别方法非常适合解决食用动物群体结构的相当大的复杂性问题。