Jones Geoff, Johnson Wesley O, Heuer Cord
School of Mathematical and Computational Sciences, Massey University, Palmerston North 4442, New Zealand.
Department of Statistics, University of California, Irvine, USA.
Prev Vet Med. 2023 Dec;221:106074. doi: 10.1016/j.prevetmed.2023.106074. Epub 2023 Nov 10.
When Bayesian latent class analysis is used for diagnostic test data in the absence of a gold standard test, it is common to assume that any unknown test sensitivities and specificities are constant across different populations. Indeed this assumption is often necessary for model identifiability. However there are a number of practical situations, depending on the type of test and the nature of the disease, where this assumption may not be true. We present a case study of using a microscopic agglutination test to diagnose leptospiroris infection in beef cattle, which strongly suggests that sensitivity in particular varies among herds. We develop and fit an alternative model in which sensitivity is related to within-herd prevalence, and discuss the statistical and epidemiological implications.
当在没有金标准检测的情况下,将贝叶斯潜在类别分析用于诊断测试数据时,通常会假设任何未知的测试敏感性和特异性在不同人群中是恒定的。实际上,这个假设对于模型的可识别性通常是必要的。然而,根据测试类型和疾病性质,存在许多实际情况,在这些情况下这个假设可能不成立。我们给出了一个使用显微镜凝集试验诊断肉牛钩端螺旋体感染的案例研究,该研究有力地表明,特别是敏感性在不同牛群之间存在差异。我们开发并拟合了一个替代模型,其中敏感性与牛群内的患病率相关,并讨论了其统计学和流行病学意义。