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Low accuracy of Bayesian latent class analysis for estimation of herd-level true prevalence under certain disease characteristics An analysis using simulated data

机译:贝叶斯潜在阶级的低精度估计群体级别患病率的估计在某些疾病特征下使用模拟数据的分析

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Estimation of the true prevalence of infected individuals involves the application of a diagnostic test to a population and adjusting according to test performance, sensitivity and specificity. Bayesian latent class analysis for the estimation of herd and animal-level true prevalence, has become increasingly used in veterinary epidemiology and is particularly useful in incorporating uncertainty and variability into analyses in a flexible framework. However, the approach has not yet been evaluated using simulated data where the true prevalence is known. Furthermore, using this approach, the within-herd true prevalence is often assumed to follow a beta distribution, the parameters of which may be modelled using hyperpriors to incorporate both uncertainty and variability associated with this parameter. Recently however, the authors of the current study highlighted a potential issue with this approach, in particular, with fitting the distributions and a tendency for the resulting distribution to invert and become clustered at zero. Therefore, the objective of the present study was to evaluate commonly specified models using simulated datasets where the herd-level true prevalence was known. The specific purpose was to compare findings from models using hyperpriors to those using a simple beta distribution to model within-herd prevalence. A second objective was to investigate sources of error by varying characteristics of the simulated dataset. Mycobacterium avium subspecies paratuberculosis infection was used as an example for the baseline dataset. Data were simulated for 1000 herds across a range of herd-level true prevalence scenarios, and models were fitted using priors from recently published studies. The results demonstrated poor performance of these latent class models for diseases characterised by poor diagnostic test sensitivity and low within-herd true prevalence. All variations of the model appeared to be sensitive to the prior and tended to overestimate herd-level true prevalence. Estimates were substantially improved in different infection scenarios by increasing test sensitivity and within-herd true prevalence. The results of this study raise questions about the accuracy of published estimates for the herd-level true prevalence of paratuberculosis based on serological testing, using latent class analysis. This study highlights the importance of conducting more rigorous sensitivity analyses than have been carried out in previous analyses published to date.
机译:估计受感染的个体的真正患病率涉及将诊断测试应用于人口并根据测试性能,敏感性和特异性进行调整。贝叶斯潜在的阶级分析估计畜群和动物级别的普遍性,越来越多地用于兽医流行病学,并且特别适用于将不确定性和变异纳入灵活框架中的分析。然而,尚未使用模拟数据评估该方法,其中已知真正的普遍性。此外,使用这种方法,通常假设在群体内真正的普遍率遵循测试β分布,其参数可以使用超高版来建模,以结合与该参数相关的不确定性和可变性。然而,最近,目前研究的作者强调了这种方法的潜在问题,特别是拟合分布和所产生的分布颠倒并将其聚集在零中的趋势。因此,本研究的目的是使用模拟数据集评估常见规定的模型,其中群体的真正患病率是已知的。具体目的是将使用超高版的模型与使用简单测试版分布的模型进行比较,以便在牛群内流行率模型。第二个目标是通过不同的模拟数据集的特征来调查误差源。使用分枝杆菌亚种亚种分子抑制感染作为基线数据集的示例。数据在一系列畜群真正的普遍存在场景中模拟了1000个畜群,并且使用最近公布的研究使用前瞻性的模型。结果表明,这些潜在阶级模型的表现不佳,其疾病具有较差的诊断测试敏感性和群体内的普及内的低位。模型的所有变化似乎对先前的敏感性敏感,倾向于高估畜群真正的普遍性。通过提高测试敏感性和群体内的真正流行,不同的感染情景在不同的感染方案中显着改善了估计。本研究的结果提出了关于基于血清学检测的血管学检测的公布估算估计的准确性的问题,使用潜在阶级分析。本研究强调了在迄今为止发布的先前分析中进行的更严格敏感性分析的重要性。

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