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Hui and Walter’s latent-class model extended to estimate diagnostic test properties from surveillance data: a latent model for latent data

机译:Hui和Walter的潜在类模型扩展为从监视数据估计诊断测试属性:潜在数据的潜在模型

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摘要

Diagnostic test sensitivity and specificity are probabilistic estimates with far reaching implications for disease control, management and genetic studies. In the absence of ‘gold standard’ tests, traditional Bayesian latent class models may be used to assess diagnostic test accuracies through the comparison of two or more tests performed on the same groups of individuals. The aim of this study was to extend such models to estimate diagnostic test parameters and true cohort-specific prevalence, using disease surveillance data. The traditional Hui-Walter latent class methodology was extended to allow for features seen in such data, including (i) unrecorded data (i.e. data for a second test available only on a subset of the sampled population) and (ii) cohort-specific sensitivities and specificities. The model was applied with and without the modelling of conditional dependence between tests. The utility of the extended model was demonstrated through application to bovine tuberculosis surveillance data from Northern and the Republic of Ireland. Simulation coupled with re-sampling techniques, demonstrated that the extended model has good predictive power to estimate the diagnostic parameters and true herd-level prevalence from surveillance data. Our methodology can aid in the interpretation of disease surveillance data, and the results can potentially refine disease control strategies.
机译:诊断测试的敏感性和特异性是概率估计,对疾病控制,管理和遗传研究具有深远的影响。在没有“黄金标准”测试的情况下,可以通过比较在同一组个体上执行的两个或多个测试,来使用传统的贝叶斯潜伏类模型来评估诊断测试的准确性。这项研究的目的是使用疾病监测数据扩展此类模型,以评估诊断测试参数和特定人群的真实患病率。扩展了传统的Hui-Walter潜在类别方法,以允许在此类数据中看到特征,包括(i)未记录的数据(即仅可在一部分抽样人群中进行的第二次测试的数据)和(ii)特定人群的敏感性和特殊性。无论是否对测试之间的条件依赖性进行建模,都可以应用该模型。通过将其应用于来自北部和爱尔兰共和国的牛结核病监测数据,证明了扩展模型的实用性。仿真和再采样技术表明,扩展模型具有很好的预测能力,可以根据监测数据估算诊断参数和真实的畜群流行率。我们的方法可以帮助解释疾病监测数据,并且结果可以潜在地完善疾病控制策略。

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