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首页> 外文期刊>Statistics in medicine >Bayesian latent class models with conditionally dependent diagnostic tests: A case study.
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Bayesian latent class models with conditionally dependent diagnostic tests: A case study.

机译:具有条件依赖诊断测试的贝叶斯潜在类模型:一个案例研究。

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摘要

In the assessment of the accuracy of diagnostic tests for infectious diseases, the true disease status of the subjects is often unknown due to the lack of a gold standard test. Latent class models with two latent classes, representing diseased and non-diseased subjects, are often used to analyze this type of data. In its basic format, latent class analysis requires the observed outcomes to be statistically independent conditional on the disease status. In most diagnostic settings, this assumption is highly questionable. During the last decade, several methods have been proposed to estimate latent class models with conditional dependence between the test results. A class of flexible fixed and random effects models were described by Dendukuri and Joseph in a Bayesian framework. We illustrate these models using the analysis of a diagnostic study of three field tests and an imperfect reference test for the diagnosis of visceral leishmaniasis. We show that, as observed earlier by Albert and Dodd, different dependence models may result in similar fits to the data while resulting in different inferences. Given this problem, selection of appropriate latent class models should be based on substantive subject matter knowledge. If several clinically plausible models are supported by the data, a sensitivity analysis should be performed by describing the results obtained from different models and using different priors. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:在评估传染病诊断测试的准确性时,由于缺乏金标准测试,常常不知道受试者的真实疾病状况。具有两个潜在类别的潜在类别模型分别代表疾病和非疾病受试者,通常用于分析此类数据。在其基本格式中,潜在类别分析要求所观察到的结果在统计学上取决于疾病状态,且与条件无关。在大多数诊断环境中,这种假设值得怀疑。在过去的十年中,已经提出了几种方法来估计潜在类模型,这些潜在类模型在测试结果之间具有条件依赖性。 Dendukuri和Joseph在贝叶斯框架中描述了一类灵活的固定和随机效应模型。我们通过对三个现场试验的诊断研究和对内脏利什曼病的诊断的不完善参考试验的分析来说明这些模型。我们显示出,正如先前由Albert和Dodd所观察到的,不同的依赖模型可能导致对数据的相似拟合,同时导致不同的推论。鉴于此问题,应基于实质性主题知识来选择合适的潜在类别模型。如果数据支持多个临床上可行的模型,则应通过描述从不同模型获得的结果并使用不同先验条件来进行敏感性分析。版权所有(c)2008 John Wiley&Sons,Ltd.

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