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Modeling conditional dependence between diagnostic tests: A multiple latent variable model.

机译:对诊断测试之间的条件依赖性进行建模:多重潜在变量模型。

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摘要

Applications of latent class analysis in diagnostic test studies have assumed that all tests are measuring a common binary latent variable, the true disease status. In this article we describe a new approach that recognizes that tests based on different biological phenomena measure different latent variables, which in turn measure the latent true disease status. This allows for adjustment of conditional dependence between tests within disease categories. The model further allows for the inclusion of measured covariates and unmeasured random effects affecting test performance within latent classes. We describe a Bayesian approach for model estimation and describe a new posterior predictive check for evaluating candidate models. The methods are motivated and illustrated by results from a study of diagnostic tests for Chlamydia trachomatis. Published in 2008 by John Wiley & Sons, Ltd.
机译:潜在类别分析在诊断测试研究中的应用已假定所有测试都在测量一个通用的二进制潜在变量,即真实疾病状态。在本文中,我们描述了一种新方法,该方法认识到基于不同生物现象的测试会测量不同的潜在变量,而这些变量又会测量潜在的真实疾病状态。这允许调整疾病类别中测试之间的条件依赖性。该模型还允许在潜在类别中包括测量的协变量和影响测试性能的未测量的随机效应。我们描述了用于模型估计的贝叶斯方法,并描述了用于评估候选模型的新的后验预测检查。该方法是由沙眼衣原体诊断测试研究的结果所激发和说明的。 John Wiley&Sons,Ltd.于2008年出版。

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