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Identifiability of models for multiple diagnostic testing in the absence of a gold standard.

机译:在没有黄金标准的情况下,用于多种诊断测试的模型的可识别性。

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摘要

We discuss the issue of identifiability of models for multiple dichotomous diagnostic tests in the absence of a gold standard (GS) test. Data arise as multinomial or product-multinomial counts depending upon the number of populations sampled. Models are generally posited in terms of population prevalences, test sensitivities and specificities, and test dependence terms. It is commonly believed that if the degrees of freedom in the data meet or exceed the number of parameters in a fitted model then the model is identifiable. Goodman (1974, Biometrika 61, 215-231) established that this was not the case a long time ago. We discuss currently available models for multiple tests and argue in favor of an extension of a model that was developed by Dendukuri and Joseph (2001, Biometrics 57, 158-167). Subsequently, we further develop Goodman's technique, and make geometric arguments to give further insight into the nature of models that lack identifiability. We present illustrations using simulated and real data.
机译:我们讨论了在没有黄金标准(GS)测试的情况下用于多种二分诊断测试的模型的可识别性问题。数据以多项式或乘积-多项式计数形式出现,具体取决于采样的种群数量。通常根据人群患病率,测试敏感性和特异性以及测试依赖项来提出模型。通常认为,如果数据的自由度达到或超过拟合模型中的参数数量,则该模型是可识别的。 Goodman(1974,Biometrika 61,215-231)证实,很久以前就不是这种情况了。我们讨论了当前可用于多种测试的模型,并主张支持由Dendukuri和Joseph(2001,Biometrics 57,158-167)开发的模型的扩展。随后,我们进一步发展了古德曼的技术,并提出了几何论证,以进一步洞察缺乏可识别性的模型的性质。我们使用模拟和真实数据展示插图。

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