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首页> 外文期刊>Preventive Veterinary Medicine >Gold standards are out and Bayes is in: Implementing the cure for imperfect reference tests in diagnostic accuracy studies
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Gold standards are out and Bayes is in: Implementing the cure for imperfect reference tests in diagnostic accuracy studies

机译:黄金标准出局,贝叶斯在:实施诊断准确性研究中的不完美参考测试的治疗方法

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摘要

Bayesian mixture models, often termed latent class models, allow users to estimate the diagnostic accuracy of tests and true prevalence in one or more populations when the positive and/or negative reference standards are imperfect. Moreover, they allow the data analyst to show the superiority of a novel test over an old test, even if this old test is the (imperfect) reference standard. We use published data on Toxoplasmosis in pigs to explore the effects of numbers of tests, numbers of populations, and dependence structure among tests to ensure model (local) identifiability. We discuss and make recommendations about use of priors, sensitivity analysis, model identifiability and study design options, and strongly argue for the use of Bayesian mixture models as a logical and coherent approach for estimating the diagnostic accuracy of two or more tests.
机译:贝叶斯混合物模型通常被称为潜在级模型,允许用户在正面和/或负面参考标准不完美时估计一个或多个群体中的测试和真正流行的诊断准确性。 此外,它们允许数据分析师在旧测试中显示新型测试的优越性,即使这个旧测试是(不完美)参考标准。 我们在猪中使用发布的数据有关弓形虫病,探讨测试数量,人数数量和依赖结构之间的影响,以确保模型(本地)可识别性。 我们讨论并提出了关于使用前瞻,敏感性分析,模型可识别性和研究设计选项的建议,并强烈地争辩使用贝叶斯混合模型作为估算两个或多个测试诊断准确性的逻辑和连贯性方法。

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