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Joint estimation of multiple disease-specific sensitivities and specificities via crossed random effects models for correlated reader-based diagnostic data: application of data cloning

机译:通过交叉随机效应模型联合评估基于特定读者的诊断数据的多种疾病特异性敏感性和特异性:数据克隆的应用

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摘要

We present a model for describing correlated binocular data from reader-based diagnostic studies, where the same group of readers evaluates the presence or absence of certain diseases on binocular organs (e.g., fellow eyes) of patients. Multiple random effects are incorporated to meaningfully delineate various associations in the data including crossed random effects to account for reader-specific variability and to incorporate cross correlations. To overcome the computational complexity involved in the evaluation and maximization of the marginal likelihood, we adopt the data cloning approach, which calculates maximum likelihood estimates under the Bayesian paradigm. The bias and efficiency of the estimates are assessed in two simulation studies. We apply our model to data from a diabetic retinopathy study. Copyright (c) 2015 John Wiley & Sons, Ltd.
机译:我们提供了一个模型,用于描述基于读者的诊断研究中的相关双目数据,其中同一组读者评估患者双眼器官(例如,同眼)上是否存在某些疾病。合并了多个随机效应以有意义地描绘数据中的各种关联,包括交叉的随机效应,以说明读者特定的可变性并合并互相关。为了克服边际可能性评估和最大化所涉及的计算复杂性,我们采用数据克隆方法,该方法在贝叶斯范式下计算最大似然估计。在两个模拟研究中评估了估计的偏差和效率。我们将模型应用于糖尿病性视网膜病研究的数据。版权所有(c)2015 John Wiley&Sons,Ltd.

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