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A pseudo-likelihood approach for estimating diagnostic accuracy of multiple binary medical tests

机译:一种伪似然方法,用于估计多个二进制医学测试的诊断准确性

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摘要

Latent class models with crossed subject-specific and test(rater)-specific random effects have been proposed to estimate the diagnostic accuracy (sensitivity and specificity) of a group of binary tests or binary ratings. However, the computation of these models are hindered by their complicated Monte Carlo Expectation-Maximization (MCEM) algorithm. In this article, a class of pseudo-likelihood functions is developed for conducting statistical inference with crossed random-effects latent class models in diagnostic medicine. Theoretically, the maximum pseudo-likelihood estimation is still consistent and has asymptotic normality. Numerically, our results show that not only the pseudo-likelihood approach significantly reduces the computational time, but it has comparable efficiency relative to the MCEM algorithm. In addition, dimension-wise likelihood, one of the proposed pseudo-likelihoods, demonstrates its superior performance in estimating sensitivity and specificity. Published by Elsevier B.V.
机译:已经提出了具有交叉的受试者特定和测试(评估者)随机效应的潜在类模型,以估计一组二元测试或二元评估的诊断准确性(敏感性和特异性)。但是,这些模型的计算因其复杂的蒙特卡洛期望最大化(MCEM)算法而受到阻碍。在本文中,开发了一种伪似然函数,用于对诊断医学中的交叉随机效应潜在类模型进行统计推断。从理论上讲,最大伪似然估计仍然是一致的,并且具有渐近正态性。从数值上看,我们的结果表明,不仅伪似然方法显着减少了计算时间,而且相对于MCEM算法,它具有可比的效率。此外,按维度的似然性(拟议的伪可能性之一)证明了其在估计灵敏度和特异性方面的优越性能。由Elsevier B.V.发布

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