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首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Bayesian sample size determination for prevalence and diagnostic test studies in the absence of a gold standard test.
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Bayesian sample size determination for prevalence and diagnostic test studies in the absence of a gold standard test.

机译:在没有金标准测试的情况下,用于流行和诊断测试研究的贝叶斯样本大小确定。

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Summary. Planning studies involving diagnostic tests is complicated by the fact that virtually no test provides perfectly accurate results. The misclassification induced by imperfect sensitivities and specificities of diagnostic tests must be taken into account, whether the primary goal of the study is to estimate the prevalence of a disease in a population or to investigate the properties of a new diagnostic test. Previous work on sample size requirements for estimating the prevalence of disease in the case of a single imperfect test showed very large discrepancies in size when compared to methods that assume a perfect test. In this article we extend these methods to include two conditionally independent imperfect tests, and apply several different criteria for Bayesian sample size determination to the design of such studies. We consider both disease prevalence studies and studies designed to estimate the sensitivity and specificity of diagnostic tests. As the problem is typically nonidentifiable, we investigate the limits on the accuracy of parameter estimation as the sample size approaches infinity. Through two examples from infectious diseases, we illustrate the changes in sample sizes that arise when two tests are applied to individuals in a study rather than a single test. Although smaller sample sizes are often found in the two-test situation, they can still be prohibitively large unless accurate information is available about the sensitivities and specificities of the tests being used.
机译:概要。几乎没有一项测试可以提供完全准确的结果,因此涉及诊断测试的计划研究非常复杂。无论研究的主要目的是估计人群中疾病的流行率还是研究新诊断测试的性质,都必须考虑由于诊断测试的敏感性和特异性不完善而导致的分类错误。先前在单次不完全检测的情况下,用于估计疾病患病率的样本量要求方面的工作与假设进行完美检测的方法相比,在大小上存在很大差异。在本文中,我们将这些方法扩展为包括两个条件独立的不完全检验,并将贝叶斯样本量确定的几种不同标准应用于此类研究的设计。我们考虑疾病流行度研究和旨在评估诊断测试的敏感性和特异性的研究。由于该问题通常无法识别,因此我们将研究随着样本量接近无穷大而导致参数估计精度的局限性。通过两个来自传染病的例子,我们说明了在一项研究中将两种检验应用于个体而非一次检验时,样本量的变化。尽管在两次测试中经常会发现较小的样本量,但除非获得有关所用测试的敏感性和特异性的准确信息,否则它们仍然可能过大。

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