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Comparison of disease prevalence in two populations under double-sampling scheme with two fallible classifiers

机译:两种群体中两种群体疾病患病率的比较含两种差分分类

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摘要

A disease prevalence can be estimated by classifying subjects according to whether they have the disease. When gold-standard tests are too expensive to be applied to all subjects, partially validated data can be obtained by double-sampling in which all individuals are classified by a fallible classifier, and some of individuals are validated by the gold-standard classifier. However, it could happen in practice that such infallible classifier does not available. In this article, we consider two models in which both classifiers are fallible and propose four asymptotic test procedures for comparing disease prevalence in two groups. Corresponding sample size formulae and validated ratio given the total sample sizes are also derived and evaluated. Simulation results show that (i) Score test performs well and the corresponding sample size formula is also accurate in terms of the empirical power and size in two models; (ii) the Wald test based on the variance estimator with parameters estimated under the null hypothesis outperforms the others even under small sample sizes in Model II, and the sample size estimated by this test is also accurate; (iii) the estimated validated ratios based on all tests are accurate. The malarial data are used to illustrate the proposed methodologies.
机译:通过根据是否具有疾病来估计疾病患病率。当黄金标准测试过于昂贵以应用于所有受试者时,部分验证的数据可以通过双重采样获得,其中所有个人由贫困分类器分类,并且一些个人由金标准分类器验证。但是,它可能发生在实践中,这种绝对的分类器无法使用。在本文中,我们考虑两种模型,其中两个分类器都是缺乏症状的,并提出四个渐近试验程序,以比较两组疾病患病率。还导出和评估了相应的样品尺寸公式和验证的比率。仿真结果表明,(i)得分试验表现良好,相应的样品大小公式在两种模型中的经验功率和尺寸方面也是准确的; (ii)(ii)基于差异估计器的WALD测试,即使在模型II中的小样本大小下也能估计其他参数的参数,并且通过该测试估计的样本量也是准确的; (iii)基于所有测试的估计验证的比率是准确的。疟原虫数据用于说明所提出的方法。

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