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使用具有两个易错分类器的双重抽样方案进行比例研究的测试程序和样本量确定。

Test procedure and sample size determination for a proportion study using a double-sampling scheme with two fallible classifiers.

机构信息

1 Department of Statistics, Chongqing University of Technology, Chongqing, China.

2 Department of Mathematics and Statistics, Hang Seng Management College, Hong Kong, China.

出版信息

Stat Methods Med Res. 2019 Apr;28(4):1019-1043. doi: 10.1177/0962280217744239. Epub 2017 Dec 12.

Abstract

Double sampling is usually applied to collect necessary information for situations in which an infallible classifier is available for validating a subset of the sample that has already been classified by a fallible classifier. Inference procedures have previously been developed based on the partially validated data obtained by the double-sampling process. However, it could happen in practice that such infallible classifier or gold standard does not exist. In this article, we consider the case in which both classifiers are fallible and propose asymptotic and approximate unconditional test procedures based on six test statistics for a population proportion and five approximate sample size formulas based on the recommended test procedures under two models. Our results suggest that both asymptotic and approximate unconditional procedures based on the score statistic perform satisfactorily for small to large sample sizes and are highly recommended. When sample size is moderate or large, asymptotic procedures based on the Wald statistic with the variance being estimated under the null hypothesis, likelihood rate statistic, log- and logit-transformation statistics based on both models generally perform well and are hence recommended. The approximate unconditional procedures based on the log-transformation statistic under Model I, Wald statistic with the variance being estimated under the null hypothesis, log- and logit-transformation statistics under Model II are recommended when sample size is small. In general, sample size formulae based on the Wald statistic with the variance being estimated under the null hypothesis, likelihood rate statistic and score statistic are recommended in practical applications. The applicability of the proposed methods is illustrated by a real-data example.

摘要

双重抽样通常用于收集在有可靠分类器的情况下,已经对一部分样本进行分类的情况下,需要收集的必要信息。之前已经基于通过双重抽样过程获得的部分验证数据开发了推理程序。然而,在实际中,可能不存在这样的可靠分类器或黄金标准。在本文中,我们考虑两个分类器都不可靠的情况,并针对总体比例提出了六个基于检验统计量的渐近和近似无条件检验程序,以及两种模型下基于推荐检验程序的五个近似样本量公式。我们的结果表明,基于得分统计量的渐近和近似无条件程序在小到大样本量下表现良好,强烈推荐使用。当样本量适中或较大时,基于 Wald 统计量(在零假设下估计方差)、似然率统计量、基于两种模型的对数和对数转换统计量的渐近程序表现良好,因此推荐使用。当样本量较小时,建议使用基于模型 I 的对数转换统计量的近似无条件程序、基于零假设下估计方差的 Wald 统计量、基于模型 II 的对数和对数转换统计量的近似无条件程序。一般来说,在实际应用中建议使用基于 Wald 统计量(在零假设下估计方差)、似然率统计量和得分统计量的样本量公式。通过一个实际数据示例说明了所提出方法的适用性。

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