We present several related methods for creating confidence intervals to assess disease prevalence in variety of survey sampling settings. These include simple random samples with imperfect tests, weighted sampling with perfect tests, and weighted sampling with imperfect tests, with the first two settings considered special cases of the third. Our methods use survey results and measurements of test sensitivity and specificity to construct melded confidence intervals. We demonstrate that our methods appear to guarantee coverage in simulated settings, while competing methods are shown to achieve much lower than nominal coverage. We apply our method to a seroprevalence survey of SARS-CoV-2 in undiagnosed adults in the United States between May and July 2020.
翻译:我们提出了几种相关的方法,用于建立信心间隔,以评估各种调查抽样环境中的疾病流行情况,其中包括测试不完善的简单随机抽样、测试不完善的加权抽样和测试不完善的加权抽样,前两种情况被认为是第三个情况的特殊情况。我们的方法使用调查结果和测试敏感性和特性的测量来构建模拟信任间隔。我们证明,我们的方法似乎可以保证模拟环境中的覆盖率,而相互竞争的方法则证明远低于名义覆盖率。我们用我们的方法对2020年5月至7月期间美国未诊断成人的SARS-COV-2进行血清阳性调查。