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Estimating the variance of estimated trends in proportions when there is no unique subject identifier

机译:没有唯一的主题标识符时,估计比例趋势的估计方差

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Longitudinal population-based surveys are widely used in the health sciences to study patterns of change over time. In many of these data sets unique patient identifiers are not publicly available, making it impossible to link the repeated measures from the same individual directly. This poses a statistical challenge for making inferences about time trends because repeated measures from the same individual are likely to be positively correlated, i.e., although the time trend that is estimated under the naive assumption of independence is unbiased, an unbiased estimate of the variance cannot be obtained without knowledge of the subject identifiers linking repeated measures over time. We propose a simple method for obtaining a conservative estimate of variability for making inferences about trends in proportions over time, ensuring that the type Ⅰ error is no greater than the specified level. The method proposed is illustrated by using longitudinal data on diabetes hospitalization proportions in South Carolina.
机译:纵向人口调查在健康科学中被广泛使用,以研究随时间变化的模式。在许多这样的数据集中,唯一的患者标识符无法公开获得,因此不可能直接链接同一个人的重复测量。这对推断时间趋势构成了统计上的挑战,因为来自同一个人的重复测量可能正相关,即,尽管在独立性的天真假设下估计的时间趋势是无偏的,但方差的无偏估计不能在不知道主题标识符的情况下获得的信息会随着时间的推移而重复测量。我们提出一种简单的方法来获得可变性的保守估计,以推断出随时间变化的比例趋势,确保Ⅰ型误差不大于指定水平。通过使用有关南卡罗来纳州糖尿病住院比例的纵向数据来说明所建议的方法。

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