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      A novel confidence interval for a single proportion in the presence of clustered binary outcome data.

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          Abstract

          Estimating the precision of a single proportion via a 100(1-α)% confidence interval in the presence of clustered data is an important statistical problem. It is necessary to account for possible over-dispersion, for instance, in animal-based teratology studies with within-litter correlation, epidemiological studies that involve clustered sampling, and clinical trial designs with multiple measurements per subject. Several asymptotic confidence interval methods have been developed, which have been found to have inadequate coverage of the true proportion for small-to-moderate sample sizes. In addition, many of the best-performing of these intervals have not been directly compared with regard to the operational characteristics of coverage probability and empirical length. This study uses Monte Carlo simulations to calculate coverage probabilities and empirical lengths of five existing confidence intervals for clustered data across various true correlations, true probabilities of interest, and sample sizes. In addition, we introduce a new score-based confidence interval method, which we find to have better coverage than existing intervals for small sample sizes under a wide range of scenarios.

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          Author and article information

          Journal
          Stat Methods Med Res
          Statistical methods in medical research
          SAGE Publications
          1477-0334
          0962-2802
          Jan 2020
          : 29
          : 1
          Affiliations
          [1 ] Department of Biostatistics, Boston University School of Public Health, Boston, MA, USA.
          Article
          10.1177/0962280218823231
          30672389
          812e4ca9-c291-445a-a078-2963b5acc68f
          History

          beta-binomial distribution,small sample,confidence interval,Clustered binary data,coverage

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