Intraclass correlation coefficients and bootstrap methods of hierarchical binary outcomes |
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Authors: | Ren Shiquan Yang Shuqin Lai Shenghan |
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Affiliation: | Department of Pathology, Johns Hopkins University School of Medicine, Baltimore, MD 21287, USA. |
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Abstract: | Intraclass correlation coefficients are designed to assess consistency or conformity between two or more quantitative measurements. When multistage cluster sampling is implemented, no methods are readily available to estimate intraclass correlations of binomial-distributed outcomes within a cluster. Because statistical distribution of the intraclass correlation coefficients could be complicated or unspecified, we propose using a bootstrap method to estimate the standard error and confidence interval within the framework of a multilevel generalized linear model. We compared the results derived from a parametric bootstrap method with those from a non-parametric bootstrap method and found that the non-parametric method is more robust. For non-parametric bootstrap sampling, we showed that the effectiveness of sampling on the highest level is greater than that on lower levels; to illustrate the effectiveness, we analyse survey data in China and do simulation studies. |
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Keywords: | multilevel generalized linear model intraclass correlation hierarchical binary outcomes bootstrap methods |
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