Estimation of Bias-Corrected Intraclass Correlation Coefficient for Unbalanced Clustered Studies With Continuous Outcomes
Document Type
Article
Publication Date
8-31-2020
Publication Title
Communications in Statistics - Simulation and Computation
First page number:
1
Last page number:
10
Abstract
Intraclass correlation coefficient for data in a clustered study is traditionally estimated from a one-way random-effects model. This model assumes normality for the random cluster effect and the residual effect. When the normality assumption is questionable, we find that the estimated correlation could be much below the nominal level when data are highly skewed or data have low kurtosis. We develop a bias-corrected estimator based on the approach by Thomas and Hultquist for a study with unbalanced cluster sizes. For multivariate normal data or non-normal data with moderate skewness, we compare the performance of the new bias-corrected estimator with two existing estimators with regards to accuracy and precision. When correlation is small, the existing ANOVA estimator works well. When correlation is medium to large, the proposed new estimator has the correlation close to the nominal level, and its mean squared error is smaller than others.
Keywords
ANOVA; Bias corrected; Clustered study; Inter-rater study; Intraclass correlation coefficient; Skewness and kurtosis
Disciplines
Biostatistics
Language
English
Repository Citation
Shan, G.
(2020).
Estimation of Bias-Corrected Intraclass Correlation Coefficient for Unbalanced Clustered Studies With Continuous Outcomes.
Communications in Statistics - Simulation and Computation
1-10.
http://dx.doi.org/10.1080/03610918.2020.1811332