scholarly journals Generalized Confidence Intervals for Intra- and Inter-subject Coefficients of Variation in Linear Mixed-effects Models

2017 ◽  
Vol 13 (2) ◽  
Author(s):  
Johannes Forkman

Abstract Linear mixed-effects models are linear models with several variance components. Models with a single random-effects factor have two variance components: the random-effects variance, i. e., the inter-subject variance, and the residual error variance, i. e., the intra-subject variance. In many applications, it is practice to report variance components as coefficients of variation. The intra- and inter-subject coefficients of variation are the square roots of the corresponding variances divided by the mean. This article proposes methods for computing confidence intervals for intra- and inter-subject coefficients of variation using generalized pivotal quantities. The methods are illustrated through two examples. In the first example, precision is assessed within and between runs in a bioanalytical method validation. In the second example, variation is estimated within and between main plots in an agricultural split-plot experiment. Coverage of generalized confidence intervals is investigated through simulation and shown to be close to the nominal value.

Biostatistics ◽  
2012 ◽  
Vol 14 (1) ◽  
pp. 144-159 ◽  
Author(s):  
R. Drikvandi ◽  
G. Verbeke ◽  
A. Khodadadi ◽  
V. Partovi Nia

2020 ◽  
Author(s):  
František Bartoš ◽  
Patrícia Martinková ◽  
Marek Brabec

Estimating the inter-rater reliability (IRR) is important for assessing and improving the quality of ratings. In some cases, the IRR may differ between groups due to their features. To test heterogeneity in IRR, the second-order generalized estimating equations (GEE2) and linear mixed-effects models (LME) were already used. Another method capable of estimating the components for IRR is generalized additive models (GAM). This paper presents a simulation study evaluating the performance of these methods in estimating variance components and in testing heterogeneity in IRR. We consider a wide range of sample sizes and various scenarios leading to heterogenous IRR. The results show, that while the LME and GAM models perform similarly and yield reliable estimates, the GEE2 models may lead to incorrect results.


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