Title of article :
Modeling healthcare costs in simultaneous presence of asymmetry, heteroscedasticity and correlation
Author/Authors :
Ileana Baldi، نويسنده , , Eva Pagano، نويسنده , , Paola Berchialla، نويسنده , , Mariacristina Iovino and Alessandro Desideri، نويسنده , , Alberto Ferrando، نويسنده , , Franco Merletti&Dario Gregori، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Highly skewed outcome distributions observed across clusters are common in medical research. The aim of
this paper is to understand how regression models widely used for accommodating asymmetry fit clustered
data under heteroscedasticity. In a simulation study,we provide evidence on the performance of the Gamma
Generalized Linear Mixed Model (GLMM) and log-Linear Mixed-Effect (LME) model under a variety of
data-generating mechanisms. Two case studies from health expenditures literature, the cost of strategies
after myocardial infarction randomized clinical trial on the cost of strategies after myocardial infarction and
the European Pressure Ulcer Advisory Panel hospital prevalence survey of pressure ulcers, are analyzed
and discussed. According to simulation results, the log-LME model for a Gamma response can lead to
estimations that are biased by as much as 10% of the true value, depending on the error variance. In
the Gamma GLMM, the bias never exceeds 1%, regardless of the extent of heteroscedasticity, and the
confidence intervals perform as nominally stated under most conditions. The Gamma GLMM with a log
link seems to be more robust to both Gamma and log-normal generating mechanisms than the log-LME
model.
Keywords :
Heteroscedasticity , Correlation , skewness , GLMM , LME
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS