Title of article :
Likelihood testing populations modeled by autoregressive process subject to the limit of detection in applications to longitudinal biomedical data
Author/Authors :
Albert Vexler، نويسنده , , Jihnhee Yu&Alan D. Hutson، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Dependent and often incomplete outcomes are commonly found in longitudinal biomedical studies. We
develop a likelihood function, which implements the autoregressive process of outcomes, incorporating
the limit of detection problem and the probability of drop-out. The proposed approach incorporates the
characteristics of the longitudinal data in biomedical research allowing us to carry out powerful tests to
detect a difference between study populations in terms of the growth rate and drop-out rate. The formal
notation of the likelihood function is developed, making it possible to adapt the proposed method easily
for various different scenarios in terms of the number of groups to compare and a variety of growth trend
patterns. Useful inferential properties for the proposed method are established, which take advantage of
many well-developed theorems regarding the likelihood approach. A broad Monte-Carlo study confirms
both the asymptotic results and illustrates good power properties of the proposed method. We apply the
proposed method to three data sets obtained from mouse tumor experiments.
Keywords :
limit of detection , translational research , Autoregression , Likelihood ratio , Incomplete data , longitudinal data analysis
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS