Title of article :
Mixture Multi-state Markov Regression Model
Author/Authors :
Amy Ming-Fang Yen & Tony Hsiu-Hsi Chen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Although heterogeneity across individuals may be reduced when a two-state process
is extended into a multi-state process, the discrepancy between the observed and the predicted
for some states may still exist owing to two possibilities, unobserved mixture distribution in
the initial state and the effect of measured covariates on subsequent multi-state disease
progression. In the present study, we developed a mixture Markov exponential regression model
to take account of the above-mentioned heterogeneity across individuals (subject-to-subject
variability) with a systematic model selection based on the likelihood ratio test. The model was
successfully demonstrated by an empirical example on surveillance of patients with small
hepatocellular carcinoma treated by non-surgical methods. The estimated results suggested
that the model with the incorporation of unobserved mixture distribution behaves better than the
one without. Complete and partial effects regarding risk factors on different subsequent multistate
transitions were identified using a homogeneous Markov model. The combination of
both initial mixture distribution and homogeneous Markov exponential regression model makes a
significant contribution to reducing heterogeneity across individuals and over time for disease
progression.
Keywords :
Markov mixture model , Multi-state , Model selection
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS