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Maximum Likelihood Inference for Multivariate Frailty Models Using an Automated Monte Carlo EM Algorithm

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Publisher Springer
Date 2002 Dec 11
PMID 12471944
Citations 13
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Abstract

We present a maximum likelihood estimation procedure for the multivariate frailty model. The estimation is based on a Monte Carlo EM algorithm. The expectation step is approximated by averaging over random samples drawn from the posterior distribution of the frailties using rejection sampling. The maximization step reduces to a standard partial likelihood maximization. We also propose a simple rule based on the relative change in the parameter estimates to decide on sample size in each iteration and a stopping time for the algorithm. An important new concept is acquiring absolute convergence of the algorithm through sample size determination and an efficient sampling technique. The method is illustrated using a rat carcinogenesis dataset and data on vase lifetimes of cut roses. The estimation results are compared with approximate inference based on penalized partial likelihood using these two examples. Unlike the penalized partial likelihood estimation, the proposed full maximum likelihood estimation method accounts for all the uncertainty while estimating standard errors for the parameters.

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References
1.
Mantel N, Bohidar N, CIMINERA J . Mantel-Haenszel analyses of litter-matched time-to-response data, with modifications for recovery of interlitter information. Cancer Res. 1977; 37(11):3863-8. View

2.
Ripatti S, Palmgren J . Estimation of multivariate frailty models using penalized partial likelihood. Biometrics. 2000; 56(4):1016-22. DOI: 10.1111/j.0006-341x.2000.01016.x. View

3.
Vaupel J, Manton K, Stallard E . The impact of heterogeneity in individual frailty on the dynamics of mortality. Demography. 1979; 16(3):439-54. View

4.
Clayton D . A Monte Carlo method for Bayesian inference in frailty models. Biometrics. 1991; 47(2):467-85. View

5.
Vaida F, Xu R . Proportional hazards model with random effects. Stat Med. 2000; 19(24):3309-24. DOI: 10.1002/1097-0258(20001230)19:24<3309::aid-sim825>3.0.co;2-9. View