Mixture Cure Model with Random Effects for the Analysis of a Multi-center Tonsil Cancer Study
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Cure models for clustered survival data have the potential for broad applicability. In this paper, we consider the mixture cure model with random effects and propose several estimation methods based on Gaussian quadrature, rejection sampling, and importance sampling to obtain the maximum likelihood estimates of the model for clustered survival data with a cure fraction. The methods are flexible to accommodate various correlation structures. A simulation study demonstrates that the maximum likelihood estimates of parameters in the model tend to have smaller biases and variances than the estimates obtained from the existing methods. We apply the model to a study of tonsil cancer patients clustered by treatment centers to investigate the effect of covariates on the cure rate and on the failure time distribution of the uncured patients. The maximum likelihood estimates of the parameters demonstrate strong correlation among the failure times of the uncured patients and weak correlation among cure statuses in the same center.
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Niu Y, Fan D, Ding J, Peng Y Stat Methods Med Res. 2024; 34(1):150-169.
PMID: 39659151 PMC: 11800722. DOI: 10.1177/09622802241295335.
Bahrampour A, Baneshi M, Karamoozian A, Seyedghasemi N, Etminan A, Eghbalian M Iran J Public Health. 2024; 53(9):2113-2120.
PMID: 39429658 PMC: 11490321. DOI: 10.18502/ijph.v53i9.16464.
Beesley L, Shuman A, Mierzwa M, Bellile E, Rosen B, Casper K JAMA Netw Open. 2021; 4(8):e2120055.
PMID: 34369988 PMC: 8353539. DOI: 10.1001/jamanetworkopen.2021.20055.
Analysis of clustered failure time data with cure fraction using copula.
Su C, Lin F Stat Med. 2019; 38(21):3961-3973.
PMID: 31162705 PMC: 8269430. DOI: 10.1002/sim.8213.
Xia F, Ning J, Huang X J Biom Biostat. 2018; 9(2).
PMID: 30370174 PMC: 6201745. DOI: 10.4172/2155-6180.1000392.