Hierarchical dynamic time-to-event models for post-treatment preventive care data on breast cancer survivors
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Publication:4970911
DOI10.1177/1471082X0800900202MaRDI QIDQ4970911
Sudipto Banerjee, Xinhua Yu, Freda W. Cooner, A. Marshall McBean, Patricia L. Grambsch
Publication date: 7 October 2020
Published in: Statistical Modelling (Search for Journal in Brave)
hierarchical modelscure rate modelslatent activation schemesMarkov chain MonteCarlodynamic survival modelspreventive care data
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