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Dependence Model Selection for Semi-Competing Risks Data 被引量:1
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作者 Jin-Jian Hsieh Cheng-Fang Tsai 《Open Journal of Statistics》 2020年第2期228-238,共11页
We consider the model selection problem of the dependency between the?terminal event and the non-terminal event under semi-competing risks data. When the relationship between the two events is unspecified, the inferen... We consider the model selection problem of the dependency between the?terminal event and the non-terminal event under semi-competing risks data. When the relationship between the two events is unspecified, the inference on the non-terminal event is not identifiable. We cannot make inference on the non-terminal event without extra assumptions. Thus, an association model for?semi-competing risks data is necessary, and it is important to select an appropriate dependence model for a data set. We construct the likelihood function for semi-competing risks data to select an appropriate dependence model. From?simulation studies, it shows the performance of the proposed approach is well. Finally, we apply our method to a bone marrow transplant data set. 展开更多
关键词 COPULA MODEL LIKELIHOOD Function MODEL Selection semi-competing RISKS DATA
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Quantile Regression Based on Semi-Competing Risks Data
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作者 Jin-Jian Hsieh A. Adam Ding +1 位作者 Weijing Wang Yu-Lin Chi 《Open Journal of Statistics》 2013年第1期12-26,共15页
This paper considers quantile regression analysis based on semi-competing risks data in which a non-terminal event may be dependently censored by a terminal event. The major interest is the covariate effects on the qu... This paper considers quantile regression analysis based on semi-competing risks data in which a non-terminal event may be dependently censored by a terminal event. The major interest is the covariate effects on the quantile of the non-terminal event time. Dependent censoring is handled by assuming that the joint distribution of the two event times follows a parametric copula model with unspecified marginal distributions. The technique of inverse probability weighting (IPW) is adopted to adjust for the selection bias. Large-sample properties of the proposed estimator are derived and a model diagnostic procedure is developed to check the adequacy of the model assumption. Simulation results show that the proposed estimator performs well. For illustrative purposes, our method is applied to analyze the bone marrow transplant data in [1]. 展开更多
关键词 COPULA Model Dependent CENSORING QUANTILE Regression semi-competing RISKS DATA
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