Journal of Southern Medical University ›› 2020, Vol. 40 ›› Issue (04): 475-482.doi: 10.12122/j.issn.1673-4254.2020.04.05
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Abstract: Objective To explore the application and advantages of conditional inference forest in survival analysis. Methods We used simulated experiment and actual data to compare the predictive performance of 4 models, including Coxproportional hazards model, accelerated failure time model, random survival forest model and conditional inference forest model based on their Brier scores. Results Simulation experiment suggested that both of the two forest models had more accurate and robust predictive performance than the other two regression models. Conditional inference forest model was superior to the other models in analyzing time-to-event data with polytomous covariates, collinearity or interaction, especially for a large sample size and a high censoring rate. The results of actual data analysis demonstrated that conditional inference forest model had the best predictive performance among the 4 models. Conclusion Compared with the commonly used survival analysis methods, conditional inference forest model performs better especially when the data contain polytomous covariates with collinearity and interaction.
. Application of conditional inference forest in time-to-event data analysis[J]. Journal of Southern Medical University, 2020, 40(04): 475-482.
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URL: https://www.j-smu.com/EN/10.12122/j.issn.1673-4254.2020.04.05
https://www.j-smu.com/EN/Y2020/V40/I04/475