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目的:终检数据的线性回归分析问题迄今尚未解决,本文就这一问题作以探讨。方法:首先按Kaplan-Meier或Berkson-Gage法估计生存率,然后就生存率和其对应时间点进行线性回归分析。由此估计队列半数生存期,直接置信限,两队列半数生存期差别的显著性检验。结果:与非参数方法相比,该置信限较窄,该检验较灵敏。在给定条件下,该检验还原为两回归系数差别的显著性检验。两个工作实例:白血病和食管癌临床试验资料被用来描述其临床应用。结论:这种方法具有一定理论意义和实用价值。
Purpose: The problem of linear regression analysis of final inspection data has not been solved so far. This paper discusses this issue. Methods: Firstly, the survival rate was estimated by Kaplan-Meier or Berkson-Gage method. Then linear regression analysis was performed on the survival rate and its corresponding time points. This estimates the half-life of the cohort, the direct confidence limit, and the significance of the difference in the half-life of the two cohorts. Results: Compared with the non-parametric method, the confidence limit is narrower and the test is more sensitive. Under given conditions, the test reverts to a significant test of the difference between the two regression coefficients. Two working examples: Leukemia and esophageal cancer clinical trial data were used to describe its clinical application. Conclusion: This method has a certain theoretical significance and practical value.