区间删失数据的比例危险模型估计方法比较研究

Sonobe Keita, Asanao Shimokawa, Etsuo Miyaoka
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摘要

目的:在本研究中,我们使用模拟数据和真实数据对区间删失数据的估计方法进行了比较。过去的许多研究在模拟研究中都使用了固定的样本量。我们进行了尽可能好的模拟研究。方法:方法包括使用片断法和样条法的 Finkelstein 方法以及估算方法(即 Cox 模型中的 Efron 方法)。结果:如果区间删失数据没有重叠,则无论采用哪种赋值点对 Cox 模型进行估计,都能得到相同的估计结果。重叠数据也不会对估计的准确性产生重大影响。另一方面,Finkelstein 方法显示,基线生存函数的两种估计方法在估计结果上存在差异。虽然无法确定哪种方法更有效,但 Spline 方法的绝对误差小于 Finkelstein 方法。对 Cox 方法和 Finkelstein 方法进行比较后发现,Finkelstein 方法在功率方面更胜一筹。结论区间删失数据是一种数据形式,可以在各种领域中找到。在本研究中,我们比较了区间删失数据的估计方法,从模拟研究中可以看出 Finkelstein 方法的实用性。
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Comparative Study on Estimation Methods of Proportional Hazard Models for Interval-Censored Data
Purpose: In this study, we compare the estimation methods of interval-censored data using both simulated and real data. Many past studies have used fixed sample sizes in their simulation studies. We performed the best possible simulation study. Method: The methods include Finkelstein’s method with Piecewise and Spline and imputation methods (i.e., Efron’s method in the Cox model). Results: If the interval-censored data do not overlap, the same estimation results are obtained regardless of the assignment point for the estimation of the Cox model. The overlapping data also did not significantly affect the accuracy of the estimation. On the other hand, Finkelstein’s method showed differences in estimation depending on the two estimation methods of the baseline survival function. Although it was not possible to determine which method had better power, the Spline method had a smaller absolute error than the Finkelstein method. A comparison of Cox’s and Finkelstein’s methods showed that Finkelstein’s method was superior in terms of power. Conclusion: Interval-censored data is a form of data that can be found in a variety of fields. In this study, we compared estimation methods for interval-censored data, and the usefulness of Finkelstein’s method can be seen from simulation studies.
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