Hattori Satoshi, Uno Hajime
Department of Biomedical Statistics, Graduate School of Medicine and Integrated Frontier Research for Medical Science Division, Institute for Open and Transdisciplinary Research Initiatives (OTRI), Osaka University, Suita City, Osaka, Japan.
Department of Medical Oncology, Division of Population Sciences, Dana-Farber Cancer Institute, Department of Medicine, Harvard Medical School, Massachusetts, USA.
Biom J. 2025 Apr;67(2):e70046. doi: 10.1002/bimj.70046.
Restricted mean survival time (RMST) is gaining attention as a measure to quantify the treatment effect on survival outcomes in randomized clinical trials. Several methods to determine sample size based on the RMST-based tests have been proposed. However, to the best of our knowledge, there is no discussion about the power and sample size regarding the augmented version of RMST-based tests, which utilize baseline covariates for a gain in estimation efficiency and in power for testing no treatment effect. The conventional event-driven study design based on the logrank test allows us to calculate the power for a given hazard ratio without specifying the survival functions. In contrast, the existing sample size determination methods for the RMST-based tests relies on the adequacy of the assumptions of the entire survival curves of two groups. Furthermore, to handle the augmented test, the correlation between the baseline covariates and the martingale residuals must be handled. To address these issues, we propose an approximated sample size formula for the augmented version of the RMST-based test, which does not require specifying the entire survival curve in the treatment group, and also a sample size recalculation approach to update the correlations between the baseline covariates and the martingale residuals with the blinded data. The proposed procedure will enable the studies to have the target power for a given RMST difference even when correct survival functions cannot be specified at the design stage.
受限平均生存时间(RMST)作为一种在随机临床试验中量化治疗对生存结局影响的指标,正受到越来越多的关注。已经提出了几种基于RMST检验来确定样本量的方法。然而,据我们所知,对于基于RMST检验的增强版,即利用基线协变量来提高估计效率和检验无治疗效果的功效,尚未有关于其功效和样本量的讨论。基于对数秩检验的传统事件驱动研究设计使我们能够在不指定生存函数的情况下计算给定风险比的功效。相比之下,现有的基于RMST检验的样本量确定方法依赖于两组整个生存曲线假设的充分性。此外,为了处理增强检验,必须处理基线协变量与鞅残差之间的相关性。为了解决这些问题,我们提出了一种基于RMST检验增强版的近似样本量公式,该公式不需要指定治疗组的整个生存曲线,还提出了一种样本量重新计算方法,用于根据盲态数据更新基线协变量与鞅残差之间的相关性。即使在设计阶段无法指定正确的生存函数,所提出的程序也将使研究能够针对给定的RMST差异具有目标功效。