Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, Ontario, Canada.
Stat Med. 2024 Dec 20;43(29):5513-5533. doi: 10.1002/sim.10236. Epub 2024 Oct 29.
Regression analyses based on transformations of cumulative incidence functions are often adopted when modeling and testing for treatment effects in clinical trial settings involving competing and semi-competing risks. Common frameworks include the Fine-Gray model and models based on direct binomial regression. Using large sample theory we derive the limiting values of treatment effect estimators based on such models when the data are generated according to multiplicative intensity-based models, and show that the estimand is sensitive to several process features. The rejection rates of hypothesis tests based on cumulative incidence function regression models are also examined for null hypotheses of different types, based on which a robustness property is established. In such settings supportive secondary analyses of treatment effects are essential to ensure a full understanding of the nature of treatment effects. An application to a palliative study of individuals with breast cancer metastatic to bone is provided for illustration.
当在涉及竞争和半竞争风险的临床试验环境中建模和检验治疗效果时,通常采用基于累积发生率函数变换的回归分析。常见的框架包括 Fine-Gray 模型和基于直接二项式回归的模型。利用大样本理论,我们推导出了当数据根据乘法强度模型生成时,基于此类模型的治疗效果估计量的极限值,并表明估计值对多个过程特征敏感。还针对不同类型的零假设,基于累积发生率函数回归模型检验假设检验的拒绝率,并在此基础上建立稳健性。在这种情况下,对治疗效果进行支持性的二次分析对于全面了解治疗效果的性质至关重要。提供了一个针对转移性乳腺癌患者的姑息治疗研究的应用,以说明问题。