Huang Bo
Pfizer Inc, Groton, 06340, CT, USA.
Pharm Stat. 2018 Feb;17(1):49-60. doi: 10.1002/pst.1835. Epub 2017 Nov 2.
Immuno-oncology has emerged as an exciting new approach to cancer treatment. Common immunotherapy approaches include cancer vaccine, effector cell therapy, and T-cell-stimulating antibody. Checkpoint inhibitors such as cytotoxic T lymphocyte-associated antigen 4 and programmed death-1/L1 antagonists have shown promising results in multiple indications in solid tumors and hematology. However, the mechanisms of action of these novel drugs pose unique statistical challenges in the accurate evaluation of clinical safety and efficacy, including late-onset toxicity, dose optimization, evaluation of combination agents, pseudoprogression, and delayed and lasting clinical activity. Traditional statistical methods may not be the most accurate or efficient. It is highly desirable to develop the most suitable statistical methodologies and tools to efficiently investigate cancer immunotherapies. In this paper, we summarize these issues and discuss alternative methods to meet the challenges in the clinical development of these novel agents. For safety evaluation and dose-finding trials, we recommend the use of a time-to-event model-based design to handle late toxicities, a simple 3-step procedure for dose optimization, and flexible rule-based or model-based designs for combination agents. For efficacy evaluation, we discuss alternative endpoints/designs/tests including the time-specific probability endpoint, the restricted mean survival time, the generalized pairwise comparison method, the immune-related response criteria, and the weighted log-rank or weighted Kaplan-Meier test. The benefits and limitations of these methods are discussed, and some recommendations are provided for applied researchers to implement these methods in clinical practice.
免疫肿瘤学已成为一种令人兴奋的癌症治疗新方法。常见的免疫疗法包括癌症疫苗、效应细胞疗法和T细胞刺激抗体。细胞毒性T淋巴细胞相关抗原4和程序性死亡-1/程序性死亡配体1拮抗剂等检查点抑制剂在实体瘤和血液学的多种适应症中已显示出有前景的结果。然而,这些新型药物的作用机制在准确评估临床安全性和疗效方面带来了独特的统计挑战,包括迟发性毒性、剂量优化、联合用药评估、假性进展以及延迟和持久的临床活性。传统的统计方法可能并非最准确或高效。迫切需要开发最合适的统计方法和工具来有效研究癌症免疫疗法。在本文中,我们总结了这些问题,并讨论了应对这些新型药物临床开发挑战的替代方法。对于安全性评估和剂量探索试验,我们建议使用基于事件发生时间模型的设计来处理迟发性毒性,采用简单的三步程序进行剂量优化,以及针对联合用药采用灵活的基于规则或基于模型的设计。对于疗效评估,我们讨论了替代终点/设计/测试,包括特定时间概率终点、受限平均生存时间、广义成对比较方法、免疫相关反应标准以及加权对数秩检验或加权Kaplan-Meier检验。讨论了这些方法的优点和局限性,并为应用研究人员在临床实践中实施这些方法提供了一些建议。