Claret Laurent, Mercier Francois, Houk Brett E, Milligan Peter A, Bruno Rene
Pharsight Consulting Services, Pharsight, a Certara™ Company, 84 Chemin des Grives, 13013, Marseille, France.
Cancer Chemother Pharmacol. 2015 Sep;76(3):567-73. doi: 10.1007/s00280-015-2820-x. Epub 2015 Jul 22.
To assess the link between tumor growth inhibition (TGI) and overall survival (OS) based on historical renal cell carcinoma (RCC) data. To illustrate how simulations can help to identify TGI thresholds based on target OS benefit [i.e., hazard ratio (HR) compared with standard of care] to support new drug development in RCC.
Tumor size (TS) data were modeled from 2552 patients with first-line or refractory RCC who received temsirolimus, interferon, sunitinib, sorafenib or axitinib in 10 Phase II or Phase III studies. Three model-based TGI metrics estimates [early tumor shrinkage (ETS) at week 8, 10 or 12, time to tumor growth (TTG) and growth rate] as well as baseline prognostic factors were tested in multivariate lognormal models of OS. Model performance was evaluated by posterior predictive check of the OS distributions and hazard ratio across treatments.
TTG was the best TGI metric to predict OS. However, week 8 ETS had a satisfactory performance and was employed in order to maximize clinical utilization. The week 8 ETS to OS model was then used to simulate clinically relevant ETS thresholds for future Phase II studies with investigational treatments.
The published OS model and resultant simulations can be leveraged to support Phase II design and predict expected OS and HR (based on early observed TGI data obtained in Phase II or Phase III studies), thereby informing important mRCC development decisions, e.g., Go/No Go and dose regimen selection.
基于既往肾细胞癌(RCC)数据评估肿瘤生长抑制(TGI)与总生存期(OS)之间的关联。说明模拟如何有助于根据目标OS获益(即与标准治疗相比的风险比[HR])确定TGI阈值,以支持RCC新药研发。
在10项II期或III期研究中,对2552例接受替西罗莫司、干扰素、舒尼替尼、索拉非尼或阿昔替尼治疗的一线或难治性RCC患者的肿瘤大小(TS)数据进行建模。在OS的多变量对数正态模型中测试了三种基于模型的TGI指标估计值[第8、10或12周的早期肿瘤缩小(ETS)、肿瘤生长时间(TTG)和生长速率]以及基线预后因素。通过对OS分布和各治疗组风险比的后验预测检验评估模型性能。
TTG是预测OS的最佳TGI指标。然而,第8周的ETS表现令人满意,为了最大限度地提高临床实用性而采用。然后使用第8周ETS与OS模型来模拟未来II期研究中使用研究性治疗的临床相关ETS阈值。
已发表的OS模型及由此产生的模拟可用于支持II期设计,并预测预期的OS和HR(基于在II期或III期研究中早期观察到的TGI数据),从而为重要的转移性RCC研发决策提供信息,例如是否继续研发及剂量方案选择。