MRC Biostatistics Unit, Cambridge, U.K.
Stat Med. 2013 Nov 20;32(26):4639-50. doi: 10.1002/sim.5867. Epub 2013 Jun 18.
In phase II cancer trials, tumour response is either the primary or an important secondary endpoint. Tumour response is a binary composite endpoint determined, according to the Response Evaluation Criteria in Solid Tumors, by (1) whether the percentage change in tumour size is greater than a prescribed threshold and (2) (binary) criteria such as whether a patient develops new lesions. Further binary criteria, such as death or serious toxicity, may be added to these criteria. The probability of tumour response (i.e. 'success' on the composite endpoint) would usually be estimated simply as the proportion of successes among patients. This approach uses the tumour size variable only through a discretised form, namely whether or not it is above the threshold. In this article, we propose a method that also estimates the probability of success but that gains precision by using the information on the undiscretised (i.e. continuous) tumour size variable. This approach can also be used to increase the power to detect a difference between the probabilities of success under two different treatments in a comparative trial. We demonstrate these increases in precision and power using simulated data. We also apply the method to real data from a phase II cancer trial and show that it results in a considerably narrower confidence interval for the probability of tumour response.
在 II 期癌症临床试验中,肿瘤反应是主要或重要的次要终点之一。肿瘤反应是一个二元复合终点,根据实体瘤反应评估标准,由(1)肿瘤大小的百分比变化是否大于规定的阈值和(2)(二元)标准,例如患者是否出现新的病变来确定。可能会向这些标准添加其他二元标准,例如死亡或严重毒性。肿瘤反应的概率(即复合终点上的“成功”)通常简单地估计为患者中成功的比例。该方法仅通过离散形式使用肿瘤大小变量,即是否高于阈值。在本文中,我们提出了一种方法,该方法还估计了成功的概率,但通过使用未离散(即连续)肿瘤大小变量的信息来提高精度。该方法还可用于提高在比较试验中检测两种不同治疗方法下成功概率差异的能力。我们使用模拟数据证明了这些精度和功效的提高。我们还将该方法应用于来自 II 期癌症试验的真实数据,并表明它导致肿瘤反应概率的置信区间大大缩小。