The primary analysis of randomized cancer screening trials for cancer typically adheres to the intention-to-screen principle, measuring cancer-specific mortality reductions between screening and control arms. These mortality reductions result from a combination of the screening regimen, screening technology and the effect of the early, screening-induced, treatment. This motivates addressing these different aspects separately. Here we are interested in the causal effect of early versus delayed treatments on cancer mortality among the screening-detectable subgroup, which under certain assumptions is estimable from conventional randomized screening trial using instrumental variable type methods. To define the causal effect of interest, we formulate a simplified structural multi-state model for screening trials, based on a hypothetical intervention trial where screening detected individuals would be randomized into early versus delayed treatments. The cancer-specific mortality reductions after screening detection are quantified by a cause-specific hazard ratio. For this, we propose two estimators, based on an estimating equation and a likelihood expression. The methods extend existing instrumental variable methods for time-to-event and competing risks outcomes to time-dependent intermediate variables. Using the multi-state model as the basis of a data generating mechanism, we investigate the performance of the new estimators through simulation studies. In addition, we illustrate the proposed method in the context of CT screening for lung cancer using the US National Lung Screening Trial (NLST) data.
翻译:对癌症随机癌症筛查试验进行初步分析,通常符合目的对筛选原则,衡量筛选和控制武器之间特定癌症死亡率的降低。这些死亡率的降低是筛查制度、筛查技术和早期、筛选引起的治疗效果相结合的结果。这促使分别处理这些不同方面。我们关心早期和延迟治疗对筛查发现分组癌症死亡率的因果关系,根据某些假设,使用工具可变类型方法进行常规随机筛查试验,这符合目的对结果的理解。为了界定因果效应,我们根据假设干预试验,将检测发现的个人随机转化为早期治疗或延迟治疗,制定了一个简化的多州结构测试模式。筛查后特定癌症死亡率的降低用特定原因的危险比率进行量化。对此,我们建议根据估计方程式和可能性表示,将现有的时间对事件和相互竞争的风险变量方法推广到基于时间的中间变量。我们利用多州模型作为数据生成机制的基础,将检测检测检测发现的人随机变成早期治疗或延迟治疗。我们通过模拟的癌症测试方法,来调查国家癌症测试的绩效。