Hazlett Chad
Departments of Statistics and Political Science, University of California Los Angeles, Los Angeles, United States.
J Causal Inference. 2019 Mar;7(1). doi: 10.1515/jci-2018-0019. Epub 2018 Dec 6.
Providing terminally ill patients with access to experimental treatments, as allowed by recent "right to try" laws and "expanded access" programs, poses a variety of ethical questions. While practitioners and investigators may assume it is impossible to learn the effects of these treatment without randomized trials, this paper describes a simple tool to estimate the effects of these experimental treatments on those who take them, despite the problem of selection into treatment, and without assumptions about the selection process. The key assumption is that the average outcome, such as survival, would remain stable over time in the absence of the new treatment. Such an assumption is unprovable, but can often be credibly judged by reference to historical data and by experts familiar with the disease and its treatment. Further, where this assumption may be violated, the result can be adjusted to account for a hypothesized change in the non-treatment outcome, or to conduct a sensitivity analysis. The method is simple to understand and implement, requiring just four numbers to form a point estimate. Such an approach can be used not only to learn which experimental treatments are promising, but also to warn us when treatments are actually harmful - especially when they might otherwise appear to be beneficial, as illustrated by example here. While this note focuses on experimental medical treatments as a motivating case, more generally this approach can be employed where a new treatment becomes available or has a large increase in uptake, where selection bias is a concern, and where an assumption on the change in average non-treatment outcome over time can credibly be imposed.
根据最近的“尝试权”法律和“扩大使用范围”计划的规定,为绝症患者提供实验性治疗引发了一系列伦理问题。虽然从业者和研究人员可能认为,如果没有随机试验,就不可能了解这些治疗的效果,但本文介绍了一种简单的工具,用于估计这些实验性治疗对接受治疗者的效果,尽管存在治疗选择问题,且无需对选择过程做出假设。关键假设是,在没有新治疗的情况下,平均结果(如生存率)会随时间保持稳定。这样的假设无法得到证实,但通常可以通过参考历史数据以及熟悉该疾病及其治疗方法的专家进行可靠判断。此外,在可能违反该假设的情况下,可以对结果进行调整,以考虑非治疗结果的假设性变化,或者进行敏感性分析。该方法易于理解和实施,仅需四个数字即可形成点估计。这种方法不仅可以用来了解哪些实验性治疗有前景,还能在治疗实际上有害时向我们发出警告——尤其是当它们在其他情况下可能看似有益时,正如本文所举的例子所示。虽然本说明将实验性医学治疗作为一个有启发性的案例重点讨论,但更一般地说,当一种新治疗可用或使用量大幅增加、存在选择偏倚问题且可以可靠地对平均非治疗结果随时间的变化做出假设时,都可以采用这种方法。