Willan Andrew, Kowgier Matthew
Department of Public Health Science, University of Toronto, Toronto, Canada.
Clin Trials. 2008;5(4):289-300. doi: 10.1177/1740774508093981.
Traditional sample size calculations for randomized clinical trials depend on somewhat arbitrarily chosen factors, such as Type I and II errors. An effectiveness trial (otherwise known as a pragmatic trial or management trial) is essentially an effort to inform decision-making, i.e., should treatment be adopted over standard? Taking a societal perspective and using Bayesian decision theory, Willan and Pinto (Stat. Med. 2005; 24:1791-1806 and Stat. Med. 2006; 25:720) show how to determine the sample size that maximizes the expected net gain, i.e., the difference between the cost of doing the trial and the value of the information gained from the results.
These methods are extended to include multi-stage adaptive designs, with a solution given for a two-stage design. The methods are applied to two examples.
As demonstrated by the two examples, substantial increases in the expected net gain (ENG) can be realized by using multi-stage adaptive designs based on expected value of information methods. In addition, the expected sample size and total cost may be reduced.
Exact solutions have been provided for the two-stage design. Solutions for higher-order designs may prove to be prohibitively complex and approximate solutions may be required.
The use of multi-stage adaptive designs for randomized clinical trials based on expected value of sample information methods leads to substantial gains in the ENG and reductions in the expected sample size and total cost.
传统的随机临床试验样本量计算依赖于一些随意选定的因素,如I型和II型错误。有效性试验(也称为实用试验或管理试验)本质上是为决策提供信息的一种努力,即与标准治疗相比是否应采用某种治疗方法。从社会角度出发并运用贝叶斯决策理论,威兰和平托(《统计医学》,2005年;24:1791 - 1806以及《统计医学》,2006年;25:720)展示了如何确定能使预期净收益最大化的样本量,即进行试验的成本与从结果中获得的信息价值之间的差值。
这些方法被扩展到包括多阶段自适应设计,并给出了两阶段设计的解决方案。这些方法应用于两个实例。
如两个实例所示,基于信息价值方法的多阶段自适应设计能够大幅提高预期净收益(ENG)。此外,预期样本量和总成本可能会降低。
已为两阶段设计提供了精确的解决方案。对于更高阶的设计,解决方案可能会极其复杂,可能需要近似解。
基于样本信息价值方法的多阶段自适应设计用于随机临床试验,可显著提高预期净收益,并降低预期样本量和总成本。