Duncan T Wilson, Andrew Hall, Julia M Brown, Rebecca Ea Walwyn
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引用次数: 0
摘要
试点试验通常在确定性试验之前进行,以评估其可行性并为其设计提供依据。尽管先导试验通常会收集主要终点数据,但由于其功率通常较低,因此不鼓励对有效性进行初步测试。虽然可以通过提高 I 类错误率来提高试验的有效性,但如何在这些操作特征之间取得最佳平衡,目前还没有什么方法论指导。我们考虑采用贝叶斯决策理论方法来解决这一问题,引入效用函数,并将最佳试点和最终试验方案定义为预期效用最大化的方案。我们将平均主要结果的变化、取样成本、治疗成本以及决策者对风险的态度作为效用的基础。我们运用这种方法重新设计了 OK-糖尿病试验,这是一项复杂干预的试点试验,其主要结果是连续的,标准偏差已知。然后,我们研究了最佳方案特征如何随效用函数参数的变化而变化。我们发现,在试点试验中不测试有效性的传统方法可能在很大程度上不是最佳方法。
Optimising error rates in programmes of pilot and definitive trials using Bayesian statistical decision theory.
Pilot trials are often conducted in advance of definitive trials to assess their feasibility and to inform their design. Although pilot trials typically collect primary endpoint data, preliminary tests of effectiveness have been discouraged given their typically low power. Power could be increased at the cost of a higher type I error rate, but there is little methodological guidance on how to determine the optimal balance between these operating characteristics. We consider a Bayesian decision-theoretic approach to this problem, introducing a utility function and defining an optimal pilot and definitive trial programme as that which maximises expected utility. We base utility on changes in average primary outcome, the cost of sampling, treatment costs, and the decision-maker's attitude to risk. We apply this approach to re-design OK-Diabetes, a pilot trial of a complex intervention with a continuous primary outcome with known standard deviation. We then examine how optimal programme characteristics vary with the parameters of the utility function. We find that the conventional approach of not testing for effectiveness in pilot trials can be considerably sub-optimal.
期刊介绍:
Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)