Berry D A
Institute of Statistics and Decision Sciences, Duke University, Durham, NC 27708-0251.
Stat Med. 1993 Aug;12(15-16):1377-93; discussion 1395-404. doi: 10.1002/sim.4780121504.
This paper describes a Bayesian approach to the design and analysis of clinical trials, and compares it with the frequentist approach. Both approaches address learning under uncertainty. But they are different in a variety of ways. The Bayesian approach is more flexible. For example, accumulating data from a clinical trial can be used to update Bayesian measures, independent of the design of the trial. Frequentist measures are tied to the design, and interim analyses must be planned for frequentist measures to have meaning. Its flexibility makes the Bayesian approach ideal for analysing data from clinical trials. In carrying out a Bayesian analysis for inferring treatment effect, information from the clinical trial and other sources can be combined and used explicitly in drawing conclusions. Bayesians and frequentists address making decisions very differently. For example, when choosing or modifying the design of a clinical trial, Bayesians use all available information, including that which comes from the trial itself. The ability to calculate predictive probabilities for future observations is a distinct advantage of the Bayesian approach to designing clinical trials and other decisions. An important difference between Bayesian and frequentist thinking is the role of randomization.
本文描述了一种用于临床试验设计与分析的贝叶斯方法,并将其与频率论方法进行了比较。两种方法都涉及在不确定性下的学习。但它们在多种方面存在差异。贝叶斯方法更为灵活。例如,来自临床试验积累的数据可用于更新贝叶斯度量,这与试验设计无关。频率论度量与设计相关联,对于频率论度量要有意义,必须对期中分析进行规划。其灵活性使贝叶斯方法成为分析临床试验数据的理想选择。在进行用于推断治疗效果的贝叶斯分析时,来自临床试验和其他来源的信息可以结合起来,并在得出结论时明确使用。贝叶斯派和频率论派在做决策的方式上有很大不同。例如,在选择或修改临床试验设计时,贝叶斯派会使用所有可用信息,包括来自试验本身的信息。能够计算未来观察的预测概率是贝叶斯方法用于设计临床试验和其他决策的一个显著优势。贝叶斯思维和频率论思维的一个重要区别在于随机化的作用。