Yao T J, Begg C B, Livingston P O
Department of Epidemiology and Biostatistics, Memorial Sloan-Kettering Cancer Center, New York, New York 10021, USA.
Biometrics. 1996 Sep;52(3):992-1001.
A new approach is presented for determining the appropriate sample sizes for a series of screening trials to identify promising new therapeutic agents. The formulation of the problem is motivated by recognition of the fact that screening of new agents is a continuing process. Consequently, it does not seem ideal to fix the overall total sample size, as previous authors have done. Instead we fix the error rates and optimize the individual sample sizes to minimize the time to identify a promising agent, using an empirical Bayes formulation. When applied to data from the large historical experience of exploratory vaccination trials at Memorial Sloan-Kettering Cancer Center, the method demonstrates that relatively small individual screening trials are optimal in this setting. The reliability of the results is evaluated using bootstrapping techniques.
本文提出了一种新方法,用于确定一系列筛选试验的合适样本量,以识别有前景的新型治疗药物。认识到新药筛选是一个持续的过程,这推动了该问题的形成。因此,像之前的作者那样固定总体样本量似乎并不理想。相反,我们使用经验贝叶斯公式,固定错误率并优化单个样本量,以尽量缩短识别有前景药物的时间。当将该方法应用于纪念斯隆 - 凯特琳癌症中心探索性疫苗试验的大量历史经验数据时,结果表明在这种情况下相对较小的单个筛选试验是最优的。使用自助法技术评估结果的可靠性。