Anisimov Vladimir V
Research Statistics Unit, GlaxoSmithKline, Harlow, Essex, UK.
Pharm Stat. 2011 Jan-Feb;10(1):50-9. doi: 10.1002/pst.412.
This paper deals with the analysis of randomization effects in multi-centre clinical trials. The two randomization schemes most often used in clinical trials are considered: unstratified and centre-stratified block-permuted randomization. The prediction of the number of patients randomized to different treatment arms in different regions during the recruitment period accounting for the stochastic nature of the recruitment and effects of multiple centres is investigated. A new analytic approach using a Poisson-gamma patient recruitment model (patients arrive at different centres according to Poisson processes with rates sampled from a gamma distributed population) and its further extensions is proposed. Closed-form expressions for corresponding distributions of the predicted number of the patients randomized in different regions are derived. In the case of two treatments, the properties of the total imbalance in the number of patients on treatment arms caused by using centre-stratified randomization are investigated and for a large number of centres a normal approximation of imbalance is proved. The impact of imbalance on the power of the study is considered. It is shown that the loss of statistical power is practically negligible and can be compensated by a minor increase in sample size. The influence of patient dropout is also investigated. The impact of randomization on predicted drug supply overage is discussed.
本文探讨多中心临床试验中随机化效应的分析。文中考虑了临床试验中最常用的两种随机化方案:非分层和中心分层的区组置换随机化。研究了在招募期内,考虑到招募的随机性和多个中心的影响,不同地区随机分配到不同治疗组的患者数量的预测。提出了一种使用泊松 - 伽马患者招募模型(患者根据泊松过程到达不同中心,其速率从伽马分布总体中抽样)及其进一步扩展的新分析方法。推导了不同地区随机化患者预测数量的相应分布的闭式表达式。在两种治疗的情况下,研究了使用中心分层随机化导致的治疗组患者数量总不平衡的性质,并证明了对于大量中心,不平衡的正态近似。考虑了不平衡对研究效能的影响。结果表明,统计效能的损失实际上可以忽略不计,并且可以通过样本量的小幅增加来弥补。还研究了患者退出的影响。讨论了随机化对预测药物供应过剩的影响。