This paper focuses on statistical modelling and prediction of patient recruitment in clinical trials accounting for patients dropout. The recruitment model is based on a Poisson-gamma model introduced by Anisimov and Fedorov (2007), where the patients arrive at different centres according to Poisson processes with rates viewed as gamma-distributed random variables. Each patient can drop the study during some screening period. Managing the dropout process is of a major importance but data related to dropout are rarely correctly collected. In this paper, a few models of dropout are proposed. The technique for estimating parameters and predicting the number of recruited patients over time and the recruitment time is developed. Simulation results confirm the applicability of the technique and thus, the necessity to account for patients dropout at the stage of forecasting recruitment in clinical trials.
翻译:本文的重点是统计建模和预测病人在临床试验中因病人辍学而招生的情况,征聘模式以Anisimov和Fedorov(2007年)推出的Poisson-gamma模式为基础,根据Poisson进程,病人到达不同的中心,其比率被视为伽马分散的随机变数,每个病人可在某个筛查期间放弃研究,管理退学过程非常重要,但很少正确收集与退学有关的数据,本文件提出了几个辍学模式,提出了估计参数和预测长期及征聘时间里被招生病人人数的技术,模拟结果证实了该技术的适用性,因此,有必要说明在临床试验预测征聘阶段病人辍学的原因。