Given progressive developments and demands on clinical trials, accurate enrollment timeline forecasting is increasingly crucial for both strategic decision-making and trial execution excellence. Naive approach assumes flat rates on enrollment using average of historical data, while traditional statistical approach applies simple Poisson-Gamma model using timeinvariant rates for site activation and subject recruitment. Both of them are lack of nontrivial factors such as time and location. We propose a novel two-segment statistical approach based on Quasi-Poisson regression for subject accrual rate and Poisson process for subject enrollment and site activation. The input study-level data is publicly accessible and it can be integrated with historical study data from user's organization to prospectively predict enrollment timeline. The new framework is neat and accurate compared to preceding works. We validate the performance of our proposed enrollment model and compare the results with other frameworks on 7 curated studies.
翻译:鉴于逐步发展和对临床试验的需求,准确的入学时间表预测对于战略决策和实验性执行优异性都越来越重要。原始方法假设使用历史数据平均数进行统一入学率,而传统统计方法则采用利用时间变化率进行现场激活和招生的Poisson-Gamma简单模型。这两个模型都缺乏时间和地点等非边际因素。我们提出了一个基于Qasi-Poisson回归率的新颖的两部分统计方法,用于主题权责发生率和主题启动Poisson进程。投入研究一级的数据可以公开查阅,可以与用户组织的历史研究数据相结合,以便预测招生时间表。新框架与以前的工作相比是整洁和准确的。我们验证了我们拟议的入学模式的绩效,并将7项简化研究的成果与其他框架进行比较。</s>