Department of Pharmaceutical Biosciences, Uppsala University, Box 591, 75124, Uppsala, Sweden.
TASK, Cape Town, South Africa.
Sci Rep. 2023 Sep 28;13(1):16292. doi: 10.1038/s41598-023-43412-3.
Large clinical trials often generate complex and large datasets which need to be presented frequently throughout the trial for interim analysis or to inform a data safety monitory board (DSMB). In addition, reliable and traceability are required to ensure reproducibility in pharmacometric data analysis. A reproducible pharmacometric analysis workflow was developed during a large clinical trial involving 1000 participants over one year testing Bacillus Calmette-Guérin (BCG) (re)vaccination in coronavirus disease 2019 (COVID-19) morbidity and mortality in frontline health care workers. The workflow was designed to review data iteratively during the trial, compile frequent reports to the DSMB, and prepare for rapid pharmacometric analysis. Clinical trial datasets (n = 41) were transferred iteratively throughout the trial for review. An RMarkdown based pharmacometric processing script was written to automatically generate reports for evaluation by the DSMB. Reports were compiled, reviewed, and sent to the DSMB on average three days after the data cut-off, reflecting the trial progress in real-time. The script was also utilized to prepare for the trial pharmacometric analyses. The same source data was used to create analysis datasets in NONMEM format and to support model script development. The primary endpoint analysis was completed three days after data lock and unblinding, and the secondary endpoint analyses two weeks later. The constructive collaboration between clinical, data management, and pharmacometric teams enabled this efficient, timely, and reproducible pharmacometrics workflow.
大型临床试验通常会产生复杂且庞大的数据集,这些数据集需要在试验过程中频繁呈现,以便进行中期分析或向数据安全监测委员会 (DSMB) 报告。此外,还需要可靠性和可追溯性,以确保药代动力学数据分析的可重复性。在一项涉及 1000 名参与者、为期一年的大型临床试验中,为了研究卡介苗(BCG)在 2019 年冠状病毒病(COVID-19)一线医护人员发病率和死亡率中的(再)接种效果,我们开发了一个可重现的药代动力学分析工作流程。该工作流程旨在在试验期间反复审查数据,向 DSMB 定期编译报告,并为快速药代动力学分析做好准备。临床试验数据集(n=41)在试验过程中反复进行传输,以便审查。我们编写了一个基于 RMarkdown 的药代动力学处理脚本,以自动生成报告,供 DSMB 评估。报告在数据截止日期后平均三天进行编译、审查,并发送给 DSMB,实时反映试验进展。该脚本还用于为试验药代动力学分析做准备。相同的原始数据用于创建 NONMEM 格式的分析数据集,并支持模型脚本的开发。主要终点分析在数据锁定和揭盲后三天完成,次要终点分析在两周后完成。临床、数据管理和药代动力学团队之间的建设性合作使这种高效、及时和可重现的药代动力学工作流程成为可能。