Zhou Xiaofeng, Bao Warren, Gaffney Mike, Shen Rongjun, Young Sarah, Bate Andrew
a Epidemiology , Worldwide Safety and Regulatory, Pfizer Inc , New York , NY , USA.
J Biopharm Stat. 2018;28(4):668-681. doi: 10.1080/10543406.2017.1372776. Epub 2017 Nov 20.
The routine use of sequential methods is well established in clinical studies. Recently, there has been increasing interest in applying these methods to prospectively monitor the safety of newly approved drugs through accrual of real-world data. However, the application to marketed drugs using real-world data has been limited and work is needed to determine which sequential approaches are most suited to such data. In this study, the conditional sequential sampling procedure (CSSP), a group sequential method, was compared with a log-linear model with Poisson distribution (LLMP) through a SAS procedure (PROC GENMOD) combined with an alpha-spending function on two large longitudinal US administrative health claims databases. Relative performance in identifying known drug-outcome associations was examined using a set of 50 well-studied drug-outcome pairs. The study finds that neither method correctly identified all pairs but that LLMP often provides better ability and shorter time for identifying the known drug-outcome associations with superior computational performance when compared with CSSP, albeit with more false positives. With the features of flexible confounding control and ease of implementation, LLMP may be a good alternative or complement to CSSP.
序贯方法在临床研究中的常规应用已得到充分确立。最近,人们越来越有兴趣将这些方法应用于通过积累真实世界数据来前瞻性监测新批准药物的安全性。然而,利用真实世界数据应用于已上市药物的情况一直有限,需要开展工作来确定哪种序贯方法最适用于此类数据。在本研究中,通过SAS程序(PROC GENMOD)结合α消费函数,将一种成组序贯方法——条件序贯抽样程序(CSSP)与具有泊松分布的对数线性模型(LLMP)在两个大型美国纵向行政健康索赔数据库上进行了比较。使用一组50对经过充分研究的药物-结局对,检验了在识别已知药物-结局关联方面的相对性能。研究发现,两种方法都没有正确识别所有的药物-结局对,但与CSSP相比,LLMP通常具有更好的识别能力和更短的识别已知药物-结局关联的时间,且计算性能更优,尽管假阳性更多。鉴于具有灵活的混杂控制和易于实施的特点,LLMP可能是CSSP的一个良好替代方案或补充。