Merck & Co., Inc., Rahway, NJ, USA.
Evidera, London, UK.
Pharmacoepidemiol Drug Saf. 2019 Apr;28(4):443-451. doi: 10.1002/pds.4752. Epub 2019 Mar 7.
Quantitative benefit-risk (B-R) assessments are used to characterize treatment by combining key benefits and risks into a single metric but have historically been done for the "average" patient. Our aim was to conduct an individualized assessment for the oral antiplatelet vorapaxar by combining trial and real-world data to further personalize the treatment profiles.
Using linked UK health care databases, we developed risk prediction equations for key ischemic and bleeding events using Cox proportional hazards models. Trial hazard ratios, relative to placebo, were applied to baseline risk estimates to compute expected attributable risks, summed to derive a per-patient net clinical benefit (NCB). High risk subgroups were defined a priori, and Gaussian mixture models (GMM) were fit to characterize the NCB distribution and identify subgroups with similar NCBs.
NCB was consistently positive for all subgroups, likely due to the outcome correlation, and would remain positive with a 12-fold increase in bleeding risk. GMMs identified three distinct NCB subgroups. Compared with the middle/lower NCB subgroups, those with a higher NCB tended to be older, female, and have higher CV disease burden.
Personalized B-R assessments are feasible and clinically valuable and can be used to better predict who would benefit most from therapy.
定量效益-风险(B-R)评估用于通过将关键效益和风险合并为单一指标来描述治疗,但历史上一直针对“平均”患者进行。我们的目的是通过结合试验和真实世界的数据来对口服抗血小板药物沃拉帕沙进行个体化评估,以进一步使治疗方案个体化。
使用链接的英国医疗保健数据库,我们使用 Cox 比例风险模型为主要缺血性和出血性事件开发风险预测方程。将试验风险比相对于安慰剂应用于基线风险估计值,以计算预期归因风险,求和得出每位患者的净临床获益(NCB)。预先定义了高风险亚组,并拟合高斯混合模型(GMM)以描述 NCB 分布并识别具有相似 NCB 的亚组。
对于所有亚组,NCB 始终为正,可能是由于结果的相关性,并且即使出血风险增加 12 倍,NCB 仍将保持为正。GMMs 确定了三个不同的 NCB 亚组。与中/低 NCB 亚组相比,那些具有更高 NCB 的患者往往年龄更大、女性更多,且 CV 疾病负担更高。
个性化 B-R 评估是可行且具有临床价值的,可以更好地预测谁最受益于治疗。