Vinnat Valentin, Annane Djillali, Chevret Sylvie
ECSTRRA Team, INSERM U1153, Université Paris Cité, 75010 Paris, France.
Intensive Care Unit, Raymond Poincaré Hospital, 78266 Garches, France.
J Pers Med. 2023 Oct 30;13(11):1560. doi: 10.3390/jpm13111560.
Precision medicine is revolutionizing health care, particularly by addressing patient variability due to different biological profiles. As traditional treatments may not always be appropriate for certain patient subsets, the rise of biomarker-stratified clinical trials has driven the need for innovative methods. We introduced a Bayesian sequential scheme to evaluate therapeutic interventions in an intensive care unit setting, focusing on complex endpoints characterized by an excess of zeros and right truncation. By using a zero-inflated truncated Poisson model, we efficiently addressed this data complexity. The posterior distribution of rankings and the surface under the cumulative ranking curve (SUCRA) approach provided a comprehensive ranking of the subgroups studied. Different subsets of subgroups were evaluated depending on the availability of biomarker data. Interim analyses, accounting for early stopping for efficacy, were an integral aspect of our design. The simulation study demonstrated a high proportion of correct identification of the subgroup which is the most predictive of the treatment effect, as well as satisfactory false positive and true positive rates. As the role of personalized medicine grows, especially in the intensive care setting, it is critical to have designs that can manage complicated endpoints and that can control for decision error. Our method seems promising in this challenging context.
精准医学正在彻底改变医疗保健,尤其是通过应对因不同生物学特征导致的患者差异。由于传统治疗方法可能并不总是适用于某些患者亚组,生物标志物分层临床试验的兴起推动了对创新方法的需求。我们引入了一种贝叶斯序贯方案,以评估重症监护病房环境中的治疗干预措施,重点关注以大量零值和右删失为特征的复杂终点。通过使用零膨胀截断泊松模型,我们有效地解决了这种数据复杂性问题。排名的后验分布和累积排名曲线下面积(SUCRA)方法提供了所研究亚组的综合排名。根据生物标志物数据的可用性评估不同的亚组子集。考虑到因疗效而提前终止试验的期中分析是我们设计的一个组成部分。模拟研究表明,对最能预测治疗效果的亚组的正确识别比例很高,假阳性率和真阳性率也令人满意。随着个性化医疗的作用不断增强,尤其是在重症监护环境中,拥有能够处理复杂终点并能控制决策错误的设计至关重要。在这种具有挑战性的背景下,我们的方法似乎很有前景。