Irby Donald, Hibma Jennifer, Elmeliegy Mohamed, Wang Diane, Vandendries Erik, Poels Kamrine, Shtylla Blerta, Williams Jason H
Pfizer Research and Development, Pfizer, Inc., San Diego, California, USA.
Oncology Research and Development, Pfizer, Inc., San Diego, California, USA.
Clin Pharmacol Ther. 2025 Jun;117(6):1687-1695. doi: 10.1002/cpt.3533. Epub 2025 Feb 16.
Cytokine release syndrome (CRS) is a common, acute adverse event associated with T-cell redirecting therapies such as bispecific antibodies (BsAbs). The nature of CRS events data makes it challenging to capture an unbiased exposure-response relationship with commonly used models. For example, simple logistic regression models cannot handle traditional time-varying exposure, and static exposure metrics chosen at early time points and with lower priming doses may underestimate the incidence of CRS. Therefore, more advanced modeling techniques are needed to adequately describe the time course of BsAb-induced CRS. Herein, we present a two-part mixture model that describes the population incidence and time course of CRS following various dose-priming regimens of elranatamab, a humanized BsAb that targets the B-cell maturation antigen on myeloma cells and CD3 on T cells, where the conditional time-evolution of CRS was described with a two-state (i.e., CRS-yes or no) Markov model. In the first part, increasing elranatamab exposure (maximum elranatamab concentration at first CRS event time (C)) was associated with an increased CRS incidence probability. Similarly, in the second part, increased early elranatamab exposure (C) increased the predicted probability of CRS over time, whereas premedication including corticosteroids and IL-6 pathway inhibitors use demonstrated the opposite effect. This is the first reported application of a Markov model to describe the probability of CRS following BsAb therapy, and it successfully explained differences between different dose-priming regimens via clinically relevant covariates. This approach may be useful for the future clinical development of BsAbs.
细胞因子释放综合征(CRS)是一种常见的急性不良事件,与双特异性抗体(BsAbs)等T细胞重定向疗法相关。CRS事件数据的性质使得用常用模型捕捉无偏倚的暴露-反应关系具有挑战性。例如,简单的逻辑回归模型无法处理传统的随时间变化的暴露情况,并且在早期时间点选择的静态暴露指标以及较低的预激剂量可能会低估CRS的发生率。因此,需要更先进的建模技术来充分描述BsAb诱导的CRS的时间进程。在此,我们提出了一个两部分混合模型,该模型描述了elranatamab(一种靶向骨髓瘤细胞上的B细胞成熟抗原和T细胞上的CD3的人源化BsAb)不同剂量预激方案后CRS的总体发生率和时间进程,其中CRS的条件时间演变用二态(即CRS-是或否)马尔可夫模型描述。在第一部分中,增加elranatamab暴露(首次CRS事件时间的最大elranatamab浓度(C))与CRS发生率增加相关。同样,在第二部分中,早期elranatamab暴露增加(C)会随着时间增加CRS的预测概率,而包括使用皮质类固醇和IL-6通路抑制剂的预处理则显示出相反的效果。这是首次报道应用马尔可夫模型来描述BsAb治疗后CRS的概率,并且它通过临床相关协变量成功解释了不同剂量预激方案之间的差异。这种方法可能对BsAbs未来的临床开发有用。