晚期乳腺癌肿瘤动态和无进展生存期的联合建模:利用安非他酮早期 I-II 期试验的数据。

IF 3.1 3区 医学 Q2 PHARMACOLOGY & PHARMACY CPT: Pharmacometrics & Systems Pharmacology Pub Date : 2024-04-01 DOI:10.1002/psp4.13128
Marc Cerou, Hoai-Thu Thai, Laure Deyme, Sophie Fliscounakis-Huynh, Emmanuelle Comets, Patrick Cohen, Sylvaine Cartot-Cotton, Christine Veyrat-Follet
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摘要

利用 75 例早期安非他酮 I-II 期 AMEERA-1-2 剂量升级和扩增队列患者的数据,开发了一个联合建模框架。建立了一个半机制肿瘤生长抑制(TGI)模型。该模型考虑了敏感和耐药肿瘤细胞的动态变化、暴露对敏感细胞肿瘤增殖的驱动效应以及治疗效果启动的延迟,以描述靶病灶肿瘤大小(TS)数据的时间过程。该模型使用安非他酮群体药代动力学模型预测的浓度,引入了个体治疗暴露超时。这一联合建模框架整合了复杂的 RECISTv1.1 标准信息,将 TS 指标与无进展生存期 (PFS) 联系起来,并通过随机 II 期试验 AMEERA-3 进行了外部评估。我们证明,TS 的瞬时变化率(TS 斜率)是预测无进展生存期的重要指标,开发的联合模型能够仅利用早期 I-II 期数据很好地预测安非他酮 II 期单药治疗试验的无进展生存期。这为早期开发决策提供了一个很好的建模和模拟工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Joint modeling of tumor dynamics and progression-free survival in advanced breast cancer: Leveraging data from amcenestrant early phase I–II trials

A joint modeling framework was developed using data from 75 patients of early amcenestrant phase I–II AMEERA-1-2 dose escalation and expansion cohorts. A semi-mechanistic tumor growth inhibition (TGI) model was developed. It accounts for the dynamics of sensitive and resistant tumor cells, an exposure-driven effect on tumor proliferation of sensitive cells, and a delay in the initiation of treatment effect to describe the time course of target lesion tumor size (TS) data. Individual treatment exposure overtime was introduced in the model using concentrations predicted by a population pharmacokinetic model of amcenestrant. This joint modeling framework integrated complex RECISTv1.1 criteria information, linked TS metrics to progression-free survival (PFS), and was externally evaluated using the randomized phase II trial AMEERA-3. We demonstrated that the instantaneous rate of change in TS (TS slope) was an important predictor of PFS and the developed joint model was able to predict well the PFS of amcenestrant phase II monotherapy trial using only early phase I–II data. This provides a good modeling and simulation tool to inform early development decisions.

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来源期刊
CiteScore
5.00
自引率
11.40%
发文量
146
审稿时长
8 weeks
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