Department of Pharmaceutical Sciences, School of Pharmacy and Pharmaceutical Sciences, The State University of New York at Buffalo, 455 Kapoor Hall, Buffalo, New York, 14214, USA,
AAPS J. 2014 May;16(3):452-63. doi: 10.1208/s12248-014-9576-9. Epub 2014 Mar 1.
The objectives of this investigation were as follows: (a) to validate a mechanism-based pharmacokinetic (PK) model of ADC for its ability to a priori predict tumor concentrations of ADC and released payload, using anti-5T4 ADC A1mcMMAF, and (b) to analyze the PK model to find out main pathways and parameters model outputs are most sensitive to. Experiential data containing biomeasures, and plasma and tumor concentrations of ADC and payload, following A1mcMMAF administration in two different xenografts, were used to build and validate the model. The model performed reasonably well in terms of a priori predicting tumor exposure of total antibody, ADC, and released payload, and the exposure of released payload in plasma. Model predictions were within two fold of the observed exposures. Pathway analysis and local sensitivity analysis were conducted to investigate main pathways and set of parameters the model outputs are most sensitive to. It was discovered that payload dissociation from ADC and tumor size were important determinants of plasma and tumor payload exposure. It was also found that the sensitivity of the model output to certain parameters is dose-dependent, suggesting caution before generalizing the results from the sensitivity analysis. Model analysis also revealed the importance of understanding and quantifying the processes responsible for ADC and payload disposition within tumor cell, as tumor concentrations were sensitive to these parameters. Proposed ADC PK model provides a useful tool for a priori predicting tumor payload concentrations of novel ADCs preclinically, and possibly translating them to the clinic.
(a) 验证一种基于机制的 ADC 药代动力学 (PK) 模型,该模型能够预测 ADC 和释放的有效载荷在肿瘤中的浓度,使用抗 5T4 ADC A1mcMMAF;(b) 分析 PK 模型,找出模型输出对主要途径和参数最敏感的部分。使用两种不同异种移植物中 A1mcMMAF 给药后的生物标志物、血浆和肿瘤中 ADC 和有效载荷的经验数据来构建和验证模型。该模型在预测总抗体、ADC 和释放的有效载荷以及血浆中释放的有效载荷的暴露方面表现相当出色,模型预测值与观察到的暴露值相差不超过两倍。进行了途径分析和局部敏感性分析,以研究模型输出最敏感的主要途径和参数集。结果发现,有效载荷从 ADC 上的解离以及肿瘤大小是影响血浆和肿瘤中有效载荷暴露的重要决定因素。还发现,模型输出对某些参数的敏感性是剂量依赖性的,这表明在从敏感性分析中推广结果之前需要谨慎。模型分析还揭示了理解和量化负责 ADC 和有效载荷在肿瘤细胞内处置过程的重要性,因为肿瘤浓度对这些参数很敏感。所提出的 ADC PK 模型为在临床前预测新型 ADC 的肿瘤有效载荷浓度提供了有用的工具,并可能将其转化为临床应用。