A Priori Prediction of Tumor Payload Concentrations: Preclinical Case Study with an Auristatin-Based Anti-5T4 Antibody-Drug Conjugate

被引:42
作者
Shah, Dhaval K. [1 ]
King, Lindsay E. [2 ]
Han, Xiaogang [2 ]
Wentland, Jo-Ann [2 ]
Zhang, Yanhua [2 ]
Lucas, Judy [3 ]
Haddish-Berhane, Nahor [2 ]
Betts, Alison [2 ]
Leal, Mauricio [4 ]
机构
[1] SUNY Buffalo, Sch Pharm & Pharmaceut Sci, Dept Pharmaceut Sci, Buffalo, NY 14214 USA
[2] Pfizer Global Res & Dev, Dept Pharmacokinet Dynam & Metab, Groton, CT 06340 USA
[3] Pfizer Global Res & Dev, Oncol Res Unit, Pearl River, NY 10965 USA
[4] Pfizer Global Res & Dev, Dept Pharmacokinet Dynam & Metab, Pearl River, NY 10965 USA
关键词
antibody-drug conjugate; pharmacokinetic modeling; preclinical-to-clinical translation; sensitivity analysis; tumor drug disposition; MODEL; PENETRATION; CELLS; 5T4;
D O I
10.1208/s12248-014-9576-9
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
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.
引用
收藏
页码:452 / 463
页数:12
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