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新型抗癌药物致中性粒细胞减少症的半机理模型预测能力:两个案例研究。

Predictive ability of a semi-mechanistic model for neutropenia in the development of novel anti-cancer agents: two case studies.

机构信息

Department of Pharmacy and Pharmaceutical Technology, School of Pharmacy, University of Navarra, Pamplona 31080, Spain.

出版信息

Invest New Drugs. 2011 Oct;29(5):984-95. doi: 10.1007/s10637-010-9437-z. Epub 2010 May 7.

Abstract

In cancer chemotherapy neutropenia is a common dose-limiting toxicity. An ability to predict the neutropenic effects of cytotoxic agents based on proposed trial designs and models conditioned on previous studies would be valuable. The aim of this study was to evaluate the ability of a semi-mechanistic pharmacokinetic/pharmacodynamic (PK/PD) model for myelosuppression to predict the neutropenia observed in Phase I clinical studies, based on parameter estimates obtained from prior trials. Pharmacokinetic and neutropenia data from 5 clinical trials for diflomotecan and from 4 clinical trials for indisulam were used. Data were analyzed and simulations were performed using the population approach with NONMEM VI. Parameter sets were estimated under the following scenarios: (a) data from each trial independently, (b) pooled data from all clinical trials and (c) pooled data from trials performed before the tested trial. Model performance in each of the scenarios was evaluated by means of predictive (visual and numerical) checks. The semi-mechanistic PK/PD model for neutropenia showed adequate predictive ability for both anti-cancer agents. For diflomotecan, similar predictions were obtained for the three scenarios. For indisulam predictions were better when based on data from the specific study, however when the model parameters were conditioned on data from trials performed prior to a specific study, similar predictions of the drug related-neutropenia profiles and descriptors were obtained as when all data were used. This work provides further indication that modeling and simulation tools can be applied in the early stages of drug development to optimize future trials.

摘要

在癌症化疗中,中性粒细胞减少是一种常见的剂量限制性毒性。如果能够根据提出的试验设计和基于先前研究的模型来预测细胞毒性药物的中性粒细胞减少作用,将是非常有价值的。本研究的目的是评估一种基于先前试验的参数估计,用于预测骨髓抑制的半机械性药代动力学/药效学(PK/PD)模型对 I 期临床试验中观察到的中性粒细胞减少的能力。使用了来自 5 项地氟醚临床研究和 4 项因舒拉临床研究的药代动力学和中性粒细胞减少数据。使用 NONMEM VI 中的群体方法进行数据分析和模拟。在以下情况下估计参数集:(a)每个试验的数据独立,(b)所有临床试验的数据汇总,(c)在测试试验之前进行的试验的数据汇总。通过预测性(视觉和数值)检查评估了每种情况下模型的性能。中性粒细胞减少的半机械性 PK/PD 模型对两种抗癌药物均具有良好的预测能力。对于地氟醚,三种情况下的预测结果相似。对于因舒拉,基于特定研究的数据进行预测时,预测结果更好,但是当模型参数根据特定研究之前进行的试验的数据进行调整时,也可以获得与使用所有数据时相似的药物相关中性粒细胞减少谱和描述符的预测。这项工作进一步表明,建模和模拟工具可以在药物开发的早期阶段应用,以优化未来的试验。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c711/3160557/b02e801647da/10637_2010_9437_Fig1_HTML.jpg

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