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抗癌药物的转化系统药效动力学模型数组。

Array of translational systems pharmacodynamic models of anti-cancer drugs.

机构信息

Center for Pharmacometrics and Systems Pharmacology, Department of Pharmaceutics, College of Pharmacy, University of Florida, 6550 Sanger Road, Room 469, Orlando, FL, 32827, USA.

Department of Pharmaceutical Sciences, State University of New York at Buffalo, Buffalo, NY, 14214, USA.

出版信息

J Pharmacokinet Pharmacodyn. 2016 Dec;43(6):549-565. doi: 10.1007/s10928-016-9497-6. Epub 2016 Oct 22.

Abstract

Cancer is a complex disease that is characterized by an uncontrolled growth and spread of abnormal cells. Drug development in oncology is particularly challenging and is associated with one of the highest attrition rates of compounds despite substantial investments in resources. Pharmacokinetic and pharmacodynamic (PK/PD) modeling seeks to couple experimental data with mathematical models to provide key insights into factors controlling cytotoxic effects of chemotherapeutics and cancer progression. PK/PD modeling of anti-cancer compounds is equally challenging, partly based on the complexity of biological and pharmacological systems. However, reliable mechanistic and systems PK/PD models for anti-cancer agents have been developed and successfully applied to: (1) provide insights into fundamental mechanisms implicated in tumor growth, (2) assist in dose selection for first-in-human phase I studies (e.g., effective dose, escalating doses, and maximal tolerated doses), (3) design and optimize combination drug regimens, (4) design clinical trials, and (5) establish links between drug efficacy and safety and the concentrations of measured biomarkers. In this commentary, classes of relevant mechanism-based and systems PK/PD models of anti-cancer agents that have shown promise in translating preclinical data and enhancing stages of the drug development process are reviewed. Specific features of such models are discussed including their strengths and limitations along with a prospectus of using these models alone or in combination for cancer therapy.

摘要

癌症是一种复杂的疾病,其特征是异常细胞的不受控制的生长和扩散。肿瘤学中的药物开发特别具有挑战性,并且尽管在资源上投入了大量资金,但与化合物的最高损耗率之一相关联。药代动力学和药效学(PK/PD)建模旨在将实验数据与数学模型相结合,为控制细胞毒性作用和癌症进展的因素提供关键见解。抗癌化合物的 PK/PD 建模同样具有挑战性,部分原因是生物和药理学系统的复杂性。然而,已经开发出可靠的抗癌药物的机制和系统 PK/PD 模型,并成功应用于:(1)深入了解与肿瘤生长有关的基本机制,(2)辅助选择用于人体首次 I 期研究的剂量(例如,有效剂量,递增剂量和最大耐受剂量),(3)设计和优化联合药物方案,(4)设计临床试验以及(5)建立药物疗效和安全性与测量生物标志物浓度之间的联系。在这篇评论中,回顾了在将临床前数据转化并增强药物开发过程各个阶段方面显示出前景的抗癌药物的相关机制和系统 PK/PD 模型。讨论了这些模型的具体特征,包括它们的优缺点,以及单独或组合使用这些模型进行癌症治疗的前景。

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