Zhu Andy Zx
Department of Drug Metabolism & Pharmacokinetics, Takeda Pharmaceuticals International Co., 35 Lansdowne Street, Cambridge, MA 02139, USA.
Future Sci OA. 2018 Apr 23;4(5):FSO306. doi: 10.4155/fsoa-2017-0152. eCollection 2018 Jun.
Significant scientific advances in biomedical research have expanded our knowledge of the molecular basis of carcinogenesis, mechanisms of cancer growth, and the importance of the cancer immunity cycle. However, despite scientific advances in the understanding of cancer biology, the success rate of oncology drug development remains the lowest among all therapeutic areas. In this review, some of the key translational drug development objectives in oncology will be outlined. The literature evidence of how mathematical modeling could be used to build a unifying framework to answer these questions will be summarized with recommendations on the strategies for building such a mathematical framework to facilitate the prediction of clinical efficacy and toxicity of investigational antineoplastic agents. Together, the literature evidence suggests that a rigorous and unifying preclinical to clinical translational framework based on mathematical models is extremely valuable for making go/no-go decisions in preclinical development, and for planning early clinical studies.
生物医学研究的重大科学进展扩展了我们对致癌作用的分子基础、癌症生长机制以及癌症免疫循环重要性的认识。然而,尽管在癌症生物学理解方面取得了科学进展,但肿瘤学药物开发的成功率在所有治疗领域中仍然是最低的。在本综述中,将概述肿瘤学中一些关键的转化药物开发目标。将总结数学建模如何用于构建统一框架以回答这些问题的文献证据,并就构建此类数学框架以促进预测研究性抗肿瘤药物临床疗效和毒性的策略提出建议。综合来看,文献证据表明,基于数学模型的严格且统一的临床前到临床转化框架对于在临床前开发中做出继续/终止决策以及规划早期临床研究极具价值。