[期刊论文][article]


Quantitative Systems Pharmacology Approaches for Immuno‐Oncology: Adding Virtual Patients to the Development Paradigm

作   者:
Rolf Burghaus;Christian Scheerans;J?rg Lippert;Senthil Kabilan;Irina Kareva;Natalya Belousova;Alex Rolfe;Anup Zutshi;Marylore Chenel;Filippo Venezia;Sylvain Fouliard;Heike Oberwittler;Alix Scholer‐Dahirel;Helene Lelievre;Vijayalakshmi Chelliah;Georgia Lazarou;Sumit Bhatnagar;John P. Gibbs;Marjoleen Nijsen;Avijit Ray;Brian Stoll;R. Adam Thompson;Dean Bottino;Sabrina C. Collins;Hoa Q. Nguyen;Haiqing Wang;Tomoki Yoneyama;Andy Z.X. Zhu;Piet H. Graaf;Andrzej M. Kierzek;Abhishek Gulati;Serguei Soukharev;Akihiro Yamada;Jared Weddell;Hiroyuki Sayama;Masayo Oishi;Sabine Wittemer‐Rump;Chirag Patel;Christoph Niederalt;

出版年:2021

页     码:605 - 618
出版社:John Wiley & Sons, Ltd.


摘   要:

Drug development in oncology commonly exploits the tools of molecular biology to gain therapeutic benefit through reprograming of cellular responses. In immuno‐oncology (IO) the aim is to direct the patient’s own immune system to fight cancer. After remarkable successes of antibodies targeting PD1/PD‐L1 and CTLA4 receptors in targeted patient populations, the focus of further development has shifted toward combination therapies. However, the current drug‐development approach of exploiting a vast number of possible combination targets and dosing regimens has proven to be challenging and is arguably inefficient. In particular, the unprecedented number of clinical trials testing different combinations may no longer be sustainable by the population of available patients. Further development in IO requires a step change in selection and validation of candidate therapies to decrease development attrition rate and limit the number of clinical trials. Quantitative systems pharmacology (QSP) proposes to tackle this challenge through mechanistic modeling and simulation. Compounds’ pharmacokinetics, target binding, and mechanisms of action as well as existing knowledge on the underlying tumor and immune system biology are described by quantitative, dynamic models aiming to predict clinical results for novel combinations. Here, we review the current QSP approaches, the legacy of mathematical models available to quantitative clinical pharmacologists describing interaction between tumor and immune system, and the recent development of IO QSP platform models. We argue that QSP and virtual patients can be integrated as a new tool in existing IO drug development approaches to increase the efficiency and effectiveness of the search for novel combination therapies.



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所属期刊
Clinical Pharmacology And Therapeutics
ISSN: 0009-9236
来自:John Wiley & Sons, Ltd.