A Computational Model of Neoadjuvant PD-1 Inhibition in Non-Small Cell Lung Cancer

被引:0
作者
Mohammad Jafarnejad
Chang Gong
Edward Gabrielson
Imke H. Bartelink
Paolo Vicini
Bing Wang
Rajesh Narwal
Lorin Roskos
Aleksander S. Popel
机构
[1] Johns Hopkins University School of Medicine,Department of Biomedical Engineering
[2] Johns Hopkins University School of Medicine,The Sidney Kimmel Comprehensive Cancer Center
[3] Johns Hopkins University School of Medicine,Department of Pathology
[4] Clinical Pharmacology,Department of Clinical Pharmacology and Pharmacy, Amsterdam UMC
[5] Pharmacometrics and DMPK (CPD),undefined
[6] MedImmune,undefined
[7] Vrije Universiteit Amsterdam,undefined
[8] Clinical Pharmacology,undefined
[9] Pharmacometrics and DMPK,undefined
[10] MedImmune,undefined
[11] Amador Bioscience Inc.,undefined
[12] MedImmune,undefined
来源
The AAPS Journal | / 21卷
关键词
immune checkpoint inhibitors; immuno-oncology; immunotherapy; non-small cell lung cancer; quantitative systems pharmacology;
D O I
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学科分类号
摘要
Immunotherapy and immune checkpoint blocking antibodies such as anti-PD-1 are approved and significantly improve the survival of advanced non-small cell lung cancer (NSCLC) patients, but there has been little success in identifying biomarkers capable of separating the responders from non-responders before the onset of the therapy. In this study, we developed a quantitative system pharmacology (QSP) model to represent the anti-tumor immune response in human NSCLC that integrated our knowledge of tumor growth, antigen processing and presentation, T cell activation and distribution, antibody pharmacokinetics, and immune checkpoint dynamics. The model was calibrated with the available data and was used to identify potential biomarkers as well as patient-specific response based on the patient parameters. The model predicted that in addition to tumor mutational burden (TMB), a known biomarker for anti-PD-1 therapy in NSCLC, the number of effector T cells and regulatory T cells in the tumor and blood is a predictor of the responders. Furthermore, the model simulated a set of 12 patients with known TMB and MHC/antigen-binding affinity from a recent clinical trial (ClinicalTrials.gov number, NCT02259621) on neoadjuvant nivolumab therapy in resectable lung cancer and predicted an augmented durable response in patients with adjuvant nivolumab treatment in addition to the clinical trial protocol of neoadjuvant nivolumab treatment followed by resection. Overall, the model provides a valuable framework to model tumor immunity and response to immune checkpoint blockers to enhance biomarker discovery and performing virtual clinical trials to aid in design and interpretation of the current trials with fewer patients.
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