免疫系统
免疫疗法
计算生物学
癌症免疫疗法
免疫检查点
医学
药物开发
人口
CTLA-4号机组
PD-L1
临床试验
免疫学
T细胞
生物
药品
药理学
内科学
环境卫生
作者
Molly A. Taylor,Adina Hughes,Josephine Walton,Anna Coenen-Stass,Łukasz Magiera,Lorraine Mooney,Sigourney Bell,Anna D. Staniszewska,Linda C. Sandin,Simon T. Barry,Amanda Watkins,Larissa S. Carnevalli,Elizabeth Hardaker
标识
DOI:10.1186/s40425-019-0794-7
摘要
The ability to modulate immune-inhibitory pathways using checkpoint blockade antibodies such as αPD-1, αPD-L1, and αCTLA-4 represents a significant breakthrough in cancer therapy in recent years. This has driven interest in identifying small-molecule-immunotherapy combinations to increase the proportion of responses. Murine syngeneic models, which have a functional immune system, represent an essential tool for pre-clinical evaluation of new immunotherapies. However, immune response varies widely between models and the translational relevance of each model is not fully understood, making selection of an appropriate pre-clinical model for drug target validation challenging.Using flow cytometry, O-link protein analysis, RT-PCR, and RNAseq we have characterized kinetic changes in immune-cell populations over the course of tumor development in commonly used syngeneic models.This longitudinal profiling of syngeneic models enables pharmacodynamic time point selection within each model, dependent on the immune population of interest. Additionally, we have characterized the changes in immune populations in each of these models after treatment with the combination of α-PD-L1 and α-CTLA-4 antibodies, enabling benchmarking to known immune modulating treatments within each model.Taken together, this dataset will provide a framework for characterization and enable the selection of the optimal models for immunotherapy combinations and generate potential biomarkers for clinical evaluation in identifying responders and non-responders to immunotherapy combinations.
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