TY - JOUR
T1 - In silico simulation of a clinical trial with anti-CTLA-4 and anti-PD-L1 immunotherapies in metastatic breast cancer using a systems pharmacology model
AU - Wang, Hanwen
AU - Milberg, Oleg
AU - Bartelink, Imke H.
AU - Vicini, Paolo
AU - Wang, Bing
AU - Narwal, Rajesh
AU - Roskos, Lorin
AU - Santa-Maria, Cesar A.
AU - Popel, Aleksander S.
N1 - Funding Information:
Data accessibility. The authors confirm that the data supporting the findings of this study are available within the article and its electronic supplementary material. Authors’ contributions. A.S.P. designed and supervised the project, revised the manuscript critically. O.M. built the model structure. H.W. modified the model, performed all simulations, analysed the simulation data and prepared a draft of the manuscript. I.H.B., P.V., B.W., R.N. and L.R. revised the manuscript critically. C.A.S.-M. provided clinical data, revised the manuscript critically. All authors have read and approved the final manuscript. Competing interests. C.A.S.-M. receives research support from Pfizer and MedImmune and serves on the advisory board for Polyphor. I.H.B., P.V., B.W., R.N. and L.R. were employees of MedImmune. A.S.P. receives research support from MedImmune. Other authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest. Funding. Supported by NIH grant R01CA138264 (A.S.P.) and a grant from MedImmune (A.S.P.).
Publisher Copyright:
© 2019 The Authors.
PY - 2019/5/1
Y1 - 2019/5/1
N2 - The low response rate of immune checkpoint blockade in breast cancer has highlighted the need for predictive biomarkers to identify responders. While a number of clinical trials are ongoing, testing all possible combinations is not feasible. In this study, a quantitative systems pharmacology model is built to integrate immune-cancer cell interactions in patients with breast cancer, including central, peripheral, tumour-draining lymph node (TDLN) and tumour compartments. The model can describe the immune suppression and evasion in both TDLN and the tumour microenvironment due to checkpoint expression, and mimic the tumour response to checkpoint blockade therapy. We investigate the relationship between the tumour response to checkpoint blockade therapy and composite tumour burden, PD-L1 expression and antigen intensity, including their individual and combined effects on the immune system, using model-based simulations. The proposed model demonstrates the potential to make predictions of tumour response of individual patients given sufficient clinical measurements, and provides a platform that can be further adapted to other types of immunotherapy and their combination with molecular-targeted therapies. The patient predictions demonstrate how this systems pharmacology model can be used to individualize immunotherapy treatments. When appropriately validated, these approaches may contribute to optimization of breast cancer treatment.
AB - The low response rate of immune checkpoint blockade in breast cancer has highlighted the need for predictive biomarkers to identify responders. While a number of clinical trials are ongoing, testing all possible combinations is not feasible. In this study, a quantitative systems pharmacology model is built to integrate immune-cancer cell interactions in patients with breast cancer, including central, peripheral, tumour-draining lymph node (TDLN) and tumour compartments. The model can describe the immune suppression and evasion in both TDLN and the tumour microenvironment due to checkpoint expression, and mimic the tumour response to checkpoint blockade therapy. We investigate the relationship between the tumour response to checkpoint blockade therapy and composite tumour burden, PD-L1 expression and antigen intensity, including their individual and combined effects on the immune system, using model-based simulations. The proposed model demonstrates the potential to make predictions of tumour response of individual patients given sufficient clinical measurements, and provides a platform that can be further adapted to other types of immunotherapy and their combination with molecular-targeted therapies. The patient predictions demonstrate how this systems pharmacology model can be used to individualize immunotherapy treatments. When appropriately validated, these approaches may contribute to optimization of breast cancer treatment.
KW - Computational biology
KW - Computational model
KW - Immune checkpoint inhibitor
KW - Immuno-oncology
KW - Systems biology
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U2 - 10.1098/rsos.190366
DO - 10.1098/rsos.190366
M3 - Article
C2 - 31218069
AN - SCOPUS:85066960998
SN - 2054-5703
VL - 6
JO - Royal Society Open Science
JF - Royal Society Open Science
IS - 5
M1 - 190366
ER -