| Literature DB >> 31134058 |
Kirill Peskov1,2, Ivan Azarov1, Lulu Chu3, Veronika Voronova1, Yuri Kosinsky1, Gabriel Helmlinger3.
Abstract
Following the approval, in recent years, of the first immune checkpoint inhibitor, there has been an explosion in the development of immuno-modulating pharmacological modalities for the treatment of various cancers. From the discovery phase to late-stage clinical testing and regulatory approval, challenges in the development of immuno-oncology (IO) drugs are multi-fold and complex. In the preclinical setting, the multiplicity of potential drug targets around immune checkpoints, the growing list of immuno-modulatory molecular and cellular forces in the tumor microenvironment-with additional opportunities for IO drug targets, the emergence of exploratory biomarkers, and the unleashed potential of modality combinations all have necessitated the development of quantitative, mechanistically-oriented systems models which incorporate key biology and patho-physiology aspects of immuno-oncology and the pharmacokinetics of IO-modulating agents. In the clinical setting, the qualification of surrogate biomarkers predictive of IO treatment efficacy or outcome, and the corresponding optimization of IO trial design have become major challenges. This mini-review focuses on the evolution and state-of-the-art of quantitative systems models describing the tumor vs. immune system interplay, and their merging with quantitative pharmacology models of IO-modulating agents, as companion tools to support the addressing of these challenges.Entities:
Keywords: immuno-oncology; mechanistic models; molecular and cellular biomarkers; pharmacodynamics; pharmacokinetics; systems pharmacology; tumor vs. immune system
Year: 2019 PMID: 31134058 PMCID: PMC6524731 DOI: 10.3389/fimmu.2019.00924
Source DB: PubMed Journal: Front Immunol ISSN: 1664-3224 Impact factor: 7.561
Figure 1Evaluation of mathematical models which describe tumor vs. immune system interactions. “One-ODE” approach, simplistic description of tumor growth kinetics; “Two-ODE” approach, a typical “Predator-Prey” model, incorporating a basic description of tumor vs. immune system interactions; “Three-ODE” approach, incorporating additional immuno-modulating factor(s); “Four-ODE” approach, including considerations for immuno-suppression; mechanistic multi-compartmental model, taking into account essential biological principles underlying the IO cycle concept (21); TV, tumor volume; CTL, cytotoxic T lymphocytes; IMF, immuno-modulating factor; ISF, immuno-suppressive factor; mDC, level of mature dendritic cells; nTeff, non-differentiated T effectors cells; dTeff, differentiated T effectors cells; Treg, regulatory T cells; PD-L1, level of PD-L1 expression; Agsys, level of systemic antigen; IAR, immuno-activation rate function; green line, positive regulation, red line negative, regulation; back line, variable turnover.
Mechanistic models in support of IO therapy development.
| Cergutuzumab amunaleukin (CEA mAb-IL2v fusion protein) PK/PD described using a population NLME modeling approach | Model was used to identify optimal dosing regimen and support design of the clinical dose escalation study | Since mechanisms of tumor vs. immune system interactions have not been considered, the model cannot be generalized to other MoAs nor their combinations | ( |
| Pembrolisumab (αPD-1 mAb) PK/PD described using a population NLME modeling approach | Model was used to estimate MABEL dose and was applied, accordingly, for FIH dose selection | 1. Since mechanisms of tumor vs. immune system interactions have not been considered, the model cannot be generalized to other MoAs nor their combinations | ( |
| DART against CD3 and P-cadherin PK/PD was described using a simple ODE modeling framework | 1. Model was used to estimate MABEL dose and was applied, accordingly, for FIH dose selection | 1. Since mechanisms of tumor vs. immune system interactions have not been considered, the model cannot be generalized to other MoAs nor their combinations | ( |
| Multiple MoAs including vaccination (CyaA-E7), TLR9 agonist (CpG), chemotherapy (cyclophosphamide), and IL-12 administration were incorporated using a NLME modeling approach | Model was applied for a better understanding of synergistic effects in combination treatment | 1. Due to the simple description of tumor vs. immune system interactions, the model cannot be generalized to other MoAs | ( |
| Multiple MoAs including αPD-1 and αPD-L1, αCTLA4 mAb, OX40 agonists, CXCR2 inhibitors, and RT were incorporated using a population NLME modeling approach | 1. Model was applied for a better understanding of synergistic effects in combination treatment and identification of predictive biomarkers | 1. Model is based on preclinical data only | ( |
| RT and αCTLA4 mAb were described using a simple ODE modeling framework | Model was applied to guide optimal combination treatment doses and schedules | 1. Due to the simple description of tumor vs. immune system interactions, pharmacological interventions and limited validation with experimental data, the model cannot be generalized to other MoAs nor used for clinically relevant simulations | ( |
| Mechanistic physiologically-based description of clinically-relevant immune cell fluxes and RT | 1. Model was applied for a better understanding of ICD systemic effects | 1. Limited validation with clinical data was performed during model development stage | ( |
| Multiple MoAs including αPD-L1, BRAF and MEK inhibitors and vaccination (GVAX) were incorporated using a simple PDE modeling framework, to account for spatial immune species distribution within the tumor compartment | Model was applied for a better understanding of synergistic effects | 1. Due to the simple description of tumor vs. immune system interactions, pharmacological interventions and limited validation with experimental data, the model cannot be generalized to other MoAs nor used for clinically relevant simulations | ( |
| Multiple MoAs including vaccination (UV-8101-RE), IL-2 neutralization, Treg cell depletion, androgen deprivation therapy and castration were incorporated using a simple ODE modeling framework | Model was applied to guide optimal combination treatment schemes | 1. Due to the simple description of tumor vs. immune system interactions, pharmacological interventions and limited validation with experimental data, the model cannot be generalized to other MoAs nor used for clinically relevant simulations; | ( |
| Alloreactive cytotoxic-T-lymphocytes transfer was described using a simple ODE modeling framework | Model was applied for the identification of predictive biomarkers | 1. Model does not take into account variability | ( |
| IL-21 administration was described using a simple ODE modeling framework | Model was applied for a better MoA understanding and the identification of predictive biomarkers | 1. Model is based on preclinical data only and does not take into account variability | ( |
| Prostate cancer vaccination effects were described using a simple ODE modeling framework | Model was applied for an evaluation of personalized treatment strategies | 1. Limited validation with clinical data was performed | ( |
| Multiple MoAs including αPD-L1 mAb, BTK inhibitor (ibrutinib), and vaccination were incorporated using a simple ODE modeling framework | Model was applied for guiding optimal combination treatment schemes | 1. Due to the simple description of tumor vs. immune system interactions, pharmacological interventions and limited validation with experimental data model cannot be generalized to other MoAs nor used for clinically relevant simulations; | ( |
| αPD-L1 mAb clinical effects were described using a 3D ABM framework | Model was applied for an evaluation of personalized treatment strategies | 1. Limited validation with clinical was performed | ( |
| Generalized effects of adaptive immunity stimulation and stromal cell depletion were described using a 2D and 3D ABM framework | Model was applied for guiding optimal combination treatment schemes | 1. Generic representation of treatment effects | ( |
MoA, Mechanism of action; CEA, carcinoembryonic antigen; mAb, monoclonal antibody; NLME, nonlinear mixed effects; IO, immuno-oncology; PK, pharmacokinetics; PD, pharmacodynamics; MABEL, minimally anticipated biological effect level; FIH, first-in-human; RT, radiotherapy; ICD, immunologic cell death; ODE, ordinary differential equations; PDE, partial differential equation; ABM, agent-based modeling.