25 research outputs found
Classification of current anticancer immunotherapies
During the past decades, anticancer immunotherapy has evolved from a promising
therapeutic option to a robust clinical reality. Many immunotherapeutic regimens are
now approved by the US Food and Drug Administration and the European Medicines
Agency for use in cancer patients, and many others are being investigated as standalone
therapeutic interventions or combined with conventional treatments in clinical
studies. Immunotherapies may be subdivided into âpassiveâ and âactiveâ based on
their ability to engage the host immune system against cancer. Since the anticancer
activity of most passive immunotherapeutics (including tumor-targeting monoclonal
antibodies) also relies on the host immune system, this classification does not properly
reflect the complexity of the drug-host-tumor interaction. Alternatively, anticancer
immunotherapeutics can be classified according to their antigen specificity. While some
immunotherapies specifically target one (or a few) defined tumor-associated antigen(s),
others operate in a relatively non-specific manner and boost natural or therapy-elicited
anticancer immune responses of unknown and often broad specificity. Here, we propose
a critical, integrated classification of anticancer immunotherapies and discuss the clinical
relevance of these approaches
A cellular automata model to investigate immune cell-tumor cell interactions in growing tumors in two spatial dimensions
We develop a hybrid cellular automata model to describe the effect of the immune system and chemokines on a growing tumor. The hybrid cellular automata model consists of partial differential equations to model chemokine concentrations, and discrete cellular automata to model cellâcell interactions and changes. The computational implementation overlays these two components on the same spatial region. We present representative simulations of the model and show that increasing the number of immature dendritic cells (DCs) in the domain causes a decrease in the number of tumor cells. This result strongly supports the hypothesis that DCs can be used as a cancer treatment. Furthermore, we also use the hybrid cellular automata model to investigate the growth of a tumor in a number of computational âcancer patients.â Using these virtual patients, the model can explain that increasing the number of DCs in the domain causes longer âsurvival.â Not surprisingly, the model also reflects the fact that the parameter related to tumor division rate plays an important role in tumor metastasis