2017
DOI: 10.1177/0037549717699072
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An agent-based model of avascular tumor growth: Immune response tendency to prevent cancer development

Abstract: Mathematical and computational models are of great help to study and predict phenomena associated with cancer growth and development. These models may lead to introduce new therapies or improve current treatments by discovering facts that may not be easily discovered in clinical experiments. Here, a new two-dimensional (2D) stochastic agent-based model is presented for the spatiotemporal study of avascular tumor growth based on the effect of the immune system. The simple decision-making rules of updating the s… Show more

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Cited by 29 publications
(28 citation statements)
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References 41 publications
(69 reference statements)
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“…These models capture system scale behavior in cancer patients and are capable of population level predictions of disease trajectories in response to intervention. On tissuecellular scale, ABMs have been employed and used for spatially explicit simulations to investigate emergent behavior arising from interactions between cancer and immune cells, such as spatial and spatio-temporal variations in tumor morphology and immuno-architecture (Kim et al, 2009;Shi et al, 2014;Wells et al, 2015;Gong et al, 2017;Norton et al, 2017Norton et al, , 2019Pourhasanzade et al, 2017;Hoehme et al, 2018;Ji et al, 2019). When combining QSP models with ABM, cancer models can be further enhanced by taking advantage of both model types: while the QSP module captures whole-body temporal dynamics including lymph nodes, blood, peripheral compartment, and tumor, ABM simulation accounts for crucial aspects of highgranularity features such as cancer cell clonal evolution and TME heterogeneity.…”
Section: Discussionmentioning
confidence: 99%
“…These models capture system scale behavior in cancer patients and are capable of population level predictions of disease trajectories in response to intervention. On tissuecellular scale, ABMs have been employed and used for spatially explicit simulations to investigate emergent behavior arising from interactions between cancer and immune cells, such as spatial and spatio-temporal variations in tumor morphology and immuno-architecture (Kim et al, 2009;Shi et al, 2014;Wells et al, 2015;Gong et al, 2017;Norton et al, 2017Norton et al, , 2019Pourhasanzade et al, 2017;Hoehme et al, 2018;Ji et al, 2019). When combining QSP models with ABM, cancer models can be further enhanced by taking advantage of both model types: while the QSP module captures whole-body temporal dynamics including lymph nodes, blood, peripheral compartment, and tumor, ABM simulation accounts for crucial aspects of highgranularity features such as cancer cell clonal evolution and TME heterogeneity.…”
Section: Discussionmentioning
confidence: 99%
“…Furthermore, they are increasingly used to optimize therapies, for example radiation therapy of solid tumors (18). Also, some models of immune-cell interactions with (19)(20)(21)(22)(23)(24) or without tumor cells (25) have been proposed. Although these studies gave important insight into parts of the tumor-immune interaction, they did not accurately reproduce the diverse spatial patterns in human tumors and did not investigate therapeutic strategies.…”
Section: Introductionmentioning
confidence: 99%
“…A 2D agent-based model was used to study the interactions between an avascular tumor and immune cells (NK cells and cytotoxic T-cells) [137]. They examined the effects of cancer cell proliferation on overall tumor growth under two conditions: the first, where cancer cells do not consider the microenvironment when deciding when to proliferate, and the second, where they proliferate based on the number of healthy cells surrounding them.…”
Section: Models Focusing On Intra-tumor Heterogeneitymentioning
confidence: 99%