A tumor is kinetically characterized by the presence of multiple spatio-temporal scales in which its cells interplay with, for instance, endothelial cells or Immune system effectors, exchanging various chemical signals. By its nature, tumor growth is an ideal object of hybrid modeling where discrete sto-chastic processes model low-numbers entities, and mean-field equations model abundant chemical signals. Thus, we follow this approach to model tumor cells, effector cells and Interleukin-2, in order to capture the Immune surveil-lance effect. We here present a hybrid model with a generic delay kernel accounting that, due to many complex phenomena such as chemical transportation and cellular differentiation, the tumor-induced recruitment of effectors exhibits a lag period. This model is a Stochastic Hybrid Automata and its semantics is a Piecewise Deterministic Markov process where a two-dimensional stochastic process is interlinked to a multi-dimensional mean-field system. We instantiate the model with two well-known weak and strong delay kernels and perform simulations by using an algorithm to generate trajectories of this process. Via simulations and parametric sensitivity analysis techniques we (i) relate tumor mass growth with the two kernels, we (ii) measure the strength of the Immune surveillance in terms of probability distribution of the eradication times, and (iii) we prove, in the oscillatory regime, the existence of a stochastic bifurcation resulting in delay-induced tumor eradication.

Caravagna, G., Graudenzi, A., D'Onofrio, A. (2013). Distributed delays in a hybrid model of tumor-Immune system interplay. MATHEMATICAL BIOSCIENCES AND ENGINEERING, 10(1), 37-57 [10.3934/mbe.2013.10.37].

Distributed delays in a hybrid model of tumor-Immune system interplay

CARAVAGNA, GIULIO
;
GRAUDENZI, ALEX
Secondo
;
2013

Abstract

A tumor is kinetically characterized by the presence of multiple spatio-temporal scales in which its cells interplay with, for instance, endothelial cells or Immune system effectors, exchanging various chemical signals. By its nature, tumor growth is an ideal object of hybrid modeling where discrete sto-chastic processes model low-numbers entities, and mean-field equations model abundant chemical signals. Thus, we follow this approach to model tumor cells, effector cells and Interleukin-2, in order to capture the Immune surveil-lance effect. We here present a hybrid model with a generic delay kernel accounting that, due to many complex phenomena such as chemical transportation and cellular differentiation, the tumor-induced recruitment of effectors exhibits a lag period. This model is a Stochastic Hybrid Automata and its semantics is a Piecewise Deterministic Markov process where a two-dimensional stochastic process is interlinked to a multi-dimensional mean-field system. We instantiate the model with two well-known weak and strong delay kernels and perform simulations by using an algorithm to generate trajectories of this process. Via simulations and parametric sensitivity analysis techniques we (i) relate tumor mass growth with the two kernels, we (ii) measure the strength of the Immune surveillance in terms of probability distribution of the eradication times, and (iii) we prove, in the oscillatory regime, the existence of a stochastic bifurcation resulting in delay-induced tumor eradication.
Articolo in rivista - Articolo scientifico
Delay differential equation; Distributed delays; Immune system; Piecewise deterministic Markov process; Stochastic Hybrid Automata; Tumor; Applied Mathematics; Modeling and Simulation; Computational Mathematics; Agricultural and Biological Sciences (all); Medicine (all)
English
2013
10
1
37
57
none
Caravagna, G., Graudenzi, A., D'Onofrio, A. (2013). Distributed delays in a hybrid model of tumor-Immune system interplay. MATHEMATICAL BIOSCIENCES AND ENGINEERING, 10(1), 37-57 [10.3934/mbe.2013.10.37].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/60616
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