Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach

In this work, we benefit from hybrid systems that are advantageous because of their analytical and computational usefulness in the case of inferential modeling. In fact, many biological and physiological systems exhibit historical responses such that the system and its responses depend on the whole...

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Main Authors: Nurgül Gökgöz, Hakan Öktem
Format: Article
Language:English
Published: ATNAA 2020-12-01
Series:Advances in the Theory of Nonlinear Analysis and its Applications
Subjects:
Online Access:https://dergipark.org.tr/tr/download/article-file/1214561
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spelling doaj-55b6e684a5bb4543aec74f93de000f362021-01-27T12:03:26ZengATNAAAdvances in the Theory of Nonlinear Analysis and its Applications2587-26482587-26482020-12-01512538https://doi.org/10.31197/atnaa.773390Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear ApproachNurgül GökgözHakan ÖktemIn this work, we benefit from hybrid systems that are advantageous because of their analytical and computational usefulness in the case of inferential modeling. In fact, many biological and physiological systems exhibit historical responses such that the system and its responses depend on the whole history rather than a combination of historical events. In this work, we use and improve hybrid systems with memory (HSM) in the subclass of piecewise linear dierential equations. We also include stochastic calculus to our model to exhibit uncertainties and random perturbations clearly, and we call this model stochastic hybrid systems with memory (SHSM). Finally, we choose tumor-immune system data from the literature and show that the model is capable to model history dependent behavior. https://dergipark.org.tr/tr/download/article-file/1214561hybrid systemsfractional differential equationspattern memorizationmultistationarityregulatory dynamical systems
collection DOAJ
language English
format Article
sources DOAJ
author Nurgül Gökgöz
Hakan Öktem
spellingShingle Nurgül Gökgöz
Hakan Öktem
Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach
Advances in the Theory of Nonlinear Analysis and its Applications
hybrid systems
fractional differential equations
pattern memorization
multistationarity
regulatory dynamical systems
author_facet Nurgül Gökgöz
Hakan Öktem
author_sort Nurgül Gökgöz
title Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach
title_short Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach
title_full Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach
title_fullStr Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach
title_full_unstemmed Modeling of Tumor-Immune System Interaction with Stochastic Hybrid Systems with Memory: A Piecewise Linear Approach
title_sort modeling of tumor-immune system interaction with stochastic hybrid systems with memory: a piecewise linear approach
publisher ATNAA
series Advances in the Theory of Nonlinear Analysis and its Applications
issn 2587-2648
2587-2648
publishDate 2020-12-01
description In this work, we benefit from hybrid systems that are advantageous because of their analytical and computational usefulness in the case of inferential modeling. In fact, many biological and physiological systems exhibit historical responses such that the system and its responses depend on the whole history rather than a combination of historical events. In this work, we use and improve hybrid systems with memory (HSM) in the subclass of piecewise linear dierential equations. We also include stochastic calculus to our model to exhibit uncertainties and random perturbations clearly, and we call this model stochastic hybrid systems with memory (SHSM). Finally, we choose tumor-immune system data from the literature and show that the model is capable to model history dependent behavior.
topic hybrid systems
fractional differential equations
pattern memorization
multistationarity
regulatory dynamical systems
url https://dergipark.org.tr/tr/download/article-file/1214561
work_keys_str_mv AT nurgulgokgoz modelingoftumorimmunesysteminteractionwithstochastichybridsystemswithmemoryapiecewiselinearapproach
AT hakanoktem modelingoftumorimmunesysteminteractionwithstochastichybridsystemswithmemoryapiecewiselinearapproach
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