Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer

Abstract Background Personalized medicine for patients receiving radiation therapy remains an elusive goal due, in part, to the limits in our understanding of the underlying mechanisms governing tumor response to radiation. The purpose of this study was to develop a kinetic model, in the context of...

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Main Authors: Hualiang Zhong, Stephen Brown, Suneetha Devpura, X. Allen Li, Indrin J. Chetty
Format: Article
Language:English
Published: BMC 2018-12-01
Series:Theoretical Biology and Medical Modelling
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12976-018-0096-7
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spelling doaj-df7acfe58fa341ab937ddc7471ddff692020-11-25T00:26:40ZengBMCTheoretical Biology and Medical Modelling1742-46822018-12-0115111010.1186/s12976-018-0096-7Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancerHualiang Zhong0Stephen Brown1Suneetha Devpura2X. Allen Li3Indrin J. Chetty4Department of Radiation Oncology, Medical College of WisconsinDepartment of Radiation Oncology, Henry Ford Health SystemDepartment of Radiation Oncology, Henry Ford Health SystemDepartment of Radiation Oncology, Medical College of WisconsinDepartment of Radiation Oncology, Henry Ford Health SystemAbstract Background Personalized medicine for patients receiving radiation therapy remains an elusive goal due, in part, to the limits in our understanding of the underlying mechanisms governing tumor response to radiation. The purpose of this study was to develop a kinetic model, in the context of locally advanced lung cancer, connecting cancer cell subpopulations with tumor volumes measured during the course of radiation treatment for understanding treatment outcome for individual patients. Methods The kinetic model consists of three cell compartments: cancer stem-like cells (CSCs), non-stem tumor cells (TCs) and dead cells (DCs). A set of ordinary differential equations were developed to describe the time evolution of each compartment, and the analytic solution of these equations was iterated to be aligned with the day-to-day tumor volume changes during the course of radiation treatment. A least squares fitting method was used to estimate the parameters of the model that include the proportion of CSCs and their radio-sensitivities. This model was applied to five patients with stage III lung cancer, and tumor volumes were measured from 33 cone-beam computed tomography (CBCT) images for each of these patients. The analytical solution of these differential equations was compared with numerically simulated results. Results For the five patients with late stage lung cancer, the derived proportions of CSCs are 0.3 on average, the average probability of the symmetry division is 0.057 and the average surviving fractions of CSCs is 0.967, respectively. The derived parameters are comparable to the results from literature and our experiments. The preliminary results suggest that the CSC self-renewal rate is relatively small, compared to the proportion of CSCs for locally advanced lung cancers. Conclusions A novel mathematical model has been developed to connect the population of cancer stem-like cells with tumor volumes measured from a sequence of CBCT images. This model may help improve our understanding of tumor response to radiation therapy, and is valuable for development of new treatment regimens for patients with locally advanced lung cancer.http://link.springer.com/article/10.1186/s12976-018-0096-7Kinetic modelTumor regressionRadiation therapyCancer stem-like cellsLung cancer
collection DOAJ
language English
format Article
sources DOAJ
author Hualiang Zhong
Stephen Brown
Suneetha Devpura
X. Allen Li
Indrin J. Chetty
spellingShingle Hualiang Zhong
Stephen Brown
Suneetha Devpura
X. Allen Li
Indrin J. Chetty
Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
Theoretical Biology and Medical Modelling
Kinetic model
Tumor regression
Radiation therapy
Cancer stem-like cells
Lung cancer
author_facet Hualiang Zhong
Stephen Brown
Suneetha Devpura
X. Allen Li
Indrin J. Chetty
author_sort Hualiang Zhong
title Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
title_short Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
title_full Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
title_fullStr Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
title_full_unstemmed Kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
title_sort kinetic modeling of tumor regression incorporating the concept of cancer stem-like cells for patients with locally advanced lung cancer
publisher BMC
series Theoretical Biology and Medical Modelling
issn 1742-4682
publishDate 2018-12-01
description Abstract Background Personalized medicine for patients receiving radiation therapy remains an elusive goal due, in part, to the limits in our understanding of the underlying mechanisms governing tumor response to radiation. The purpose of this study was to develop a kinetic model, in the context of locally advanced lung cancer, connecting cancer cell subpopulations with tumor volumes measured during the course of radiation treatment for understanding treatment outcome for individual patients. Methods The kinetic model consists of three cell compartments: cancer stem-like cells (CSCs), non-stem tumor cells (TCs) and dead cells (DCs). A set of ordinary differential equations were developed to describe the time evolution of each compartment, and the analytic solution of these equations was iterated to be aligned with the day-to-day tumor volume changes during the course of radiation treatment. A least squares fitting method was used to estimate the parameters of the model that include the proportion of CSCs and their radio-sensitivities. This model was applied to five patients with stage III lung cancer, and tumor volumes were measured from 33 cone-beam computed tomography (CBCT) images for each of these patients. The analytical solution of these differential equations was compared with numerically simulated results. Results For the five patients with late stage lung cancer, the derived proportions of CSCs are 0.3 on average, the average probability of the symmetry division is 0.057 and the average surviving fractions of CSCs is 0.967, respectively. The derived parameters are comparable to the results from literature and our experiments. The preliminary results suggest that the CSC self-renewal rate is relatively small, compared to the proportion of CSCs for locally advanced lung cancers. Conclusions A novel mathematical model has been developed to connect the population of cancer stem-like cells with tumor volumes measured from a sequence of CBCT images. This model may help improve our understanding of tumor response to radiation therapy, and is valuable for development of new treatment regimens for patients with locally advanced lung cancer.
topic Kinetic model
Tumor regression
Radiation therapy
Cancer stem-like cells
Lung cancer
url http://link.springer.com/article/10.1186/s12976-018-0096-7
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