Multiscale computational modeling of cancer growth using features derived from microCT images

Abstract Advances in medical imaging technologies now allow noninvasive image acquisition from individual patients at high spatiotemporal resolutions. A relatively new effort of predictive oncology is to develop a paradigm for forecasting the future status of an individual tumor given initial condit...

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Main Authors: M. Hossein Zangooei, Ryan Margolis, Kenneth Hoyt
Format: Article
Language:English
Published: Nature Publishing Group 2021-09-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-97966-1
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spelling doaj-3a4dc29bfb714af780e801bffd73c8b62021-09-19T11:29:39ZengNature Publishing GroupScientific Reports2045-23222021-09-0111111710.1038/s41598-021-97966-1Multiscale computational modeling of cancer growth using features derived from microCT imagesM. Hossein Zangooei0Ryan Margolis1Kenneth Hoyt2Department of Bioengineering, University of Texas at DallasDepartment of Bioengineering, University of Texas at DallasDepartment of Bioengineering, University of Texas at DallasAbstract Advances in medical imaging technologies now allow noninvasive image acquisition from individual patients at high spatiotemporal resolutions. A relatively new effort of predictive oncology is to develop a paradigm for forecasting the future status of an individual tumor given initial conditions and an appropriate mathematical model. The objective of this study was to introduce a comprehensive multiscale computational method to predict cancer and microvascular network growth patterns. A rectangular lattice-based model was designed so different evolutionary scenarios could be simulated and for predicting the impact of diffusible factors on tumor morphology and size. Further, the model allows prediction-based simulation of cell and microvascular behavior. Like a single cell, each agent is fully realized within the model and interactions are governed in part by machine learning methods. This multiscale computational model was developed and incorporated input information from in vivo microscale computed tomography (microCT) images acquired from breast cancer-bearing mice. It was found that as the difference between expansion of the cancer cell population and microvascular network increases, cells undergo proliferation and migration with a greater probability compared to other phenotypes. Overall, multiscale computational model agreed with both theoretical expectations and experimental findings (microCT images) not used during model training.https://doi.org/10.1038/s41598-021-97966-1
collection DOAJ
language English
format Article
sources DOAJ
author M. Hossein Zangooei
Ryan Margolis
Kenneth Hoyt
spellingShingle M. Hossein Zangooei
Ryan Margolis
Kenneth Hoyt
Multiscale computational modeling of cancer growth using features derived from microCT images
Scientific Reports
author_facet M. Hossein Zangooei
Ryan Margolis
Kenneth Hoyt
author_sort M. Hossein Zangooei
title Multiscale computational modeling of cancer growth using features derived from microCT images
title_short Multiscale computational modeling of cancer growth using features derived from microCT images
title_full Multiscale computational modeling of cancer growth using features derived from microCT images
title_fullStr Multiscale computational modeling of cancer growth using features derived from microCT images
title_full_unstemmed Multiscale computational modeling of cancer growth using features derived from microCT images
title_sort multiscale computational modeling of cancer growth using features derived from microct images
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-09-01
description Abstract Advances in medical imaging technologies now allow noninvasive image acquisition from individual patients at high spatiotemporal resolutions. A relatively new effort of predictive oncology is to develop a paradigm for forecasting the future status of an individual tumor given initial conditions and an appropriate mathematical model. The objective of this study was to introduce a comprehensive multiscale computational method to predict cancer and microvascular network growth patterns. A rectangular lattice-based model was designed so different evolutionary scenarios could be simulated and for predicting the impact of diffusible factors on tumor morphology and size. Further, the model allows prediction-based simulation of cell and microvascular behavior. Like a single cell, each agent is fully realized within the model and interactions are governed in part by machine learning methods. This multiscale computational model was developed and incorporated input information from in vivo microscale computed tomography (microCT) images acquired from breast cancer-bearing mice. It was found that as the difference between expansion of the cancer cell population and microvascular network increases, cells undergo proliferation and migration with a greater probability compared to other phenotypes. Overall, multiscale computational model agreed with both theoretical expectations and experimental findings (microCT images) not used during model training.
url https://doi.org/10.1038/s41598-021-97966-1
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