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Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models

BACKGROUND: Dynamic contrast-enhanced (DCE) MRI is widely used to assess vascular perfusion and permeability in cancer. In small animal applications, conventional modeling of pharmacokinetic (PK) parameters from DCE MRI images is complex and time consuming. This study is aimed at developing a deep l...

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Autores principales: Arledge, Chad A., Sankepalle, Deeksha M., Crowe, William N., Liu, Yang, Wang, Lulu, Zhao, Dawen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9048985/
https://www.ncbi.nlm.nih.gov/pubmed/35345331
http://dx.doi.org/10.31083/j.fbl2703099
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author Arledge, Chad A.
Sankepalle, Deeksha M.
Crowe, William N.
Liu, Yang
Wang, Lulu
Zhao, Dawen
author_facet Arledge, Chad A.
Sankepalle, Deeksha M.
Crowe, William N.
Liu, Yang
Wang, Lulu
Zhao, Dawen
author_sort Arledge, Chad A.
collection PubMed
description BACKGROUND: Dynamic contrast-enhanced (DCE) MRI is widely used to assess vascular perfusion and permeability in cancer. In small animal applications, conventional modeling of pharmacokinetic (PK) parameters from DCE MRI images is complex and time consuming. This study is aimed at developing a deep learning approach to fully automate the generation of kinetic parameter maps, Ktrans (volume transfer coefficient) and Vp (blood plasma volume ratio), as a potential surrogate to conventional PK modeling in mouse brain tumor models based on DCE MRI. METHODS: Using a 7T MRI, DCE MRI was conducted in U87 glioma xenografts growing orthotopically in nude mice. Vascular permeability Ktrans and Vp maps were generated using the classical Tofts model as well as the extended-Tofts model. These vascular permeability maps were then processed as target images to a twenty-four layer convolutional neural network (CNN). The CNN was trained on T(1)-weighted DCE images as source images and designed with parallel dual pathways to capture multiscale features. Furthermore, we performed a transfer study of this glioma trained CNN on a breast cancer brain metastasis (BCBM) mouse model to assess the potential of the network for alternative brain tumors. RESULTS: Our data showed a good match for both Ktrans and Vp maps generated between the target PK parameter maps and the respective CNN maps for gliomas. Pixel-by-pixel analysis revealed intratumoral heterogeneous permeability, which was consistent between the CNN and PK models. The utility of the deep learning approach was further demonstrated in the transfer study of BCBM. CONCLUSIONS: Because of its rapid and accurate estimation of vascular PK parameters directly from the DCE dynamic images without complex mathematical modeling, the deep learning approach can serve as an efficient tool to assess tumor vascular permeability to facilitate small animal brain tumor research.
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spelling pubmed-90489852022-04-28 Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models Arledge, Chad A. Sankepalle, Deeksha M. Crowe, William N. Liu, Yang Wang, Lulu Zhao, Dawen Front Biosci (Landmark Ed) Article BACKGROUND: Dynamic contrast-enhanced (DCE) MRI is widely used to assess vascular perfusion and permeability in cancer. In small animal applications, conventional modeling of pharmacokinetic (PK) parameters from DCE MRI images is complex and time consuming. This study is aimed at developing a deep learning approach to fully automate the generation of kinetic parameter maps, Ktrans (volume transfer coefficient) and Vp (blood plasma volume ratio), as a potential surrogate to conventional PK modeling in mouse brain tumor models based on DCE MRI. METHODS: Using a 7T MRI, DCE MRI was conducted in U87 glioma xenografts growing orthotopically in nude mice. Vascular permeability Ktrans and Vp maps were generated using the classical Tofts model as well as the extended-Tofts model. These vascular permeability maps were then processed as target images to a twenty-four layer convolutional neural network (CNN). The CNN was trained on T(1)-weighted DCE images as source images and designed with parallel dual pathways to capture multiscale features. Furthermore, we performed a transfer study of this glioma trained CNN on a breast cancer brain metastasis (BCBM) mouse model to assess the potential of the network for alternative brain tumors. RESULTS: Our data showed a good match for both Ktrans and Vp maps generated between the target PK parameter maps and the respective CNN maps for gliomas. Pixel-by-pixel analysis revealed intratumoral heterogeneous permeability, which was consistent between the CNN and PK models. The utility of the deep learning approach was further demonstrated in the transfer study of BCBM. CONCLUSIONS: Because of its rapid and accurate estimation of vascular PK parameters directly from the DCE dynamic images without complex mathematical modeling, the deep learning approach can serve as an efficient tool to assess tumor vascular permeability to facilitate small animal brain tumor research. 2022-03-16 /pmc/articles/PMC9048985/ /pubmed/35345331 http://dx.doi.org/10.31083/j.fbl2703099 Text en https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY 4.0 license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Arledge, Chad A.
Sankepalle, Deeksha M.
Crowe, William N.
Liu, Yang
Wang, Lulu
Zhao, Dawen
Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
title Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
title_full Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
title_fullStr Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
title_full_unstemmed Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
title_short Deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
title_sort deep learning quantification of vascular pharmacokinetic parameters in mouse brain tumor models
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9048985/
https://www.ncbi.nlm.nih.gov/pubmed/35345331
http://dx.doi.org/10.31083/j.fbl2703099
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