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Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI

Background and Purpose: The T1-weighted dynamic contrast enhanced (DCE)-MRI is an imaging technique that provides a quantitative measure of pharmacokinetic (PK) parameters characterizing microvasculature of tissues. For the present study, we propose a new machine learning (ML) based approach to dire...

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Autores principales: Ulas, Cagdas, Das, Dhritiman, Thrippleton, Michael J., Valdés Hernández, Maria del C., Armitage, Paul A., Makin, Stephen D., Wardlaw, Joanna M., Menze, Bjoern H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6331464/
https://www.ncbi.nlm.nih.gov/pubmed/30671015
http://dx.doi.org/10.3389/fneur.2018.01147
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author Ulas, Cagdas
Das, Dhritiman
Thrippleton, Michael J.
Valdés Hernández, Maria del C.
Armitage, Paul A.
Makin, Stephen D.
Wardlaw, Joanna M.
Menze, Bjoern H.
author_facet Ulas, Cagdas
Das, Dhritiman
Thrippleton, Michael J.
Valdés Hernández, Maria del C.
Armitage, Paul A.
Makin, Stephen D.
Wardlaw, Joanna M.
Menze, Bjoern H.
author_sort Ulas, Cagdas
collection PubMed
description Background and Purpose: The T1-weighted dynamic contrast enhanced (DCE)-MRI is an imaging technique that provides a quantitative measure of pharmacokinetic (PK) parameters characterizing microvasculature of tissues. For the present study, we propose a new machine learning (ML) based approach to directly estimate the PK parameters from the acquired DCE-MRI image-time series that is both more robust and faster than conventional model fitting. Materials and Methods: We specifically utilize deep convolutional neural networks (CNNs) to learn the mapping between the image-time series and corresponding PK parameters. DCE-MRI datasets acquired from 15 patients with clinically evident mild ischaemic stroke were used in the experiments. Training and testing were carried out based on leave-one-patient-out cross- validation. The parameter estimates obtained by the proposed CNN model were compared against the two tracer kinetic models: (1) Patlak model, (2) Extended Tofts model, where the estimation of model parameters is done via voxelwise linear and nonlinear least squares fitting respectively. Results: The trained CNN model is able to yield PK parameters which can better discriminate different brain tissues, including stroke regions. The results also demonstrate that the model generalizes well to new cases even if a subject specific arterial input function (AIF) is not available for the new data. Conclusion: A ML-based model can be used for direct inference of the PK parameters from DCE image series. This method may allow fast and robust parameter inference in population DCE studies. Parameter inference on a 3D volume-time series takes only a few seconds on a GPU machine, which is significantly faster compared to conventional non-linear least squares fitting.
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spelling pubmed-63314642019-01-22 Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI Ulas, Cagdas Das, Dhritiman Thrippleton, Michael J. Valdés Hernández, Maria del C. Armitage, Paul A. Makin, Stephen D. Wardlaw, Joanna M. Menze, Bjoern H. Front Neurol Neurology Background and Purpose: The T1-weighted dynamic contrast enhanced (DCE)-MRI is an imaging technique that provides a quantitative measure of pharmacokinetic (PK) parameters characterizing microvasculature of tissues. For the present study, we propose a new machine learning (ML) based approach to directly estimate the PK parameters from the acquired DCE-MRI image-time series that is both more robust and faster than conventional model fitting. Materials and Methods: We specifically utilize deep convolutional neural networks (CNNs) to learn the mapping between the image-time series and corresponding PK parameters. DCE-MRI datasets acquired from 15 patients with clinically evident mild ischaemic stroke were used in the experiments. Training and testing were carried out based on leave-one-patient-out cross- validation. The parameter estimates obtained by the proposed CNN model were compared against the two tracer kinetic models: (1) Patlak model, (2) Extended Tofts model, where the estimation of model parameters is done via voxelwise linear and nonlinear least squares fitting respectively. Results: The trained CNN model is able to yield PK parameters which can better discriminate different brain tissues, including stroke regions. The results also demonstrate that the model generalizes well to new cases even if a subject specific arterial input function (AIF) is not available for the new data. Conclusion: A ML-based model can be used for direct inference of the PK parameters from DCE image series. This method may allow fast and robust parameter inference in population DCE studies. Parameter inference on a 3D volume-time series takes only a few seconds on a GPU machine, which is significantly faster compared to conventional non-linear least squares fitting. Frontiers Media S.A. 2019-01-08 /pmc/articles/PMC6331464/ /pubmed/30671015 http://dx.doi.org/10.3389/fneur.2018.01147 Text en Copyright © 2019 Ulas, Das, Thrippleton, Valdés Hernández, Armitage, Makin, Wardlaw and Menze. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Ulas, Cagdas
Das, Dhritiman
Thrippleton, Michael J.
Valdés Hernández, Maria del C.
Armitage, Paul A.
Makin, Stephen D.
Wardlaw, Joanna M.
Menze, Bjoern H.
Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI
title Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI
title_full Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI
title_fullStr Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI
title_full_unstemmed Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI
title_short Convolutional Neural Networks for Direct Inference of Pharmacokinetic Parameters: Application to Stroke Dynamic Contrast-Enhanced MRI
title_sort convolutional neural networks for direct inference of pharmacokinetic parameters: application to stroke dynamic contrast-enhanced mri
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6331464/
https://www.ncbi.nlm.nih.gov/pubmed/30671015
http://dx.doi.org/10.3389/fneur.2018.01147
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