Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data
Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) enables the quantification of contrast leakage from the vascular tissue by using pharmacokinetic (PK) models. Such quantitative analysis of DCE-MRI data provides physiological parameters that are able to provide information of tumor path...
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doaj-6a5c2e08deea47be9a5b922c03d091ec2020-11-25T03:22:13ZengSAGE PublishingCancer Informatics1176-93512015-01-0114s410.4137/CIN.S19342Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI DataEleftherios Kontopodis0Georgia Kanli1Georgios C. Manikis2Sofie Van Cauter3Kostas Marias4Foundation for Research and Technology – Hellas (FORTH), Institute of Computer Science, Computational BioMedicine Lab, Heraklion, Greece.Foundation for Research and Technology – Hellas (FORTH), Institute of Computer Science, Computational BioMedicine Lab, Heraklion, Greece.Foundation for Research and Technology – Hellas (FORTH), Institute of Computer Science, Computational BioMedicine Lab, Heraklion, Greece.Department of Radiology, University Hospitals Leuven, Leuven, Belgium.Foundation for Research and Technology – Hellas (FORTH), Institute of Computer Science, Computational BioMedicine Lab, Heraklion, Greece.Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) enables the quantification of contrast leakage from the vascular tissue by using pharmacokinetic (PK) models. Such quantitative analysis of DCE-MRI data provides physiological parameters that are able to provide information of tumor pathophysiology and therapeutic outcome. Several assumptive PK models have been proposed to characterize microcirculation in the tumoral tissue. In this paper, we present a comparative study between the well-known extended Tofts model (ETM) and the more recent gamma capillary transit time (GCTT) model, with the latter showing initial promising results in the literature. To enhance the GCTT imaging biomarkers, we introduce a novel method for segmenting the tumor area into subregions according to their vascular heterogeneity characteristics. A cohort of 11 patients diagnosed with glioblastoma multiforme with known therapeutic outcome was used to assess the predictive value of both models in terms of correctly classifying responders and nonresponders based on only one DCE-MRI examination. The results indicate that GCTT model's PK parameters perform better than those of ETM, while the segmentation of the tumor regions of interest based on vascular heterogeneity further enhances the discriminatory power of the GCTT model.https://doi.org/10.4137/CIN.S19342 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Eleftherios Kontopodis Georgia Kanli Georgios C. Manikis Sofie Van Cauter Kostas Marias |
spellingShingle |
Eleftherios Kontopodis Georgia Kanli Georgios C. Manikis Sofie Van Cauter Kostas Marias Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data Cancer Informatics |
author_facet |
Eleftherios Kontopodis Georgia Kanli Georgios C. Manikis Sofie Van Cauter Kostas Marias |
author_sort |
Eleftherios Kontopodis |
title |
Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data |
title_short |
Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data |
title_full |
Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data |
title_fullStr |
Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data |
title_full_unstemmed |
Assessing Treatment Response through Generalized Pharmacokinetic Modeling of DCE-MRI Data |
title_sort |
assessing treatment response through generalized pharmacokinetic modeling of dce-mri data |
publisher |
SAGE Publishing |
series |
Cancer Informatics |
issn |
1176-9351 |
publishDate |
2015-01-01 |
description |
Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) enables the quantification of contrast leakage from the vascular tissue by using pharmacokinetic (PK) models. Such quantitative analysis of DCE-MRI data provides physiological parameters that are able to provide information of tumor pathophysiology and therapeutic outcome. Several assumptive PK models have been proposed to characterize microcirculation in the tumoral tissue. In this paper, we present a comparative study between the well-known extended Tofts model (ETM) and the more recent gamma capillary transit time (GCTT) model, with the latter showing initial promising results in the literature. To enhance the GCTT imaging biomarkers, we introduce a novel method for segmenting the tumor area into subregions according to their vascular heterogeneity characteristics. A cohort of 11 patients diagnosed with glioblastoma multiforme with known therapeutic outcome was used to assess the predictive value of both models in terms of correctly classifying responders and nonresponders based on only one DCE-MRI examination. The results indicate that GCTT model's PK parameters perform better than those of ETM, while the segmentation of the tumor regions of interest based on vascular heterogeneity further enhances the discriminatory power of the GCTT model. |
url |
https://doi.org/10.4137/CIN.S19342 |
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