Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.

The purpose of this study was to test whether an empirical mathematical model (EMM) of dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) can distinguish between benign and malignant breast lesions. A modified clinical protocol was used to improve the sampling of contrast medium uptake a...

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Main Authors: Fan, X, Medved, M, Karczmar, G, Yang, C, Foxley, S, Arkani, S, Recant, W, Zamora, M, Abe, H, Newstead, G
Format: Journal article
Language:English
Published: 2007
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author Fan, X
Medved, M
Karczmar, G
Yang, C
Foxley, S
Arkani, S
Recant, W
Zamora, M
Abe, H
Newstead, G
author_facet Fan, X
Medved, M
Karczmar, G
Yang, C
Foxley, S
Arkani, S
Recant, W
Zamora, M
Abe, H
Newstead, G
author_sort Fan, X
collection OXFORD
description The purpose of this study was to test whether an empirical mathematical model (EMM) of dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) can distinguish between benign and malignant breast lesions. A modified clinical protocol was used to improve the sampling of contrast medium uptake and washout. T(1)-weighted DCE magnetic resonance images were acquired at 1.5 T for 22 patients before and after injection of Gd-DTPA. Contrast medium concentration as a function of time was calculated over a small region of interest containing the most rapidly enhancing pixels. Then the curves were fitted with the EMM, which accurately described contrast agent uptake and washout. Results demonstrate that benign lesions had uptake (P<2.0 x 10(-5)) and washout (P<.01) rates of contrast agent significantly slower than those of malignant lesions. In addition, secondary diagnostic parameters, such as time to peak of enhancement, enhancement slope at the peak and curvature at the peak of enhancement, were derived mathematically from the EMM and expressed in terms of primary parameters. These diagnostic parameters also effectively differentiated benign from malignant lesions (P<.03). Conventional analysis of contrast medium dynamics, using a subjective classification of contrast medium kinetics in lesions as "washout," "plateau" or "persistent" (sensitivity=83%, specificity=50% and diagnostic accuracy=72%), was less effective than the EMM (sensitivity=100%, specificity=83% and diagnostic accuracy=94%) for the separation of benign and malignant lesions. In summary, the present research suggests that the EMM is a promising alternative method for evaluating DCE-MRI data with improved diagnostic accuracy.
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spelling oxford-uuid:d8de8af8-02d4-40b5-9f4a-88138177681b2022-03-27T08:51:54ZDiagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.Journal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:d8de8af8-02d4-40b5-9f4a-88138177681bEnglishSymplectic Elements at Oxford2007Fan, XMedved, MKarczmar, GYang, CFoxley, SArkani, SRecant, WZamora, MAbe, HNewstead, GThe purpose of this study was to test whether an empirical mathematical model (EMM) of dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) can distinguish between benign and malignant breast lesions. A modified clinical protocol was used to improve the sampling of contrast medium uptake and washout. T(1)-weighted DCE magnetic resonance images were acquired at 1.5 T for 22 patients before and after injection of Gd-DTPA. Contrast medium concentration as a function of time was calculated over a small region of interest containing the most rapidly enhancing pixels. Then the curves were fitted with the EMM, which accurately described contrast agent uptake and washout. Results demonstrate that benign lesions had uptake (P<2.0 x 10(-5)) and washout (P<.01) rates of contrast agent significantly slower than those of malignant lesions. In addition, secondary diagnostic parameters, such as time to peak of enhancement, enhancement slope at the peak and curvature at the peak of enhancement, were derived mathematically from the EMM and expressed in terms of primary parameters. These diagnostic parameters also effectively differentiated benign from malignant lesions (P<.03). Conventional analysis of contrast medium dynamics, using a subjective classification of contrast medium kinetics in lesions as "washout," "plateau" or "persistent" (sensitivity=83%, specificity=50% and diagnostic accuracy=72%), was less effective than the EMM (sensitivity=100%, specificity=83% and diagnostic accuracy=94%) for the separation of benign and malignant lesions. In summary, the present research suggests that the EMM is a promising alternative method for evaluating DCE-MRI data with improved diagnostic accuracy.
spellingShingle Fan, X
Medved, M
Karczmar, G
Yang, C
Foxley, S
Arkani, S
Recant, W
Zamora, M
Abe, H
Newstead, G
Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.
title Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.
title_full Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.
title_fullStr Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.
title_full_unstemmed Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.
title_short Diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast-enhanced MRI.
title_sort diagnosis of suspicious breast lesions using an empirical mathematical model for dynamic contrast enhanced mri
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