TY - JOUR
T1 - Automated classification of atherosclerotic plaque from magnetic resonance images using predictive models
AU - Anderson, Russell W.
AU - Stomberg, Christopher
AU - Hahm, Charles W.
AU - Mani, Venkatesh
AU - Samber, Daniel D.
AU - Itskovich, Vitalii V.
AU - Valera-Guallar, Laura
AU - Fallon, John T.
AU - Nedanov, Pavel B.
AU - Huizenga, Joel
AU - Fayad, Zahi A.
N1 - Funding Information:
This research was funded, in part, by an NIH Phase I SBIR Grant awarded to Dr. Anderson and the ISCHEM Corporation. Partial support was also provided by: NIH/NHLBI R01 HL71021, NIH/NHLBI R01 HL78667 (ZAF).
PY - 2007/9
Y1 - 2007/9
N2 - The information contained within multicontrast magnetic resonance images (MRI) promises to improve tissue classification accuracy, once appropriately analyzed. Predictive models capture relationships empirically, from known outcomes thereby combining pattern classification with experience. In this study, we examine the applicability of predictive modeling for atherosclerotic plaque component classification of multicontrast ex vivo MR images using stained, histopathological sections as ground truth. Ten multicontrast images from seven human coronary artery specimens were obtained on a 9.4 T imaging system using multicontrast-weighted fast spin-echo (T1-, proton density-, and T2-weighted) imaging with 39-μm isotropic voxel size. Following initial data transformations, predictive modeling focused on automating the identification of specimen's plaque, lipid, and media. The outputs of these three models were used to calculate statistics such as total plaque burden and the ratio of hard plaque (fibrous tissue) to lipid. Both logistic regression and an artificial neural network model (Relevant Input Processor Network-RIPNet) were used for predictive modeling. When compared against segmentation resulting from cluster analysis, the RIPNet models performed between 25 and 30% better in absolute terms. This translates to a 50% higher true positive rate over given levels of false positives. This work indicates that it is feasible to build an automated system of plaque detection using MRI and data mining.
AB - The information contained within multicontrast magnetic resonance images (MRI) promises to improve tissue classification accuracy, once appropriately analyzed. Predictive models capture relationships empirically, from known outcomes thereby combining pattern classification with experience. In this study, we examine the applicability of predictive modeling for atherosclerotic plaque component classification of multicontrast ex vivo MR images using stained, histopathological sections as ground truth. Ten multicontrast images from seven human coronary artery specimens were obtained on a 9.4 T imaging system using multicontrast-weighted fast spin-echo (T1-, proton density-, and T2-weighted) imaging with 39-μm isotropic voxel size. Following initial data transformations, predictive modeling focused on automating the identification of specimen's plaque, lipid, and media. The outputs of these three models were used to calculate statistics such as total plaque burden and the ratio of hard plaque (fibrous tissue) to lipid. Both logistic regression and an artificial neural network model (Relevant Input Processor Network-RIPNet) were used for predictive modeling. When compared against segmentation resulting from cluster analysis, the RIPNet models performed between 25 and 30% better in absolute terms. This translates to a 50% higher true positive rate over given levels of false positives. This work indicates that it is feasible to build an automated system of plaque detection using MRI and data mining.
KW - Atherosclerosis
KW - Coronary disease
KW - MRI
KW - Magnetic resonance imaging
KW - Vulnerable plaque
UR - https://www.scopus.com/pages/publications/34548482778
U2 - 10.1016/j.biosystems.2006.11.005
DO - 10.1016/j.biosystems.2006.11.005
M3 - Article
C2 - 17254700
AN - SCOPUS:34548482778
SN - 0303-2647
VL - 90
SP - 456
EP - 466
JO - BioSystems
JF - BioSystems
IS - 2
ER -