DocumentCode :
3303507
Title :
Non-Invasive Image-Based Approach for Early Detection of Prostate Cancer
Author :
Firjani, A. ; Khalifa, F. ; Elnakib, A. ; Gimel´farb, G. ; El-Ghar, M. Abo ; Elmaghraby, A. ; El-Baz, A.
Author_Institution :
Bioeng. Dept., Univ. of Louisville, Louisville, KY, USA
fYear :
2011
fDate :
6-8 Dec. 2011
Firstpage :
172
Lastpage :
177
Abstract :
A novel noninvasive approach for early diagnosis of prostate cancer from Dynamic Contrast enhanced Magnetic Resonance Imaging is proposed. The proposed approach consists of four main steps. The first step is to isolate the prostate from the surrounding anatomical structures based on a Maximum a Posteriori estimate of a new log-likelihood function that accounts for the shape priori, the spatial interaction, and the current appearance of the prostate tissues and its background. In the second step, a non-rigid registration algorithm is employed to account for any local deformation that could occur in the prostate during the scanning process due to patient breathing and local motion. In the third step, the perfusion curves that show propagation of the contrast agent into the tissue are obtained from the segmented prostate of the whole image sequence of the patient. In the final step, we collect two features from these curves and use a kn-nearest classifier to distinguish between malignant and benign detected tumors. Moreover, in this paper we introduce a new approach to generate color maps that illustrate the propagation of the contrast agent in the prostate tissues based on the analysis of the 3D spatial interaction of the change of the gray level values of prostate voxel using a Generalized Gauss Markov Random Field image model. Finally, the tumor boundaries are determined using a level set deformable model controlled by the perfusion information and the spatial interactions between the prostate voxels. Experimental results on 21 clinical Dynamic Contrast enhanced Magnetic Resonance Imaging data sets yield promising results.
Keywords :
Markov processes; biomedical MRI; cancer; image colour analysis; image segmentation; image sequences; maximum likelihood estimation; medical image processing; random processes; 3D spatial interaction; anatomical structure; benign detected tumor; color map; diagnosis; dynamic contrast enhanced magnetic resonance imaging; generalized Gauss Markov random field image model; gray level value; image sequence; kn-nearest classifier; level set deformable model; log-likelihood function; malignant detected tumor; maximum a posteriori estimate; noninvasive image; nonrigid registration algorithm; patient breathing; prostate cancer; prostate tissue; prostate voxel; scanning process; segmented prostate; tumor boundaries; Data models; Image segmentation; Prostate cancer; Shape; Solid modeling; Three dimensional displays; 3D Markov--Gibbs random field; DCE-MRI; Prostate cancer; non-rigid registration; shape prior;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Developments in E-systems Engineering (DeSE), 2011
Conference_Location :
Dubai
Print_ISBN :
978-1-4577-2186-1
Type :
conf
DOI :
10.1109/DeSE.2011.55
Filename :
6149935
Link To Document :
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