Quantification of Delayed Enhancement MR Images

Author:

Dikici Engin,O’Donnell Thomas,Setser Randolph,White Richard D.

Publisher

Springer Berlin Heidelberg

Reference12 articles.

1. Thomas, O., Xu, N., Setser, R., White, R.D.: Semi-Automatic Segmentation of Non-Viable Cardiac Tissue Using Cine and Delayed Enhancement Magnetic Resonance Images. In: SPIE Medical Imaging 2003 Physiology and Function: Methods, Systems, and Applications, pp. 242–251 (2003)

2. Jolly, M.-P., Duta, N., Funka-Lea, G.: Segmentation of the Left Ventricle in Cardiac MR Images. In: Proc. ICCV, Vancouver, Canada (2001)

3. Kolipaka, A., Chatzimavroudis, G.P., White, R.D., O’Donnell, T.P., Setser, R.M.: Segmentation of Non-Viable Myocardium in Delayed Enhancement Magnetic Resonance Images. In: ISMRM, Toronto, CA (2003)

4. Chefd’Hotel, C., Hermosillo, G., Faugeras, O.: A Variational Approach to Multi-Modal Image Matching. In: IEEE Workshop on Variational and Level Set Methods (VLSM 2001), July 13-13, p. 21 (2001)

5. Lecture Notes in Computer Science;N.M.I. Noble,2002

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