Method for Segmentation of the Endocardium and Epicardium of the Left Ventricle in Cardiac Magnetic Resonance Images
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    Abstract:

    In order to make a thorough use of the anatomical and functional information derived from cardiac magnetic resonance images, the epicardium and endocardium of the left ventricle should be extracted in advance. This paper presents a method for segmentation of the endocardium and epicardium of the left ventricle in cardiac magnetic resonance images using Snake models. It first proposes an external force for active contours, which is called convolutional virtual electric field (CONVEF). This CONVEF external force possesses the advantages of enlarged capture range, noise resistance and C-shape concavity convergence and can be implemented in real time by using fast Fourier transform since it is based on convolution. Considering that the left ventricle is roughly a circle, a shape constraint based on circle is adopted for segmentation of the endocardium. As to locating the epicardium, an internal energy based on shape similarity is proposed, and an edge map is coined to calculate the new external force by exploiting the resemblance between the endocardium and epicardium in shape and position. With these strategies, taking the final contour for endocardium as initialization, the Snake contour is reactivated to locate the epicardium automatically and accurately. This paper demonstrates the proposed approach on an in vivo dataset and compare the segmented contours with that of the GGVF (generalized gradient vector flow) Snake and manual collections. The results show its effectiveness.

    Reference
    [1] Emilsson K, Kahari A, Bodin L, Thunberg P. Outer contour and radial changes of the cardiac left ventricle—A magnetic resonance imaging study. Clinical Research in Cardiology, 2007,96(5):272?278.
    [2] Caiani EG, Toledo E, MacEneaney P, Bardo D, Cerutti S, Lang RM, Mor-Avi V. Automated interpretation of regional left ventricular wall motion from cardiac magnetic resonance images. Journal of Cardiovascular Magnetic Resonance, 2006,8(3): 427?433.
    [3] Kaus MR, von Berg J, Weese J, Niessen W, Pekar V. Automated segmentation of the left ventricle in cardiac MRI. Medical Image Analysis, 2004,8(1):245?254.
    [4] Beichel R, Bischof H, Leberl F, Sonka M. Robust active appearance models and their application to medical image analysis. IEEE Trans. on MI, 2005,24(9):1151?1169.
    [5] Hong H, Grosskopf S, Kim MH. Ventricular shape visualization using selective volume rendering of cardiac datasets. Computers in Biology and Medicine, 2001,31(6):481?498.
    [6] Jolly MP. Automatic segmentation of the left ventricle in cardiac MR and CT images. Int’l Journal of Computer Vision, 2006,70(2): 151?163.
    [7] Makowski P, S?rensen TS, Therkildsen SV, Materka A, St?dkilde-J?rgensen H, Pedersen EM. Two-Phase active contour method for semiautomatic segmentation of the heart and blood vessels from MRI images for 3D visualization. Computerized Medical Imaging and Graphics, 2002,26(1):9?17.
    [8] Nguyen D, Masterson K, Vallée JP. Comparative evaluation of active contour model extensions for automated cardiac MR image segmentation by regional error assessment. Magnetic Resonance Materials in Physics, Biology and Medicine, 2007,20(2):69?82.
    [9] Hautvast G, Lobregt S, Breeuwer M, Gerritsen F. Automatic contour propagation in cine cardiac magnetic resonance images. IEEE Trans. Medical Imaging, 2006,25(11):1472?1482.
    [10] Paragios N. A level set approach for shape-driven segmentation and tracking of the left ventricle. IEEE Trans. on Medical Imaging, 2003,22(6):773?776.
    [11] Zhou SJ, Liang B, Chen WF. A new approach to the motion estimation of cardiac image sequences: Active contours motion tracking based on the generalized fuzzy gradient vector flow. Chinese Journal of Computers, 2003,26(11):1470?1478 (in Chinese with English abstract).
    [12] Zhou ZM, Wang HY, You JJ, Heng PA, Xia DS. Left ventricle MRI segmentation based on an improved fast snake model. Journal of Computer Research and Development, 2004,41(1):136?141 (in Chinese with English abstract).
    [13] Wang YQ, Jia YD. A novel approach for segmentation of cardiac magnetic resonance images. Chinese Journal of Computers, 2007, 30(1):129?136 (in Chinese with English abstract).
    [14] Pluempitiwiriyawej C, Moura JMF, Wu LYJ, Ho C. STACS: A new active contour scheme for cardiac MR image segmentation. IEEE Trans. on Medical Imaging, 2005,24(5):593?603.
    [15] Xu CY, Prince JL. Snakes, shapes and gradient vector flow. IEEE Trans. on Image Processing, 1998,7(3):359?369.
    [16] Park, HK, Chung MJ. External force of snake: Virtual electric field. IEE Electronics Letters, 2002,38(24):1500?1502.
    [17] Wang YQ. Investigation on gradient vector flow snake model with applications to medical image segmentation. Postdoc Research Report, Beijing: Beijing Institute of Technology, 2006 (in Chinese with English abstract). 附中文参考文献:
    [11] 周寿军,梁斌,陈武凡.心脏序列图像运动估计新方法:基于广义模糊梯度矢量流的形变曲线运动估计与跟踪.计算机学报,2003, 26(11):1470?1478.
    [12] 周则明,王洪元,尤建洁,王平安,夏德深.基于改进快速活动轮廓模型的左心室核磁共振图像分割.计算机研究与发展,2004,41(1): 136?141.
    [13] 王元全,贾云得.一种新的心脏核磁共振图像分割方法.计算机学报,2007,30(1):129?136.
    [17] 王元全.梯度矢量流主动轮廓模型的若干理论问题及其在医学图像分割中的应用研究[博士后研究报告].北京:北京理工大学, 2006.
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王元全,贾云得.一种心脏核磁共振图像左室壁内、外膜分割方法.软件学报,2009,20(5):1176-1184

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History
  • Received:August 29,2008
  • Revised:December 15,2008
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