基于水平集和模糊c均值的心脏MRI左心室自动分割

Li Wang, Yurun Ma, K. Zhan, Yide Ma
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引用次数: 9

摘要

磁共振成像(MRI)不仅可以观察心脏的形态结构,还可以估计心肌的整体和局部功能,已成为心脏疾病临床诊断的重要辅助手段。对左心室(LV)进行分割是定量分析整体和局部心功能的必要条件。然而,心脏MR图像通常是强度不均匀的,这给左心室分割带来了相当大的挑战。在本研究中,我们提出了一种基于修正水平集和模糊c均值的综合自动LV分割模型。我们采用水平集方法对心内膜进行圈定,并估计偏置场,以降低心脏图像的强度不均匀性。此外,在校正后的MR图像中应用模糊c均值算法和形态学分割对心外膜进行分割。为了对算法进行评估,我们测试了MICCAI发表的短轴心脏电影MR图像。实验结果表明,该方法对心内膜和心外膜的分割均有较好的效果。校正后的心外膜比原始图像更能有效地圈定心外膜。
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Automatic left ventricle segmentation in cardiac MRI via level set and fuzzy C-means
Magnetic resonance imaging (MRI) has become an important assistant for clinical diagnosis of cardiac diseases which can not only observe the morphological structure of the heart, but also estimate the global and local function of myocardium. It is necessary to segment the left ventricle (LV) for the quantitative analysis of the global and regional cardiac function. However, cardiac MR images are usually intensity inhomogeneity, which results in a considerable challenge in left ventricle segmentation. In this research, we presented a synthetically automatic LV segmentation model on basis of modified level set and fuzzy C-means. We used level set method to delineate the endocardium and estimated the bias field which was used to decrease the intensity inhomogeneity of cardiac image. In addition, the fuzzy C-means algorithm and morphologic segmentation were applied in the corrected MR image to segment the epicardium. For the algorithm evaluation, we tested the short axis cardiac cine MR images published by MICCAI. The experiment results showed that our method obtained a good performance for both the endocardium and the epicardium segmentation. And, it was more effective to delineate epicardium in the corrected image than the original image.
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