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Automatic Segmentation of Myocardium from Black-Blood MR Images Using Entropy and Local Neighborhood Information

机译:使用熵和局部邻域信息从黑血MR图像自动分割心肌

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摘要

By using entropy and local neighborhood information, we present in this study a robust adaptive Gaussian regularizing Chan–Vese (CV) model to segment the myocardium from magnetic resonance images with intensity inhomogeneity. By utilizing the circular Hough transformation (CHT) our model is able to detect epicardial and endocardial contours of the left ventricle (LV) as circles automatically, and the circles are used as the initialization. In the cost functional of our model, the interior and exterior energies are weighted by the entropy to improve the robustness of the evolving curve. Local neighborhood information is used to evolve the level set function to reduce the impact of the heterogeneity inside the regions and to improve the segmentation accuracy. An adaptive window is utilized to reduce the sensitivity to initialization. The Gaussian kernel is used to regularize the level set function, which can not only ensure the smoothness and stability of the level set function, but also eliminate the traditional Euclidean length term and re-initialization. Extensive validation of the proposed method on patient data demonstrates its superior performance over other state-of-the-art methods.
机译:通过使用熵和局部邻域信息,我们在本研究中提出了一种鲁棒的自适应高斯正则化Chan-Vese(CV)模型,以从磁共振图像中以强度不均匀性分割心肌。通过利用圆形霍夫变换(CHT),我们的模型能够自动检测出左心室(LV)的心外膜和心内膜轮廓,并将其用作初始化。在我们模型的成本函数中,内部和外部能量由熵加权,以改善演化曲线的鲁棒性。局部邻域信息用于发展水平集功能,以减少区域内异质性的影响并提高分割精度。利用自适应窗口来降低对初始化的敏感性。高斯核用于规范化水平集函数,不仅可以确保水平集函数的平滑性和稳定性,而且可以消除传统的欧几里德长度项并重新初始化。对患者数据的建议方法的广泛验证表明,该方法优于其他最新方法。

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