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A Combined Fuzzy C-Means and Level Set Method for Automatic DCE-MRI Kidney Segmentation Using Both Population-Based and Patient-Specific Shape Statistics

机译:基于人口统计和患者特定形状统计的DCE-MRI肾脏自动分割的组合模糊C均值和水平集方法

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Kidney segmentation from Dynamic Contrast Enhanced Magnetic Resonance Images (DCE-MRI) is a fundamental step for the early detection of transplanted kidney function. This paper presents an accurate and automatic DCE-MRI kidney segmentation method which combines fuzzy c-means (FCM) algorithm and geometric deformable model (level set) method. In order to precisely extract the kidney from its background, the evolution of the level set contour in the proposed method is controlled by the fuzzy memberships of the pixels and both population-based and patient-specific shape model. The FCM algorithm is used to initially divide the input image into kidney and background clusters. The obtained fuzzy clustering membership is used to define the initial contour of the level set method. For segmenting the kidney of a specific patient, a number of high contrast time-point images are segmented constraining the evolution of the level set contour by the population-based shape model constructed from different subjects. As more images are segmented, the patient-specific shape model is built from the obtained segmentation results and gradually used to guide the evolution of the level set contour. The performance of the proposed method is evaluated on 40 subjects. Experimental results demonstrate the efficiency, consistency, and accuracy of the proposed method especially for low contrast images.
机译:动态对比增强磁共振图像(DCE-MRI)的肾脏分割是早期检测移植肾功能的基本步骤。本文提出了一种准确,自动的DCE-MRI肾脏分割方法,该方法结合了模糊c均值(FCM)算法和几何可变形模型(水平集)方法。为了从背景中精确地提取肾脏,所提出的方法中的水平集轮廓线的演化受像素的模糊隶属度以及基于人群和特定于患者的形状模型的控制。 FCM算法用于将输入图像最初分为肾脏和背景簇。获得的模糊聚类隶属度用于定义水平集方法的初始轮廓。为了分割特定患者的肾脏,通过从不同对象构建的基于人群的形状模型,分割了许多高对比度的时间点图像,以限制水平设置轮廓的演变。随着更多图像被分割,根据获得的分割结果建立特定于患者的形状模型,并将其逐步用于指导水平设置轮廓的演变。所提出方法的性能在40位受试者上进行了评估。实验结果证明了该方法的效率,一致性和准确性,特别是对于低对比度图像。

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