首页> 外文会议>Image Processing pt.3; Progress in Biomedical Optics and Imaging; vol.6 no.24 >Cerebrovascular Plaque Segmentation Using Object Class Uncertainty Snake in MR Images
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Cerebrovascular Plaque Segmentation Using Object Class Uncertainty Snake in MR Images

机译:MR图像中使用对象类不确定性蛇进行脑血管斑块分割

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Atherosclerotic cerebrovascular disease leads to formation of lipid-laden plaques that can form emboli when ruptured causing blockage to cerebral vessels. The clinical manifestation of this event sequence is stroke; a leading cause of disability and death. In vivo MR imaging provides detailed image of vascular architecture for the carotid artery making it suitable for analysis of morphological features. Assessing the status of carotid arteries that supplies blood to the brain is of primary interest to such investigations. Reproducible quantification of carotid artery dimensions in MR images is essential for plaque analysis. Manual segmentation being the only method presently makes it time consuming and sensitive to inter and intra observer variability. This paper presents a deformable model for lumen and vessel wall segmentation of carotid artery from MR images. The major challenges of carotid artery segmentation are (a) low signal-to-noise ratio, (b) background intensity inhomogeneity and (c) indistinct inner and/or outer vessel wall. We propose a new, effective object-class uncertainty based deformable model with additional features tailored toward this specific application. Object-class uncertainty optimally utilizes MR intensity characteristics of various anatomic entities that enable the snake to avert leakage through fuzzy boundaries. To strengthen the deformable model for this application, some other properties are attributed to it in the form of (1) fully arc-based deformation using a Gaussian model to maximally exploit vessel wall smoothness, (2) construction of a forbidden region for outer-wall segmentation to reduce interferences by prominent lumen features and (3) arc-based landmark for efficient user interaction. The algorithm has been tested upon T1- and PD- weighted images. Measures of lumen area and vessel wall area are computed from segmented data of 10 patient MR images and their accuracy and reproducibility are examined. These results correspond exceptionally well with manual segmentation completed by radiology experts. Reproducibility of the proposed method is estimated for both intra- and inter-operator studies.
机译:动脉粥样硬化性脑血管疾病导致形成脂质丰富的斑块,斑块破裂时会形成栓子,从而阻塞脑血管。该事件序列的临床表现是中风;致残和死亡的主要原因。体内MR成像可为颈动脉提供详细的血管结构图像,使其适合于形态学特征分析。评估向大脑供血的颈动脉的状况是此类研究的主要兴趣所在。 MR图像中可重复量化的颈动脉尺寸对于斑块分析至关重要。手动分割是当前唯一的方法,这使其耗时且对观察者之间和观察者内部的可变性敏感。本文提出了一个可变形模型,用于根据MR图像对颈动脉进行管腔和血管壁分割。颈动脉分割的主要挑战是(a)信噪比低,(b)背景强度不均匀和(c)内和/或外血管壁不清楚。我们提出了一种新的有效的基于对象类别不确定性的可变形模型,并针对此特定应用量身定制了其他功能。对象类不确定性最佳地利用了各种解剖实体的MR强度特性,这些特性使蛇能够避免通过模糊边界进行泄漏。为加强此应用的可变形模型,它具有以下一些其他属性:(1)使用高斯模型基于弧的完全变形,以最大程度地利用容器壁的光滑度;(2)构造外部区域的禁区墙分割可通过突出的管腔特征来减少干扰,以及(3)基于弧的界标可实现有效的用户交互。该算法已在T1和PD加权图像上进行了测试。从10个患者MR图像的分割数据中计算出管腔面积和血管壁面积的测量值,并检查其准确性和可重复性。这些结果与放射学专家完成的手动分割非常吻合。估计了该方法的可重复性,可用于操作员内部和操作员之间的研究。

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