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Automatic Segmentation of Soft Plaque by Modeling the Partial Volume Problem in the Coronary Artery

机译:通过模拟冠状动脉局部容积问题自动分割软斑

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Automatic segmentation and quantification of stenosis is an important task in assessing coronary artery disease, especially when the investigation of the disease progress is considered. The reproducibility and robustness of the segmentation algorithm against partial volume effect and noise is critical for an accurate quantification. A major issue in the quantification of the stenosis is to segment the soft plaque in the blood vessel. While there are several approaches for segmentation of the volume of the blood vessel and soft plaque in the literature, the main drawback of these approaches is making a deterministic decision in terms of assigning a particular voxel to only one type of tissue (such as blood vessel, soft plaque or surrounding area). However in reality, because of the partial volume effect, a voxel may contain more than one tissue type. In particular, using deterministic methods for quantification of the small objects such as thin blood vessels or soft plaque may lead to inaccurate results and higher inter and intra-scan variability. In this paper, an approach is proposed to tackle the partial volume effect problem using an adaptive fuzzy algorithm incorporating a Markov random field model. The presented method segments the blood vessel, soft plaque and surrounding tissue areas more accurately. The algorithm is applied to several datasets and the outcomes have been judged visually by a qualified radiologist. The proposed algorithm has the potential to be applied for the accurate quantification of the degree of stenosis.
机译:狭窄的自动分割和量化是评估冠状动脉疾病的重要任务,尤其是考虑到疾病进展的调查时。分割算法针对部分体积效应和噪声的重现性和鲁棒性对于精确定量至关重要。狭窄量化中的主要问题是分割血管中的软斑。尽管在文献中有几种分割血管和软斑块的方法,但是这些方法的主要缺点是只能将一种特定的体素分配给一种类型的组织(例如血管)进行确定性决策。 ,软斑块或周围区域)。但是,实际上,由于部分体积效应,体素可能包含不止一种组织类型。特别是,使用确定性方法对诸如薄血管或软斑块之类的小物体进行量化可能会导致结果不准确以及扫描内和扫描内变异性更高。在本文中,提出了一种使用包含马尔可夫随机场模型的自适应模糊算法来解决部分体积效应问题的方法。提出的方法可以更准确地分割血管,软斑和周围组织区域。该算法已应用于多个数据集,并且已经由合格的放射科医生目视判断结果。所提出的算法有可能应用于狭窄程度的准确量化。

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