Vascular system reconstruction from MR images using active appearance model

S. Szilágyi, C. Enăchescu
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Abstract

Vascular system recognition and spatial reconstruction using MR images consist an important element of modern health care. The developed reconstruction method successfully handles the intensity inhomogeneity or intensity non uniformity (INU), that is an undesired phenomenon during measurement and represents the main obstacle for MR image segmentation and registration methods. The segmentation is realized by a fuzzy c-means (FCM) algorithm together with the INU estimation. The proposed method determines the contours and using a medical knowledge base analysis determines the edges that are parts of the vascular system. Finally a spatial reconstruction is performed from the obtained data. Several MR databases were analyzed, and approximately a 98.5% recognition performance was obtained. The developed method can serve as excellent support for 3-D registration and visualization techniques.
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基于活动外观模型的MR血管系统重建
血管系统识别和空间重建利用磁共振图像是现代医疗保健的重要组成部分。所开发的重建方法成功地处理了强度不均匀性(INU),这是测量过程中不希望出现的现象,也是MR图像分割和配准方法的主要障碍。采用模糊c均值(FCM)算法结合INU估计实现图像分割。提出的方法确定轮廓,并使用医学知识库分析确定血管系统的边缘部分。最后对得到的数据进行空间重构。对多个MR数据库进行了分析,获得了约98.5%的识别性能。该方法可为三维配准和可视化技术提供良好的支持。
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