基于局部自适应形态阈值的二维分割心外膜脂肪配准

Vladimir Zlokolica, L. Velicki, M. Janev, David Mitrinović, D. Babin, N. Ralević, N. Cemerlić-Adić, R. Obradović, I. Galić
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引用次数: 4

摘要

心脏三维配准已成为心血管诊断和治疗的重要课题。这主要是由于先进的医学成像技术提供了大量高精度的数据。最近引起人们关注的心脏的一个重要特征是心外膜脂肪(包围心脏),根据一些初步研究,它可以与各种心血管疾病的风险预测很好地相关。因此,对医生来说,心外膜脂肪的自动检测和登记被认为是一项重要的任务,作为现有医学成像和可视化软件的附加功能。本文对4D CT技术获得的心脏图像进行分析,提出了一种自动提取心外膜脂肪的分割方案,以实现心外膜脂肪的三维配准和可视化。该分割算法首先对输入图像进行增强,然后对所选特征进行基于补丁的标记和聚类。实验结果表明,与医生手工分割的心外膜脂肪相比,心外膜脂肪登记性能较好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Epicardial fat registration by local adaptive morphology-thresholding based 2D segmentation
3D heart registration has become an important issue in cardio vascular diagnosis and treatment. This is mainly due to advanced medical imaging technologies that provide significant amount of data with high precision. One of the important features of the heart that has recently drawn attention is epicardial fat (surrounds the heart), which according to some preliminary studies can be correlated well with risk prediction of various cardiovascular diseases. Consequently, automatic detection and registration of epicardial fat is considered as important task for medical doctors to include as additional feature within the already existing software for medical imaging and visualization. In this paper, we analyze heart images obtained by 4D CT technology and propose a segmentation scheme that automatically extracts epcardial fat in each 2D slice in order to perform 3D epicardial fat registration and visualization. The segmentation algorithm first enhances input image after which it performs patch based labeling and clustering of the selected features. The experimental results indicate good epicardial fat registration performance in comparison to manual segmentation obtained by the medical doctors.
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