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A NEW METHOD FOR CHARACTERIZATION OF CORONARY PLAQUE COMPOSITION VIA IVUS IMAGES

机译:通过IVUS图像表征冠状动脉斑块组合物的一种新方法

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IVUS-derived virtual histology (VH) permits the assessment of atherosclerotic plaque morphology by using radiofrequency analysis of ultrasound signals. However, it requires the acquisition to be ECG-gated, which is a major limitation of VH. Indeed, its computation can only be performed once per cardiac cycle, which significantly decreases the longitudinal resolution of VH. To overcome this limitation, the introduction of an image-based plaque characterization is of great importance. Current IVUS image processing techniques do not allow adequate identification of the coronary artery plaques. This can be improved by defining appropriate features for the different kinds of plaques. In this paper, a novel feature extraction method based on Run-length algorithm is presented and used for improving the automated characterization of the plaques within the IVUS images. The proposed feature extraction method is applied to 200 IVUS images obtained from five patients. As a result an accuracy rate of 77% was achieved. Comparing this to the accuracy rates of 75% and 71% obtained using co-occurrence and local binary pattern methods respectively indicates the superior performance of the proposed feature extraction method.
机译:IVUS衍生的虚拟组织学(VH)允许通过使用超声信号的射频分析来评估动脉粥样硬化斑块形态。但是,它要求收购是ECG门控,这是VH的一个主要限制。实际上,它的计算只能每次心动循环执行一次,这显着降低了VH的纵向分辨率。为了克服这种限制,引入基于图像的斑块表征非常重要。目前的IVUS图像处理技术不允许充分鉴定冠状动脉斑块。通过为不同种类的斑块定义适当的特征来改善这一点。本文提出了一种基于运行长度算法的新特征提取方法,用于改善IVUS图像内斑块的自动表征。所提出的特征提取方法应用于来自五名患者的200个IVUS图像。结果,实现了77%的精度率。将其与使用共同发生和局部二进制模式方法获得的75%和71%的精度率分别表示所提出的特征提取方法的优异性能。

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