脑血管的监督分类

I. Tache, C. Vasseur, D. Stefanoiu, M. Vermandel, D. Popescu
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引用次数: 1

摘要

在对病变血管进行脑介入治疗之前,通常要进行x线血管造影。临床医生抱怨很难在灰度图像上找到小血管,也很难区分静脉和动脉。分类的主要问题是如何从x射线投影图像序列中找到能够完整表征像素强度时间过程规律的正确参数。对信号进行了基本的处理:利用低通滤波器去除不希望得到的信息,同时利用快速傅立叶变换研究信号的频谱特征。本文提出了一种基于时间信号的脑血管图像血管分类方法,动脉和静脉的识别成功率分别为78%和65%。
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Supervised classification of cerebral blood vessels
The x-ray angiograms are frequently performed before a cerebral intervention on diseased vessels. The clinicians complain about the difficulty to find small vessels on images with grey level intensities and to differentiate veins from arteries. The main problem in classification resides in finding the right parameters which can completely characterize the patterns of pixels' intensity time course from x-ray projection image series. A basic signal processing was made: a low pass filter for eliminating the undesired information, as long as the application of fast Fourier transform for investigation of signal spectral characteristics. In the presented article, a classification method of blood vessels from the cerebral angiograms based on temporal signals is presented, with a successful rate of identification of arteries of 78% and veins of 65%.
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