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A Novel Semiautomated Atherosclerotic Plaque Characterization Method Using Grayscale Intravascular Ultrasound Images: Comparison With Virtual Histology

机译:一种使用灰度血管内超声图像的新型半自动动脉粥样硬化斑块表征方法:与虚拟组织学的比较

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摘要

Intravascular ultrasound (IVUS) virtual histology (VH-IVUS) is a new technique, which provides automated plaque characterization in IVUS frames, using the ultrasound backscattered RF-signals. However, its computation can only be performed once per cardiac cycle (ECG-gated technique), which significantly decreases the number of characterized IVUS frames. Also atherosclerotic plaques in images that have been acquired by machines, which are not equipped with the VH software, cannot be characterized. To address these limitations, we have developed a plaque characterization technique that can be applied in grayscale IVUS images. Our semiautomated method is based on a three-step approach. In the first step, the plaque area [region of interest (ROI)] is detected semiautomatically. In the second step, a set of features is extracted for each pixel of the ROI and in the third step, a random forest classifier is used to classify these pixels into four classes: dense calcium, necrotic core, fibrotic tissue, and fibro-fatty tissue. In order to train and validate our method, we used 300 IVUS frames acquired from virtual histology examinations from ten patients. The overall accuracy of the proposed method was 85.65% suggesting that our approach is reliable and may be further investigated in the clinical and research arena.
机译:血管内超声(IVUS)虚拟组织学(VH-IVUS)是一项新技术,它使用超声反向散射的RF信号在IVUS帧中提供自动斑块表征。但是,每个心动周期只能执行一次其计算(ECG门控技术),这大大减少了特征IVUS帧的数量。此外,无法对未配备VH软件的机器采集的图像中的动脉粥样硬化斑块进行表征。为了解决这些局限性,我们开发了一种斑块表征技术,可用于灰度级IVUS图像。我们的半自动化方法基于三步法。第一步,半自动检测斑块区域[关注区域(ROI)]。在第二步中,为ROI的每个像素提取一组特征,然后在第三步中,使用随机森林分类器将这些像素分为四类:致密钙,坏死芯,纤维化组织和纤维脂肪组织。为了训练和验证我们的方法,我们使用了从十名患者的虚拟组织学检查中获得的300个IVUS镜架。该方法的总体准确性为85.65%,表明我们的方法是可靠的,可以在临床和研究领域进行进一步研究。

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