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完全自动化的鲁棒颈动脉超声 IMT 测量边缘捕捉器,适用于包含 300 张图像的多机构数据库。

Completely automated robust edge snapper for carotid ultrasound IMT measurement on a multi-institutional database of 300 images.

机构信息

Biolab, Dipartimento di Elettronica, Politecnico di Torino, Corso Duca degli Abruzzi, 24, 10129 Turin, Italy.

出版信息

Med Biol Eng Comput. 2011 Aug;49(8):935-45. doi: 10.1007/s11517-011-0781-8. Epub 2011 Apr 21.

Abstract

The carotid intima-media thickness (IMT) is the most used marker for the progression of atherosclerosis and onset of cardiovascular diseases. Computer-aided measurements improve accuracy and precision, but usually require user interaction. In this paper we characterized a new and completely automated technique for carotid segmentation and IMT measurement based on the merits of two previously developed techniques. We used an integrated approach of intelligent image feature extraction and line fitting for automatically locating the carotid artery in the image frame, followed by wall interfaces extraction based on a Gaussian edge operator. We called our system-CARES. We validated CARES on a multi-institutional database of 300 carotid ultrasound images. The IMT measurement bias was 0.032 ± 0.141 mm. Our novel approach of CARES processed 96% of the images in the database taken from two different institutions. In order to evaluate its performance, the figure-of-merit (FoM) was defined as the percent ratio between the average IMT computed by CARES and the one obtained from manual tracings by expert sonographers. The estimated FoM by CARES was 95.7%. Comparing the IMT bias of CARES with our previously published method CALEX that showed an IMT bias equal to 0.099 ± 0.137 mm, CARES improved the IMT accuracy by 67%, while increasing the standard deviation by 3%. CARES could be a useful research tool for processing large datasets in multi-center studies involving atherosclerosis.

摘要

颈总动脉内膜-中层厚度(IMT)是动脉粥样硬化进展和心血管疾病发生的最常用标志物。计算机辅助测量可提高准确性和精密度,但通常需要用户交互。本文我们介绍了一种新的完全自动化的颈动脉分割和 IMT 测量技术,该技术基于两种先前开发的技术的优点。我们使用智能图像特征提取和直线拟合的综合方法自动定位图像帧中的颈动脉,然后基于高斯边缘算子提取壁界面。我们称我们的系统为 CARES。我们在 300 张颈动脉超声图像的多机构数据库上验证了 CARES。IMT 测量偏差为 0.032 ± 0.141mm。我们的 CARES 系统的新方法处理了来自两个不同机构的数据库中 96%的图像。为了评估其性能,定义了质量因数(FoM)作为 CARES 计算的平均 IMT 与由专家超声医师手动追踪获得的 IMT 之间的平均比例。CARES 估计的 FoM 为 95.7%。与我们之前发表的方法 CALEX 相比,CALEX 的 IMT 偏差为 0.099 ± 0.137mm,CARES 提高了 IMT 准确性 67%,同时标准差增加了 3%。CARES 可以成为在涉及动脉粥样硬化的多中心研究中处理大型数据集的有用研究工具。

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