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基于高斯混合模型聚类的超声B模式图像检测颈动脉内膜中层厚度

[Detection of carotid intima and media thicknesses based on ultrasound B-mode images clustered with Gaussian mixture model].

作者信息

Qi Guiling, He Bingbing, Zhang Yufeng, Li Zhiyao, Mo Hong, Cheng Jie

机构信息

The Department of Electronic Engineering, School of Information, Yunnan University, Kunming 650091, P.R.China.

The Department of Ultrasound, the Third Affiliated Hospital of Kunming Medical College, Kunming 650118, P.R.China.

出版信息

Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2020 Dec 25;37(6):1080-1088. doi: 10.7507/1001-5515.201906027.

Abstract

In clinic, intima and media thickness are the main indicators for evaluating the development of atherosclerosis. At present, these indicators are measured by professional doctors manually marking the boundaries of the inner and media on B-mode images, which is complicated, time-consuming and affected by many artificial factors. A grayscale threshold method based on Gaussian Mixture Model (GMM) clustering is therefore proposed to detect the intima and media thickness in carotid arteries from B-mode images in this paper. Firstly, the B-mode images are clustered based on the GMM, and the boundary between the intima and media of the vessel wall is then detected by the gray threshold method, and finally the thickness of the two is measured. Compared with the measurement technique using the gray threshold method directly, the clustering of B-mode images of carotid artery solves the problem of gray boundary blurring of inner and middle membrane, thereby improving the stability and detection accuracy of the gray threshold method. In the clinical trials of 120 healthy carotid arteries, means of 4 manual measurements obtained by two experts are used as reference values. Experimental results show that the normalized root mean square errors (NRMSEs) of the estimated intima and media thickness after GMM clustering were 0.104 7 ± 0.076 2 and 0.097 4 ± 0.068 3, respectively. Compared with the results of the direct gray threshold estimation, means of NRMSEs are reduced by 19.6% and 22.4%, respectively, which indicates that the proposed method has higher measurement accuracy. The standard deviations are reduced by 17.0% and 21.7%, respectively, which indicates that the proposed method has better stability. In summary, this method is helpful for early diagnosis and monitoring of vascular diseases, such as atherosclerosis.

摘要

在临床上,内膜和中膜厚度是评估动脉粥样硬化发展的主要指标。目前,这些指标是由专业医生通过在B超图像上手动标记内膜和中膜的边界来测量的,这一过程复杂、耗时且受多种人为因素影响。因此,本文提出一种基于高斯混合模型(GMM)聚类的灰度阈值法,用于从B超图像中检测颈动脉的内膜和中膜厚度。首先,基于GMM对B超图像进行聚类,然后通过灰度阈值法检测血管壁内膜和中膜之间的边界,最后测量两者的厚度。与直接使用灰度阈值法的测量技术相比,颈动脉B超图像的聚类解决了内膜和中膜灰度边界模糊的问题,从而提高了灰度阈值法的稳定性和检测准确性。在120条健康颈动脉的临床试验中,将两位专家进行4次手动测量得到的平均值作为参考值。实验结果表明,GMM聚类后估计的内膜和中膜厚度的归一化均方根误差(NRMSE)分别为0.104 7±0.076 2和0.097 4±0.068 3。与直接灰度阈值估计的结果相比,NRMSE的平均值分别降低了19.6%和22.4%,这表明所提方法具有更高的测量精度。标准差分别降低了17.0%和21.7%,这表明所提方法具有更好的稳定性。综上所述,该方法有助于血管疾病如动脉粥样硬化的早期诊断和监测。

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