医学
组内相关
狭窄
颈内动脉
放射科
超声波
内膜中层厚度
颈总动脉
Sørensen–骰子系数
颈动脉
分割
心脏病学
人工智能
图像分割
临床心理学
计算机科学
心理测量学
作者
M.W. Liu,Wenjing Gao,Di Song,Yinghui Dong,Hong Shen,Chen Cui,Siyuan Shi,Wu Kai,Jiayi Chen,Jinfeng Xu,Fajin Dong
标识
DOI:10.1177/17085381241246312
摘要
Objectives Assessment of plaque stenosis severity allows better management of carotid source of stroke. Our objective is to create a deep learning (DL) model to segment carotid intima-media thickness and plaque and further automatically calculate plaque stenosis severity on common carotid artery (CCA) transverse section ultrasound images. Methods Three hundred and ninety images from 376 individuals were used to train (235/390, 60%), validate (39/390, 10%), and test (116/390, 30%) on a newly proposed CANet model. We also evaluated the model on an external test set of 115 individuals with 122 images acquired from another hospital. Comparative studies were conducted between our CANet model with four state-of-the-art DL models and two experienced sonographers to re-evaluate the present model’s performance. Results On the internal test set, our CANet model outperformed the four comparative models with Dice values of 95.22% versus 90.15%, 87.48%, 90.22%, and 91.56% on lumen-intima (LI) borders and 96.27% versus 91.40%, 88.94%, 91.19%, and 92.88% on media-adventitia (MA) borders. On the external test set, our model still produced excellent results with a Dice value of 92.41%. Good consistency of stenosis severity calculation was observed between CANet model and experienced sonographers, with Intraclass Correlation Coefficient (ICC) of 0.927 and 0.702, Pearson’s Correlation Coefficient of 0.928 and 0.704 on internal and external test set, respectively. Conclusions Our CANet model achieved excellent performance in the segmentation of carotid IMT and plaques as well as automated calculation of stenosis severity.
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