Xu Wenjing, Yang Xiong, Li Yikang, Jiang Guihua, Jia Sen, Gong Zhenhuan, Mao Yufei, Zhang Shuheng, Teng Yanqun, Zhu Jiayu, He Qiang, Wan Liwen, Liang Dong, Li Ye, Hu Zhanli, Zheng Hairong, Liu Xin, Zhang Na
Paul C. Lauterbur Research Center for Biomedical Imaging, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen, China.
Faculty of Information Technology, Beijing University of Technology, Beijing, China.
Front Neurosci. 2022 Jun 1;16:888814. doi: 10.3389/fnins.2022.888814. eCollection 2022.
To develop and evaluate an automatic segmentation method of arterial vessel walls and plaques, which is beneficial for facilitating the arterial morphological quantification in magnetic resonance vessel wall imaging (MRVWI).
MRVWI images acquired from 124 patients with atherosclerotic plaques were included. A convolutional neural network-based deep learning model, namely VWISegNet, was used to extract the features from MRVWI images and calculate the category of each pixel to facilitate the segmentation of vessel wall. Two-dimensional (2D) cross-sectional slices reconstructed from all plaques and 7 main arterial segments of 115 patients were used to build and optimize the deep learning model. The model performance was evaluated on the remaining nine-patient test set using the Dice similarity coefficient (DSC) and average surface distance (ASD).
The proposed automatic segmentation method demonstrated satisfactory agreement with the manual method, with DSCs of 93.8% for lumen contours and 86.0% for outer wall contours, which were higher than those obtained from the traditional U-Net, Attention U-Net, and Inception U-Net on the same nine-subject test set. And all the ASD values were less than 0.198 mm. The Bland-Altman plots and scatter plots also showed that there was a good agreement between the methods. All intraclass correlation coefficient values between the automatic method and manual method were greater than 0.780, and greater than that between two manual reads.
The proposed deep learning-based automatic segmentation method achieved good consistency with the manual methods in the segmentation of arterial vessel wall and plaque and is even more accurate than manual results, hence improved the convenience of arterial morphological quantification.
开发并评估一种动脉血管壁和斑块的自动分割方法,这有助于在磁共振血管壁成像(MRVWI)中促进动脉形态学定量分析。
纳入从124例患有动脉粥样硬化斑块的患者获取的MRVWI图像。使用基于卷积神经网络的深度学习模型VWISegNet从MRVWI图像中提取特征并计算每个像素的类别,以促进血管壁的分割。从所有斑块和115例患者的7个主要动脉节段重建的二维(2D)横截面切片用于构建和优化深度学习模型。使用Dice相似系数(DSC)和平均表面距离(ASD)在其余9例患者的测试集上评估模型性能。
所提出的自动分割方法与手动方法显示出令人满意的一致性,管腔轮廓的DSC为93.8%,外壁轮廓的DSC为86.0%,高于在相同的9例受试者测试集上从传统U-Net、注意力U-Net和Inception U-Net获得的值。并且所有ASD值均小于0.198毫米。Bland-Altman图和散点图也表明这些方法之间具有良好的一致性。自动方法与手动方法之间的所有组内相关系数值均大于0.780,且大于两次手动读取之间的值。
所提出的基于深度学习的自动分割方法在动脉血管壁和斑块的分割中与手动方法取得了良好的一致性,甚至比手动结果更准确,从而提高了动脉形态学定量分析的便利性。