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卷积神经网络在血管内超声图像分割中的应用:基于多中心数据集的评估。

Convolutional networks for the segmentation of intravascular ultrasound images: Evaluation on a multicenter dataset.

机构信息

School of Biomedical Engineering, Southern Medical University, 1023-1063 Shatai, South Road Baiyun District, Guangzhou, Guangdong 510515, China.

Biomedical Instrument Institute, School of Biomedical Engineering, Shanghai Jiao Tong University, 1954 Hua Shan Road Xuhui District, Shanghai 200030, China.

出版信息

Comput Methods Programs Biomed. 2022 Mar;215:106599. doi: 10.1016/j.cmpb.2021.106599. Epub 2021 Dec 23.

Abstract

BACKGROUND AND OBJECTIVE

The delineation of the lumen contour and external elastic lamina (EEL) in intravascular ultrasound (IVUS) images is crucial for the quantitative analysis of coronary atherosclerotic plaques. However, the presence of ultrasonic shadows and anatomical structures (such as bifurcations and calcified plaque) complicates the automatic delineation of the lumen contour and EEL. The purpose of this paper is to evaluate the IVUS segmentation performances of different convolutional networks and the impact factors on a large-scale multiple-center dataset.

METHODS

A total of 6516 cross-sectional images from 175 IVUS pullbacks acquired in different centers by different IVUS imaging catheters were screened from a corelab to evaluate the segmentation methods. The IVUS images included bifurcation, side branch ostia, and various image artifacts to reflect the general image characteristics in routine clinical acquisition. We compared three generic fully convolutional networks (FCNs) and two FCNs specifically designed for the segmentation of IVUS images and explored the factors impacting the segmentation performance, including the training images and the input of consecutive images to the models. The performance of the FCNs was evaluated by using the Dice similarity coefficient (DSC), the Jaccard index (JI), the Hausdorff distance (HD), linear regression and Bland-Altman analysis.

RESULTS

The 4-cascaded RefineNet and DeepLabv3+ outperformed U-net and IVUS-net in the segmentation of the lumen contour and EEL on IVUS images. DeepLabv3+ had the best segmentation performance, with DSCs of 0.927 and 0.944, JIs of 0.911 and 0.933, and HDs of 0.336 mm and 0.367 mm for delineation of the lumen and EEL, respectively. Excellent agreement between DeepLabv3+ and the manual delineation was found in the quantification of the coronary plaque area (r = 0.98).

CONCLUSIONS

The convolutional network architecture is effective in the automatic segmentation of IVUS images. It might contribute to the clinical application of quantitative IVUS analysis in real-world as well as the efficient assessment of coronary atherosclerosis.

摘要

背景与目的

血管内超声(IVUS)图像中管腔轮廓和外弹性膜(EEL)的描绘对于冠状动脉粥样硬化斑块的定量分析至关重要。然而,超声阴影和解剖结构(如分叉和钙化斑块)的存在使得管腔轮廓和 EEL 的自动描绘变得复杂。本文旨在评估不同卷积网络在大型多中心数据集上的 IVUS 分割性能及其影响因素。

方法

从核心实验室筛选了来自不同中心不同 IVUS 成像导管的 175 次 IVUS 回拉中的 6516 个横截面图像,以评估分割方法。IVUS 图像包括分叉、侧支开口和各种图像伪影,以反映常规临床采集中的一般图像特征。我们比较了三种通用的全卷积网络(FCN)和两种专门用于 IVUS 图像分割的 FCN,并探讨了影响分割性能的因素,包括训练图像和模型输入的连续图像。通过使用 Dice 相似系数(DSC)、Jaccard 指数(JI)、Hausdorff 距离(HD)、线性回归和 Bland-Altman 分析评估 FCN 的性能。

结果

在 IVUS 图像中,4 级 RefineNet 和 DeepLabv3+在管腔轮廓和 EEL 的分割上优于 U-net 和 IVUS-net。DeepLabv3+具有最佳的分割性能,管腔和 EEL 的 DSC 分别为 0.927 和 0.944,JI 分别为 0.911 和 0.933,HD 分别为 0.336mm 和 0.367mm。DeepLabv3+在冠状动脉斑块面积的定量分析中与手动描绘具有极好的一致性(r=0.98)。

结论

卷积网络架构在 IVUS 图像的自动分割中是有效的。它可能有助于在真实世界中应用定量 IVUS 分析,并有助于有效评估冠状动脉粥样硬化。

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