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Robust segmentation of arterial walls in intravascular ultrasound images using Dual Path U-Net

机译:使用双路U-NET的血管内超声图像中动脉壁的鲁棒分割

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A Fully Convolutional Network (FCN) based deep architecture called Dual Path U-Net (DPU-Net) is proposed for automatic segmentation of the lumen and media-adventitia in IntraVascular UltraSound (IVUS) frames, which is crucial for diagnosis of many cardiovascular diseases and also for facilitating 3D reconstructions of human arteries. One of the most prevalent problems in medical image analysis is the lack of training data. To overcome this limitation, we propose a twofold solution. First, we introduce a deep architecture that is able to learn using a small number of training images and still achieves a high degree of generalization ability. Second, we strengthen the proposed DPU-Net by having a real-time augmentor control the image augmentation process. Our real-time augmentor contains specially-designed operations that simulate three types of IVUS artifacts and integrate them into the training images. We exhaustively assessed our twofold contribution over Balocco's standard publicly available IVUS 20 MHz and 40 MHz B-mode dataset, which contain 109 training image, 326 test images and 19 training images, 59 test images, respectively. Models are trained from scratch with the training images provided and evaluated with two commonly used metrics in the IVUS segmentation literature, namely Jaccard Measure (JM) and Hausdorff Distance (HD). Experimental results show that DPU-Net achieves 0.87 JM, 0.82 mm HD and 0.86 JM, 1.07 mm HD over 40 MHz dataset for segmenting the lumen and the media, respectively. Also, DPU-Net achieves 0.90 JM, 0.25 mm HD and 0.92 JM, 0.30 mm HD over 20 MHz images for segmenting the lumen and the media, respectively. In addition, DPU-Net outperforms existing methods by 8-15% in terms of HD distance. DPUNet also shows a strong generalization property for predicting images in the test sets that contain a significant amount of major artifacts such as bifurcations, shadows, and side branches that are not common in the training set. Furthermore, DPU-Net
机译:基于完全卷积的网络(FCN)的深度架构,称为双路径U-Net(DPU-Net),用于血管内超声(IVUS)框架中的腔和介质复发症的自动分割,这对于许多心血管疾病的诊断至关重要并且还用于促进人类动脉的3D重建。医学图像分析中最普遍的问题之一是缺乏培训数据。为了克服这种限制,我们提出了一个双重解决方案。首先,我们介绍了一种深入的架构,能够使用少量训练图像来学习,并且仍然达到高度的泛化能力。其次,我们通过实时增强者控制图像增强过程来加强所提出的DPU-网。我们的实时增强器包含专门设计的操作,模拟三种类型的IVUS伪影,并将它们集成到培训图像中。我们彻底地评估了对鲍罗科标准可公开可用的IVUS 20 MHz和40 MHz B模式数据集的双重贡献,其中包含109次训练图像,326个测试图像和19次训练图像,59个测试图像。使用IVUS分段文献中的两个常用度量评估的训练图像从划痕训练,即Jaccard测量(JM)和Hausdorff距离(HD)。实验结果表明,DPU-NET分别实现0.87米,0.82mm HD和0.86米,1.07 mm HD,分别为40 MHz数据集,用于分割腔和介质。此外,DPU-Net分别达到0.90 JM,0.25mm HD和0.92 JM,分别超过20MHz的0.90mm HD,分别用于分割内腔和介质。此外,在高清距离方面,DPU-Net优于现有方法8-15%。 DPUNET还示出了用于预测测试集中的图像的强概括属性,该特性包含大量主要伪像(例如在训练集中不常见的分支)的主要伪影。此外,DPU-Net

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