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首页> 外文期刊>Neural computing & applications >Automatic lung segmentation in low-dose chest CT scans using convolutional deep and wide network (CDWN)
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Automatic lung segmentation in low-dose chest CT scans using convolutional deep and wide network (CDWN)

机译:使用卷积深和宽网络(CDWN)的低剂量胸部CT扫描中的自动肺分割

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摘要

Computed tomography (CT) imaging is the preferred imaging modality for diagnosing lung-related complaints. Automatic lung segmentation is the most common prerequisite to develop a computerized diagnosis system for analyzing chest CT images. In this paper, a convolutional deep and wide network (CDWN) is proposed to segment lung region from the chest CT scan for further medical diagnosis. Earlier lung segmentation techniques depend on handcrafted features, and their performance relies on the features considered for segmentation. The proposed model automatically segments the lung from complete CT scan in two laps: (1) learning the required filters to extract hierarchical feature representations at convolutional layers, (2) dense prediction with spatial features through learnable deconvolutional layers. The model has been trained and evaluated with low-dose chest CT scan images on LIDC-IDRI database. The proposed CDWN reaches the average Dice coefficient of 0.95 and accuracy of 98% in segmenting the lung regions from 20 test images and maintains consistent results for all test images. The experimental results confirm that the proposed approach achieves a superior performance compared to other state-of-the-art methods for lung segmentation.
机译:计算断层扫描(CT)成像是用于诊断肺相关投诉的首选成像模型。自动肺部分割是开发计算机化诊断系统的最常见的前提,用于分析胸部CT图像。在本文中,提出了一种卷积的深和宽网络(CDWN)从胸部CT扫描分段肺区进行进一步的医学诊断。早期的肺部分割技术取决于手工制作功能,它们的性能依赖于考虑分割的功能。所提出的模型在两个圈中自动分离肺部肺部:(1)学习所需的滤波器,以通过学习碎屑层的空间特征提取所需的滤波器,以通过学习碎屑层的空间特征来提取分层特征表示。该模型已经在LIDC-IDRI数据库上用低剂量胸部CT扫描图像进行培训和评估。所提出的CDWN达到0.95的平均骰子系数,并且在20个测试图像中分割肺部区域的精度为98%,并保持所有测试图像的一致结果。实验结果证实,与其他最先进的肺部分割方法相比,该方法的性能达到了卓越的性能。

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