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Tracking and Segmentation of the Airways in Chest CT Using a Fully Convolutional Network

机译:使用完全卷积网络对胸部CT中的气道进行跟踪和分割

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Airway segmentation plays an important role in analyzing chest computed tomography (CT) volumes such as lung cancer detection, chronic obstructive pulmonary disease (COPD), and surgical navigation. However, due to the complex tree-like structure of the airways, obtaining segmentation results with high accuracy for a complete 3D airway extraction remains a challenging task. In recent years, deep learning based methods, especially fully convolutional networks (FCN), have improved the state-of-the-art in many segmentation tasks. 3D U-Net is an example that optimized for 3D biomedical imaging. It consists of a contracting encoder part to analyze the input volume and a successive decoder part to generate integrated 3D segmentation results. While 3D U-Net can be trained for any 3D segmentation task, its direct application to airway segmentation is challenging due to differently sized airway branches. In this work, we combine 3D deep learning with image-based tracking in order to automatically extract the airways. Our method is driven by adaptive cuboidal volume of interest (VOI) analysis using a 3D U-Net model. We track the airways along their centerlines and set VOIs according to the diameter and running direction of each airway. After setting a VOI, the 3D U-Net is utilized to extract the airway region inside the VOI. All extracted candidate airway regions are unified to form an integrated airway tree. We trained on 30 cases and tested our method on an additional 20 cases. Compared with other state-of-the-art airway tracking and segmentation methods, our method can increase the detection rate by 5.6 while decreasing the false positives (FP) by 0.7 percentage points.
机译:气道分割在分析胸部计算机断层扫描(CT)量(例如肺癌检测,慢性阻塞性肺疾病(COPD)和手术导航)中起着重要作用。但是,由于气道复杂的树状结构,要获得完整的3D气道提取的高精度分割结果仍然是一项艰巨的任务。近年来,基于深度学习的方法,尤其是全卷积网络(FCN),已改善了许多细分任务中的最新技术。 3D U-Net是针对3D生物医学成像进行优化的示例。它由一个收缩的编码器部分(用于分析输入量)和一个连续的解码器部分(用于生成集成的3D分割结果)组成。尽管3D U-Net可以接受任何3D分割任务的培训,但由于气道分支的大小不同,将其直接应用于气道分割仍是一项挑战。在这项工作中,我们将3D深度学习与基于图像的跟踪相结合,以自动提取呼吸道。我们的方法是通过使用3D U-Net模型的自适应立方体感兴趣体积(VOI)分析来驱动的。我们沿着气道的中心线跟踪气道,并根据每个气道的直径和运行方向设置VOI。设置VOI后,可使用3D U-Net提取VOI内部的气道区域。将所有提取的候选气道区域统一起来,以形成一个综合的气道树。我们对30例进行了培训,并在另外20例中测试了我们的方法。与其他最新的气道跟踪和分割方法相比,我们的方法可以将检测率提高5.6,而将误报率(FP)降低0.7个百分点。

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