论文标题
维修人类气道细分的对抗变压器
Adversarial Transformer for Repairing Human Airway Segmentation
论文作者
论文摘要
周围支气管的描述中的不连续性阻碍了自动气道分割模型的潜在临床应用。此外,这种模型的部署受不同中心之间的数据异质性的限制,病理异常也使远端小气道的稳健分割变得难以实现。同时,肺部疾病的诊断和预后通常依赖于评估这些解剖区域的结构变化。为了解决这一差距,本文提出了一个基于贴片尺度的基于对抗性的改进网络,该网络将进行初步分割以及原始的CT图像,并输出气道结构的精制掩码。该方法在包含健康病例,囊性纤维化病例和COVID-19病例的三个不同数据集上进行了验证。该结果通过七个指标进行了定量评估,并实现了被检测到的长度比和检测到的分支比率增长15%以上,与先前提出的模型相比,表现出令人鼓舞的性能。视觉插图还证明了我们的改进,以斑块尺度的判别器和中心线目标函数为指导,可有效地检测不连续性和缺失的细支气管。此外,我们的改进管道的普遍性在以前的三个模型上进行了测试,并显着提高了其分割完整性。
Discontinuity in the delineation of peripheral bronchioles hinders the potential clinical application of automated airway segmentation models. Moreover, the deployment of such models is limited by the data heterogeneity across different centres, and pathological abnormalities also make achieving accurate robust segmentation in distal small airways difficult. Meanwhile, the diagnosis and prognosis of lung diseases often rely on evaluating structural changes in those anatomical regions. To address this gap, this paper presents a patch-scale adversarial-based refinement network that takes in preliminary segmentation along with original CT images and outputs a refined mask of the airway structure. The method is validated on three different datasets encompassing healthy cases, cases with cystic fibrosis and cases with COVID-19. The results are quantitatively evaluated by seven metrics and achieved more than a 15% rise in detected length ratio and detected branch ratio, showing promising performance compared to previously proposed models. The visual illustration also proves our refinement guided by a patch-scale discriminator and centreline objective functions is effective in detecting discontinuities and missing bronchioles. Furthermore, the generalizability of our refinement pipeline is tested on three previous models and improves their segmentation completeness significantly.