Automatic Segmentation of Pulmonary Lobes in Pulmonary CT Images using Atlas-based Unsupervised Learning Network

Ruxue Hu, Hongkai Wang, T. Ristaniemi, Wentao Zhu, Ling Chen, Hui Shen, Fan Rao
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Abstract

Pulmonary lobes segmentation of pulmonary CT images is important for assistant therapy and diagnosis of pulmonary disease in many clinical tasks. Recently supervised deep learning methods are applied widely in fast automatic medical image segmentation including pulmonary lobes segmentation of pulmonary CT images. However, they require plenty of ground truth due to their supervised learning scheme, which are always difficult to realize in practice. To address this issue, in this study we extend an existed unsupervised learning network with an extra pulmonary mask constraint to develop a deformable pulmonary lobes atlas and apply it for fast automatic segmentation of pulmonary lobes in pulmonary CT images. The experiment on 40 pulmonary CT images shows that our method can segment the pulmonary lobes in seconds, and achieve average Dice of 0.906 ± 0.044 and average surface distance of 0.495 ± 0.380 mm, which outperforms the state-of-the-art methods in segmentation accuracy. Our method successfully combines the advantages of both deformable atlas and unsupervised learning for automatic segmentation and ensures the consistent and topology preserving of pulmonary lobes without any postprocessing.
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基于atlas的无监督学习网络的肺CT图像肺叶自动分割
在许多临床任务中,肺CT图像的肺叶分割对辅助肺部疾病的治疗和诊断具有重要意义。近年来,监督深度学习方法在医学图像的快速自动分割中得到了广泛的应用,其中包括肺CT图像的肺叶分割。然而,由于它们的监督式学习方案,需要大量的ground truth,这在实践中往往难以实现。为了解决这一问题,在本研究中,我们扩展了现有的无监督学习网络,增加了一个额外的肺掩膜约束,开发了一个可变形的肺叶图谱,并将其应用于肺CT图像中肺叶的快速自动分割。对40张肺CT图像的实验表明,该方法可以在秒内分割肺叶,平均Dice为0.906±0.044,平均表面距离为0.495±0.380 mm,在分割精度上优于现有方法。该方法成功地结合了可变形图谱和无监督学习的优点,在不进行任何后处理的情况下,保证了肺叶图像的一致性和拓扑保持性。
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