State Key Laboratory of Precision Measurement Technology and Instruments, Department of Precision Instrument, Tsinghua University, Beijing, China.
State Key Laboratory of Precision Measurement Technology and Instruments, Department of Precision Instrument, Tsinghua University, Beijing, China.
Comput Biol Med. 2017 Dec 1;91:168-180. doi: 10.1016/j.compbiomed.2017.10.005. Epub 2017 Oct 12.
Lung segmentation on thoracic CT images plays an important role in early detection, diagnosis and 3D visualization of lung cancer. The segmentation accuracy, stability, and efficiency of serial CT scans have a significant impact on the performance of computer-aided detection. This paper proposes a global optimal hybrid geometric active contour model for automated lung segmentation on CT images. Firstly, the combination of global region and edge information leads to high segmentation accuracy in lung regions with weak boundaries or narrow bands. Secondly, due to the global optimality of energy functional, the proposed model is robust to the initial position of level set function and requires fewer iterations. Thus, the stability and efficiency of lung segmentation on serial CT slices can be greatly improved by taking advantage of the information between adjacent slices. In addition, to achieve the whole process of automated segmentation for lung cancer, two assistant algorithms based on prior shape and anatomical knowledge are proposed. The algorithms not only automatically separate the left and right lungs, but also include juxta-pleural tumors into the segmentation result. The proposed method was quantitatively validated on subjects from the publicly available LIDC-IDRI and our own data sets. Exhaustive experimental results demonstrate the superiority and competency of our method, especially compared with the typical edge-based geometric active contour model.
肺分割在胸部 CT 图像中起着重要作用,可用于肺癌的早期检测、诊断和三维可视化。CT 扫描序列的分割准确性、稳定性和效率对计算机辅助检测的性能有重大影响。本文提出了一种全局最优的混合几何主动轮廓模型,用于 CT 图像上的自动肺分割。首先,全局区域和边缘信息的组合导致在边界较弱或带宽较窄的肺区域具有较高的分割精度。其次,由于能量泛函的全局最优性,所提出的模型对水平集函数的初始位置具有鲁棒性,并且需要较少的迭代次数。因此,利用相邻切片之间的信息可以大大提高 CT 切片序列上的肺分割的稳定性和效率。此外,为了实现肺癌的全自动分割过程,提出了两种基于先验形状和解剖知识的辅助算法。这些算法不仅可以自动分离左右肺,还可以将肋胸膜肿瘤纳入分割结果中。该方法在公开的 LIDC-IDRI 和我们自己的数据集上进行了定量验证。详尽的实验结果表明了我们方法的优越性和竞争力,特别是与典型的基于边缘的几何主动轮廓模型相比。