Department of Electrical Engineering, Bahria University, 13-National Stadium Road, Karachi, 75620, Pakistan.
Department of Electrical and Power Engineering, Pakistan Navy Engineering College, National University of Science and Technology, Karachi, Pakistan.
Comput Biol Med. 2018 May 1;96:214-226. doi: 10.1016/j.compbiomed.2018.03.015. Epub 2018 Mar 28.
Lung nodule segmentation in CT images and its subsequent volume analysis can help determine the malignancy status of a lung nodule. While several efficient segmentation schemes have been proposed, only a few studies evaluated the segmentation's performance for large nodules. In this research, we contribute a semi-automatic system which is capable of performing robust 3-D segmentations on both small and large nodules with good accuracy. The target CT volume is de-noised with an anisotropic diffusion filter and a region of interest is selected around the target nodule on a reference slice. The proposed model performs nodule segmentation by incorporating a mean intensity based threshold in Geodesic Active Contour model in level sets. We also devise an adaptive technique using image intensity histogram to estimate the desired mean intensity of the nodule. The proposed system is validated on both lung nodules and phantoms collected from publicly available diverse databases. Quantitative and visual comparative analysis of the proposed work with the Chan-Vese algorithm and statistic active contour model of 3D Slicer platform is also presented. The resulting mean spatial overlap between segmented nodules and reference nodules is 0.855, the mean volume bias is 0.10±0.2 ml and the algorithm repeatability is 0.060 ml. The achieved results suggest that the proposed method can be used for volume estimations of small as well as large-sized nodules.
CT 图像中的肺结节分割及其随后的体积分析有助于确定肺结节的恶性程度。虽然已经提出了几种有效的分割方案,但只有少数研究评估了大结节的分割性能。在这项研究中,我们提出了一种半自动系统,能够对小和大结节进行稳健的 3D 分割,具有很好的准确性。目标 CT 体积用各向异性扩散滤波器去噪,并在参考切片上选择目标结节周围的感兴趣区域。所提出的模型通过在水平集的测地活动轮廓模型中结合基于平均强度的阈值来执行结节分割。我们还设计了一种使用图像强度直方图来估计结节所需平均强度的自适应技术。该系统在来自不同公共数据库的肺结节和体模上进行了验证。还对基于 Chan-Vese 算法和 3D Slicer 平台的统计主动轮廓模型的提出的工作进行了定量和可视化比较分析。分割结节和参考结节之间的平均空间重叠为 0.855,平均体积偏差为 0.10±0.2 ml,算法重复性为 0.060 ml。所获得的结果表明,该方法可用于小尺寸和大尺寸结节的体积估计。