Li Hong, Santago Peter
Department of Biomedical Engineering, Wake Forest University School of Medicine, Medical Center Blvd., Winston-Salem, NC 27157-1022, USA.
J Digit Imaging. 2005 Mar;18(1):42-54. doi: 10.1007/s10278-004-1032-4.
We present a fully automated three-dimensional (3-D) segmentation algorithm to extract the colon lumen surface in CT colonography. Focusing on significant-size polyp detection, we target at an efficient algorithm that maximizes overall colon coverage, minimizes the extracolonic components, maintains local shape accuracy, and achieves high segmentation speed. Two-dimensional (2-D) image processing techniques are employed first, resulting in automatic seed placement and better colon coverage. This is followed by near-air threshold 3-D region-growing using an improved marching-cubes algorithm, which provides fast and accurate surface generation. The algorithm constructs a well-organized vertex-triangle structure that uniquely employs a hash table method, yielding an order of magnitude speed improvement. We segment two scans, prone and supine, independently and with the goal of improved colon coverage. Both segmentations would be available for subsequent polyp detection systems. Segmenting and analyzing both scans improves surface coverage by at least 6% over supine or prone alone. According to subjective evaluation, the average coverage is about 87.5% of the entire colon. Employing near-air threshold and elongation criteria, only 6% of the data sets include extracolonic components (EC) in the segmentation. The observed surface shape accuracy of the segmentation is adequate for significant-size (6 mm) polyp detection, which is also verified by the results of the prototype detection algorithm. The segmentation takes less than 5 minutes on an AMD 1-GHz single-processor PC, which includes reading the volume data and writing the surface results. The surface-based segmentation algorithm is practical for subsequent polyp detection algorithms in that it produces high coverage, has a low EC rate, maintains local shape accuracy, and has a computational efficiency that makes real-time polyp detection possible. A fully automatic or computer-aided polyp detection system using this technique is likely to benefit future colon cancer early screening.
我们提出了一种全自动三维(3-D)分割算法,用于在CT结肠造影中提取结肠腔表面。针对大尺寸息肉检测,我们旨在设计一种高效算法,以实现最大程度的结肠整体覆盖、最小化结肠外成分、保持局部形状准确性并实现高分割速度。首先采用二维(2-D)图像处理技术,实现自动种子点放置并提高结肠覆盖度。随后使用改进的移动立方体算法进行近空气阈值三维区域生长,从而快速准确地生成表面。该算法构建了一个组织良好的顶点-三角形结构,独特地采用哈希表方法,速度提高了一个数量级。我们独立分割仰卧位和俯卧位的两次扫描,目标是提高结肠覆盖度。两次分割结果均可用于后续的息肉检测系统。与单独的仰卧位或俯卧位扫描相比,对两次扫描进行分割和分析可将表面覆盖度至少提高6%。根据主观评估,平均覆盖度约为整个结肠的87.5%。采用近空气阈值和伸长标准,在分割数据集中只有6%包含结肠外成分(EC)。分割得到的表面形状精度足以用于大尺寸(6毫米)息肉检测,原型检测算法的结果也验证了这一点。在一台AMD 1-GHz单处理器PC上,分割过程耗时不到5分钟,包括读取体数据和写入表面结果。基于表面的分割算法对于后续的息肉检测算法具有实用性,因为它具有高覆盖度、低EC率、保持局部形状准确性且计算效率高,使得实时息肉检测成为可能。使用该技术的全自动或计算机辅助息肉检测系统可能会使未来的结肠癌早期筛查受益。