University of Texas Southwestern Medical Center, Department of Radiation Oncology, 2280 Inwood Rd., Dallas, TX, 75214, United States.
University of Texas Southwestern Medical Center, Department of Radiation Oncology, 2280 Inwood Rd., Dallas, TX, 75214, United States.
Comput Biol Med. 2018 Jun 1;97:30-36. doi: 10.1016/j.compbiomed.2018.04.009. Epub 2018 Apr 16.
Because in PET imaging cervical tumors are close to the bladder with high capacity for the secreted FDG tracer, conventional intensity-based segmentation methods often misclassify the bladder as a tumor. Based on the observation that tumor position and area do not change dramatically from slice to slice, we propose a two-stage scheme that facilitates segmentation. In the first stage, we used a graph-cut based algorithm to obtain initial contouring of the tumor based on local similarity information between voxels; this was achieved through manual contouring of the cervical tumor on one slice. In the second stage, initial tumor contours were fine-tuned to more accurate segmentation by incorporating similarity information on tumor shape and position among adjacent slices, according to an intensity-spatial-distance map. Experimental results illustrate that the proposed two-stage algorithm provides a more effective approach to segmenting cervical tumors in 3DFDG PET images than the benchmarks used for comparison.
由于在 PET 成像中,宫颈肿瘤与具有高分泌 FDG 示踪剂能力的膀胱相邻,因此传统的基于强度的分割方法常常会错误地将膀胱分类为肿瘤。基于肿瘤位置和面积在切片之间不会剧烈变化的观察结果,我们提出了一种两阶段方案,以促进分割。在第一阶段,我们使用基于图割的算法根据体素之间的局部相似性信息获得肿瘤的初始轮廓;这是通过在一张切片上手动勾勒宫颈肿瘤来实现的。在第二阶段,通过根据强度-空间-距离图,将相邻切片上的肿瘤形状和位置的相似性信息纳入其中,对初始肿瘤轮廓进行微调,以实现更精确的分割。实验结果表明,与用于比较的基准相比,所提出的两阶段算法为在 3DFDG PET 图像中分割宫颈肿瘤提供了一种更有效的方法。