Department of Radiation Oncology, Washington University School of Medicine, 4921 Parkview Place, St. Louis, MO 63110, United States.
Eur J Radiol. 2012 Nov;81(11):3535-41. doi: 10.1016/j.ejrad.2012.01.001. Epub 2012 Jan 23.
This paper explored the feasibility of using spectral clustering to segment FDG-PET tumor in the presence of heterogeneous background. Spectral clustering refers to a class of clustering methods which employ the eigenstructure of a similarity matrix to partition image voxels into disjoint clusters. The similarity between two voxels was measured with the intensity distance scaled by voxel-varying factors capturing local statistics and the number of clusters was inferred based on rotating the eigenvector matrix for the maximally sparse representation. Metrics used to evaluate the segmentation accuracy included: Dice coefficient, Jaccard coefficient, false positive dice, false negative dice, symmetric mean absolute surface distance, and absolute volumetric difference. Comparison of segmentation results between the presented method and the adaptive thresholding method on the simulated PET data shows the former attains an overall better detection accuracy. Applying the presented method on patient data gave segmentation results in fairly good agreement with physician manual annotations. These results indicate that the presented method have the potential to accurately delineate complex shaped FDG-PET tumors containing inhomogeneous activities in the presence of heterogeneous background.
本文探讨了在存在不均匀背景的情况下,使用谱聚类对 FDG-PET 肿瘤进行分割的可行性。谱聚类是一类聚类方法,它利用相似矩阵的特征结构将图像体素分割成不相交的聚类。两个体素之间的相似性通过强度距离进行度量,该距离由捕获局部统计信息的体素变化因子进行缩放,聚类的数量基于旋转特征向量矩阵以实现最大稀疏表示来推断。用于评估分割准确性的指标包括:Dice 系数、Jaccard 系数、假阳性 Dice、假阴性 Dice、对称平均表面距离和绝对体积差异。在模拟 PET 数据上,将所提出的方法与自适应阈值方法的分割结果进行比较,结果表明前者总体上具有更好的检测准确性。将所提出的方法应用于患者数据,得到的分割结果与医生手动注释相当吻合。这些结果表明,该方法具有在存在不均匀背景的情况下准确描绘复杂形状 FDG-PET 肿瘤的潜力,其中包含不均匀的活性。