Li Shuo, Fevens Thomas, Krzyzak Adam, Li Song
Medical Imaging Group, Department of Software Engineering and Computer Science, Concordia University, 1400 De Maisonneuve Blvd. West, Montréal, Qué., Canada H3G 1M8.
Comput Med Imaging Graph. 2006 Mar;30(2):65-74. doi: 10.1016/j.compmedimag.2005.10.007. Epub 2006 Feb 24.
An automatic variational level set segmentation framework for Computer Aided Dental X-rays Analysis (CADXA) in clinical environments is proposed. Designed for clinical environments, the segmentation contains two stages: a training stage and a segmentation stage. During the training stage, first, manually chosen representative images are segmented using hierarchical level set region detection. Then the window based feature extraction followed by principal component analysis (PCA) is applied and results are used to train a support vector machine (SVM) classifier. During the segmentation stage, dental X-rays are classified first by the trained SVM. The classifier provides initial contours which are close to correct boundaries for three coupled level sets driven by a proposed pathologically variational modeling which greatly accelerates the level set segmentation. Based on the segmentation results and uncertainty maps that are built based on a proposed uncertainty measurement, a computer aided analysis scheme is applied. The experimental results show that the proposed method is able to provide an automatic pathological segmentation which naturally segments those problem areas. Based on the segmentation results, the analysis scheme is able to provide indications of possible problem areas of bone loss and decay to the dentists. As well, the experimental results show that the proposed segmentation framework is able to speed up the level set segmentation in clinical environments.
提出了一种用于临床环境中计算机辅助牙科X射线分析(CADXA)的自动变分水平集分割框架。该分割框架专为临床环境设计,包含两个阶段:训练阶段和分割阶段。在训练阶段,首先,使用分层水平集区域检测对手动选择的代表性图像进行分割。然后应用基于窗口的特征提取,随后进行主成分分析(PCA),其结果用于训练支持向量机(SVM)分类器。在分割阶段,首先由训练好的SVM对牙科X射线进行分类。分类器提供初始轮廓,这些轮廓接近由提出的病理变分模型驱动的三个耦合水平集的正确边界,这大大加速了水平集分割。基于分割结果和根据提出的不确定性测量构建的不确定性图,应用计算机辅助分析方案。实验结果表明,所提出的方法能够提供自动病理分割,自然地分割那些问题区域。基于分割结果,分析方案能够向牙医提供骨质流失和龋齿可能问题区域的指示。此外,实验结果表明,所提出的分割框架能够在临床环境中加速水平集分割。