University of Mons, Place du Parc, 20, 7000 Mons, Belgium.
Comput Med Imaging Graph. 2012 Dec;36(8):634-42. doi: 10.1016/j.compmedimag.2012.08.004. Epub 2012 Sep 14.
Conventional X-ray radiography remains nowadays the most common method to analyze spinal mobility in two dimensions. Therefore, the objective of this paper is to develop a framework dedicated to the fully automatic cervical spine mobility analysis on X-ray images. To this aim, we propose an approach based on three main steps: fully automatic vertebra detection, vertebra segmentation and angular measurement. The accuracy of the method was assessed for a total of 245 vertebræ. For the vertebra detection, we proposed an adapted version of two descriptors, namely Scale-invariant Feature Transform (SIFT) and Speeded-up Robust Features (SURF), coupled with a multi-class Support Vector Machine (SVM) classifier. Vertebræ are successfully detected in 89.8% of cases and it is demonstrated that SURF slightly outperforms SIFT. The Active Shape Model approach was considered as a segmentation procedure. We observed that a statistical shape model specific to the vertebral level improves the results. Angular errors of cervical spine mobility are presented. We showed that these errors remain within the inter-operator variability of the reference method.
传统的 X 射线射线照相术至今仍是分析二维脊柱活动度最常用的方法。因此,本文的目的是开发一个专门用于 X 射线图像上全自动颈椎活动度分析的框架。为此,我们提出了一种基于三个主要步骤的方法:全自动椎体检测、椎体分割和角度测量。该方法的准确性针对总共 245 个椎体进行了评估。对于椎体检测,我们提出了两种描述符(即 Scale-invariant Feature Transform(SIFT)和 Speeded-up Robust Features(SURF))的自适应版本,以及多类支持向量机(SVM)分类器。成功检测到 89.8%的椎体,结果表明 SURF 略优于 SIFT。主动形状模型方法被认为是一种分割过程。我们观察到,针对特定椎体水平的统计形状模型可以改善结果。还介绍了颈椎活动度的角度误差。我们表明,这些误差仍在参考方法的操作员间变异性范围内。