Department of Computer Science and Engineering, SUNY at Buffalo, Buffalo, NY 14260, USA.
Int J Comput Assist Radiol Surg. 2011 Jan;6(1):119-26. doi: 10.1007/s11548-010-0487-7. Epub 2010 Jun 11.
A CAD system for lumbar disc degeneration and herniation based on clinical MR images can aid diagnostic decision-making provided the method is robust, efficient, and accurate.
A Bayesian-based classifier with a Gibbs distribution was designed and implemented for diagnosing lumbar disc herniation. Each disc is segmented with a gradient vector flow active contour model (GVF-snake) to extract shape features that feed a classifier. The GVF-snake is automatically initialized with an inner boundary of the disc initiated by a point inside the disc. This point is automatically generated by our previous work on lumbar disc labeling. The classifier operates on clinical T2-SPIR weighted sagittal MRI of the lumbar area. The classifier is applied slice-by-slice to tag herniated discs if they are classified as herniated in any of the 2D slices. This technique detects all visible herniated discs regardless of their location (lateral or central). The gold standard for the ground truth was obtained from collaborating radiologists by analyzing the clinical diagnosis report for each case.
An average 92.5% herniation diagnosis accuracy was observed in a cross-validation experiment with 65 clinical cases. The random leave-out experiment runs ten rounds; in each round, 35 cases were used for testing and the remaining 30 cases were used for training.
An automatic robust disk herniation diagnostic method for clinical lumbar MRI was developed and tested. The method is intended for clinical practice to support reliable decision-making.
基于临床磁共振图像的腰椎间盘退变和突出 CAD 系统,如果方法具有稳健性、高效性和准确性,则可以辅助诊断决策。
设计并实现了一种基于贝叶斯分类器和 Gibbs 分布的分类器,用于诊断腰椎间盘突出症。使用梯度向量流主动轮廓模型(GVF-snake)对每个椎间盘进行分割,以提取形状特征,然后将这些特征输入分类器。GVF-snake 由椎间盘内的一个点自动初始化,该点由我们之前在腰椎间盘标记上的工作自动生成。分类器在临床 T2-SPIR 加权矢状位 MRI 上运行。如果在任何 2D 切片中分类为突出,则将分类器逐片应用于标记突出的椎间盘。该技术可以检测到所有可见的椎间盘,无论其位置(外侧或中央)如何。通过分析每个病例的临床诊断报告,与合作放射科医生一起获得了用于ground truth 的金标准。
在 65 个临床病例的交叉验证实验中,观察到平均 92.5%的突出诊断准确率。随机留出实验运行十轮;在每轮中,使用 35 个病例进行测试,其余 30 个病例用于训练。
开发并测试了一种用于临床腰椎 MRI 的自动稳健椎间盘突出诊断方法。该方法旨在为临床实践提供支持,以实现可靠的决策。