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基于支持向量机分类的多对比度 MR 图像膝关节软骨自动分割方法:空间相关性分析。

Automatic knee cartilage segmentation from multi-contrast MR images using support vector machine classification with spatial dependencies.

机构信息

School of Electrical and Electronic Engineering, Nanyang Technological University, 639798, Singapore.

出版信息

Magn Reson Imaging. 2013 Dec;31(10):1731-43. doi: 10.1016/j.mri.2013.06.005. Epub 2013 Jul 15.

DOI:10.1016/j.mri.2013.06.005
PMID:23867282
Abstract

Accurate segmentation of knee cartilage is required to obtain quantitative cartilage measurements, which is crucial for the assessment of knee pathology caused by musculoskeletal diseases or sudden injuries. This paper presents an automatic knee cartilage segmentation technique which exploits a rich set of image features from multi-contrast magnetic resonance (MR) images and the spatial dependencies between neighbouring voxels. The image features and the spatial dependencies are modelled into a support vector machine (SVM)-based association potential and a discriminative random field (DRF)-based interaction potential. Subsequently, both potentials are incorporated into an inference graphical model such that the knee cartilage segmentation is cast into an optimal labelling problem which can be efficiently solved by loopy belief propagation. The effectiveness of the proposed technique is validated on a database of multi-contrast MR images. The experimental results show that using diverse forms of image and anatomical structure information as the features are helpful in improving the segmentation, and the joint SVM-DRF model is superior to the classification models based solely on DRF or SVM in terms of accuracy when the same features are used. The developed segmentation technique achieves good performance compared with gold standard segmentations and obtained higher average DSC values than the state-of-the-art automatic cartilage segmentation studies.

摘要

准确的膝关节软骨分割是获取定量软骨测量值的必要条件,这对于评估由肌肉骨骼疾病或突发损伤引起的膝关节病变至关重要。本文提出了一种自动膝关节软骨分割技术,该技术利用了来自多对比度磁共振(MR)图像的丰富图像特征以及相邻体素之间的空间依赖性。将图像特征和空间依赖性建模为基于支持向量机(SVM)的关联势和基于判别随机场(DRF)的交互势。随后,将这两种势都合并到一个推理图形模型中,使得膝关节软骨分割被转化为一个最优标记问题,可以通过循环置信传播有效地解决。在多对比度 MR 图像数据库上验证了所提出技术的有效性。实验结果表明,使用多种形式的图像和解剖结构信息作为特征有助于提高分割精度,并且在使用相同特征时,基于 SVM-DRF 的联合模型在准确性方面优于仅基于 DRF 或 SVM 的分类模型。与金标准分割相比,所开发的分割技术具有良好的性能,并且获得了比最先进的自动软骨分割研究更高的平均 DSC 值。

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