基于体素分类驱动区域生长算法的高场膝关节MR图像软骨分割

Ceyda Nur Ozturk, S. Albayrak
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引用次数: 0

摘要

本文提出了一种体素分类驱动的区域生长算法,用于自动分割膝关节高场磁共振(MR)图像中的整个股骨、胫骨和髌骨软骨组织,特别是考虑到资源有限的系统。通过不同的子采样技术和选择较少的重要特征,分别缓解了背景体素的丰富性和体素样本的高维性。实验采用稳态标准(DESS)下三维(3-D)双回波的33张来自Osteoarthritis Initiative (OAI)数据库的MR图像。在对10张MR图像进行训练处理后,分别采用高斯、均匀、软骨邻近相关(CVC)稀疏和CVC密集子采样技术生成4种训练模型。然后,研究了它们对剩余23张测试MR图像中感兴趣的软骨隔室的最终分割精度的影响。因此,CVC稀疏子采样技术的训练模型(将背景体素与边界软骨体素的距离按弱比例减少)对所有隔室产生了平均最高的分割精度。
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Efficient cartilage segmentation in high-field knee MR images with voxel-classification-driven region-growing algorithm
This paper presents a voxel-classification-driven region-growing algorithm for automatically segmenting the whole femoral, tibial, and patellar cartilage tissues in high-field magnetic resonance (MR) images of the knee joint by taking into consideration systems with limited resources in particular. An abundance of background voxels and high dimensionality of the voxel samples were alleviated via various subsampling techniques and selecting fewer significant features, respectively. Experiments were conducted on 33 MR images obtained from the Osteoarthritis Initiative (OAI) database in three-dimensional (3-D) double echo in the steady state standard (DESS). After processing 10 MR images for training, four training models were generated by Gaussian, uniform, cartilage vicinity correlated (CVC) sparse, and CVC dense subsampling techniques. Then, their effect on the final segmentation accuracies of the cartilaginous compartments of interest on the remaining 23 test MR images was investigated. As a result, the training models of the CVC sparse subsampling technique, which reduced background voxels in weak proportion to their distances to the border cartilage voxels, produced the highest segmentation accuracies on average for all compartments.
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