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Knee Cartilage Extraction and Bone-Cartilage Interface Analysis from 3D MRI Data Sets

机译:从3D MRI数据集中提取膝关节软骨和骨-软骨界面

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This works presents a robust methodology for the analysis of the knee joint cartilage and the knee bone-cartilage interface from fused MRI sets. The proposed approach starts by fusing a set of two 3D MR images the knee. Although the proposed method is not pulse sequence dependent, the first sequence should be programmed to achieve good contrast between bone and cartilage. The recommended second pulse sequence is one that maximizes the contrast between cartilage and surrounding soft tissues. Once both pulse sequences are fused, the proposed bone-cartilage analysis is done in four major steps. First, an unsupervised segmentation algorithm is used to extract the femur, the tibia, and the patella. Second, a knowledge based feature extraction algorithm is used to extract the femoral, tibia and patellar cartilages. Third, a trained user corrects cartilage miss-classifications done by the automated extracted cartilage. Finally, the final segmentation is the revisited using an unsupervised MAP voxel relaxation algorithm. This final segmentation has the property that includes the extracted bone tissue as well as all the cartilage tissue. This is an improvement over previous approaches where only the cartilage was segmented. Furthermore, this approach yields very reproducible segmentation results in a set of scan-rescan experiments. When these segmentations were coupled with a partial volume compensated surface extraction algorithm the volume, area, thickness measurements shows precisions around 2.6%.
机译:这项工作提出了一种强大的方法,用于从融合的MRI装置中分析膝关节软骨和膝骨-软骨界面。所提出的方法是通过将一组两个3D MR图像融合到膝盖开始的。尽管所提出的方法不依赖于脉冲序列,但应该对第一个序列进行编程,以实现骨骼与软骨之间的良好对比。推荐的第二脉冲序列应使软骨与周围软组织之间的对比度最大化。一旦两个脉冲序列融合,建议的骨-软骨分析将在四个主要步骤中完成。首先,使用无监督分割算法提取股骨,胫骨和the骨。其次,基于知识的特征提取算法用于提取股骨,胫骨和pa骨软骨。第三,训练有素的用户校正由自动提取的软骨完成的软骨遗漏分类。最后,使用无监督的MAP体素松弛算法重新进行最终分割。该最终分割具有包括提取的骨组织以及所有软骨组织的特性。这是对以前仅将软骨分割的方法的一种改进。此外,这种方法在一组扫描-重新扫描实验中产生了非常可重复的分割结果。当这些分割与部分体积补偿的表面提取算法结合使用时,体积,面积,厚度测量显示出约2.6%的精度。

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