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Automatic Spine Tissue Segmentation from MRI Data Based on Cascade of Boosted Classifiers and Active Appearance Model

机译:基于增强分类器和主动外观模型的MRI脊柱组织自动分割

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摘要

The study introduces a novel method for automatic segmentation of vertebral column tissue from MRI images. The paper describes a method that combines multiple stages of Machine Learning techniques to recognize and separate different tissues of the human spine. For the needs of this paper, 50 MRI examinations presenting lumbosacral spine of patients with low back pain were selected. After the initial filtration, automatic vertebrae recognition using Cascade Classifier takes place. Afterwards the main segmentation process using the patch based Active Appearance Model is performed. Obtained results are interpolated using centripetal Catmull–Rom splines. The method was tested on previously unseen vertebrae images segmented manually by 5 physicians. A test validating algorithm convergence per iteration was performed and the Intraclass Correlation Coefficient was calculated. Additionally, the 10-fold cross-validation analysis has been done. Presented method proved to be comparable to the physicians (FF = 90.19 ± 1.01%). Moreover results confirmed a proper algorithm convergence. Automatically segmented area correlated well with manual segmentation for single measurements (r¯=0.8336) and for average measurements (r¯=0.9068) with p = 0.05. The 10-fold cross-validation analysis (FF = 91.37 ± 1.13%) confirmed a good model generalization resulting in practical performance.
机译:该研究介绍了一种从MRI图像自动分割椎骨组织的新方法。本文描述了一种结合了机器学习技术的多个阶段的方法,以识别和分离人的脊柱的不同组织。出于本文的需要,选择了50例表现腰背痛患者腰s脊柱的MRI检查。初始过滤后,会使用Cascade分类器自动识别椎骨。然后,使用基于补丁的Active Appearance Model执行主要的细分过程。使用向心Catmull-Rom样条曲线对获得的结果进行插值。该方法在5位医生手动分割的先前未见过的椎骨图像上进行了测试。执行每次迭代的测试验证算法收敛性,并计算类内相关系数。此外,已经完成了10倍交叉验证分析。提出的方法被证明与医生相当(FF = 90.19±1.01%)。此外,结果证实了适当的算法收敛性。自动分割的区域与用于单个测量的手动分割非常相关( <移动器重音= “ false”> r = 0.8336 ),并进行平均测量( <移动器重音= “ false”> r = 0.9068 ),p = 0.05。 10倍交叉验证分析(FF = 91.37±1.13%)证实了良好的模型概括性,从而提高了实际性能。

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