Texture analysis for automatic segmentation of intervertebral disks of scoliotic spines from MR images.

Information Technology in Biomedicine, IEEE Transactions(2009)

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摘要
This paper presents a unified framework for automatic segmentation of intervertebral disks of scoliotic spines from different types of magnetic resonance (MR) image sequences. The method exploits a combination of statistical and spectral texture features to discriminate closed regions representing intervertebral disks from background in MR images of the spine. Specific texture features are evaluated for three types of MR sequences acquired in the sagittal plane: 2-D spin echo, 3-D multiecho data image combination, and 3-D fast imaging with steady state precession. A total of 22 texture features (18 statistical and 4 spectral) are extracted from every closed region obtained from an automatic segmentation procedure based on the watershed approach. The feature selection step based on principal component analysis and clustering process permit to decide among all the extracted features which ones resulted in the highest rate of good classification. The proposed method is validated using a supervised k-nearest-neighbor classifier on 505 MR images coming from three different scoliotic patients and three different MR acquisition protocols. Results suggest that the selected texture features and classification can contribute to solve the problem of oversegmentation inherent to existing automatic segmentation methods by successfully discriminating intervertebral disks from the background on MRI of scoliotic spines.
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关键词
pattern clustering,clustering process,spectral texture feature,neurophysiology,spectral texture feature extraction,statistical analysis,learning (artificial intelligence),scoliotic spines,mri,image segmentation,segmentation,automatic segmentation,bone,selected texture feature,automatic segmentation method,mr image,texture analysis,texture features,magnetic resonance image sequence,biomedical mri,mr image texture analysis,feature extraction,image classification,image sequences,automatic segmentation procedure,texture feature,specific texture feature,steady state precession,supervised k -nearest-neighbor classifier,classification,intervertebral disk,mr acquisition protocols,3d fast imaging,image texture,principal component analysis,scoliotic spine,3d multiecho data image,watershed approach,2d spin echo image,medical image processing,mr image sequence,intervertebral disks,magnetic resonance,spin echo,image analysis,steady state,k nearest neighbor,spine,feature selection,magnetic resonance imaging,learning artificial intelligence,data mining
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