DocumentCode :
17963
Title :
Regression Segmentation for M^{3} Spinal Images
Author :
Zhijie Wang ; Xiantong Zhen ; KengYeow Tay ; Osman, Said ; Romano, Walter ; Shuo Li
Author_Institution :
GE Healthcare, London, ON, Canada
Volume :
34
Issue :
8
fYear :
2015
fDate :
Aug. 2015
Firstpage :
1640
Lastpage :
1648
Abstract :
Clinical routine often requires to analyze spinal images of multiple anatomic structures in multiple anatomic planes from multiple imaging modalities ( M3). Unfortunately, existing methods for segmenting spinal images are still limited to one specific structure, in one specific plane or from one specific modality ( S3). In this paper, we propose a novel approach, Regression Segmentation, that is for the first time able to segment M3 spinal images in one single unified framework. This approach formulates the segmentation task innovatively as a boundary regression problem: modeling a highly nonlinear mapping function from substantially diverse M3 images directly to desired object boundaries. Leveraging the advancement of sparse kernel machines, regression segmentation is fulfilled by a multi-dimensional support vector regressor (MSVR) which operates in an implicit, high dimensional feature space where M3 diversity and specificity can be systematically categorized, extracted, and handled. The proposed regression segmentation approach was thoroughly tested on images from 113 clinical subjects including both disc and vertebral structures, in both sagittal and axial planes, and from both MRI and CT modalities. The overall result reaches a high dice similarity index (DSI) 0.912 and a low boundary distance (BD) 0.928 mm. With our unified and expendable framework, an efficient clinical tool for M3 spinal image segmentation can be easily achieved, and will substantially benefit the diagnosis and treatment of spinal diseases.
Keywords :
biomedical MRI; bone; computerised tomography; diseases; feature extraction; image segmentation; medical image processing; regression analysis; support vector machines; CT modalities; M3 spinal images; MRI; MSVR; boundary regression problem; clinical routine; clinical subjects; disc structures; high dice similarity index; high dimensional feature space; highly nonlinear mapping function; multidimensional support vector regressor; multiple anatomic planes; multiple anatomic structures; multiple imaging modalities; object boundaries; regression segmentation; segmenting spinal images; sparse kernel machines; specific modality; spinal disease diagnosis; spinal disease treatment; spinal images; substantially diverse M3 images; vertebral structures; Computed tomography; Image segmentation; Kernel; Magnetic resonance imaging; Shape; Solid modeling; Three-dimensional displays; Computed tomography (CT); disc; magnetic resonance imaging (MRI); multi-kernel; segmentation; spine; support vector regression; vertebra;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/TMI.2014.2365746
Filename :
6939729
Link To Document :
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