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A Hierarchical Method Based on Active Shape Models and Directed Hough Transform for Segmentation of Noisy Biomedical Images; Application in Segmentation of Pelvic X-ray Images

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Publisher Biomed Central
Date 2009 Nov 7
PMID 19891796
Citations 3
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Abstract

Background: Traumatic pelvic injuries are often associated with severe, life-threatening hemorrhage, and immediate medical treatment is therefore vital. However, patient prognosis depends heavily on the type, location and severity of the bone fracture, and the complexity of the pelvic structure presents diagnostic challenges. Automated fracture detection from initial patient X-ray images can assist physicians in rapid diagnosis and treatment, and a first and crucial step of such a method is to segment key bone structures within the pelvis; these structures can then be analyzed for specific fracture characteristics. Active Shape Model has been applied for this task in other bone structures but requires manual initialization by the user. This paper describes a algorithm for automatic initialization and segmentation of key pelvic structures - the iliac crests, pelvic ring, left and right pubis and femurs - using a hierarchical approach that combines directed Hough transform and Active Shape Models.

Results: Performance of the automated algorithm is compared with results obtained via manual initialization. An error measures is calculated based on the shapes detected with each method and the gold standard shapes. ANOVA results on these error measures show that the automated algorithm performs at least as well as the manual method. Visual inspection by two radiologists and one trauma surgeon also indicates generally accurate performance.

Conclusion: The hierarchical algorithm described in this paper automatically detects and segments key structures from pelvic X-rays. Unlike various other x-ray segmentation methods, it does not require manual initialization or input. Moreover, it handles the inconsistencies between x-ray images in a clinical environment and performs successfully in the presence of fracture. This method and the segmentation results provide a valuable base for future work in fracture detection.

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References
1.
Pietka E . Lung segmentation in digital radiographs. J Digit Imaging. 1994; 7(2):79-84. DOI: 10.1007/BF03168427. View

2.
Manos G, Cairns A, Rickets I, Sinclair D . Segmenting radiographs of the hand and wrist. Comput Methods Programs Biomed. 1994; 43(3-4):227-37. DOI: 10.1016/0169-2607(94)90074-4. View

3.
McNitt-Gray M, Huang H, Sayre J . Feature selection in the pattern classification problem of digital chest radiograph segmentation. IEEE Trans Med Imaging. 1995; 14(3):537-47. DOI: 10.1109/42.414619. View

4.
Haas B, Coradi T, Scholz M, Kunz P, Huber M, Oppitz U . Automatic segmentation of thoracic and pelvic CT images for radiotherapy planning using implicit anatomic knowledge and organ-specific segmentation strategies. Phys Med Biol. 2008; 53(6):1751-71. DOI: 10.1088/0031-9155/53/6/017. View

5.
Duryea J, Boone J . A fully automated algorithm for the segmentation of lung fields on digital chest radiographic images. Med Phys. 1995; 22(2):183-91. DOI: 10.1118/1.597539. View