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. 2019 Apr;32(2):300-313.
doi: 10.1007/s10278-018-0145-0.

Bone-Cancer Assessment and Destruction Pattern Analysis in Long-Bone X-ray Image

Affiliations

Bone-Cancer Assessment and Destruction Pattern Analysis in Long-Bone X-ray Image

Oishila Bandyopadhyay et al. J Digit Imaging. 2019 Apr.

Abstract

Bone cancer originates from bone and rapidly spreads to the rest of the body affecting the patient. A quick and preliminary diagnosis of bone cancer begins with the analysis of bone X-ray or MRI image. Compared to MRI, an X-ray image provides a low-cost diagnostic tool for diagnosis and visualization of bone cancer. In this paper, a novel technique for the assessment of cancer stage and grade in long bones based on X-ray image analysis has been proposed. Cancer-affected bone images usually appear with a variation in bone texture in the affected region. A fusion of different methodologies is used for the purpose of our analysis. In the proposed approach, we extract certain features from bone X-ray images and use support vector machine (SVM) to discriminate healthy and cancerous bones. A technique based on digital geometry is deployed for localizing cancer-affected regions. Characterization of the present stage and grade of the disease and identification of the underlying bone-destruction pattern are performed using a decision tree classifier. Furthermore, the method leads to the development of a computer-aided diagnostic tool that can readily be used by paramedics and doctors. Experimental results on a number of test cases reveal satisfactory diagnostic inferences when compared with ground truth known from clinical findings.

Keywords: Bone X-ray; Bone cancer; Connected component; Decision tree; Ortho-convex cover; Runs-test; Support vector machine.

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Figures

Fig. 1
Fig. 1
Block diagram of the proposed technique
Fig. 2
Fig. 2
Bone contour generation. a Bone X-ray image. b E-S image of (a). c Single-pixel contour of (b)
Fig. 3
Fig. 3
aX-ray of cancer-affected bone with ragged surface, b Healthy bone X-ray. c Variation of number of connected components on bone surface with total component size (pixels) for healthy and cancer-affected bone images
Fig. 4
Fig. 4
Randomness detection of intensity. a Bone X-ray image. b Heterogeneous pixel-intensity distribution (colored pixels) detected via runs-test
Fig. 5
Fig. 5
Staircase in an ortho-convex polygon. a Rising stair. b Falling stair. c Ortho-convex cover
Fig. 6
Fig. 6
a Bone X-ray image with ragged surface. b Ortho-convex cover for“ragged” bone surface. c Bone X-ray image with hollow surface. d Ortho-convex cover for “hollow” bone surface
Fig. 7
Fig. 7
Cancer-affected bones. a Geographic pattern. b Moth-eaten pattern. c Permeative pattern. d Calcification. e Giant cyst
Fig. 8
Fig. 8
Decision tree for classifying bone-destruction patterns
Fig. 9
Fig. 9
SVM (binary) for bone cancer diagnosis (points in rectangle represent misclassification)
Fig. 10
Fig. 10
Stage and grade classification using decision tree (points in rectangle represent misclassification)
Fig. 11
Fig. 11
(a) Column-1, column-3, and column-5: input X-ray image. (b) Column-2, column-4, and column-6: ortho-convex cover of affected region with heterogeneous pixels marked by runs-test
Fig. 12
Fig. 12
a Mean ROC curve for bone cancer detection (using SVM). b Mean ROC curve for cancer stage and grade detection (using decision tree). c Mean ROC curve for bone-destruction pattern detection (using decision tree)

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