A multiresolution support vector machine based algorithm for pneumoconiosis detection from chest radiographs

Ramasubramanian Sundararajan(General Electric (India)), Hongqin Xu(General Electric (India)), Pavan Annangi(General Electric (India)), Xian Tao(General Electric (India)), Xiwen Sun(Shanghai Pulmonary Hospital), Ling Mao(Shanghai Pulmonary Hospital)
Unknown
January 1, 2010
Cited by 19

Abstract

We consider the problem of detecting the presence of pneumoconiosis in a patient on the basis of evidence found in chest radiographs. Abnormalities pertaining to pneumoconiosis appear in the form of opacities of various sizes; the profusion of these opacities determines the stage of the disease. We present a multiresolution approach whereby we segment regions of interest (ROIs) from the X-Ray image at two levels - lung field and lung zone. We characterize each of these regions using a set of features and build support vector machine (SVM) classifiers that can predict whether or not the region contains any abnormalities. We combine these ROI-level predictions with a second stage SVM in order to get a prediction for the entire chest. Experimental validation shows that this approach provides good results.


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