2005
DOI: 10.4015/s1016237205000330
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A Computer-Aided System for Mass Detection and Classification in Digitized Mammograms

Abstract: This paper presents a computer-assisted diagnostic system for mass detection and classification, which performs mass detection on regions of interest followed by the benign-malignant classification on detected masses. In order for mass detection to be effective, a sequence of preprocessing steps are designed to enhance the intensity of a region of interest, remove the noise effects and locate suspicious masses using five texture features generated from the spatial gray level difference matrix (SGLDM) and fract… Show more

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Cited by 43 publications
(17 citation statements)
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“…There are two possible approaches to enhance mammographic features. One is to increase the contrast of suspicious areas and the other is to remove background noise (Yang et al, 2005). Removing background noise while preserving the edge information of suspicious areas can enhance a digital mammogram.…”
Section: Preprocessingmentioning
confidence: 99%
“…There are two possible approaches to enhance mammographic features. One is to increase the contrast of suspicious areas and the other is to remove background noise (Yang et al, 2005). Removing background noise while preserving the edge information of suspicious areas can enhance a digital mammogram.…”
Section: Preprocessingmentioning
confidence: 99%
“…To remove the background noise [9], preserving the local information of suspicious areas can enhance mammograms. This approach was proposed by Lai et al [10], who used modified median filtering and four selective averaging schemes called selective median filter.…”
Section: Preprocessingmentioning
confidence: 99%
“…In case of boundary, many work focused on the Radial Distance Measure (RDM) )Boujelben et al (2009a (Alvarenga et al, 2006), Convexity (CVX), Fourier Fraction (FF) (Rangayyan et al, 1997), Fractal Dimension (FD) (Nguyen & Rangayyan, 2005) (Nguyen & Rangayyan, 2006) and the angular measure (Yang et al, 2005) (Denise et al, 2008) . However, methods defined in the context of angular measures provides so far either of the two categories: Radial Angle (RA) (Yang et al, 2005) or Turning Angle(TA) (Denise et al, 2008) . In this context, Sheng Chih et al (Yang et al, 2005) used the RA, which is the smallest angle included between the gradient direction and the radial direction of the edge.…”
Section: Context Of State Of the Artmentioning
confidence: 99%