Title
Detection of Breast Masses in Mammogram Images Using Growing Neural Gas Algorithm and Ripley’s Function
Abstract
Breast cancer is a serious public health problem in several countries. Computer-aided detection/diagnosis systems (CAD/CADx) have been used with relative success in aid of health care professionals. The goal of such systems is not to replace the professionals, but to join forces in order to detect the different types of cancer at an early stage. The main contribution of this work is the presentation of a methodology for detecting masses in digitized mammograms using the growing neural gas algorithm for image segmentation and Ripley’s function to describe the texture of segmented structures. The classification of these structures is accomplished through support vector machines which separate them in two groups, using shape and texture measures: masses and non-masses. The methodology obtained 89.30% of accuracy and a rate of 0.93 false positives per image.
Year
DOI
Venue
2009
https://doi.org/10.1007/s11265-008-0209-3
Journal of Signal Processing Systems
Keywords
Field
DocType
Computer-aided detection,Mammography,Texture,Ripley’s,K,function,Growing neural gas
Breast cancer,Computer science,Image segmentation,Artificial intelligence,CAD,Mammography,Computer vision,K-function,Support vector machine,Algorithm,Machine learning,Neural gas,False positive paradox
Journal
Volume
Issue
ISSN
55
1
1939-8018
Citations 
PageRank 
References 
13
0.75
10
Authors
4
Name
Order
Citations
PageRank
Leonardo de Oliveira Martins1272.54
Aristofanes C. Silva231636.48
Anselmo C. Paiva337948.88
Marcelo Gattass438248.43