| Literature DB >> 12576111 |
San Kan Lee1, Pau choo Chung, Chein I Chang, Chien Shun Lo, Tain Lee, Giu Cheng Hsu, Chin Wen Yang.
Abstract
A new shape recognition-based neural network built with universal feature planes, called Shape Cognitron (S-Cognitron) is introduced to classify clustered microcalcifications. The architecture of S-Cognitron consists of two modules and an extra layer, called 3D figure layer lies in between. The first module contains a shape orientation layer, built with 20 cell planes of low level universal shape features to convert first-order shape orientations into numeric values, and a complex layer, to extract second-order shape features. The 3D figure layer is a feature extract-display layer that extracts the shape curvatures of an input pattern and displays them as a 3D figure. It is then followed by a second module made up of a feature formation layer and a probabilistic neural network-based classification layer. The system is evaluated by using Nijmegen mammogram database and experimental results show that sensitivity and specificity can reach 86.1 and 74.1%, respectively.Mesh:
Year: 2003 PMID: 12576111 DOI: 10.1016/s0893-6080(02)00164-8
Source DB: PubMed Journal: Neural Netw ISSN: 0893-6080