DocumentCode
3629380
Title
Feature selection for segmentation of 2-D electrophoresis gel images
Author
D. Matuzevicius;D. Navakauskas
Author_Institution
Department of Electronic Systems, VGTU, Naugarduko 41, LT-03227, Vilnius-6, Lithuania
fYear
2008
Firstpage
341
Lastpage
344
Abstract
Two-dimensional gel electrophoresis is the powerful technique used by biochemists to resolve and visualize protein samples.Commonly gels produced from several samples are analyzed in order to detect changes of protein expression. Thus computer-aided gel image analysis for protein spot detection became the main step in the whole process.Nevertheless accurate automatic spot detection is still difficult due to large variations in spot shape, image background and various inevitable artifacts. In this paper we investigate features of two-dimensional electrophoresis gel images.We look for those image features that will yield good results of protein spot detection done by the Feedforward Multilayer Neural Network. Feature comparison and spot segmentation results are presented and indicate that rotational symmetry features empowers segmentation of saturated and overlapped protein spots.
Keywords
"Proteins","Feature extraction","Image segmentation","Pixel","Artificial neural networks","World Wide Web","Nonhomogeneous media"
Publisher
ieee
Conference_Titel
Electronics Conference, 2008. BEC 2008. 11th International Biennial Baltic
ISSN
1736-3705
Print_ISBN
978-1-4244-2059-9
Electronic_ISBN
2382-820X
Type
conf
DOI
10.1109/BEC.2008.4657550
Filename
4657550
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