Title of article
Mapping and fuzzy classification of macromolecular images using self-organizing neural networks
Author/Authors
Pascual، نويسنده , , Alberto and B?rcena، نويسنده , , Montserrat and Merelo، نويسنده , , J.J. and Carazo، نويسنده , , José-Mar??a، نويسنده ,
Issue Information
دوماهنامه با شماره پیاپی سال 2000
Pages
15
From page
85
To page
99
Abstract
In this work the effectiveness of the fuzzy kohonen clustering network (FKCN) in the unsupervised classification of electron microscopic images of biological macromolecules is studied. The algorithm combines Kohonenʹs self-organizing feature maps (SOFM) and Fuzzy c-means (FCM) in order to obtain a powerful clustering technique with the best properties inherited from both. Exploratory data analysis using SOFM is also presented as a step previous to final clustering. Two different data sets obtained from the G40P helicase from B. Subtilis bacteriophage SPP1 have been used for testing the proposed method, one composed of 2458 rotational power spectra of individual images and the other composed by 338 images from the same macromolecule. Results of FKCN are compared with self-organizing feature maps (SOFM) and manual classification. Experimental results prove that this new technique is suitable for working with large, high-dimensional and noisy data sets and, thus, it is proposed to be used as a classification tool in electron microscopy.
Keywords
image processing , NEURAL NETWORKS , Cluster analysis , self-organizing maps , Fuzzy Logic
Journal title
Ultramicroscopy
Serial Year
2000
Journal title
Ultramicroscopy
Record number
2155479
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