DocumentCode :
3322196
Title :
Combining few neural networks for effective secondary structure prediction
Author :
Guimaraes, Katia S. ; Melo, Jeane C B ; Cavalcanti, George D C
Author_Institution :
Center of Informatics, UFPE, Recife, Brazil
fYear :
2003
fDate :
10-12 March 2003
Firstpage :
415
Lastpage :
420
Abstract :
The prediction of secondary structure is treated with a simple and efficient method. Combining only three neural networks, an average Q3 accuracy prediction by residues of 75.93% is achieved. This value is better than the best results reported on the same test and training database, CB396, using the same validation method. For a second database, RS126, an average Q3 accuracy of 74.13% is attained, which is better than each individual method, being defeated only by CONSENSUS, a rather intricate engine, which is a combination of several methods. The networks are trained with RPROP an efficient variation of the back-propagation algorithm. Five combination rules are applied independently afterwards. Each one increases the accuracy of prediction by at least 1%, due to the fact that each network used converges to a different local minimum. The Product rule derives the best results. The predictor described here can be accessed at http://biolab.cin.ufpe.br/tools/.
Keywords :
backpropagation; biology computing; molecular biophysics; molecular configurations; neural nets; proteins; CONSENSUS; Product rule; RS126; average Q3 accuracy prediction; back-propagation algorithm; combination rules; effective secondary structure prediction; local minimum; residues; test-training database CB396; Accuracy; Amino acids; Coils; Databases; Drugs; Engines; Machine learning; Neural networks; Proteins; Testing;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Bioinformatics and Bioengineering, 2003. Proceedings. Third IEEE Symposium on
Print_ISBN :
0-7695-1907-5
Type :
conf
DOI :
10.1109/BIBE.2003.1188981
Filename :
1188981
Link To Document :
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