TCRT October 2009

category image Volume 8
No. 5 (p. 315-400)
October 2009
ISSN 1533-0338
Neural Network in Protein Analysis

A Computational Approach for the Identification of Small GTPases Based on Preprocessed Amino Acid Sequences (333-342)

The prediction of essential biological features based on a given protein sequence is a challenging task in computational biology. To limit the amount of in vitro verification, the prediction of essential biological activities gives the opportunity to detect so far unknown sequences with similar properties. Besides the application within the identification of proteins being involved in tumorigenesis, other functional classes of proteins can be predicted. The prediction accuracy depends on the selected machine learning approach and even more on the composition of the descriptor set used. A computational approach based on feedforward neural networks was applied for the prediction of small GTPases. Consequently, this was realized by taking secondary structure and hydrophobicity information as a preprocessing architecture and thus, as descriptors for the neural networks. We developed a neural network cluster, which consists of a filter network and four subfamily networks. The filter network was trained to identify small GTPases and the subfamily networks were trained to assign a small GTPase to one of the subfamilies. The accuracy of the prediction, whether a given sequence represents a small GTPase is very high (98.25%). The classifications of the subfamily networks yield comparable accuracy. The high prediction accuracy of the neural network cluster developed, gives the opportunity to suggest the use of hydrophobicity and secondary structure prediction in combination with a neural network cluster, as a promising method for the prediction of essential biological activities.

Dominik Heider1*
Jessica Appelmann2
Tuygun Bayro2
Winfried Dreckmann3
Andreas Held3
Jonas Winkler2
Angelika Barnekow2
Markus Borschbach4

1Department of Bioinformatics Center for Medical Biotechnology University of Duisburg-Essen Universitätsstr. 2, 45117 Essen, Germany
2Department of Experimental Tumorbiology, University of Münster Badestr. 9, 48149 Münster, Germany
3Institute of Computer Science University of Münster, Einsteinstr. 62 48149 Münster, Germany
4Faculty of Computer Science University of Applied Science Hauptstraße 2, 51465 Bergisch Gladbach Germany

Dominik.Heider@uni-due.de

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