Feature Selection for Protein Dihedral Angle Prediction

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Date

2017

Journal Title

Journal ISSN

Volume Title

Publisher

IEEE345 E 47TH ST, NEW YORK, NY 10017 USA

Abstract

Three-dimensional structure prediction has crucial importance for bioinformatics and theoretical chemistry. One of the main steps of three-dimensional structure prediction is dihedral (torsion) angle prediction. As new feature extraction methods are developed the dimension of the input space increases considerably yielding longer model training and less accurate models due to noisy or redundant features. In this study, feature selection is employed for dimensionality reduction on one of the established benchmarks of protein 1D structure prediction. Experimental results show that the feature selection improves the accuracy of protein dihedral angle class prediction by 2% and can eliminate up to %82 of the features when random forest classifier is used. Accurate prediction of dihedral angles will eventually contribute to protein structure prediction.

Description

This work is supported by grant 113E550 from 3501 TUBITAK National Young Researchers Career Award.

Keywords

random forest, backbone angle, dihedral angle prediction, protein structure prediction, feature selection

Turkish CoHE Thesis Center URL

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WoS Q

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Volume

Issue

Start Page

48

End Page

52