Prediction of protein secondary structure at high accuracy using a combination of many neural networks

被引:0
|
作者
Lundegaard, Claus [1 ]
Petersen, Thomas Nordahl [1 ]
Nielsen, Morten [1 ]
Bohr, Henrik [2 ]
Bohr, Jacob [2 ]
Brunak, Søren [2 ]
Gippert, Carry [1 ]
Lund, Ole [1 ]
机构
[1] Structural Bioinformatics Advanced Technologies A/S, Agern Allé 3, DK-2970 Hørsholm, Denmark
[2] Structural Bioinformatics Inc., SAB, San Diego, CA, United States
关键词
Proteins; -; Forecasting;
D O I
10.1007/978-3-540-44827-3_7
中图分类号
学科分类号
摘要
A protein secondary structure prediction protocol involving up to 800 neural network predictions has been developed by SBI-AT. An overall performance of 80% is obtained for three-state (helix, strand, coil) DSSP categories. Input to primary-layer neural networks includes sequence profiles, relative residue position, relative chain length, and amino-acid composition. Secondary structure predictions are made for three consecutive residues simultaneously - a technique which we describe as 'output expansion' - which boosts the performance of second-layer structure-to-structure networks. Independent network predictions arise from 10-fold cross validated training and testing of 1032 protein sequences at both primary and secondary network layers. Network output activities are converted to probabilities. Finally, 800 different predictions are combined using a novel balloting procedure. © Springer-Verlag Berlin Heidelberg 2003.
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页码:117 / 122
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