Improving prediction of secondary structure, local backbone angles and solvent accessible surface area of proteins by iterative deep learning

Rhys Heffernan(Griffith University), Kuldip K. Paliwal(Griffith University), James Lyons(Griffith University), Abdollah Dehzangi(Griffith University), Alok Sharma(Griffith University), Jihua Wang(Dezhou University), Abdul Sattar(Griffith University), Yuedong Yang(Griffith University), Yaoqi Zhou(Dezhou University)
Scientific Reports
June 22, 2015
Cited by 365Open Access
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Abstract

Direct prediction of protein structure from sequence is a challenging problem. An effective approach is to break it up into independent sub-problems. These sub-problems such as prediction of protein secondary structure can then be solved independently. In a previous study, we found that an iterative use of predicted secondary structure and backbone torsion angles can further improve secondary structure and torsion angle prediction. In this study, we expand the iterative features to include solvent accessible surface area and backbone angles and dihedrals based on Cα atoms. By using a deep learning neural network in three iterations, we achieved 82% accuracy for secondary structure prediction, 0.76 for the correlation coefficient between predicted and actual solvent accessible surface area, 19° and 30° for mean absolute errors of backbone φ and ψ angles, respectively, and 8° and 32° for mean absolute errors of Cα-based θ and τ angles, respectively, for an independent test dataset of 1199 proteins. The accuracy of the method is slightly lower for 72 CASP 11 targets but much higher than those of model structures from current state-of-the-art techniques. This suggests the potentially beneficial use of these predicted properties for model assessment and ranking.


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