Literature DB >> 2748568

Prediction of beta-turns in proteins using neural networks.

M J McGregor1, T P Flores, M J Sternberg.   

Abstract

The use of neural networks to improve empirical secondary structure prediction is explored with regard to the identification of the position and conformational class of beta-turns, a four-residue chain reversal. Recently an algorithm was developed for beta-turn predictions based on the empirical approach of Chou and Fasman using different parameters for three classes (I, II and non-specific) of beta-turns. In this paper, using the same data, an alternative approach to derive an empirical prediction method is used based on neural networks which is a general learning algorithm extensively used in artificial intelligence. Thus the results of the two approaches can be compared. The most severe test of prediction accuracy is the percentage of turn predictions that are correct and the neural network gives an overall improvement from 20.6% to 26.0%. The proportion of correctly predicted residues is 71%, compared to a chance level of about 58%. Thus neural networks provide a method of obtaining more accurate predictions from empirical data than a simpler method of deriving propensities.

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Year:  1989        PMID: 2748568     DOI: 10.1093/protein/2.7.521

Source DB:  PubMed          Journal:  Protein Eng        ISSN: 0269-2139


  19 in total

1.  Prediction of the location and type of beta-turns in proteins using neural networks.

Authors:  A J Shepherd; D Gorse; J M Thornton
Journal:  Protein Sci       Date:  1999-05       Impact factor: 6.725

2.  An algorithm for protein engineering: simulations of recursive ensemble mutagenesis.

Authors:  A P Arkin; D C Youvan
Journal:  Proc Natl Acad Sci U S A       Date:  1992-08-15       Impact factor: 11.205

3.  Using neural networks to diagnose cancer.

Authors:  P S Maclin; J Dempsey; J Brooks; J Rand
Journal:  J Med Syst       Date:  1991-02       Impact factor: 4.460

4.  Prediction of beta-turn in protein using E-SSpred and support vector machine.

Authors:  Lirong Liu; Yaping Fang; Menglong Li; Cuicui Wang
Journal:  Protein J       Date:  2009-05       Impact factor: 2.371

5.  Analysis of equine humoral immune responses to the transmembrane envelope glycoprotein (gp45) of equine infectious anemia virus.

Authors:  Y H Chong; J M Ball; C J Issel; R C Montelaro; K E Rushlow
Journal:  J Virol       Date:  1991-02       Impact factor: 5.103

6.  Modelling of peptide and protein structures.

Authors:  S Fraga; J M Parker
Journal:  Amino Acids       Date:  1994-06       Impact factor: 3.520

7.  NetOglyc: prediction of mucin type O-glycosylation sites based on sequence context and surface accessibility.

Authors:  J E Hansen; O Lund; N Tolstrup; A A Gooley; K L Williams; S Brunak
Journal:  Glycoconj J       Date:  1998-02       Impact factor: 2.916

8.  Self-organizing hierarchic networks for pattern recognition in protein sequence.

Authors:  J Hanke; G Beckmann; P Bork; J G Reich
Journal:  Protein Sci       Date:  1996-01       Impact factor: 6.725

9.  Cleavage site analysis in picornaviral polyproteins: discovering cellular targets by neural networks.

Authors:  N Blom; J Hansen; D Blaas; S Brunak
Journal:  Protein Sci       Date:  1996-11       Impact factor: 6.725

10.  Predicting beta-turns and their types using predicted backbone dihedral angles and secondary structures.

Authors:  Petros Kountouris; Jonathan D Hirst
Journal:  BMC Bioinformatics       Date:  2010-07-31       Impact factor: 3.169

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