Literature DB >> 1602478

Predicting protein secondary structure content. A tandem neural network approach.

S M Muskal1, S H Kim.   

Abstract

A priori knowledge of secondary structure content can be of great use in theoretical and experimental determination of protein structure. We present a method that uses two computer-simulated neural networks placed in "tandem" to predict the secondary structure content of water-soluble, globular proteins. The first of the two networks, NET1, predicts a protein's helix and strand content given information about the protein's amino acid composition, molecular weight and heme presence. Because NET1 contained more adjustable parameters (network weights) than learning examples, this network experienced problems with memorization, which is the inability to generalize onto new, never-seen-before examples. To overcome this problem, we designed a second network, NET2, which learned to determine when NET1 was in a state of generalization. Together, these two networks produce prediction errors as low as 5.0% and 5.6% for helix and strand content, respectively, on a set of protein crystal structures bearing little homology to those used in network training. A comparison between three other methods including a multiple linear regression analysis, a non-hidden-node network analysis and a secondary structure assignment analysis reveals that our tandem neural network scheme is, indeed, the best method for predicting secondary structure content. The results of our analysis suggest that the knowledge of sequence information is not necessary for highly accurate predictions of protein secondary structure content.

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Year:  1992        PMID: 1602478     DOI: 10.1016/0022-2836(92)90396-2

Source DB:  PubMed          Journal:  J Mol Biol        ISSN: 0022-2836            Impact factor:   5.469


  14 in total

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5.  Rearranging the domains of pepsinogen.

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6.  Neural networks for secondary structure and structural class predictions.

Authors:  J M Chandonia; M Karplus
Journal:  Protein Sci       Date:  1995-02       Impact factor: 6.725

7.  Protein sequence randomness and sequence/structure correlations.

Authors:  R S Rahman; S Rackovsky
Journal:  Biophys J       Date:  1995-04       Impact factor: 4.033

8.  An analysis of protein folding type prediction by seed-propagated sampling and jackknife test.

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Journal:  J Protein Chem       Date:  1995-10

9.  Predicting secondary structures of membrane proteins with neural networks.

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10.  Semi-supervised protein subcellular localization.

Authors:  Qian Xu; Derek Hao Hu; Hong Xue; Weichuan Yu; Qiang Yang
Journal:  BMC Bioinformatics       Date:  2009-01-30       Impact factor: 3.169

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