Literature DB >> 23968467

Discriminating lysosomal membrane protein types using dynamic neural network.

Vijay Tripathi1, Dwijendra Kumar Gupta.   

Abstract

This work presents a dynamic artificial neural network methodology, which classifies the proteins into their classes from their sequences alone: the lysosomal membrane protein classes and the various other membranes protein classes. In this paper, neural networks-based lysosomal-associated membrane protein type prediction system is proposed. Different protein sequence representations are fused to extract the features of a protein sequence, which includes seven feature sets; amino acid (AA) composition, sequence length, hydrophobic group, electronic group, sum of hydrophobicity, R-group, and dipeptide composition. To reduce the dimensionality of the large feature vector, we applied the principal component analysis. The probabilistic neural network, generalized regression neural network, and Elman regression neural network (RNN) are used as classifiers and compared with layer recurrent network (LRN), a dynamic network. The dynamic networks have memory, i.e. its output depends not only on the input but the previous outputs also. Thus, the accuracy of LRN classifier among all other artificial neural networks comes out to be the highest. The overall accuracy of jackknife cross-validation is 93.2% for the data-set. These predicted results suggest that the method can be effectively applied to discriminate lysosomal associated membrane proteins from other membrane proteins (Type-I, Outer membrane proteins, GPI-Anchored) and Globular proteins, and it also indicates that the protein sequence representation can better reflect the core feature of membrane proteins than the classical AA composition.

Entities:  

Keywords:  dynamic neural network; generalized regression neural network; layer recurrent network; lysosomal membrane proteins; probabilistic neural network; support vector machine

Mesh:

Substances:

Year:  2013        PMID: 23968467     DOI: 10.1080/07391102.2013.827133

Source DB:  PubMed          Journal:  J Biomol Struct Dyn        ISSN: 0739-1102


  2 in total

1.  Statistical approach for lysosomal membrane proteins (LMPs) identification.

Authors:  Vijay Tripathi; Pooja Tripathi; Dwijendra Gupta
Journal:  Syst Synth Biol       Date:  2014-08-02

2.  Predicting cancerlectins by the optimal g-gap dipeptides.

Authors:  Hao Lin; Wei-Xin Liu; Jiao He; Xin-Hui Liu; Hui Ding; Wei Chen
Journal:  Sci Rep       Date:  2015-12-09       Impact factor: 4.379

  2 in total

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