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Artificial signal peptide prediction by a hidden markov model to improve protein secretion via Lactococcus lactis bacteria BACK TO CONTENTS PDF PREVIOUS NEXT
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Title

Artificial signal peptide prediction by a hidden markov model to improve protein secretion via Lactococcus lactis bacteria

 

Authors

Jafar Razmara*, Safaai B Deris, Rosli Bin Md Illias & Sepideh Parvizpour

 

Affiliation

Faculty of Computing, Universiti Teknologi Malaysia, Johor Bahru, Malaysia

 

Email

jafar@utm.my; *Corresponding author

 

Article Type

Hypothesis

 

Date

Received March 03, 2013; Accepted April 05, 2013; Published April 13, 2013

 

Abstract

A hidden Markov model (HMM) has been utilized to predict and generate artificial secretory signal peptide sequences. The strength of signal peptides of proteins from different subcellular locations via Lactococcus lactis bacteria correlated with their HMM bit scores in the model. The results show that the HMM bit score +12 are determined as the threshold for discriminating secreteory signal sequences from the others. The model is used to generate artificial signal peptides with different bit scores for secretory proteins. The signal peptide with the maximum bit score strongly directs proteins secretion.

 

Keywords

Artificial signal peptide prediction, Protein secretion, Hidden markov model.

 

Citation

Razmara et al. Bioinformation 9(7): 345-348 (2013)

 

Edited by

P Kangueane

 

ISSN

0973-2063

 

Publisher

Biomedical Informatics

 

Copyright

Publisher

 

Copyright Transfer Agreement

The authors of published articles in Bioinformation automatically transfer the copyright to the publisher upon formal acceptance. However, the authors reserve right to use the information contained in the article for non commercial purposes.

 

License

This is an open-access article, which permits unrestricted use, distribution, and reproduction in any medium, for non-commercial purposes, provided the original author and source are credited.