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A Novel Modeling in Mathematical Biology for Classification of Signal Peptides.


ABSTRACT: The molecular structure of macromolecules in living cells is ambiguous unless we classify them in a scientific manner. Signal peptides are of vital importance in determining the behavior of newly formed proteins towards their destined path in cellular and extracellular location in both eukaryotes and prokaryotes. In the present research work, a novel method is offered to foreknow the behavior of signal peptides and determine their cleavage site. The proposed model employs neural networks using isolated sets of prokaryote and eukaryote primary sequences. Protein sequences are classified as secretory or non-secretory in order to investigate secretory proteins and their signal peptides. In comparison with the previous prediction tools, the proposed algorithm is more rigorous, well-organized, significantly appropriate and highly accurate for the examination of signal peptides even in extensive collection of protein sequences.

SUBMITTER: Ehsan A 

PROVIDER: S-EPMC5773712 | biostudies-literature | 2018 Jan

REPOSITORIES: biostudies-literature

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A Novel Modeling in Mathematical Biology for Classification of Signal Peptides.

Ehsan Asma A   Mahmood Khalid K   Khan Yaser Daanial YD   Khan Sher Afzal SA   Chou Kuo-Chen KC  

Scientific reports 20180118 1


The molecular structure of macromolecules in living cells is ambiguous unless we classify them in a scientific manner. Signal peptides are of vital importance in determining the behavior of newly formed proteins towards their destined path in cellular and extracellular location in both eukaryotes and prokaryotes. In the present research work, a novel method is offered to foreknow the behavior of signal peptides and determine their cleavage site. The proposed model employs neural networks using i  ...[more]

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