Title of article :
A cluster-DEE-based strategy to empower protein design
Author/Authors :
de Andrades، نويسنده , , Rafael K. and Dorn، نويسنده , , Mلrcio and Farenzena، نويسنده , , Daniel S. and Lamb، نويسنده , , Luis C.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
9
From page :
5210
To page :
5218
Abstract :
The Medical and Pharmaceutical industries have shown high interest in the precise engineering of protein hormones and enzymes that perform existing functions under a wide range of conditions. Proteins are responsible for the execution of different functions in the cell: catalysis in chemical reactions, transport and storage, regulation and recognition control. Computational Protein Design (CPD) investigates the relationship between 3-D structures of proteins and amino acid sequences and looks for all sequences that will fold into such 3-D structure. Many computational methods and algorithms have been proposed over the last years, but the problem still remains a challenge for Mathematicians, Computer Scientists, Bioinformaticians and Structural Biologists. In this article we present a new method for the protein design problem. Clustering techniques and a Dead-End-Elimination algorithm are combined with a SAT problem representation of the CPD problem in order to design the amino acid sequences. The obtained results illustrate the accuracy of the proposed method, suggesting that integrated Artificial Intelligence techniques are useful tools to solve such an intricate problem.
Keywords :
Integrated intelligent methods , protein design , Dead-End-Elimination , clustering algorithms , Boolean Satisfiability problem , structural bioinformatics
Journal title :
Expert Systems with Applications
Serial Year :
2013
Journal title :
Expert Systems with Applications
Record number :
2353783
Link To Document :
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