Genetic Algorithm in Ab Initio Protein Structure Prediction Using Low Resolution Model: A Review
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Chetty, Madhu
Sattar, Abdul
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Sidhu, AS
Dillon, TS
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Abstract
Proteins are sequences of amino acids bound into a linear chain that adopt a specific folded three-dimensional (3D) shape. This specific folded shape enables proteins to perform specific tasks. The protein structure prediction (PSP) by ab initio or de novo approach is promising amongst various available computational methods and can help to unravel the important relationship between sequence and its corresponding structure. This article presents the ab initio protein structure prediction as a conformational search problem in low resolution model using genetic algorithm. As a review, the essence of twin removal, intelligence in coding, the development and application of domain specific heuristics garnered from the properties of the resulting model and the protein core formation concept discussed are all highly relevant in attempting to secure the best solution.
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Biomedical Data and Applications
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1st
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224
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© 2009 Springer. The attached file is reproduced here in accordance with the copyright policy of the publisher. The original publication is available at www.springerlink.com
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Biological mathematics
Other information and computing sciences not elsewhere classified