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Prediction of domain boundaries in protein sequences using predicted secondary structure and physicochemical properties of amino acids

Circuit, Power and Computing Technologies(2014)

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Abstract
The domain boundary prediction is an important task for functional classification of proteins, a homology based protein structure prediction and the high throughput structural genomics. A technique is proposed to predict protein domain boundaries using predicted secondary structure solvent accessibility and physicochemical properties of Amino Acids along protein chain. Each amino acid is represented by a set of physicochemical properties from AAIndex database. Support Vector Machine is used as a two class classifier where maximum prediction accuracy is observed by varying kernel functions and appropriate parameters. To improve the accuracy of prediction of multiple domains in protein chains, a Support Vector Machine is used as the classifier and physicochemical properties of proteins are used in this paper. It is tested on target proteins and achieves significant precision and recall.
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Key words
biological techniques,genomics,molecular biophysics,proteins,support vector machines,aaindex database,amino acid physicochemical property,class classifier,homology,kernel function,protein chain,protein classification,protein domain boundary prediction,protein physicochemical property,protein sequence,protein structure prediction,secondary structure solvent prediction,structural genomics,support vector machine,domain boundary,physicochemical properties,secondary structure,kernel,amino acids,accuracy,bioinformatics
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