Prediction of Beta-Turn in Protein Using E-SSpred and Support Vector Machine
2009
β-Turn is a secondary protein structure type that plays an important role in protein configuration and function. Here, we introduced an approach of β-turn prediction that used the support vector machine (SVM) algorithm combined with predicted secondary structure information. The secondary structure information was obtained by using E-SSpred, a new secondary protein structure prediction method. A 7-fold cross validation based on the benchmark dataset of 426 non-homologous protein chains was used to evaluate the performance of our method. The prediction results broke the 80% Q total barrier and achieved Q total = 80.9%, MCC = 0.44, and Q predicted higher 0.9% when compared with the best method. The results in our research are coincident with the conclusion that β-turn prediction accuracy can be improved by inclusion of secondary structure information.
Keywords:
- Global distance test
- Molecular biology
- Biology
- Protein structure
- Turn (biochemistry)
- Support vector machine
- Protein structure prediction
- Protein secondary structure
- Cross-validation
- Artificial intelligence
- Coincident
- Pattern recognition
- protein secondary structure prediction
- Biochemistry
- Bioorganic chemistry
- Biological system
- Correction
- Source
- Cite
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