Accuracy of Protein Secondary Structure Prediction Continues to Rise

At first, this paper reviews the development of the protein secondary structure prediction. Some concerned secondary structure prediction methods are introduced. Then we propose a novel method to predict protein secondary sturcture , which substantially improves the prediction accuracy both over 80% in CB513 and RS126 database. At the end, we point out some possible trends in the protein secondary structure prediction in the future. Keywords-protein secondary structure prediction; Composed Pyramid Model; trend; KDD

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