Protein secondary structure prediction based on quintuplets
classification
⚛️ physics.bio-ph
physics.data-anq-bio.BM
keywords
modelsproteinacidaminoconformationlengthpredictionrange
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Simple hidden Markov models are proposed for predicting secondary structure of a protein from its amino acid sequence. Since the length of protein conformation segments varies in a narrow range, we ignore the duration effect of length distribution, and focus on inclusion of short range correlations of residues and of conformation states in the models. Conformation-independent and -dependent amino acid coarse-graining schemes are designed for the models by means of proper mutual information. We compare models of different level of complexity, and establish a practical model with a high prediction accuracy.
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