Title: Protein secondary structure prediction by combining hidden Markov models and sliding window scores

Authors: Wei-Mou Zheng

Addresses: Institute of Theoretical Physics, Academia Sinica, Beijing 100080; China Beijing Genomics Institute, Academia Sinica, Beijing 101300, China

Abstract: Instead of conformation states of single residues, refined conformation states of quintuplets are proposed to reflect conformation correlation. Simple hidden Markov models combined with sliding window scores are used to predict the secondary structure of a protein from its amino acid sequence. Since the length of protein conformation segments varies within a narrow range, we can ignore the duration effect of the length distribution. The window scores for residues are a window version of the Chou-Fasman propensities estimated under an approximation of conditional independency. Different window widths are examined, and the optimal width is found to be 17. A high accuracy of about 70% is achieved.

Keywords: protein structures; secondary structure prediction; hidden Markov models; weight matrix scores; bioinformatics; sliding window scores; quintuplets; conformation correlation.

DOI: 10.1504/IJBRA.2005.008445

International Journal of Bioinformatics Research and Applications, 2005 Vol.1 No.4, pp.420 - 428

Published online: 20 Dec 2005 *

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