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ONLINEISSN:1349-2942
BIOPHYSICS
Vol. 1 (2005) pp.67
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Predicting secondary structures, contact numbers, and residue-wise contact orders of native protein structures from amino acid sequences using critical random networks
Akira R. Kinjo1)2) and Ken Nishikawa1)2)
1) Center for Information Biology and DNA Data Bank of Japan, National Institute of Genetics
2) Department of Genetics, The Graduate University for Advanced Studies (SOKENDAI)
(Received: July 22, 2005)
(Accepted for publication: October 20, 2005)
Abstract:
Predictions of one-dimensional protein structures such as secondary structures and contact numbers are useful for predicting three-dimensional structure and important for understanding the sequence-structure relationship. Here we present a new machine-learning method, critical random networks (CRNs), for predicting one-dimensional structures, and apply it, with position-specific scoring matrices, to the prediction of secondary structures (SS), contact numbers (CN), and residue-wise contact orders (RWCO). The present method achieves, on average, Q3 accuracy of 77.8% for SS, and correlation coefficients of 0.726 and 0.601 for CN and RWCO, respectively. The accuracy of the SS prediction is comparable to that obtained with other state-of-the-art methods, and accuracy of the CN prediction is a significant improvement over that with previous methods. We give a detailed formulation of the critical random networks-based prediction scheme, and examine the context-dependence of prediction accuracies. In order to study the nonlinear and multi-body effects, we compare the CRNs-based method with a purely linear method based on position-specific scoring matrices. Although not superior to the CRNs-based method, the surprisingly good accuracy achieved by the linear method highlights the difficulty in extracting structural features of higher order from an amino acid sequence beyond the information provided by the position-specific scoring matrices.
Keywords:
protein structure prediction/ one-dimensional structure/ position-specific scoring matrix/ critical random network

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To cite this article:
Akira R. Kinjo and Ken Nishikawa; “Predicting secondary structures, contact numbers, and residue-wise contact orders of native protein structures from amino acid sequences using critical random networks”, BIOPHYSICS, Vol. 1, pp.67-74 (2005) .

doi:10.2142/biophysics.1.67
JOI  JST.JSTAGE/biophysics/1.67
Copyright (c) 2005 THE BIOPHYSICAL SOCIETY OF JAPAN



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