Abstract

In this paper, the neural network method was applied to predict the content of protein secondary structure elements that was based on ‘pair-coupled amino acid composition’, in which the sequence coupling effects are explicitly included through a series of conditional probability elements. The prediction was examined by a self-consistency test and an independent-dataset. Both indicated good results obtained when using the neural network method to predict the contents of α-helix, β-sheet, parallel β-sheet strand, antiparallel β-sheet strand, β-bridge, 3 10-helix, π-helix, H-bonded turn, bend, and random coil.

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