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- W2929793715 endingPage "122" @default.
- W2929793715 startingPage "101" @default.
- W2929793715 abstract "Supersecondary structure (SSS) refers to specific geometric arrangements of several secondary structure (SS) elements that are connected by loops. The SSS can provide useful information about the spatial structure and function of a protein. As such, the SSS is a bridge between the secondary structure and tertiary structure. In this chapter, we propose a stacking-based machine learning method for the prediction of two types of SSSs, namely, β-hairpins and β-α-β, from the protein sequence based on comprehensive feature encoding. To encode protein residues, we utilize key features such as solvent accessibility, conservation profile, half surface exposure, torsion angle fluctuation, disorder probabilities, and more. The usefulness of the proposed approach is assessed using a widely used threefold cross-validation technique. The obtained empirical result shows that the proposed approach is useful and prediction can be improved further." @default.
- W2929793715 created "2019-04-11" @default.
- W2929793715 creator A5022045445 @default.
- W2929793715 creator A5039379249 @default.
- W2929793715 creator A5055092646 @default.
- W2929793715 creator A5072230802 @default.
- W2929793715 date "2019-01-01" @default.
- W2929793715 modified "2023-10-05" @default.
- W2929793715 title "StackSSSPred: A Stacking-Based Prediction of Supersecondary Structure from Sequence" @default.
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- W2929793715 doi "https://doi.org/10.1007/978-1-4939-9161-7_5" @default.
- W2929793715 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/30945215" @default.
- W2929793715 hasPublicationYear "2019" @default.
- W2929793715 type Work @default.
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