4.3 Article

Beyond the Twilight Zone: Automated prediction of structural properties of proteins by recursive neural networks and remote homology information

Journal

PROTEINS-STRUCTURE FUNCTION AND BIOINFORMATICS
Volume 77, Issue 1, Pages 181-190

Publisher

WILEY
DOI: 10.1002/prot.22429

Keywords

alignments; homology detection; secondary structure; solvent accessibility; machine learning

Funding

  1. Health Research Board of Ireland [05/RFP/CMS0029, RP/2005/219]
  2. Science Foundation Ireland (SFI) [05/RFP/CMS0029] Funding Source: Science Foundation Ireland (SFI)

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The prediction of ID structural properties of proteins is an important step toward the prediction of protein structure and function, not only in the ab initio case but also when homology information to known structures is available. Despite this the vast majority of ID predictors do not incorporate homology information into the prediction process. We develop a novel structural alignment method, SAMD, which we use to build alignments of putative remote homologues that we compress into templates of structural frequency profiles. We use these templates as additional input to ensembles of recursive neural networks, which we specialise for the prediction of query sequences that show only remote homology to any Protein Data Bank structure. We predict four ID structural properties - secondary structure, relative solvent accessibility, backbone structural Motifs, and contact density. Secondary structure prediction accuracy, tested by five-fold cross-validation on a large set of proteins allowing less than 25% sequence identity between training and test set and query sequences and templates, exceeds 82%, outperforming its ab initio counterpart, other state-of-the-art secondary structure predictors (Jpred 3 and PSIPRED) and two other systems based on PSI-BLAST and COMPASS templates. We show that structural information from homologues improves prediction accuracy well beyond the Twilight Zone of sequence similarity, even below 5% sequence identity for all four structural properties, Significant improvement over the extraction of structural information directly from PDB templates suggests that the combination of sequence and template information is more informative than templates alone.

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