NucleoFind: a deep-learning network for interpreting nucleic acid electron density.

Journal: Nucleic acids research
PMID:

Abstract

Nucleic acid electron density interpretation after phasing by molecular replacement or other methods remains a difficult problem for computer programs to deal with. Programs tend to rely on time-consuming and computationally exhaustive searches to recognise characteristic features. We present NucleoFind, a deep-learning-based approach to interpreting and segmenting electron density. Using an electron density map from X-ray crystallography obtained after molecular replacement, the positions of the phosphate group, sugar ring and nitrogenous base group can be predicted with high accuracy. On average, 78% of phosphate atoms, 85% of sugar atoms and 83% of base atoms are positioned in predicted density after giving NucleoFind maps produced following successful molecular replacement. NucleoFind can use the wealth of context these predicted maps provide to build more accurate and complete nucleic acid models automatically.

Authors

  • Jordan S Dialpuri
    York Structural Biology Laboratory, Department of Chemistry, University of York, York, UK.
  • Jon Agirre
    York Structural Biology Laboratory, Department of Chemistry, University of York, York, UK.
  • Kathryn D Cowtan
    York Structural Biology Laboratory, Department of Chemistry, University of York, York, UK.
  • Paul S Bond
    Department of Chemistry, University of York, York YO10 5DD, United Kingdom.