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---
license: lgpl-3.0
language:
- en
tags:
- chemistry
- biology
---
# NucleoFind
Nucleic acid electron density interpretation remains a difficult problem for computer programs to deal with. Programs tend to rely on exhaustive searches to recognise characteristic features. NucleoFind is a deep-learning-based approach to interpreting and segmenting electron density. Using a crystallographic map, the positions of the phosphate group, sugar ring and nitrogenous base group are able to be predicted with high accuracy.
## Model Details
### Model Description
NucleoFind is based on a 3D-UNet architecture.
- **Developed by:** Jordan Dialpuri, Jon Agirre, Kathryn Cowtan and Paul Bond, York Structural Biology Laboratory, University of York
- **Funded by BBSRC and The Royal Society**
- **Model type:** Multiclass
- **Language(s) (NLP):** Python
- **License:** LGPL-3
## Model Card Authors
Jordan Dialpuri
## Model Card Contact
Jordan Dialpuri - jordan.dialpuri (at) york.ac.uk |