CryoTEN Model Weights
Creators
Description
We introduce CryoTEN - a three-dimensional U-Net style transformer to improve cryo-EM maps effectively. CryoTEN is trained using a diverse set of 1,295 cryo-EM maps as inputs and their corresponding simulated maps generated from known protein structures as targets. An independent test set containing 150 maps is used to evaluate CryoTEN, and the results demonstrate that it can robustly enhance the quality of cryo-EM density maps. In addition, the automatic de novo protein structure modeling shows that the protein structures built from the density maps processed by CryoTEN have substantially better quality than those built from the original maps. Compared to the existing state-of-the-art deep learning methods for enhancing cryo-EM density maps, CryoTEN ranks second in improving the quality of density maps, while running >10 times faster and requiring much less GPU memory than them.
Files
Files
(354.6 MB)
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md5:64cb7111c41fb4c2618a49c6a8c3f74e
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354.6 MB | Download |
Additional details
Software
- Repository URL
- https://github.com/jianlin-cheng/cryoten
- Programming language
- Python