4.7 Article

DeepEMhancer: a deep learning solution for cryo-EM volume post-processing

期刊

COMMUNICATIONS BIOLOGY
卷 4, 期 1, 页码 -

出版社

NATURE PORTFOLIO
DOI: 10.1038/s42003-021-02399-1

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资金

  1. Spanish Ministry of Science and Innovation [PID2019-108850RA-I00, SEV 2017-0712, PID2019-104757RB-I00/AEI/10.13039/501100011033]
  2. Comunidad Autonoma de Madrid [S2017/BMD-3817]
  3. CSIC [202020E079]
  4. European Union (EU)
  5. Horizon 2020 [INFRAEOSC-04-2018, 824087, 810057]
  6. Ramon y Cajal [RYC2018-024087-I]

向作者/读者索取更多资源

Sanchez-Garcia et al. introduce DeepEMhancer, a deep learning-based method for automatic post-processing of raw cryo-electron microscopy density maps. It globally improves local quality of density maps and shows potential as a useful tool for structures without readily available PDB models.
Cryo-EM maps are valuable sources of information for protein structure modeling. However, due to the loss of contrast at high frequencies, they generally need to be post-processed to improve their interpretability. Most popular approaches, based on global B-factor correction, suffer from limitations. For instance, they ignore the heterogeneity in the map local quality that reconstructions tend to exhibit. Aiming to overcome these problems, we present DeepEMhancer, a deep learning approach designed to perform automatic post-processing of cryo-EM maps. Trained on a dataset of pairs of experimental maps and maps sharpened using their respective atomic models, DeepEMhancer has learned how to post-process experimental maps performing masking-like and sharpening-like operations in a single step. DeepEMhancer was evaluated on a testing set of 20 different experimental maps, showing its ability to reduce noise levels and obtain more detailed versions of the experimental maps. Additionally, we illustrated the benefits of DeepEMhancer on the structure of the SARS-CoV-2 RNA polymerase. Sanchez-Garcia et al. present DeepEMhancer, a deep learning-based method that can automatically perform post-processing of raw cryo-electron microscopy density maps. The authors report that DeepEMhancer globally improves local quality of density maps, and may represent a useful tool for novel structures where PDB models are not readily available.

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