Higher resolution in cryo-EM by the combination of macromolecular prior knowledge and image-processing tools

IUCrJ. 2022 Aug 3;9(Pt 5):632-638. doi: 10.1107/S2052252522006959. eCollection 2022 Sep 1.

Abstract

Single-particle cryo-electron microscopy has become a powerful technique for the 3D structure determination of biological molecules. The last decade has seen an astonishing development of both hardware and software, and an exponential growth of new structures obtained at medium-high resolution. However, the knowledge accumulated in this field over the years has hardly been utilized as feedback in the reconstruction of new structures. In this context, this article explores the use of the deep-learning approach deepEMhancer as a regularizer in the RELION refinement process. deepEMhancer introduces prior information derived from macromolecular structures, and contributes to noise reduction and signal enhancement, as well as a higher degree of isotropy. These features have a direct effect on image alignment and reduction of overfitting during iterative refinement. The advantages of this combination are demonstrated for several membrane proteins, for which it is especially useful because of their high disorder and flexibility.

Keywords: RELION; cryo-electron microscopy; deep learning; deepEMhancer; prior knowledge.

Grants and funding

The authors would like to acknowledge financial support from: the Comunidad de Madrid (grant No. CAM S2017/BMD-3817); the Spanish National Research Council (PIE/COVID-19 No. 202020E079); the Spanish Ministry of Science and Innovation (grant Nos. SEV-2017-0712 funded by MCIN/AEI/10.13039/501100011033; PID2019-104757RB-I00 funded by MCIN/AEI/10.13039/501100011033/); European Commission, European Research Council (‘ERDF A way of making Europe by the European Union’). European Union (EU); Horizon 2020 through iNEXT-Discovery (proposal No. 871037) and HighResCells (grant No. ERC-2018-SyG, proposal No. 810057).