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Topaz-Denoise: general deep denoising models for cryoEM and cryoET
Tristan Bepler, Kotaro Kelley, Alex J. Noble, Bonnie Berger
doi: https://doi.org/10.1101/838920
Tristan Bepler
1Computational and Systems Biology, MIT, Cambridge, MA, USA
2Computer Science and Artificial Intelligence Laboratory, MIT, Cambridge, MA, USA
Kotaro Kelley
3National Resource for Automated Molecular Microscopy, Simons Electron Microscopy Center, New York Structural Biology Center, NY, NY, USA
Alex J. Noble
3National Resource for Automated Molecular Microscopy, Simons Electron Microscopy Center, New York Structural Biology Center, NY, NY, USA
Bonnie Berger
2Computer Science and Artificial Intelligence Laboratory, MIT, Cambridge, MA, USA
4Department of Mathematics, MIT, Cambridge, MA, USA
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Posted May 30, 2020.
Topaz-Denoise: general deep denoising models for cryoEM and cryoET
Tristan Bepler, Kotaro Kelley, Alex J. Noble, Bonnie Berger
bioRxiv 838920; doi: https://doi.org/10.1101/838920
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