Evan Seitz
Evan Seitz
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Geometric machine learning informed by ground truth: Recovery of conformational continuum from single-particle cryo-EM data of biomolecules
Evan Seitz
,
Francisco Acosta-Reyes
,
Suvrajit Maji
,
Peter Schwander
,
Joachim Frank
September 2021
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Abstract
BioRxiv: Preprint, 2021
Type
Preprint
Publication
bioRxiv
First author
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