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8. SPHIRE-crYOLO is a fast and accurate fully automated particle picker for cryo-EM. Wagner T; Merino F; Stabrin M; Moriya T; Antoni C; Apelbaum A; Hagel P; Sitsel O; Raisch T; Prumbaum D; Quentin D; Roderer D; Tacke S; Siebolds B; Schubert E; Shaikh TR; Lill P; Gatsogiannis C; Raunser S Commun Biol; 2019; 2():218. PubMed ID: 31240256 [TBL] [Abstract][Full Text] [Related]
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16. DeepPicker: A deep learning approach for fully automated particle picking in cryo-EM. Wang F; Gong H; Liu G; Li M; Yan C; Xia T; Li X; Zeng J J Struct Biol; 2016 Sep; 195(3):325-336. PubMed ID: 27424268 [TBL] [Abstract][Full Text] [Related]
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