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4. BFF and cellhashR: analysis tools for accurate demultiplexing of cell hashing data. Boggy GJ; McElfresh GW; Mahyari E; Ventura AB; Hansen SG; Picker LJ; Bimber BN Bioinformatics; 2022 May; 38(10):2791-2801. PubMed ID: 35561167 [TBL] [Abstract][Full Text] [Related]
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