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5. A deep adversarial variational autoencoder model for dimensionality reduction in single-cell RNA sequencing analysis. Lin E; Mukherjee S; Kannan S BMC Bioinformatics; 2020 Feb; 21(1):64. PubMed ID: 32085701 [TBL] [Abstract][Full Text] [Related]
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