Robustness and applicability of transcription factor and pathway analysis tools on single-cell RNA-seq data
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Christian H. Holland | Brian A. Joughin | D. Lauffenburger | O. Stegle | J. Saez-Rodriguez | H. Heyn | J. Perales-Patón | B. Szalai | B. Joughin | J. Tanevski | E. Mereu | Jan G Gleixner | Manu P. Kumar | Jan Gleixner
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