Development, application and computational analysis of high-dimensional fluorescent antibody panels for single-cell flow cytometry
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Burkhard Becher | Jolanda Brummelman | Giorgia Alvisi | Enrico Lugli | B. Becher | C. Haftmann | Giorgia Alvisi | E. Lugli | N. Núñez | J. Brummelman | E. Mazza | Emilia M C Mazza | Claudia Haftmann | Nicolás Gonzalo Núñez
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