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Fully automated expansion and activation of clinical-grade natural killer cells for adoptive immunotherapy

Abstract

AbstractBackground aimsEx vivo expansion of natural killer (NK) cells is a strategy to produce large numbers of these effector cells for immunotherapy. However, the transfer of bench-top expansion protocols to clinically applicable methods is challenging for NK cell–based therapy because of regulatory aspects and scale-up issues. Therefore, we developed an automated, large-scale NK cell expansion process.MethodsEnriched NK cells were expanded with interleukin-2 and irradiated clinical-grade Epstein-Barr virus–transformed lymphoblastoid feeder cells with the use of an automated system in comparison to manual expansion, and the cells were investigated for their functionality, phenotype and gene expression.ResultsAutomated expansion resulted in a mean 850-fold expansion of NK cells by day 14, yielding 1.3 (±0.9) × 109 activated NK cells. Automatically and manually produced NK cells were comparable in target cell lysis, degranulation and production of interferon-γ and tumor necrosis factor-α and had similar high levels of antibody-dependent cellular cytotoxicity against rituximab-treated leukemic cells. NK cells after automated or manual expansion showed similar gene expression and marker profiles. However, expanded NK cells differed significantly from primary NK cells including upregulation of the functional relevant molecules TRAIL and FasL and NK cell–activating receptors NKp30, NKG2D and DNAM-1. Neither automatically nor manually expanded NK cells showed reduced telomere length indicative of a conserved proliferative potential.ConclusionsWe established an automated method to expand high numbers of clinical-grade NK cells with properties similar to their manually produced counterparts. This automated process represents a highly efficient tool to standardize NK cell processing for therapeutic applications

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Last time updated on 06/05/2017

This paper was published in Elsevier - Publisher Connector .

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