RNAdjuvant ® , a novel, highly-potent RNA-based adjuvant, combines strong immunostimulatory capacities with a favorable safety profile

Journal for ImmunoTherapy of Cancer(2015)

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摘要
Purified recombinant proteins and peptides, which are currently under development in various anti-cancer vaccination approaches, lack sufficient immunogenicity. Therefore, potent adjuvants are needed to induce strong and persistent anti-tumor immunity. However, currently only few adjuvants are licensed, most of which primarily enhance antibody, but not T cell responses. Here, we demonstrate that a novel, well defined, and thoroughly characterized RNA-based adjuvant mediates balanced and long-lasting humoral and cellular immune responses. Our adjuvant significantly enhances anti-tumor immunity, and even complete tumor rejection can be achieved as shown for the syngeneic TC-1 tumor model, a murine model of human HPV-induced cervical cancer. Our adjuvant acts locally, promoting strong but transient up-regulation of anti-viral and pro-inflammatory cytokines, CXCR3-ligands and cytoplasmic RNA sensors at the injection site, avoiding any systemic cytokine release. A phase I first in man clinical trial testing different doses of RNAdjuvant ® alone and in combination with reduced doses of the licensed rabies vaccine Rabipur ® was successfully conducted in 43 subjects. Healthy volunteers received 2 intramuscular injections of RNAdjuvant ® on days 0 and 21, either alone or in combination with 1/20 or 1/10 of the licensed Rabipur ® dose. Virus neutralizing antibody titers (VNTs) measured on days 14 and 28 revealed a significant increase in median VNTs in subjects with RNAdjuvant ® compared to their respective control group with 1/10 dose Rabipur ® alone. In summary, our data suggest that RNAdjuvant ® represents a novel, highly efficacious adjuvant candidate that can enhance cellular and humoral immune responses.
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关键词
Favorable Safety Profile,Neutralize Antibody Titer,Virus Neutralize Antibody,Repeat Dose Toxicity,Clinical Trial Testing
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