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Get Free AccessIn COVID-19, the inflammatory cytokine-release syndrome is associated with the progression of the disease. Itolizumab is a monoclonal antibody that recognizes human CD6 expressed in activated T cells. The antibody has shown to be safe and efficacious in the treatment of moderate to severe psoriasis. Its effect is associated with the reduction of pro-inflammatory cytokines release, including IFN-γ, IL-6 and TNF-α. Here, we report the outcome of three severe and critically ill COVID-19 patients treated with itolizumab as part of an expanded access protocol. Itolizumab was able to reduce IL-6 concentrations in all the patients. Two of the three patients showed respiratory and radiological improvement and were fully recovered. We hypothesize this anti-inflammatory therapy in addition to antiviral and anticoagulant therapy could reduce COVID-19 associated morbidity and mortality.
Lázaro Manuel Filgueira, Julio Betancourt Cervantes, Orlando Adolfo Lovelle, Carlos Herrera, Carlos Marcelo Figueredo, Jorge A. Caballero, Naivy Sánchez, Jorge Berrio, Geidy Lorenzo, Meylán Cepeda, Mayra Ramos, Danay Saavedra, Ana Laura Añé-Kourí, Zaima Mazorra, Kalet León, Tania Crombet, Armando Caballero (2021). An Anti-CD6 Antibody for the Treatment of COVID-19 Patients with Cytokine-Release Syndrome: Report of Three Cases. , 13(4), DOI: https://doi.org/10.2217/imt-2020-0235.
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Type
Article
Year
2021
Authors
17
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.2217/imt-2020-0235
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