Rituximab Preferentially Eliminates BCR Signaling Proficient Chronic Lymphocytic Leukemia B Cells in Vivo
Blood(2016)SCI 1区
CEITEC MU | Univ Hosp Brno
Abstract
The use of anti-CD20 antibody rituximab has significantly improved the outcome of patients with chronic lymphocytic leukemia (CLL). Rituximab has been shown to act through several mechanisms including antibody-dependent cell cytotoxicity (ADCC), complement-dependent cytotoxicity (CDC), direct induction of apoptosis, and sensitization to chemotherapy. However, the exact contribution of each of these mechanisms to the clinical efficacy of rituximab in vivo and the exact mechanism of its action remain unclear. Importantly, the levels of cell surface CD20 expression were shown to associate with the efficacy of rituximab.
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