Evaluating the Therapeutic Efficacy of an Anti-BAFF Receptor Antibody Using a Rheumatoid Arthritis Mouse Model.

利用类风湿性关节炎小鼠模型评价抗BAFF受体抗体的治疗效果。

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BACKGROUND: Rheumatoid arthritis (RA) is a chronic autoimmune disease characterized by joint inflammation that leads to tissue damage and disability. RA affects approximately 0.5-1% of the global population and is driven by a complex interplay of genetic susceptibility, environmental factors, and immune dysregulation. While biologic and targeted synthetic DMARDs improved RA treatment, they have limitations in efficacy, safety, and accessibility. B-cell-targeting therapies, such as anti-CD20, have shown effectiveness, but only with broad immunosuppression, which can increase infection risk and compromise humoral immunity. Therefore, there is an unmet need for more selective therapeutic strategies that modulate pathogenic immune pathways while preserving protective immune functions. It has been suggested that targeting the BAFF pathway may offer a more favorable therapeutic approach compared to targeting CD20. OBJECTIVES: In this study, we evaluated the therapeutic potential of V3-46s mIgG2a, an anti-BAFF-R (BR3) antibody in a mouse RA model, hypothesizing that it would offer a more selective and effective strategy. METHODS: We expressed and purified four antibody variants and assessed their binding and neutralizing activity in vitro. V3-46s mIgG2a was selected for in vivo evaluation in a collagen-induced arthritis (CIA) model. RESULTS: Treatment with this antibody delayed disease onset and reduced arthritis severity, spleen index, and B-cell populations. CONCLUSIONS: These findings highlight the potential of BAFF-R-targeting antibodies as a therapeutic approach for RA treatment. This preclinical work lays the groundwork for future development of BAFF-R blockade as a complementary or alternative strategy to current biologic treatments.

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