Abstract

Several large randomized controlled trials of anti-CD20 antibodies have been successfully conducted for the treatment of relapsing multiple sclerosis. Despite this, there are few systematic comparisons of different anti-CD20 antibodies and a comprehensive evaluation of their efficacy and safety is yet to be carried out. The objective of this systematic review and network meta-analysis was to evaluate the efficacy and safety of the three approved anti-CD20 antibodies for the treatment of relapsing multiple sclerosis and to aid clinicians in choosing medications. MEDLINE, EMBASE, Cochrane Library, and clinicaltrials.gov were all searched for randomized controlled trials conducted to evaluate anti-CD20 antibodies (rituximab, ocrelizumab, ofatumumab) and corresponding controls up to 31 May, 2022. Review Manager 5.3 and R 3.5.2 software were used to assess the data. The risk ratio and mean difference were analyzed and calculated with a random-effects model. We pooled 4181 patients from ten randomized controlled trials. Without increasing the risk of adverse events and serious adverse events, anti-CD20 antibodies were superior to the active control group in all efficacy outcomes (both p < 0.005, certainty of evidence, very low to high). For the comparison between anti-CD20 groups, rituximab was found to be able to significantly increase the number of patients free of relapse more effectively than the other two interventions; however, the surface under curve ranking area values for serious adverse events were also the highest (84.8%). At the same time, ocrelizumab and ofatumumab exhibited satisfactory efficacy without showing a worse safety than any other interventions. Overall, anti-CD20 antibody treatment is superior to a corresponding control in efficacy and safety measures and ocrelizumab and ofatumumab may be the most suitable anti-CD20 antibodies for treating relapsing multiple sclerosis. Additional large-scale and high-quality studies are still needed to further explore the safety of these therapies.

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