Abstract

Due to high heterogeneity and risk of bias (RoB) found in previously published meta-analysis (MA), a concrete conclusion on the efficacy of baricitinib in reducing mortality in coronavirus disease 2019 (COVID-19) patients was unable to form. Hence, this systematic review and MA were conducted to analyse whether RoB, heterogeneity, and optimal sample size from placebo-controlled randomized controlled trials (RCTs) are still the problems to derive a concrete conclusion. Search engines PubMed/MEDLINE, ScienceDirect, and other sources like preprints and reference lists were searched with appropriate keywords. The RoB and MA were conducted using RevMan 5.4. The grading of the articles was conducted using the GRADEPro Guideline Development Tool. Ten RCTs were included in the current systematic review. Only five low RoB articles are Phase III placebo-controlled RCTs with a high certainty level based on the GRADE grading system. For the MA, based on five low RoB articles, baricitinib statistically significantly reduced mortality where the risk ratio (RR) = 0.68 [95% confidence interval (95% CI) 0.56-0.82; P < 0.0001; I2 = 0%; P = 0.85]. The absolute mortality effect (95% CI) based on the grading system was 35 fewer mortalities per 1000 COVID-19 patients, whereas in the baricitinib and control groups, the mortality was 7.4% and 10.9%, respectively. With the presence of an optimal sample size of 3944 from five low RoB-placebo-controlled RCTs, which represent a minimum of 300 million population of people and with the presence of 0% heterogeneity from MA, the effectiveness of baricitinib in reducing the mortality in COVID-19 patients is concretely proven.

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