Investigating the efficiency and tolerability of traditional Chinese formulas combined with antiarrhythmic agents for paroxysmal atrial fibrillation: A systematic review and Bayesian network meta-analysis.

2022 
Abstract Background : The combination of antiarrhythmic drugs with traditional Chinese formulas are used treatments for the management of paroxysmal atrial fibrillation(PAF). However, the most effective treatment for PAF has yet to be been determined. A Bayesian network meta-analysis study was thus performed for comparing the relative efficacy and tolerability of different treatment alternatives. Methods : A comprehensive literature review of randomized controlled trials(RCTs) is performed from eight database. Maintenance rate of sinus rhythm(MRSR), p-wave dispersion(Pd), left atrium diameter(LAD), left ventricular ejection fraction(LVEF), and adverse events(AEs) were used as outcomes. We also estimated treatment rank based on the surface under the cumulative ranking curve(SUCRA). This study was performed using a Bayesian network meta-analysis with a random-effects model. Findings : After screening, 59 RCTs involving 5,543 patients and 16 treatments were included. The results showed that Shensong-Yangxin capsule(SSYX) plus amiodarone(81%) was the most effective treatment for MRSR according to the value of SUCRA, followed by Wenxin-Keli granules(WXKL) plus amiodarone(73%). Meanwhile, SSYX plus amiodarone(7%) was most likely to reduce Pd, followed by SSYX plus metoprolol (23%), WXKL plus amiodarone(26%), WXKL plus bisoprolol(27%). Furthermore, SSYX plus amiodarone(4%) was more effective in improving LAD. WXKL plus amiodarone was preferred because it had the lowest toxicity. For benefit-risk ratio, amiodarone combined with WXKL or SSYX appeared to be the best option. Conclusion : Antiarrhythmic agents combined with traditional Chinese formulas had higher efficacy and lower toxicity than other treatment alternatives. This study might provide reference to help find the better treatment options for PAF.
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