evaluation of efficacy and safety of dan’e-fukang soft extract in the treatment of endometriosis: a meta-analysis of 39 randomized controlled trials enrolling 5442 patients

evaluation of efficacy and safety of dan’e-fukang soft extract in the treatment of endometriosis: a meta-analysis of 39 randomized controlled trials enrolling 5442 patients

;Yantao Li;Te Li;Shilin Song
ACS applied materials & interfaces 2017 Vol. 2017 pp. -
127
li2017evidence-basedevaluation

Abstract

Objective. To systematically evaluate the efficacy and safety of Dan’e-fukang soft extract in endometriosis treatment. Method. PubMed, CNKI, Wanfang Database, VIP, SinoMed, and Cochrane Library were searched. Randomized controlled trials (RCTs) comparing the efficacy of Dan’e-fukang soft extract and conventional western medicines for endometriosis treatment were included. The data were extracted independently by two people and analyzed using RevMan 5.2.0 software. The relative risk (RR) and mean difference (MD) with 95% confidence intervals were considered as effective outcome indicators. Results. Thirty-nine papers including 5442 patients with endometriosis were included in this study. A meta-analysis revealed that Dan’e-fukang soft extract was more efficient than gestrinone in the treatment of endometriosis (RR = 1.08, 95% CI = 1.03 to 1.15, I2 = 71%, REM, 18 trials) and its efficacy was comparable to that of danazol and mifepristone. Dan’e-fukang soft extract was also as effective as gestrinone and mifepristone in terms of relapse rate and relieving dysmenorrhea. The incidence of adverse reactions was lower than that of conventional western medicines. Conclusions. The results of this study showed that Dan’e-fukang soft extract offers certain advantages in endometriosis treatment, but rigorously designed, strictly implemented RCTs are needed to further validate its efficacy.

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