医学
置信区间
随机对照试验
荟萃分析
外科
全髋关节置换术
关节置换术
内科学
作者
Zhongsheng Zhou,Yang Li,Yachen Peng,Jinlan Jiang,Jianlin Zuo
标识
DOI:10.3389/fsurg.2022.1022937
摘要
Background Direct anterior approach (DAA) is an accurate technique for total hip arthroplasty (THA) through the muscle gap. Physicians who apply DAA believe that it accelerates patient recovery and results in lower rates of postoperative dislocation. However, the traditional surgical approach adherents believe that it is shorter and has fewer complications than DAA. Methods We use the method of META analysis to organize and analyze the data of the randomized controlled studies (RCT) obtained after our screening. To compare the clinical efficacy of DAA approach and other surgical approaches for THA. Results After rigorous screening, 15 RCT studies were included in our study, and data were extracted. The study included 1,450 patients from 15 RCTs, with a mean age of 63 years and a distribution of 52–67 years. Six weeks after the operation, the Harris hip score of the DAA approach improved by an average of 4.06 points (95% confidence interval (CI) 2.54 −5.59, P < 0.01, I 2 = 45%, which can significantly improve the clinical efficacy of patients. However, the 0.61 points [95% confidence interval (CI) −1.13 −2.34, P > 0.01, I 2 = 0%] at 3 months and 1.49 points [95% confidence interval (CI) −1.65 −2.25, P > 0.01, I 2 = 0%] at 12 months postoperatively. In terms of dislocation rate, results show that the use of DAAs does not reduce Dislocation Rate with significant statistical heterogeneity among study groups (95% CI 0.18–2.94 P > 0.001, I 2 = 0%). Conclusion The hip function of DAA was superior to posterolateral approach (PLA) and latera approach (LA) in the early days after hip replacement, especially within six weeks. However, at six months or more after surgery, the difference was not significant. The DAA did not show a lower rate of dislocation than other surgical approaches. Systematic Review Registration https://www.crd.york.ac.uk/PROSPERO
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