针刺尺泽穴为主治疗乳腺增生的临床观察
Chinese Manipulation & Rehabilitation Medicine(2020)
Abstract
目的:观察针刺以尺泽穴为主的组合穴位对乳腺增生的临床疗效.方法:选取2018年6月~2019年6月广东省中医院二沙岛针灸和乳腺科门诊患者76例,随机分治疗组41例和对照组35例.对照组予常规针刺,每周3次,治疗组使用尺泽穴为主配合常规针刺方法,每周3次,连续12周后,比较治疗前后两组患者症状、体征及影像学评分及治疗后疗效.结果:治疗后,两组患者在乳房疼痛、肿块硬度、肿块范围、肿块大小评分均低于治疗前(P<0.05),观察组乳房疼痛、肿块硬度、肿块大小、情绪变化、月经异常、两胁胀满、淤血症状评分均低于对照组(P<0.05),两组肿块范围评分方面比较无统计学意义(P>0.05).治疗组总有效率高于对照组(P<0.05).结论:以尺泽穴为主的治疗方法与常规针刺对乳腺增生乳房胀痛均有疗效,但疗效优于常规针刺组.
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