通腑泄浊法联合西医常规疗法治疗危重病患者胃肠功能障碍的临床观察
China's Naturopathy(2021)
Abstract
目的:探讨通腑泄浊法联合西医常规疗法治疗危重病合并胃肠功能障碍患者的临床疗效.方法:选取60例危重病合并胃肠功能障碍患者,随机分为对照组和观察组,每组30例.对照组采用西医常规对症治疗,观察组在对照组基础上,予以通腑泄浊法治疗.治疗7d后,比较两组患者临床疗效及治疗前后急性生理与慢性健康评分表(APACHEⅡ)评分、中医症状积分、C-反应蛋白水平的变化情况.结果:观察组有效率为83.33%(25/30),明显高于对照组的70.00%(21/30),差异具有统计学意义(P<0.05).治疗后,两组患者中医症状积分、APACHEⅡ评分、C-反应蛋白水平均低于治疗前,且观察组低于对照组,差异均有统计学意义(P<0.05).结论:通腑泄浊法联合西医常规疗法对危重病合并胃肠功能障碍患者有确切疗效,具有临床推广价值.
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