步长胆石利通片在胆囊切除术后应用效果观察
Journal of North Pharmacy(2021)
Abstract
目的:探讨步长胆石利通片在胆囊切除术后的应用效果.方法:选取福建医科大学附属漳州市医院接受胆囊切除术治疗的102例患者作为研究对象,应用单盲随机法,分为观察组(步长胆石利通片)和对照组(消炎利胆片)各51例,观察患者的术后恢复情况.结果:与对照组相比,观察组患者的胆囊切除术后综合征发生率、复发率、相对更低(P<0.05),术后的下床活动时间、胃肠功能恢复时间以及住院时间相对更短(P<0.05).结论:在胆囊切除术后,应用步长胆石利通片,可以有效降低并发症及复发风险,为患者的快速、良好康复提供安全保障.
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