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优质护理干预在168例妇产科患者中的应用

Chinese Journal of Ethnomedicine and Ethnopharmacy(2014)

Cited 9|Views0
Abstract
目的:探讨优质护理干预在妇产科护理中的应用效果。方法:本院妇产科自2013年1月起实施优质护理干预,以干预前1年内妇产科住院患者145例作为对照组,以干预后1年内妇产科住院患者168例作为实验组,对比两组在护患满意度方面的差异性。结果:与对照组对比,实验组护患满意率明显较高,组间差异有统计学意义(P <0.05)。结论:在妇产科临床护理工作中实施优质护理干预,有助于提高护理工作质量,提升患者的满意度,有利于增进护患关系。
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