围术期护理干预对视网膜脱离患者心理状态及术后生活质量的影响
Abstract
目的:探讨围术期护理干预对视网膜脱离患者心理状态及术后生活质量的影响.方法:将2016年10月~2017年10月136例视网膜脱离患者随机分为对照组和研究组各68例,对照组给予常规护理,研究组给予围术期护理干预,比较两组护理效果.结果:护理后,两组焦虑自评量表(SAS)、抑郁自评量表(SDS)评分均明显降低,且研究组明显低于对照组(P<0.05);研究组认知、角色、情绪、社会、躯体等生活质量项目评分均高于对照组(P<0.05);研究组患眼并发症发生率低于对照组(P<0.05).结论:围术期加强护理干预可有效改善视网膜脱离患者焦虑、抑郁心理状态,提升其术后生活质量,值得推广.
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