“医养融合”模式下社区老年人护理的效果分析
BAOJIANWENHUI(2022)
Abstract
目的:探讨社区老年人护理中应用“医养融合”模式的效果。方法:选取2020年6月至2022年6月这两年期间,北京市西城区新街口社区卫生服务中心辖区内收治的58例老年患者作为研究对象,以随机数字表法对其分成两组进行护理。对照组患者29例,以社区常规护理为主;观察组患者29例,应用“医养融合”模式护理,对两组患者护理的具体效果展开对比调查。结果:观察组患者的日常活动能力评分(15.91±1.17)分、躯体健康风险评分(4.15±1.18)分、精神健康评分(10.27±0.94)分与社会支持评分(45.12±0.23)分,相比于对照组患者更优,(P<0.05);经过护理后,观察组患者对生活状况的满意度(2.78±0.46)分、医疗保健满意度(3.31±0.35)分、居住环境满意度(2.29±0.45)分、社区环境满意度(2.73±0.14)分及家属照料满意度(3.16±0.19)分,与对照组患者相比各项评分更高,(P<0.05);两组患者对护理工作的评价相比之下,观察组患者更加满意,护理总满意率96.55%高于对照组护理总满意率68.97%,(P<0.05)。结论:对于社区老年人的护理,应用“医养融合”模式的效果最佳,利于改善患者的日常生活能力,有效维护其身心健康,值得推广。
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