护理人员慢病居家康复护理服务态度与服务能力现状调查
Journal of Qilu Nursing(2022)
Abstract
目的:调查护理人员的慢病居家康复护理服务态度与能力,探讨其影响因素.方法:分层随机抽取上海市80所医疗机构的502名护理人员为研究对象,采用自制问卷调查其慢病居家康复护理服务态度和能力.结果:502名护理人员的慢病居家康复护理服务态度、服务能力得分分别为(31.030±4.014)分、(29.840±7.136)分;多元线性回归分析结果显示:护理人员慢病居家康复护理服务态度的影响因素有受教育程度、职务、医院等级和有无慢病居家康复指导经历(P<0.05),慢病居家康复护理服务能力的影响因素有职称、医院等级和有无慢病居家康复指导经历(P<0.05).结论:目前护理人员对慢病居家康复护理服务总体持积极态度,但整体服务水平有待提高.建议搭建资源共享式慢病居家康复服务平台,在"医院-社区-家庭"区域联动优质资源下沉的有利条件下加强慢病居家康复护理人员的专业培训,规范慢病居家康复护理质量管理体系,推动慢病居家康复护理服务项目的发展.
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