三甲综合医院护理专项课题过程管理精细化的初步探索与实践
Chinese Journal of Medical Science Research Management(2023)
Abstract
目的:分析某三甲综合医院在加强护理专项课题过程管理工作中的具体举措与实践效果,探索院级课题精细化管理策略,为提高课题管理水平提供借鉴。方法:将医院2016年8月—2021年8月期间在护理专项课题管理中所采取的包括围绕重点学科设立课题方向、分层设定申报条件、规范遴选程序、加强中期考核、严格结题验收、建立诚信档案、推动成果转化等一系列探索性举措及其成效作为研究对象,进行深入分析探讨。结果:通过实施精细化课题过程管理措施,医院护理团队在论文发表、专利授权、获批局级以上课题、中国医院科技量值(STEM)护理专科排名等方面均有显著提升。结论:加强医院护理专项课题的精细化过程管理,能够显著提高护理学科建设水平,有力地推动护理学科发展。
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Key words
Nursing research,Project management,Process management,Hospital
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