覃银春
咸丰县高乐山镇卫生院 湖北 恩施 445600
【摘要】目的 研究在妇科质量管理中应用标准化护理的价值。方法 将我院2020.1~2020.12内接治的66例妇科患者按随机电脑盲化法列为基础组(n=33,基础护理)与标准组(n=33,标准化护理),比较两组护理质量。结果 标准组护理事件发生率为3.03%,相比基础组的21.21%更低,P<0.05;标准组的总满意度为93.94%,与基础组的75.76%相比更高,P<0.05。结论 在妇科护理质量管理中实施标准化护理使护理质量得到显著提升,同时患者对护理工作评价较高,值得借鉴。
【关键词】管理;标准化;妇科;质量
妇科作为医院组成的一部分,是妇产科的专业分支,主要治疗诸多妇科疾病,如子宫肌瘤、阴道炎及盆腔炎等。因妇科疾病在临床发病率较高,且大部分疾病病情迁延漫长,患者多会出现抑郁、焦虑等不良情绪,甚至出现恐惧不安等负面心理,不仅对治疗效果产生影响,同时影响医院声誉[1]。近些年临床对于疾病治疗从“以疾病为中心”逐步转换为“以患者为中心”这便要求临床在工作时不仅需提升医疗技术与专业水平,同时应深化护理内容,使护理质量得到提高,进而改善患者心理状态,减少医患纠纷发生几率,提高患者满意度[2]。本文现就标准化护理对妇科护理质量管理的价值展开如下研究,阐述如下。
1 资料与方法
1.1 一般资料
在我院2020.1~2020.12内接治的妇科患者中抽取66例按随机电脑盲化法列为基础组与标准组,各33例,本次试验均通过伦理委员会批准审核(批准文号:IRB-2020-289),基础组年龄21~55岁,均差(46.54±4.48)岁,标准组年龄24~53岁,均差(46.58±4.36)岁,两组数据基本一致且对本次试验均知晓并签字,P<0.05。
1.2 方法
基础组:合理安排妇科日常护理工作,嘱护理人员严格遵循科室相关规章制度与无菌操作规范流程,强化妇科护理日常工作流程。
标准组:1.成立标准化护理管理小组,小组组长由主管护师担任,在科室内展开小组会议,总结探讨既往临床妇科护理工作中缺陷与经验,并根据探讨内容结合科室实际情况制定针对性、全面性且完善的护理质量管理标准,进行动态性管理,保证护理质量管理做到切实可行。2.保证日常护理工作能够标准化,在实际护理工作时间应严格按照制定的护理质量标准与流程进行,提高护理工作相关内容的安全性,同时以妇科护理工作为基本,加强相应工作流程的检查力度,尤其是优化抢救物品、患者护理依从性及突发事件,保证护理各个环节的标准规范性,采用质量评分表评估科室内各个环节相应工作,重点评估不足的区域并定期进行安全整治3.统一管理护理操作方式与流程,针对现存问题进行分析并监督纠正,使护理质量不断得到提升;在科室内定期展开整体培训、针对性学习指导等方法提高护理人员专业知识与操作水平,保证妇科护理工作有一定专业性与规范性。
1.3 观察指标
(1)统计两组不良事故、记录差错、纠纷问题护理事件发生率,并将统计结果进行对比。
(2)通过本文自拟满意度调查表评估两组满意度,满分100分,<50分不满意;50~75分基本满意;>75分非常满意。总满意度=总例数%-不满意%。
1.4 统计学处理
采用SPSS19.0统计软件对所得数据进行分析处理,计数资料采用百分比表示,χ2检验,计量资料用(±s)表示,t检验,以P<0.05为差异具有统计学意义。
2 结果
2.1 比较两组护理事件发生率
标准组护理事件发生率为3.03%,相比基础组的21.21%更低,P<0.05。见表1:
表1 比较两组护理事件发生率(n=33,%)
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)
2.2 比较两组满意度
标准组的总满意度为93.94%,与基础组的75.76%相比更高,P<0.05。见表2:
表2 比较两组满意度(n=33,%)
![](data:image/png;base64,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)
3 讨论
对妇科护理质量的评估标准首要指标便是护理安全问题,但现下仍存在妇科护理工作不当造成患者病情恶化、加重甚至死亡的情况[3]。为避免该类情况的发生,妇科护理人员应有较高专业素质,严格按照护理规章制度实施相应护理操作,尽量降低、避免护理期间出现的失误对护理质量产生影响。
在妇科中展开标准化护理管理,利于促进临床护理工作的质量与安全性进行性提高。如合理安排科室相应医疗设备与物品,利于护理人员在临床护理与操作时能够更加准确与快速的应用,使护理工作效率得到进一步提升;其次还可保证护理人员在工作过程随时保持严谨科学的工作态度,使患者能全面深入了解妇科护理工作的流程与作用,使患者对护理工作予以理解与配合,提高护理依从性,为护理工作顺利展开提供良好基础[4]。本次结果显示:标准组护理事件发生率低于基础组,P<0.05;而护理满意度高于基础组,P<0.05。标准化护理是将护理工作的步骤与流程进行合理规范化,并制定完整的质量评估与考核标准,保证护理人员在实际工作中切实可行,不仅利于护理工作能准时与高效的完成,且能使护理质量进一步提高,使患者对护理工作有较高评价[5]。
综上所述,在妇科护理管理中进行标准化护理不仅能显著提高护理质量,且提高患者对护理工作的满意程度,建议临床参考。
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