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品管圈在预防脑卒中患者误吸中的应用分析

浦苏颖,王慧,郑徽,李顺钧,汤跃宇, 朱丽琴, 许一佳, 郝达彬, 翟静芬

Chongqing Medicine(2017)

Cited 9|Views13
Abstract
目的 探讨品管圈的工作模式在预防脑卒中患者发生误吸中的应用效果.方法 选择2014年8月至2015年7月在大华医院神经内科住院部治疗的脑卒中患者共1 065例,分为观察组(546例)和对照组(519例).对照组按照常规工作模式进行程序化治疗、护理和健康宣教;观察组开展品管圈工作模式,确定工作主题,拟定工作计划表,进行原因分析,制定对策和标准化工作流程,分析效果.将观察组和对照组脑卒中患者误吸发生率进行比较.结果 观察组的误吸发生率明显低于对照组,差异有统计学意义(22.9% vs.15.4%,P<0.05).结论 应用品管圈的工作模式能够降低脑卒中患者误吸的发生率,促进了医疗和护理质量的持续提高.
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