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遥测单元心脏警报管理的新方法。

Novel approach to cardiac alarm management on telemetry units.

作者信息

Whalen Deborah A, Covelle Patricia M, Piepenbrink James C, Villanova Karen L, Cuneo Charlotte L, Awtry Eric H

机构信息

Deborah A. Whalen, MSN, MBA, APRN, ANP-BC, FAHA Assistant Professor of Medicine, School of Medicine, Boston University, and Clinical Service Manager, Cardiology, Boston Medical Center, Massachusetts. Patricia M. Covelle, MMHC, RN Director of Critical Care Nursing, Boston Medical Center, Massachusetts. James C. Piepenbrink, BSBME Director of Clinical Engineering, Boston Medical Center, Massachusetts. Karen L. Villanova, BSN, RN Nurse Manager, Boston Medical Center, Massachusetts. Charlotte L. Cuneo, MSN, RN Clinical Instructor, Boston Medical Center, Massachusetts. Eric H. Awtry, MD Associate Professor of Medicine, School of Medicine, Boston University, and Inpatient Clinical Director, Division of Cardiology, Boston Medical Center, Massachusetts.

出版信息

J Cardiovasc Nurs. 2014 Sep-Oct;29(5):E13-22. doi: 10.1097/JCN.0000000000000114.

Abstract

BACKGROUND

General medical-surgical units struggle with how best to use cardiac monitor alarms to alert nursing staff to important abnormal heart rates (HRs) and rhythms while limiting inappropriate and unnecessary alarms that may undermine both patient safety and quality of care. When alarms are more often false than true, the nursing staff's sense of urgency in responding to alarms is diminished. In this syndrome of "clinical alarm fatigue," the simple burden of alarms desensitizes caregivers to alarms. Noise levels associated with frequent alarms may also heighten patient anxiety and disrupt their perception of a healing environment. Alarm fatigue experienced by nurses and patients is a significant problem and innovative solutions are needed.

OBJECTIVE

The purpose of this quality improvement study was to determine variables that would safely reduce noncritical telemetry and monitor alarms on a general medical-surgical unit where standard manufacturer defaults contributed to excessive audible alarms.

METHODS

Mining of alarm data and direct observations of staff's response to alarms were used to identify the self-reset warning alarms for bradycardia, tachycardia, and HR limits as the largest contributors of audible alarms. In this quality improvement study, the alarms for bradycardia, tachycardia, and HR limits were changed to "crisis," requiring nursing staff to view and act on the alarm each time it sounded. The limits for HR were HR low 45 bpm and HR high 130 bpm.

RESULTS

An overall 89% reduction in total mean weekly audible alarms was achieved on the pilot unit (t = 8.84; P < .0001) without requirement for additional resources or technology. Staff and patient satisfaction also improved. There were no adverse events related to missed cardiac monitoring events, and the incidence of code blues decreased by 50%.

CONCLUSIONS

Alarms with self-reset capabilities may result in an excess number of audible alarms and clinical alarm fatigue. By eliminating self-resetting alarms, the volume of audible alarms and associated clinical alarm fatigue can be significantly reduced without requiring additional resources or technology or compromising patient safety and lead to improvement in both staff and patient satisfaction.

摘要

背景

普通内科-外科病房在如何最好地使用心脏监测警报以提醒护理人员注意重要的异常心率(HR)和心律方面面临困难,同时还要限制可能损害患者安全和护理质量的不适当及不必要的警报。当警报误报多于正确警报时,护理人员对警报做出反应的紧迫感就会降低。在这种“临床警报疲劳”综合征中,警报的简单负担使护理人员对警报产生脱敏。频繁警报相关的噪音水平也可能加剧患者焦虑并扰乱他们对康复环境的感知。护士和患者经历的警报疲劳是一个重大问题,需要创新的解决方案。

目的

这项质量改进研究的目的是确定能够安全减少普通内科-外科病房非关键遥测和监测警报的变量,在该病房中,标准制造商默认设置导致了过多的可听警报。

方法

通过挖掘警报数据并直接观察工作人员对警报的反应,确定心动过缓、心动过速和心率限制的自动重置警告警报是可听警报的最大来源。在这项质量改进研究中,将心动过缓、心动过速和心率限制的警报改为“危急”警报,要求护理人员每次警报响起时都要查看并对警报采取行动。心率限制为心率低45次/分钟和心率高130次/分钟。

结果

试点病房的每周平均总可听警报总体减少了89%(t = 8.84;P < .0001),无需额外资源或技术。工作人员和患者的满意度也有所提高。没有与错过心脏监测事件相关的不良事件,蓝色代码的发生率下降了50%。

结论

具有自动重置功能的警报可能会导致过多的可听警报和临床警报疲劳。通过消除自动重置警报,可以在不需要额外资源或技术的情况下,显著减少可听警报的数量和相关的临床警报疲劳,同时不影响患者安全,并提高工作人员和患者的满意度。

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