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通过自适应时间延迟减少患者监测中临床无关警报。

Reduction of clinically irrelevant alarms in patient monitoring by adaptive time delays.

作者信息

Schmid Felix, Goepfert Matthias S, Franz Frank, Laule David, Reiter Beate, Goetz Alwin E, Reuter Daniel A

机构信息

Department of Anesthesiology, Hamburg-Eppendorf University Hospital, Martinistr. 52, 20246, Hamburg, Germany.

Drägerwerk AG & Co. KGaA, Moislinger Allee 53, 23542, Lübeck, Germany.

出版信息

J Clin Monit Comput. 2017 Feb;31(1):213-219. doi: 10.1007/s10877-015-9808-2. Epub 2015 Nov 30.

Abstract

The problem of high rates of false alarms in patient monitoring in anesthesiology and intensive care medicine is well known but remains unsolved. False alarms desensitize the medical staff, leading to ignored true alarms and reduced quality of patient care. A database of intra-operative monitoring data was analyzed to find characteristic alarm patterns. The original data were re-evaluated to find relevant events and to rate the severity of these events. Based on this analysis an adaptive time delay was developed that individually delays the alarms depending on the grade of threshold deviation. The conventional threshold algorithm led to 4893 alarms. 3515 (71.84 %) of these alarms were annotated as clinically irrelevant. In total 81.0 % of all clinically irrelevant alarms were caused by only mild and/or brief threshold violations. We implemented the new algorithm for selected parameters. These parameters equipped with adaptive validation delays led to 1729 alarms. 931 (53.85 %) alarms were annotated as clinically irrelevant. 632 alarms indicated the 645 clinically relevant events. The positive predictive value of occurring alarms improved from 28.16 % (conventional algorithm) to 46.15 % (new algorithm). 13 events were missed. The false positive alarm reduction rate of the algorithm ranged from 33 to 86.75 %. The overall reduction was 73.51 %. The implementation of this algorithm may be able to suppress a large percentage of false alarms. The effect of this approach has not been demonstrated but shows promise for reducing alarm fatigue. Its safety needs to be proven in a prospective study.

摘要

麻醉学和重症监护医学中患者监测的高误报率问题众所周知,但仍未得到解决。误报会使医护人员产生脱敏反应,导致对真正警报的忽视以及患者护理质量的下降。分析了一个术中监测数据库以找出特征性警报模式。对原始数据进行重新评估以找出相关事件并对这些事件的严重程度进行评级。基于此分析,开发了一种自适应时间延迟,它会根据阈值偏差的程度分别延迟警报。传统阈值算法产生了4893次警报。其中3515次(71.84%)警报被标注为临床无关。所有临床无关警报中,总计81.0%仅由轻微和/或短暂的阈值违规引起。我们对选定参数实施了新算法。这些配备了自适应验证延迟的参数产生了1729次警报。931次(53.85%)警报被标注为临床无关。632次警报表明了645次临床相关事件。出现警报的阳性预测值从28.16%(传统算法)提高到了46.15%(新算法)。有13个事件被遗漏。该算法的误报减少率在33%至86.75%之间。总体减少率为73.51%。该算法的实施可能能够抑制很大比例的误报。这种方法的效果尚未得到证实,但显示出减少警报疲劳的前景。其安全性需要在前瞻性研究中得到证明。

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