早期预警评分支持连续无线生命体征监测用于外科病房患者并发症预测:回顾性观察研究。

Mathilde C van Rossum, Robin E M Bekhuis, Ying Wang, Johannes H Hegeman, Ellis C Folbert, Miriam M R Vollenbroek-Hutten, Cornelis J Kalkman, Ewout A Kouwenhoven, Hermie J Hermens
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引用次数: 0

摘要

背景:无线生命体征传感器越来越多地用于外科病房的患者监测。虽然早期预警评分(ews)是目前在病房环境中识别患者病情恶化的标准,但其对持续监测的有用性尚不清楚。目的:本研究旨在探讨从连续生命体征记录中获得的高速率EWS对早期识别术后并发症的可用性和预测价值,并比较基于传感器的EWS报警系统与人工间歇EWS测量和应用于个体生命体征记录的阈值报警(单参数报警)的性能。方法:利用无线传感器采集外科病房患者的连续生命体征(心率、呼吸频率、血氧饱和度、腋窝温度),回顾性模拟不同时间窗(1 ~ 240 min)的EWSs(传感器EWSs),采用类似人工生命体征测量(护士EWSs)的EWSs标准。比较有(事件组:14/ 46,30%)和无(对照组:32/ 46,70%)术后并发症患者的每小时传感器EWS测量值。此外,使用一系列报警阈值(1-9)模拟传感器EWSs的报警,并与基于护士EWSs的报警和单参数报警进行比较。通过预测24小时内并发症的敏感性、每日报警率和错误发现率(FDR)来评估报警性能。结果:事件组的小时传感器EWSs(中位数3.4,IQR 3.1-4.1)显著高于事件组(pp结论:无线生命体征传感器获得的EWSs可能有助于病房环境中术后并发症的早期识别,与手动EWS测量相比,预警灵敏度更高。虽然与单参数警报相比,小时传感器EWSs提供的警报较少,但在较短的时间跨度内计算时,可以预期高误报率。建议进一步研究以优化病房环境中生命体征持续监测的护理升级标准,并评估对患者预后的影响。
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Early Warning Scores to Support Continuous Wireless Vital Sign Monitoring for Complication Prediction in Patients on Surgical Wards: Retrospective Observational Study.

Background: Wireless vital sign sensors are increasingly being used to monitor patients on surgical wards. Although early warning scores (EWSs) are the current standard for the identification of patient deterioration in a ward setting, their usefulness for continuous monitoring is unknown.

Objective: This study aimed to explore the usability and predictive value of high-rate EWSs obtained from continuous vital sign recordings for early identification of postoperative complications and compares the performance of a sensor-based EWS alarm system with manual intermittent EWS measurements and threshold alarms applied to individual vital sign recordings (single-parameter alarms).

Methods: Continuous vital sign measurements (heart rate, respiratory rate, blood oxygen saturation, and axillary temperature) collected with wireless sensors in patients on surgical wards were used for retrospective simulation of EWSs (sensor EWSs) for different time windows (1-240 min), adopting criteria similar to EWSs based on manual vital signs measurements (nurse EWSs). Hourly sensor EWS measurements were compared between patients with (event group: 14/46, 30%) and without (control group: 32/46, 70%) postoperative complications. In addition, alarms were simulated for the sensor EWSs using a range of alarm thresholds (1-9) and compared with alarms based on nurse EWSs and single-parameter alarms. Alarm performance was evaluated using the sensitivity to predict complications within 24 hours, daily alarm rate, and false discovery rate (FDR).

Results: The hourly sensor EWSs of the event group (median 3.4, IQR 3.1-4.1) was significantly higher (P<.004) compared with the control group (median 2.8, IQR 2.4-3.2). The alarm sensitivity of the hourly sensor EWSs was the highest (80%-67%) for thresholds of 3 to 5, which was associated with alarm rates of 2 (FDR=85%) to 1.2 (FDR=83%) alarms per patient per day respectively. The sensitivity of sensor EWS-based alarms was higher than that of nurse EWS-based alarms (maximum=40%) but lower than that of single-parameter alarms (87%) for all thresholds. In contrast, the (false) alarm rates of sensor EWS-based alarms were higher than that of nurse EWS-based alarms (maximum=0.6 alarm/patient/d; FDR=80%) but lower than that of single-parameter alarms (2 alarms/patient/d; FDR=84%) for most thresholds. Alarm rates for sensor EWSs increased for shorter time windows, reaching 70 alarms per patient per day when calculated every minute.

Conclusions: EWSs obtained using wireless vital sign sensors may contribute to the early recognition of postoperative complications in a ward setting, with higher alarm sensitivity compared with manual EWS measurements. Although hourly sensor EWSs provide fewer alarms compared with single-parameter alarms, high false alarm rates can be expected when calculated over shorter time spans. Further studies are recommended to optimize care escalation criteria for continuous monitoring of vital signs in a ward setting and to evaluate the effects on patient outcomes.

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