Jacobs Joshua L, Apatov Nathaniel, Glei Matthew
Division of Medical Informatics, Department of Medicine, John A Burns School of Medicine, University of Hawaii, Honolulu, HI, USA.
J Adv Nurs. 2007 Mar;57(5):472-81. doi: 10.1111/j.1365-2648.2006.04161.x.
This paper reports a study designed to assess an automated non-invasive, patient vigilance system, the (L)G(1TM) system, for determining heart rate and respiration rate. The study uses collected data to optimize the (L)G(1TM)'s alert management scheme for medical/surgical wards.
Thousands of patients die unnecessarily each year because of compromised patient safety in hospitals. Economic pressures to reduce hospitalization costs, exacerbated by increasing nursing shortages, have created a need for new approaches to patient vigilance. Advanced technologies may help nurses to provide high-quality care while controlling costs and improving patient safety.
Heart and respiration waveforms from 287 patients were captured by sensor arrays embedded in the mattress coverlets of their beds. No real-time monitoring was performed. Raw data were processed by proprietary algorithms and compared with data captured by a standard reference device. Alert performance was verified by hand-scoring the signal data and matching it against clinical events observed through a systematic review of each patient's medical record. The data were collected between June 2004 and February 2005.
Experimental algorithms for heart rate had an accuracy of -1.47 (sd 1.90) and a precision of 4.60 (sd 2.46). Respiration rate algorithms showed an accuracy of -0.94 (sd 1.26) and a precision of 4.02 (sd 1.17). Algorithms identified 178 true-positive physiological alerts on 15 patients. None of the events was deemed clinically significant at chart review. The combined false-positive alert rate for the algorithms was 0.007 events per hour.
This study demonstrates the accuracy and precision of the signal processing algorithms in the (L)G(1TM) system. Future work will focus on assessing the system's impact on patient outcomes and its integration into the nursing workflow.
本文报告一项旨在评估用于测定心率和呼吸频率的自动化非侵入性患者监测系统(L)G(1TM)系统的研究。该研究使用收集到的数据来优化(L)G(1TM)系统在医疗/外科病房的警报管理方案。
由于医院患者安全存在问题,每年有数千名患者不必要地死亡。护理人员短缺加剧了降低住院成本的经济压力,因此需要新的患者监测方法。先进技术可能有助于护士在控制成本和提高患者安全的同时提供高质量护理。
通过嵌入患者床罩床垫中的传感器阵列捕获287名患者的心脏和呼吸波形。未进行实时监测。原始数据由专有算法处理,并与标准参考设备捕获的数据进行比较。通过对信号数据进行人工评分并将其与通过系统查阅每位患者病历观察到的临床事件进行匹配,验证警报性能。数据收集于2004年6月至2005年2月之间。
心率实验算法的准确率为-1.47(标准差1.90),精密度为4.60(标准差2.46)。呼吸频率算法的准确率为-0.94(标准差1.26),精密度为4.02(标准差1.17)。算法在15名患者身上识别出178次真正阳性的生理警报。在病历审查中,没有一个事件被认为具有临床意义。算法的综合假阳性警报率为每小时0.007次事件。
本研究证明了(L)G(1TM)系统中信号处理算法的准确性和精密度。未来的工作将集中在评估该系统对患者预后的影响及其在护理工作流程中的整合。