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Vital Signs Prediction and Early Warning Score Calculation Based on Continuous Monitoring of Hospitalised Patients Using Wearable Technology

机译:基于可穿戴技术的住院患者的连续监测生命体征预测及预警分数计算

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摘要

In this prospective, interventional, international study, we investigate continuous monitoring of hospitalised patients’ vital signs using wearable technology as a basis for real-time early warning scores (EWS) estimation and vital signs time-series prediction. The collected continuous monitored vital signs are heart rate, blood pressure, respiration rate, and oxygen saturation of a heterogeneous patient population hospitalised in cardiology, postsurgical, and dialysis wards. Two aspects are elaborated in this study. The first is the high-rate (every minute) estimation of the statistical values (e.g., minimum and mean) of the vital signs components of the EWS for one-minute segments in contrast with the conventional routine of 2 to 3 times per day. The second aspect explores the use of a hybrid machine learning algorithm of kNN-LS-SVM for predicting future values of monitored vital signs. It is demonstrated that a real-time implementation of EWS in clinical practice is possible. Furthermore, we showed a promising prediction performance of vital signs compared to the most recent state of the art of a boosted approach of LSTM. The reported mean absolute percentage errors of predicting one-hour averaged heart rate are 4.1, 4.5, and 5% for the upcoming one, two, and three hours respectively for cardiology patients. The obtained results in this study show the potential of using wearable technology to continuously monitor the vital signs of hospitalised patients as the real-time estimation of EWS in addition to a reliable prediction of the future values of these vital signs is presented. Ultimately, both approaches of high-rate EWS computation and vital signs time-series prediction is promising to provide efficient cost-utility, ease of mobility and portability, streaming analytics, and early warning for vital signs deterioration.
机译:在这一前瞻性,介入,国际研究中,我们调查了使用可穿戴技术的住院患者的生命体征的持续监测作为实时预警评分(EWS)估计和生命符号时间序列预测的基础。收集的连续受监测的生命体征是心率,血压,呼吸率和在心脏病学,后勤和透析病房中住院的异质患者人口的氧饱和度。本研究详细阐述了两个方面。首先是高速(每分钟)估计EWS的生命符号组分的统计值(例如,最小值和平均值),其与每天2至3次的常规常规段相比。第二方面探讨了knn-ls-svm的混合机学习算法来预测监测生命体征的未来值。证明临床实践中EWS的实时实施是可能的。此外,与LSTM的提升方法最新的最新技术相比,我们展示了重要的重要标志的预测性能。报告的意指预测一小时平均心率的绝对百分比误差为4.1,4.5和5%,分别用于心脏病学患者的即将到一小时,两小时和3小时。本研究中获得的结果表明,使用可穿戴技术的潜力在呈现出对这些生命体征的未来价值的可靠预测之外,使用可穿戴技术的耐磨技术,作为EWS的实时估计。最终,这两种高速效率计算和生命符号时间序列预测的方法都具有很大的是提供有效的成本实用性,易于移动性和可移植性,流动分析以及生命迹象恶化的早期预警。

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