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Health risk assessment and decision-making for patient monitoring and decision-support using Wireless Body Sensor Networks

机译:使用无线体传感器网络的患者监测和决策支持的健康风险评估和决策

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This paper proposes a generalized multi-sensor fusion approach and a health risk assessment and decision making (Health-RAD) algorithm for continuous and remote patient monitoring purposes using a Wireless Body Sensor Network (WBSN). Health-BAD determines the patient's health condition severity level routinely and each time a critical issue is detected based on vital signs scores. Hence, a continuous health assessment and a monitoring of the improvement or the deterioration of the state of the patient is ensured. The severity level is represented by a risk variable whose values range between 0 and 1. The higher the risk value, the more critical the patient's health condition is and the more it requires medical attention. Moreover, we calculate the score of a vital sign using its past and current value, thus assessing its status based on its evolution during a period of time and not only on sudden deviations. We propose a generalized multi-sensor data fusion approach regardless of the number of monitored vital signs. The latter is employed by Health-RAD to find the severity level of the patient's health condition based on his/her vital signs scores. It is based on a fuzzy inference system (FIS) and early warning score systems (EWS). This approach is tested with a previously proposed energy-efficient data collection approach, thus forming a complete framework. The proposed approach is evaluated on real healthcare datasets and the results are compared with another approach from the literature in terms of data reduction, energy consumption, risk assessment of vital signs, the patient's health risk level determination and accuracy. The results show that both approaches have coherently assessed the health condition of different Intensive Care Unit (ICU) patients. Yet, our proposed approach overcomes the other approach in terms of energy consumption (around 86% less energy consumption) and data reduction (around 70% for sensing and more than 90% for transmission). Additionally, contrary to our proposed framework, the approach taken from the literature requires an offline model building and depends on available patient datasets.
机译:本文提出了一种使用无线体传感器网络(WBSN)的连续和远程患者监测目的的广义多传感器融合方法和健康风险评估和决策(Health-Rad)算法。健康状况不好确定患者的健康状况严重程度级别,并且每次都会根据生命符号分数检测到一个关键问题。因此,确保了持续的健康评估和对患者状态的改善或改善或恶化的监测。严重程度级别由风险变量表示,其值范围在0到1之间。风险值越高,患者的健康状况越高,它需要医疗的越多。此外,我们使用其过去和当前值计算生命标志的得分,从而在一段时间内基于其演变来评估其状态,而不仅仅是突然偏差。我们提出了一种广泛的多传感器数据融合方法,无论受监测的生命体征的数量如何。后者由Health-rad雇用,以根据他/她的生命体征得分找到患者健康状况的严重程度。它基于模糊推理系统(FIS)和预警得分系统(EWS)。用先前提出的节能数据收集方法测试这种方法,从而形成完整的框架。所提出的方法在真正的医疗保健数据集中评估,结果与从文献中的另一种方法进行了比较,从而在数据减少,能源消耗,生命体征的风险评估方面,患者的健康风险水平确定和准确性。结果表明,两种方法都是连贯评估不同重症监护单位(ICU)患者的健康状况。然而,我们所提出的方法在能耗(能耗较小86%较小)和数据减少(传感约70%约70%以上约为90%)的方法克服了其他方法。此外,与我们所提出的框架相反,从文献中采取的方法需要离线模型建设,并取决于可用的患者数据集。

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