Department of Computer Science, Faculty of Mathematics and Informatics, West University of Timisoara, Blvd. V. Pârvan nr. 4, 300223 Timișoara, Romania.
Sensors (Basel). 2021 Jun 18;21(12):4181. doi: 10.3390/s21124181.
Vital sign monitoring outside the clinical environment based on wearable sensors ensures better support in assessing a patient's health condition, and in case of health deterioration, automatic alerts can be sent to the care providers. In everyday life, the users can perform different physical activities, and considering that vital sign measurements depend on the intensity of the activity, we proposed an architecture based on the multi-agent paradigm to handle this issue dynamically. Different types of agents were proposed that processed different sensor signals and recognized simple activities of daily living. The system was validated using a real-life dataset where subjects wore accelerometer sensors on the chest, wrist, and ankle. The system relied on ontology-based models to address the data heterogeneity and combined different wearable sensor sources in order to achieve better performance. The results showed an accuracy of 95.25% on intersubject activity classification. Moreover, the proposed method, which automatically extracted vital sign threshold ranges for each physical activity recognized by the system, showed promising results for remote health status evaluation.
基于可穿戴传感器的临床环境外生命体征监测可确保更好地支持评估患者的健康状况,并且在健康状况恶化的情况下,可以自动向护理人员发出警报。在日常生活中,用户可以进行不同的身体活动,并且考虑到生命体征测量取决于活动的强度,我们提出了一种基于多代理范例的架构来动态处理此问题。提出了不同类型的代理,这些代理处理不同的传感器信号并识别日常生活中的简单活动。该系统使用真实生活数据集进行了验证,其中受试者在胸部,手腕和脚踝上佩戴加速度计传感器。该系统依靠基于本体的模型来解决数据异构性,并结合了不同的可穿戴传感器源,以实现更好的性能。结果表明,在受试者间活动分类方面的准确率达到了 95.25%。此外,该方法自动提取了系统识别的每种身体活动的生命体征阈值范围,为远程健康状况评估提供了有希望的结果。