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人群密集环境下预防传染病感染的一致化医疗保健安全建议系统。

Consistent Healthcare Safety Recommendation System for Preventing Contagious Disease Infections in Human Crowds.

机构信息

Department of Computer Science, Community College, King Saud University, P.O. Box 28095, Riyadh 11437, Saudi Arabia.

Department of Dental Health, College of Applied Medical Sciences, King Saud University, P.O. Box 12372, Riyadh 12372, Saudi Arabia.

出版信息

Sensors (Basel). 2023 Nov 24;23(23):9394. doi: 10.3390/s23239394.

Abstract

The recent impact of COVID-19, as a contagious disease, led researchers to focus on designing and fabricating personal healthcare devices and systems. With the help of wearable sensors, sensing and communication technologies, and recommendation modules, personal healthcare systems were designed for ease of use. More specifically, personal healthcare systems were designed to provide recommendations for maintaining a safe distance and avoiding contagious disease spread after the COVID-19 pandemic. The personal recommendations are analyzed based on the wearable sensor signals and their consistency in sensing. This consistency varies with human movements or other activities that hike/cease the sensor values abruptly for a short period. Therefore, a consistency-focused recommendation system (CRS) for personal healthcare (PH) was designed in this research. The hardware sensing intervals for the system are calibrated per the conventional specifications from which abrupt changes can be observed. The changes are analyzed for their saturation and fluctuations observed from neighbors within the threshold distance. The saturation and fluctuation classifications are performed using random forest learning to differentiate the above data from the previously sensed healthy data. In this process, the saturated data and consistency data provide safety recommendations for the moving user. The consistency is verified for a series of intervals for the fluctuating sensed data. This alerts the user if the threshold distance for a contagious disease is violated. The proposed system was validated using a prototype model and experimental analysis through false rates, data analysis rates, and fluctuations.

摘要

最近,COVID-19 这种传染病的影响促使研究人员专注于设计和制造个人医疗保健设备和系统。借助可穿戴传感器、感测和通信技术以及推荐模块,设计了个人医疗保健系统以实现易用性。更具体地说,个人医疗保健系统旨在提供建议,以在 COVID-19 大流行后保持安全距离并避免传染病传播。个人建议是基于可穿戴传感器信号及其感测的一致性进行分析的。这种一致性会随着人类运动或其他活动而变化,这些活动会在短时间内急剧升高/降低传感器值。因此,本研究设计了一种基于一致性的个人医疗保健(PH)推荐系统(CRS)。该系统的硬件感测间隔根据常规规范进行校准,可以观察到其中的突然变化。然后,分析这些变化在阈值距离内的邻居中的饱和度和波动。使用随机森林学习对饱和度和波动分类进行分类,以将上述数据与之前感测到的健康数据区分开来。在这个过程中,饱和数据和一致性数据为移动用户提供安全建议。对波动感测数据的一系列间隔进行一致性验证。如果违反了传染病的阈值距离,就会向用户发出警报。通过假阳性率、数据分析率和波动等指标,使用原型模型和实验分析对所提出的系统进行了验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/081e/10708775/3f1667cf0a14/sensors-23-09394-g001.jpg

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