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一种通过上下文历史自适应记录生命体征的计算模型。

A computational model for adaptive recording of vital signs through context histories.

作者信息

Aranda Jorge Arthur Schneider, Bavaresco Rodrigo Simon, de Carvalho Juliano Varella, Yamin Adenauer Corrêa, Tavares Mauricio Campelo, Barbosa Jorge Luis Victória

机构信息

Universidade do Vale do Rio dos Sinos, Av. Unisinos, 950, São Leopoldo, RS Brazil.

Universidade Feevale, ERS-239, 2755, Novo Hamburgo, RS Brazil.

出版信息

J Ambient Intell Humaniz Comput. 2021 Mar 18:1-15. doi: 10.1007/s12652-021-03126-8.

Abstract

Wearable devices emerged from the advancement of communication technology and the miniaturization of electronic components. These devices periodically monitor the user's vital signs and generally have a short battery life. This work introduces ODIN, a model for optimized vital signs collection based on adaptive rules. Analyzing vital sign values requires preciseness, so the adaption of these collected data allows a personalized analysis of the user's health condition. The comparison with related works indicates that ODIN is the only model that presents context-aware-adaptive vital signs collection. The implementation of a prototype allowed to perform three evaluations of ODIN. The first evaluation used simulations in different scenarios, with the adaptive approach increasing battery life by 119% through the analysis of input data compared to data collection without adaptivity. The second evaluation applied the prototype to a database of real physiologic data, which allowed reduced data collection when the user has regular vital signs. This reduction optimized battery consumption by 66% compared to collection without adaptivity. Finally, the third evaluation applied ODIN through an Arduino and a heart rate monitor (Polar H7). The average power saved across mobile devices was 21%. Consequently, the adaptive strategy presented in this work allows the optimization of computational resources during the collection and analysis of vital signs. This optimization occurs because of the reduction in energy expenditure and the reduction in the amount of data that needs to be collected and stored.

摘要

可穿戴设备源于通信技术的进步和电子元件的小型化。这些设备定期监测用户的生命体征,且电池续航时间通常较短。这项工作介绍了ODIN,一种基于自适应规则的优化生命体征采集模型。分析生命体征值需要精确性,因此对这些收集到的数据进行适配能实现对用户健康状况的个性化分析。与相关工作的比较表明,ODIN是唯一一种呈现上下文感知自适应生命体征采集的模型。一个原型的实现使得能够对ODIN进行三项评估。第一次评估在不同场景下使用模拟,与无自适应的数据采集相比,自适应方法通过对输入数据的分析使电池续航时间延长了119%。第二次评估将该原型应用于真实生理数据的数据库,当用户生命体征正常时,这使得数据采集得以减少。与无自适应的采集相比,这种减少使电池消耗优化了66%。最后,第三次评估通过一个Arduino和一个心率监测器(Polar H7)应用ODIN。移动设备的平均节电率为21%。因此,这项工作中提出的自适应策略能够在生命体征的采集和分析过程中优化计算资源。这种优化的出现是因为能量消耗的减少以及需要收集和存储的数据量的减少。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df3d/7972018/30d06bfd1017/12652_2021_3126_Fig1_HTML.jpg

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