Towards an IoHT Platform to Monitor QoL Indicators

Pedro Almir Oliveira, R. Andrade, Pedro de A. Santos Neto, B. Oliveira
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引用次数: 2

Abstract

The Quality of Life has been studied for a long time, and the World Health Organization defines it as the individual perception about life regarding four major domains: physical, psychological, social, and environmental. The relevance to study QoL lies in the search for strategies able to measure a patient’s well-being. Without these strategies, treatments, and technological solutions that aim to improve people’s QoL would be restricted to physicians’ implicit and subjective perceptions. Thus, there are many instruments for formal QoL assessment (usually questionnaires). However, the use of these instruments is time-consuming, non-transparent, and error-prone. Considering this problem, in this work, we discuss the proposal to use the Internet of Health Things (IoHT) to collect data from smart environments and apply machine learning techniques to infer QoL measures. To achieve this goal, we designed an IoHT platform inspired by the MAPE-K loop. Our literature review has shown that this idea is promising and that there are many open challenges to be addressed.
建立监测生活质量指标的物联网平台
生活质量已经被研究了很长时间,世界卫生组织将其定义为个人对生活的四个主要领域的感知:身体,心理,社会和环境。研究生活质量的相关性在于寻找能够衡量患者福祉的策略。如果没有这些策略,旨在改善人们生活质量的治疗和技术解决方案将局限于医生的隐性和主观感知。因此,有许多工具用于正式的生活质量评估(通常是问卷调查)。然而,这些工具的使用耗时、不透明且容易出错。考虑到这一问题,在本工作中,我们讨论了使用健康物联网(IoHT)从智能环境中收集数据并应用机器学习技术推断生活质量指标的建议。为了实现这一目标,我们设计了一个受MAPE-K循环启发的IoHT平台。我们的文献综述表明,这个想法是有希望的,有许多公开的挑战需要解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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