从传感器和数据到电子健康的数据挖掘

P. Lenca, J. Soulas, S. Berrouiguet
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引用次数: 3

摘要

只提供摘要形式。如今,许多用户可以自愿参与,并以一种或多或少侵入性的方式监控他们在家中收集的数据。这些数据可以从移动和可穿戴设备(如智能手机和智能手表)、家中散布的传感器(如运动探测器和接触开关)和自我报告的信息系统(使用基于纸张或基于网络的生态瞬间评估技术)中收集。然后,这些数据可以用于描述活动、相关人员的健康和福祉。使受苦的人(如老年人、身体残疾者和有精神健康问题的人)尽可能长时间地以良好的状态留在家中,是许多国家面临的一项重要挑战。首先,大多数人宁愿继续住在自己的家里,而不是搬到养老院或医院,其次,使呆在家里的解决方案通常对社会来说也更便宜。因此,智能家居和环境辅助生活(SHAAL)系统越来越受到关注。SHAAL系统在一个人的日常生活环境中使用信息和通信技术,使他们能够更长时间地保持活跃,保持社会联系并独立生活。SHAAL的研究涵盖了广泛的主题。本讲座将从数据挖掘的角度回顾SHAAL系统的主要方面。将说明几个案例研究。特别强调活动学习和行为理解的关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From sensors and data to data mining for e-Health
Summary form only given. Nowadays many users can be involved willingly and monitored in a more or less intrusive manner with data collected in their homes. This data can be collected from mobile and wearable devices (such as smart phone and smart watch), from sensors disseminated in the home (such as motion detectors and contact switches) and from self-reported information systems (using paper based or web-based ecological momentary assessment techniques). This data can then be useful to characterize the activity, the health and the well-being of the involved person. Enabling people suffering (such as elderly people, people with physical disabilities and people with mental-health condition) to stay in their home as long as possible in good condition is an important challenge for many countries. Firstly, most of people would rather to continue to live in their own home rather than move to a nursing-home or an hospital, secondly the solutions enabling staying at home are also usually cheaper for the society. As a consequence Smart Home and Ambient Assisted Living (SHAAL) systems gain more and more attention. SHAAL systems use information and communication technologies in a person's daily living environment to enable them to stay active longer, remain socially connected and live independently. SHAAL's research covers a wide range of topics. This talk will review the main aspects of SHAAL systems from the data mining point of view. Several case studies will be illustrated. In particular it will emphasize the key role of activity learning and behavior understanding.
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