论文标题
Maison-老年人的多模式基于AI的传感器平台
MAISON -- Multimodal AI-based Sensor platform for Older Individuals
论文作者
论文摘要
有一个全球老龄化的人口,需要需要正确的工具,这可以使老年人更加独立和在家中衰老的能力以及协助医疗保健工作者。通过建立预测模型来帮助医疗保健工作者监测和分析老年人的行为,功能和心理数据是可行的。为了开发此类模型,通常需要大量多模式传感器数据。在本文中,我们提出了Maison,Maison是一个可扩展的基于云的平台,可通过商业上可用的智能设备平台收集来自老年人和居住在自己家中的患者所需的多模式传感器数据。 Maison平台之所以新颖,是因为它能够收集比现有平台更大的数据模式的能力,以及其新功能可导致无缝的数据收集和易于使用的老年人使用。我们证明了Maison平台的可行性,两名老年人从一个大型康复中心出院。结果表明,Maison平台能够在没有功能性故障或性能降解的情况下将传感器数据收集和存储在云中。本文还将讨论在老年人家庭中平台和数据收集的开发过程中所面临的挑战。 Maison是一个新颖的平台,旨在收集多模式数据,并促进用于检测关键健康指标的预测模型,包括社会隔离,抑郁和功能下降,并且可与社区中的老年人一起使用。
There is a global aging population requiring the need for the right tools that can enable older adults' greater independence and the ability to age at home, as well as assist healthcare workers. It is feasible to achieve this objective by building predictive models that assist healthcare workers in monitoring and analyzing older adults' behavioral, functional, and psychological data. To develop such models, a large amount of multimodal sensor data is typically required. In this paper, we propose MAISON, a scalable cloud-based platform of commercially available smart devices capable of collecting desired multimodal sensor data from older adults and patients living in their own homes. The MAISON platform is novel due to its ability to collect a greater variety of data modalities than the existing platforms, as well as its new features that result in seamless data collection and ease of use for older adults who may not be digitally literate. We demonstrated the feasibility of the MAISON platform with two older adults discharged home from a large rehabilitation center. The results indicate that the MAISON platform was able to collect and store sensor data in a cloud without functional glitches or performance degradation. This paper will also discuss the challenges faced during the development of the platform and data collection in the homes of older adults. MAISON is a novel platform designed to collect multimodal data and facilitate the development of predictive models for detecting key health indicators, including social isolation, depression, and functional decline, and is feasible to use with older adults in the community.