Using a Device-Free Wi-Fi Sensing System to Assess Daily Activities and Mobility in Low-Income Older Adults: Protocol for a Feasibility Study.

IF 1.4 Q3 HEALTH CARE SCIENCES & SERVICES
Jane Chung, Ingrid Pretzer-Aboff, Pamela Parsons, Katherine Falls, Eyuphan Bulut
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引用次数: 0

Abstract

Background: Older adults belonging to racial or ethnic minorities with low socioeconomic status are at an elevated risk of developing dementia, but resources for assessing functional decline and detecting cognitive impairment are limited. Cognitive impairment affects the ability to perform daily activities and mobility behaviors. Traditional assessment methods have drawbacks, so smart home technologies (SmHT) have emerged to offer objective, high-frequency, and remote monitoring. However, these technologies usually rely on motion sensors that cannot identify specific activity types. This group often lacks access to these technologies due to limited resources and technology experience. There is a need to develop new sensing technology that is discreet, affordable, and requires minimal user engagement to characterize and quantify various in-home activities. Furthermore, it is essential to explore the feasibility of developing machine learning (ML) algorithms for SmHT through collaborations between clinical researchers and engineers and involving minority, low-income older adults for novel sensor development.

Objective: This study aims to examine the feasibility of developing a novel channel state information-based device-free, low-cost Wi-Fi sensing system, and associated ML algorithms for localizing and recognizing different patterns of in-home activities and mobility in residents of low-income senior housing with and without mild cognitive impairment.

Methods: This feasibility study was conducted in collaboration with a wellness care group, which serves the healthy aging needs of low-income housing residents. Prior to this feasibility study, we conducted a pilot study to collect channel state information data from several activity scenarios (eg, sitting, walking, and preparing meals) using the proposed Wi-Fi sensing system continuously over a week in apartments of low-income housing residents. These activities were videotaped to generate ground truth annotations to test the accuracy of the ML algorithms derived from the proposed system. Using qualitative individual interviews, we explored the acceptability of the Wi-Fi sensing system and implementation barriers in the low-income housing setting. We use the same study protocol for the proposed feasibility study.

Results: The Wi-Fi sensing system deployment began in November 2022, with participant recruitment starting in July 2023. Preliminary results will be available in the summer of 2025. Preliminary results are focused on the feasibility of developing ML models for Wi-Fi sensing-based activity and mobility assessment, community-based recruitment and data collection, ground truth, and older adults' Wi-Fi sensing technology acceptance.

Conclusions: This feasibility study can make a contribution to SmHT science and ML capabilities for early detection of cognitive decline among socially vulnerable older adults. Currently, sensing devices are not readily available to this population due to cost and information barriers. Our sensing device has the potential to identify individuals at risk for cognitive decline by assessing their level of physical function by tracking their in-home activities and mobility behaviors, at a low cost.

International registered report identifier (irrid): DERR1-10.2196/53447.

使用无设备 Wi-Fi 传感系统评估低收入老年人的日常活动和行动能力:可行性研究协议》。
背景:社会经济地位低下的少数种族或少数族裔老年人患痴呆症的风险较高,但用于评估功能衰退和检测认知障碍的资源却很有限。认知障碍会影响日常活动能力和行动行为。传统的评估方法存在缺陷,因此智能家居技术(SmHT)应运而生,可提供客观、高频率的远程监控。然而,这些技术通常依赖于运动传感器,无法识别特定的活动类型。由于资源和技术经验有限,这一群体往往无法获得这些技术。有必要开发新的传感技术,这种技术要隐蔽、经济实惠,而且只需用户极少的参与,就能对各种居家活动进行特征描述和量化。此外,还必须通过临床研究人员和工程师之间的合作,探索为 SmHT 开发机器学习(ML)算法的可行性,并让少数民族、低收入老年人参与新型传感器的开发:本研究旨在探讨开发基于信道状态信息的新型无设备、低成本 Wi-Fi 传感系统和相关 ML 算法的可行性,以定位和识别低收入老年住宅中患有或未患有轻度认知障碍的居民的不同居家活动和移动模式:这项可行性研究是与一家健康护理集团合作进行的,该集团为低收入住房居民的健康老龄化需求提供服务。在进行这项可行性研究之前,我们进行了一项试点研究,在低收入住房居民的公寓中使用拟议的 Wi-Fi 传感系统连续一周收集几种活动场景(如坐着、行走和准备饭菜)的通道状态信息数据。我们对这些活动进行了录像,以生成地面实况注释,从而测试拟议系统衍生的 ML 算法的准确性。通过定性个人访谈,我们探讨了 Wi-Fi 传感系统的可接受性以及在低收入住房环境中的实施障碍。我们在拟议的可行性研究中使用了相同的研究协议:Wi-Fi 传感系统于 2022 年 11 月开始部署,并于 2023 年 7 月开始招募参与者。初步结果将于 2025 年夏季公布。初步结果主要集中在为基于Wi-Fi传感的活动和流动性评估开发ML模型的可行性、基于社区的招募和数据收集、地面实况以及老年人对Wi-Fi传感技术的接受程度:这项可行性研究可以为早期检测社会弱势老年人认知能力下降的 SmHT 科学和 ML 能力做出贡献。目前,由于成本和信息方面的障碍,传感设备并不容易为这些人群所用。我们的传感设备有可能通过跟踪老年人的居家活动和行动行为,评估他们的身体功能水平,从而以较低的成本识别出有认知能力下降风险的人群:DERR1-10.2196/53447。
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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来源期刊
CiteScore
2.40
自引率
5.90%
发文量
414
审稿时长
12 weeks
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