Moore Jason, Stuart Sam, McMeekin Peter, Walker Richard, Godfrey Alan
Department of Computer and Information Sciences, Northumbria University, Newcastle upon Tyne, UK.
Department of Sport, Exercise, and Rehabilitation, Northumbria University, Newcastle upon Tyne, UK.
Lancet. 2023 Nov;402 Suppl 1:S6. doi: 10.1016/S0140-6736(23)02067-6.
Age-related mobility issues and frailty are a major public health concern because of an increased risk of falls. Subjective assessment of fall risk in the clinic is limited, failing to account for an individual's habitual activities in the home or community. Equally, objective mobility trackers for use in the home and community lack extrinsic (ie, environmental) data capture to comprehensively inform fall risk. We propose a contemporary approach that combines artificial intelligence (AI) and video glasses to augment current methods of fall risk assessment.
Two case studies were performed to provide a framework to assess extrinsic factors within fall risk assessment via video glasses. The first was AI-based detection of environment and terrain type. We developed convolutional neural networks (CNN) via a bespoke dataset (>145 000 images) captured from different settings (eg, offices, high streets) via free-licenced video on social media. AI automated a textual description to uphold privacy while describing the scene (eg, indoor and carpet). In the second case study, we provided video glasses to participants within a university campus (two men, 17 women; aged 21-60 years) to capture data for automatically labelling environment and objects (eg, fall hazards) via a CNN object detection algorithm. The case studies ran from Dec 5, 2022, to March 24, 2023.
To date, results show promise for the efficient, and accurate AI-based approach to better inform fall risk. Each component of the framework achieved at least 75% accuracy across a range of walks (indoor and outdoor and multiple terrains) from a dataset of 6283 new images. The AI achieved a mean average precision score of 0·93 for the identification of fall risk hazards.
The AI-based approach provides a contemporary means to better inform fall risk while providing an ethical means to uphold privacy. The proposed approach could have significant implications for improving overall health and quality of life, enabling ageing in place through habitual data collection with contemporary wearables to decentralise fall risk assessment. A limitation was the lack of data collection on older adults within real world, unscripted settings. However, the next phase of this research is the deployment of the AI on real-world data from a cohort of more than 40 participants within UK-based homes.
National Institute of Health and Care Research (NIHR) Applied Research Collaboration (ARC) North-East and North Cumbria (NENC), Faculty of Engineering and Environment at Northumbria University.
与年龄相关的行动不便问题和身体虚弱是一个重大的公共卫生问题,因为跌倒风险增加。临床中对跌倒风险的主观评估有限,未能考虑个体在家庭或社区中的日常活动。同样,用于家庭和社区的客观行动追踪器缺乏外部(即环境)数据捕捉功能,无法全面提供跌倒风险信息。我们提出一种结合人工智能(AI)和视频眼镜的现代方法,以改进当前的跌倒风险评估方法。
进行了两项案例研究,以提供一个通过视频眼镜在跌倒风险评估中评估外部因素的框架。第一个是基于AI的环境和地形类型检测。我们通过一个定制数据集(超过145000张图像)开发了卷积神经网络(CNN),这些图像是通过社交媒体上的免费授权视频从不同场景(如办公室、商业街)中获取的。AI自动生成文本描述,在描述场景时保护隐私(如室内和铺有地毯的地方)。在第二个案例研究中,我们为大学校园内的参与者(两名男性,17名女性;年龄在21至60岁之间)提供视频眼镜,通过CNN目标检测算法捕捉数据,以自动标记环境和物体(如跌倒危险物)。案例研究从2022年12月5日持续到2023年3月24日。
迄今为止,结果表明基于AI的高效、准确方法有望更好地提供跌倒风险信息。该框架的每个组件在来自6283张新图像的数据集的一系列行走(室内和室外以及多种地形)中准确率至少达到75%。AI在识别跌倒风险危险方面的平均精度得分为0.93。
基于AI的方法提供了一种现代手段,既能更好地提供跌倒风险信息,又能提供保护隐私的道德方式。所提出的方法可能对改善整体健康和生活质量具有重大意义,通过使用现代可穿戴设备进行日常数据收集来分散跌倒风险评估,从而实现就地养老。一个局限性是缺乏在现实世界、无脚本环境中对老年人的数据收集。然而,这项研究的下一阶段是将AI应用于来自英国国内40多名参与者队列的现实世界数据。
国家卫生与保健研究机构(NIHR)应用研究合作组织(ARC)东北和北坎布里亚(NENC)、诺森比亚大学工程与环境学院。