Human Factors and Ergonomics Laboratory, Department of Industrial and Systems Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejoen, Republic of Korea.
KT R&D Center, Seoul, Republic of Korea.
Ergonomics. 2024 Jan;67(1):50-68. doi: 10.1080/00140139.2023.2202845. Epub 2023 May 1.
Falls among older people are a major health concern. This study aims to develop a multifactorial fall risk assessment system for older people using a low-cost, markerless Microsoft Kinect. A Kinect-based test battery was designed to comprehensively assess major fall risk factors. A follow-up experiment was conducted with 102 older participants to assess their fall risks. Participants were divided into high and low fall risk groups based on their prospective falls over a 6-month period. Results showed that the high fall risk group performed significantly worse on the Kinect-based test battery. The developed random forest classification model achieved an average classification accuracy of 84.7%. In addition, the individual's performance was computed as the percentile value of a normative database to visualise deficiencies and targets for intervention. These findings indicate that the developed system can not only screen out 'at risk' older individuals with good accuracy, but also identify potential fall risk factors for effective fall intervention. Falls are the leading cause of injuries in older people. We newly developed a multifactorial fall risk assessment system for older people utilising a low-cost, markerless Kinect. Results showed that the developed system can screen out 'at risk' individuals and identify potential risk factors for effective fall intervention.
老年人跌倒问题是一个严重的健康隐患。本研究旨在利用低成本、无标记的微软 Kinect 为老年人开发一种多因素跌倒风险评估系统。设计了一个基于 Kinect 的测试套件,以全面评估主要的跌倒风险因素。随后对 102 名老年人进行了后续实验,以评估他们的跌倒风险。根据他们在 6 个月内的预期跌倒情况,将参与者分为高风险和低风险组。结果表明,高风险组在基于 Kinect 的测试套件中的表现明显更差。开发的随机森林分类模型的平均分类准确率达到了 84.7%。此外,还将个人的表现计算为正态数据库的百分位数,以直观显示缺陷和干预目标。这些发现表明,该系统不仅可以准确地筛选出“有风险”的老年人,还可以识别潜在的跌倒风险因素,从而进行有效的跌倒干预。跌倒是老年人受伤的主要原因。我们新开发了一种利用低成本、无标记 Kinect 的多因素跌倒风险评估系统。结果表明,该系统可以筛选出“有风险”的个体,并识别潜在的跌倒风险因素,以进行有效的跌倒干预。