Nouriani Ali, Jonason Alec, Sabal Luke T, Hanson Jacob T, Jean James N, Lisko Thomas, Reid Emma, Moua Yeng, Rozeboom Shane, Neverman Kaiser, Stowe Casey, Rajamani Rajesh, McGovern Robert A
Laboratory for Innovations in Sensing, Estimation and Control, Department of Mechanical Engineering, University of Minnesota, Minneapolis, MN, United States.
Department of Neurosurgery, University of Minnesota Medical School, Minneapolis, MN, United States.
Front Aging Neurosci. 2023 Feb 23;15:1117802. doi: 10.3389/fnagi.2023.1117802. eCollection 2023.
The use of wearable sensors in movement disorder patients such as Parkinson's disease (PD) and normal pressure hydrocephalus (NPH) is becoming more widespread, but most studies are limited to characterizing general aspects of mobility using smartphones. There is a need to accurately identify specific activities at home in order to properly evaluate gait and balance at home, where most falls occur. We developed an activity recognition algorithm to classify multiple daily living activities including high fall risk activities such as sit to stand transfers, turns and near-falls using data from 5 inertial sensors placed on the chest, upper-legs and lower-legs of the subjects. The algorithm is then verified with ground truth by collecting video footage of our patients wearing the sensors at home. Our activity recognition algorithm showed >95% sensitivity in detection of activities. Extracted features from our home monitoring system showed significantly better correlation (69%) with prospectively measured fall frequency of our subjects compared to the standard clinical tests (30%) or other quantitative gait metrics used in past studies when attempting to predict future falls over 1 year of prospective follow-up. Although detecting near-falls at home is difficult, our proposed model suggests that near-fall frequency is the most predictive criterion in fall detection through correlation analysis and fitting regression models.
可穿戴传感器在帕金森病(PD)和正常压力脑积水(NPH)等运动障碍患者中的应用越来越广泛,但大多数研究仅限于使用智能手机来描述运动的一般特征。为了在家中正确评估步态和平衡(大多数跌倒发生的地方),需要准确识别家中的特定活动。我们开发了一种活动识别算法,利用放置在受试者胸部、大腿和小腿上的5个惯性传感器的数据,对包括坐立转移、转身和近乎跌倒等高跌倒风险活动在内的多种日常生活活动进行分类。然后通过收集患者在家中佩戴传感器的视频片段,以地面真值验证该算法。我们的活动识别算法在活动检测中显示出>95%的灵敏度。与标准临床试验(30%)或过去研究中用于预测未来跌倒的其他定量步态指标相比,我们的家庭监测系统提取的特征在前瞻性测量的受试者跌倒频率方面显示出显著更好的相关性(69%),前瞻性随访为期1年。虽然在家中检测近乎跌倒很困难,但我们提出的模型表明,通过相关性分析和拟合回归模型,近乎跌倒频率是跌倒检测中最具预测性的标准。