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基于可穿戴设备测量的时空步态特征对神经内科患者进行跌倒分类。

Classification of Neurological Patients to Identify Fallers Based on Spatial-Temporal Gait Characteristics Measured by a Wearable Device.

机构信息

Department of Human Movement Sciences, University Medical Center Groningen, University of Groningen, 9713 AV Groningen, The Netherlands.

Translational and Clinical Research Institute, Faculty of Medical Sciences, Newcastle University, Newcastle Upon Tyne NE4 5PL, UK.

出版信息

Sensors (Basel). 2020 Jul 23;20(15):4098. doi: 10.3390/s20154098.

Abstract

Neurological patients can have severe gait impairments that contribute to fall risks. Predicting falls from gait abnormalities could aid clinicians and patients mitigate fall risk. The aim of this study was to predict fall status from spatial-temporal gait characteristics measured by a wearable device in a heterogeneous population of neurological patients. Participants ( = 384, age 49-80 s) were recruited from a neurology ward of a University hospital. They walked 20 m at a comfortable speed (single task: ST) and while performing a dual task with a motor component (DT1) and a dual task with a cognitive component (DT2). Twenty-seven spatial-temporal gait variables were measured with wearable sensors placed at the lower back and both ankles. Partial least square discriminant analysis (PLS-DA) was then applied to classify fallers and non-fallers. The PLS-DA classification model performed well for all three gait tasks (ST, DT1, and DT2) with an evaluation of classification performance Area under the receiver operating characteristic Curve (AUC) of 0.7, 0.6 and 0.7, respectively. Fallers differed from non-fallers in their specific gait patterns. Results from this study improve our understanding of how falls risk-related gait impairments in neurological patients could aid the design of tailored fall-prevention interventions.

摘要

神经系统疾病患者可能存在严重的步态障碍,从而增加跌倒风险。通过步态异常预测跌倒,有助于临床医生和患者降低跌倒风险。本研究旨在通过可穿戴设备测量的时空步态特征,预测神经科患者这一异质人群的跌倒状态。参与者(n=384,年龄 49-80 岁)来自一家大学附属医院的神经内科病房。他们以舒适的速度走 20 米(单任务:ST),同时执行包含运动成分的双重任务(DT1)和包含认知成分的双重任务(DT2)。使用放置在腰部和脚踝的可穿戴传感器测量了 27 个时空步态变量。然后,应用偏最小二乘判别分析(PLS-DA)对跌倒者和非跌倒者进行分类。PLS-DA 分类模型在所有三项步态任务(ST、DT1 和 DT2)中表现良好,其评估分类性能的受试者工作特征曲线下面积(AUC)分别为 0.7、0.6 和 0.7。与非跌倒者相比,跌倒者的步态模式存在差异。本研究的结果增进了我们对神经系统疾病患者跌倒相关步态障碍如何有助于设计针对性的跌倒预防干预措施的理解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/00f6/7435707/8ce6008bf045/sensors-20-04098-g001.jpg

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