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基于微软 Kinect 骨骼姿势的社区老年人虚弱程度分类:一种机器学习方法。

Frailty Level Classification of the Community Elderly Using Microsoft Kinect-Based Skeleton Pose: A Machine Learning Approach.

机构信息

Department of Mechanical Engineering, Qazvin Branch, Islamic Azad University, Qazvin 341851416, Iran.

Department of Biomedical Engineering, Science and Research Branch, Islamic Azad University, Tehran 1477893855, Iran.

出版信息

Sensors (Basel). 2021 Jun 10;21(12):4017. doi: 10.3390/s21124017.

DOI:10.3390/s21124017
PMID:34200838
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8230520/
Abstract

Frailty is one of the most important geriatric syndromes, which can be associated with increased risk for incident disability and hospitalization. Developing a real-time classification model of elderly frailty level could be beneficial for designing a clinical predictive assessment tool. Hence, the objective of this study was to predict the elderly frailty level utilizing the machine learning approach on skeleton data acquired from a Kinect sensor. Seven hundred and eighty-seven community elderly were recruited in this study. The Kinect data were acquired from the elderly performing different functional assessment exercises including: (1) 30-s arm curl; (2) 30-s chair sit-to-stand; (3) 2-min step; and (4) gait analysis tests. The proposed methodology was successfully validated by gender classification with accuracies up to 84 percent. Regarding frailty level evaluation and prediction, the results indicated that support vector classifier (SVC) and multi-layer perceptron (MLP) are the most successful estimators in prediction of the Fried's frailty level with median accuracies up to 97.5 percent. The high level of accuracy achieved with the proposed methodology indicates that ML modeling can identify the risk of frailty in elderly individuals based on evaluating the real-time skeletal movements using the Kinect sensor.

摘要

衰弱是最重要的老年综合病症之一,可能会增加发生残疾和住院的风险。开发老年人衰弱程度的实时分类模型对于设计临床预测评估工具可能是有益的。因此,本研究的目的是利用从 Kinect 传感器获得的骨骼数据,通过机器学习方法来预测老年人的衰弱程度。本研究招募了 787 名社区老年人。Kinect 数据是从老年人执行不同的功能评估练习中获得的,包括:(1)30 秒手臂卷曲;(2)30 秒坐站;(3)2 分钟踏步;和(4)步态分析测试。该方法通过性别分类得到了成功验证,准确率高达 84%。关于衰弱程度的评估和预测,结果表明,支持向量分类器(SVC)和多层感知器(MLP)是预测 Fried 衰弱程度最成功的估计器,准确率中位数高达 97.5%。所提出的方法达到了很高的准确率,这表明 ML 模型可以通过使用 Kinect 传感器实时评估骨骼运动,识别老年人衰弱的风险。

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