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Identifying Fall Risk Predictors by Monitoring Daily Activities at Home Using a Depth Sensor Coupled to Machine Learning Algorithms

机译:通过使用耦合到机器学习算法的深度传感器来监测家中的日常活动来确定秋季风险预测因子

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摘要

Because of population ageing, fall prevention represents a human, economic, and social issue. Currently, fall-risk is assessed infrequently, and usually only after the first fall occurrence. Home monitoring could improve fall prevention. Our aim was to monitor daily activities at home in order to identify the behavioral parameters that best discriminate high fall risk from low fall risk individuals. Microsoft Kinect sensors were placed in the room of 30 patients temporarily residing in a rehabilitation center. The sensors captured the patients’ movements while they were going about their daily activities. Different behavioral parameters, such as speed to sit down, gait speed or total sitting time were extracted and analyzed combining statistical and machine learning algorithms. Our algorithms classified the patients according to their estimated fall risk. The automatic fall risk assessment performed by the algorithms was then benchmarked against fall risk assessments performed by clinicians using the Tinetti test and the Timed Up and Go test. Step length, sit-stand transition and total sitting time were the most discriminant parameters to classify patients according to their fall risk. Coupling step length to the speed required to stand up or the total sitting time gave rise to an error-less classification of the patients, i.e., to the same classification as that of the clinicians. A monitoring system extracting step length and sit-stand transitions at home could complement the clinicians’ assessment toolkit and improve fall prevention.
机译:由于人口老龄化,预防落后代表了人类,经济和社会问题。目前,跌倒风险不经常评估,通常只在第一次下降后。家庭监测可以提高预防措施。我们的宗旨是监测家庭的日常活动,以确定最能歧视低落下风险的人的行为参数。 Microsoft Kinect传感器被置于30名患者暂时居住在康复中心的患者的房间里。传感器在他们日常活动中捕获了患者的运动。提取和分析统计和机器学习算法的不同行为参数,例如坐下的速度,步态速度或总满足时间。我们的算法根据其估计的落地风险分类为患者。然后,算法执行的自动跌倒风险评估,然后根据临床医生使用TINETTI测试和定时和试验进行的临床风险评估进行基准测试。步长,Sit-Stand转换和总满足时间是根据其坠落风险对患者进行分类的最判别参数。耦合步长到站立或总满足时间所需的速度产生患者的误差分类,即与临床医生相同的分类。在家中提取步长和SIT站转换的监测系统可以补充临床医生的评估工具包,提高预防措施。

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