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Wavelet-based analysis of gait for automated frailty assessment with a wrist-worn device

机译:基于小波的步态分析与手腕磨损装置的自动脆弱评估

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Recent advancements in the field of smart wearable sensors provide the opportunity of continuous analysis of user's movements, which enables the assessment of clinical conditions like frailty. This study explores the use of Continuous Wavelet Transform in combination with sensor-derived gait parameters for frailty status assessment. A total of 34 volunteers aged 70+ were initially screened by geriatricians for the presence of frailty according to Fried's criteria. After screening, participants were asked to perform a 60 m walk test at preferred pace, while wearing an accelerometer on the wrist. A gait detection technique was applied to the sensor-derived signal, in order to identify segments made of four gait cycles. Continuous Wavelet Transform was applied to obtain time-frequency domain representations, which were subsequently used in a band-based feature extraction phase. Here, the most significant band-based features for frailty status assessment were identified by means of ANOVA and statistical t-test. Finally, a Random Forest for each frequency band was trained and tested for classifying subjects as robust or nonrobust (i.e., pre-frail or frail). Results from both the statistical analysis and machine learning show that features extracted from $[1.5, 2.5]Hz$ frequency band can provide valuable information for recognizing frailty in older adults. This information may help achieve continuous assessment of frailty in older adults with a wrist-worn device.
机译:智能可穿戴传感器领域的最新进展提供了不断分析用户运动的机会,这使得能够评估临床条件如脆弱。本研究探讨了连续小波变换与传感器衍生的步态参数的使用,以进行脆弱状态评估。总共34岁的志愿者最初由Geriantricians筛选出脆弱的标准。在筛选后,要求参与者以首选步伐执行60米,同时穿着手腕上的加速度计。将步态检测技术应用于传感器导出的信号,以识别由四个步态周期组成的段。施加连续小波变换以获得时间频域表示,随后用于基于带的特征提取阶段。在这里,通过ANOVA和统计T检验确定了用于脆弱状态评估的最重要的基于频段特征。最后,训练每个频带的随机森林,并测试并测试将受试者分类为鲁棒或非粗糙度(即,预削弱或虚弱)。统计分析和机器学习的结果表明提取的功能 $ [1.5,2.5] Hz $ 频段可以提供用于识别老年人体力的有价值的信息。这些信息可能有助于通过手腕磨损的设备来帮助达到老年人脆弱的脆弱。

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