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Predicting Physical Activity and Functional Fitness Levels Through Inertial Signals and EMD-Based Features in Older Adults

机译:通过老年人的惯性信号和基于EMD的特征来预测身体活动和功能性健康水平

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Older adults are related to a reduction in the physical functionality, as a result of a musculoskeletal system degeneration. In that way, physical exercise has been stated as a suitable intervention to prevent such health problems. Therefore, an adequate assessment of the physical activity and functional fitness levels is needed to plan the individualized intervention. A broad test used to assess the functional fitness level is the 6-minutes walk test (6MWT). It has been previously measured using accelerometer sensors. In views of this background, the main aim of the present study is to use the Empirical Mode Decomposition (EMD) method to predict the physical activity and functional fitness levels of the older adults through the acceleration signals recorded by a smartphone during the 6MWT. A total of 17 participants were recruited. Anthropometric measurements (weight, height, and BMI), physical activity, and functional fitness levels from each participant were recorded. Consecutively, the EMD method was applied to determine the prediction. According to the results, the proposed method can predict the physical activity and functional fitness levels with high accuracy, even using only one cycle. Thus, the approach described in the present work could be implemented in future m-health systems to identify the physical activity profile of the older adults.
机译:由于肌肉骨骼系统变性,老年人与物理功能的减少有关。以这种方式,体育锻炼已被称为适当的干预,以防止这种健康问题。因此,需要对体育活动和功能性适应水平进行充分评估来规划个性化干预。用于评估功能健身水平的广泛测试是6分钟的步道(6MWT)。它以前使用加速度计传感器测量。在该背景的视图中,本研究的主要目的是使用经验模式分解(EMD)方法通过在6MWT期间通过智能手机记录的加速信号预测较老成人的物理活动和功能性健康水平。招募了17名参与者。记录了每个参与者的人体测量(重量,高度和BMI),身体活动和功能性健康水平。连续地,应用EMD方法来确定预测。根据结果​​,该方法可以以高精度预测物理活动和功能性健康水平,甚至只使用一个循环。因此,可以在未来的M健康系统中实现本工作中描述的方法,以识别老年人的身体活动简介。

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