Impact of Reduced Sampling Rate on Accelerometer-based Physical Activity Monitoring and Machine Learning Activity Classification

S. Small, S. Khalid, P. Dhiman, Shing Chan, D. Jackson, A. Doherty, A. Price
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引用次数: 12

Abstract

Purpose: Lowering the sampling rate of accelerometer devices can dramatically increase study monitoring periods through longer battery life, however the validity of its output is poorly documented. We therefore aimed to assess the effect of reduced sampling rate on measuring physical activity both overall and by specific behaviour types. Methods: Healthy adults wore two Axivity AX3 accelerometers on the dominant wrist and two on the hip for 24 hours. At each location one accelerometer recorded at 25 Hz and the other at 100 Hz. Overall acceleration magnitude, time in moderate-to-vigorous activity, and behavioural activities were calculated using standard methods. Correlation between acceleration magnitude and activity classifications at both sampling rates was calculated and linear regression was performed. Results: 54 participants wore both hip and wrist monitors, with 45 of the participants contributing >20 hours of wear time at the hip and 51 contributing >20 hours of wear time at the wrist. Strong correlation was observed between 25 Hz and 100 Hz sampling rates in overall activity measurement (r = 0.962 to 0.991), yet consistently lower overall acceleration was observed in data collected at 25 Hz (12.3% to 12.8%). Excellent agreement between sampling rates was observed in all machine learning classified activities (r = 0.850 to 0.952). Wrist-worn vector magnitude measured at 25 Hz (Acc25) can be compared to 100 Hz (Acc100) data using the transformation, Acc100 = 1.038*Acc25 + 3.310. Conclusions: 25 Hz and 100 Hz accelerometer data are highly correlated with predictable differences which can be accounted for in inter-study comparisons. Sampling rate should be consistently reported in physical activity studies, carefully considered in study design, and tailored to the outcome of interest.
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降低采样率对基于加速度计的身体活动监测和机器学习活动分类的影响
目的:降低加速度计设备的采样率可以通过更长的电池寿命显着增加研究监测周期,但其输出的有效性文献很少。因此,我们旨在评估降低采样率对总体和特定行为类型测量身体活动的影响。方法:健康成人在主手腕和髋部分别佩戴两个Axivity AX3加速度计24小时。在每个位置,一个加速度计记录为25赫兹,另一个记录为100赫兹。使用标准方法计算总体加速度大小、中度至剧烈活动时间和行为活动。计算两种采样率下加速度大小与活动分类之间的相关性,并进行线性回归。结果:54名参与者同时佩戴了髋关节和腕部监测器,其中45名参与者的髋关节佩戴时间>20小时,51名参与者的腕部佩戴时间>20小时。在总体活动测量中,在25 Hz和100 Hz采样率之间观察到很强的相关性(r = 0.962至0.991),然而在25 Hz收集的数据中观察到的总体加速度始终较低(12.3%至12.8%)。在所有机器学习分类活动中观察到采样率之间的极好一致性(r = 0.850至0.952)。在25 Hz (Acc25)下测量的腕带矢量幅度可以使用转换将其与100 Hz (Acc100)数据进行比较,Acc100 = 1.038*Acc25 + 3.310。结论:25 Hz和100 Hz加速度计数据与可预测的差异高度相关,这可以在研究间比较中得到解释。在体育活动研究中应一致报告抽样率,在研究设计中仔细考虑,并根据感兴趣的结果进行调整。
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