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Classification of physical activities and sedentary behavior using raw data of 3D hip acceleration

机译:3D HIP加速度的原始数据分类和久坐行为的分类

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The purpose of this study was to develop and validate an algorithm for classifying physical activity (PA) classes and sedentary behavior (SED) from raw acceleration signal measured from hip. Twenty-two adult volunteers completed a pre-defined set of controlled and supervised activities. The activities included nine daily PAs. The participants performed PA trials while wearing a hip-worn 3D accelerometer. Indirect cal-orimetry was used for measuring energy expenditure. The raw acceleration data were used for training and testing a prediction model in MATLAB environment. The prediction model was built using bagged trees classifier and the most suitable extracted features (mean, maximum, minimum, zero crossing rate, and mean amplitude deviation) were selected using a sequential forward selection method. Leave-one-out cross validation was used for validation. Activities were classified as lying, sitting, light PA (standing, table wiping, floor cleaning, slow walking), moderate PA (fast walking) and vigorous PA (soccer and jogging). The oxygen consumption data were used for estimating the intensity of measured PA. Total accuracy of the prediction model was 96.5%. Mean sensitivity of the model was 95.5% (SD 3.5) and mean specificity 99.1% (SD 0.5). Based on the results PA types can be classified from raw data of the hip-worn 3D accelerometer using supervised machine learning techniques with a high sensitivity and specificity. The developed algorithm has a potential for objective evaluations of PA and SED.
机译:本研究的目的是开发和验证一种用于将物理活动(PA)类和久坐行为(SED)分类的算法从HIP测量的原始加速信号进行分类。二十二名成年志愿者完成了预定裁定的受控和监督活动集。该活动包括九日每日PA。参与者在佩戴臀部磨损的3D加速度计时进行了PA试验。间接Cal-orimetry用于测量能源支出。原始加速数据用于培训和测试Matlab环境中的预测模型。使用袋装树分类器和最合适的提取特征(平均,最大,最小,过速率和平均幅度偏差和平均幅度偏差和平均幅度偏差建造预测模型。休留一张交叉验证用于验证。活动被归类为撒谎,坐着,灯PA(站立,擦拭,地板清洁,缓慢行走),中等PA(快速行走)和剧烈的PA(足球和慢跑)。氧气消耗数据用于估计测量PA的强度。预测模型的总准确性为96.5%。该模型的平均敏感性为95.5%(SD 3.5),平均特异性99.1%(SD 0.5)。基于结果,可以使用具有高灵敏度和特异性的监督机器学习技术从嘻哈3D加速度计的原始数据分类。发达的算法具有对PA和SED的客观评估的潜力。

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