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从腕带数据中确定身体活动特征以用于自动胰岛素输送系统。

Determining Physical Activity Characteristics from Wristband Data for Use in Automated Insulin Delivery Systems.

作者信息

Sevil Mert, Rashid Mudassir, Maloney Zacharie, Hajizadeh Iman, Samadi Sediqeh, Askari Mohammad Reza, Hobbs Nicole, Brandt Rachel, Park Minsun, Quinn Laurie, Cinar Ali

机构信息

Mert Sevil, Rachel Brandt, Nicole Hobbs and Zacharie Maloney are with the Department of Biomedical Engineering (BME); Mudassir Rashid, Mohammad Reza Askari, Iman Hajizadeh and Sedigeh Samadi are with the Department of Chemical and Biological Engineering (ChBE); Ali Cinar is with the Departments of ChBE and BME, Illinois Institute of Technology, Chicago, IL 60616; Minsun Park and Laurie Quinn are with the College of Nursing, University of Illinois at Chicago, IL, 60616.

出版信息

IEEE Sens J. 2020 Nov;20(21):12859-12870. doi: 10.1109/jsen.2020.3000772. Epub 2020 Jun 8.

Abstract

Algorithms that can determine the type of physical activity (PA) and quantify the intensity can allow precision medicine approaches, such as automated insulin delivery systems that modulate insulin administration in response to PA. In this work, data from a multi-sensor wristband is used to design classifiers to distinguish among five different physical states (PS) (resting, activities of daily living, running, biking, and resistance training), and to develop models to estimate the energy expenditure (EE) of the PA for diabetes therapy. The data collected are filtered, features are extracted from the reconciled signals, and the extracted features are used by machine learning algorithms, including deep-learning techniques, to obtain accurate PS classification and EE estimation. The various machine learning techniques have different success rates ranging from 75.7% to 94.8% in classifying the five different PS. The deep neural network model with long short-term memory has 94.8% classification accuracy. We achieved 0.5 MET (Metabolic Equivalent of Task) root-mean-square error for EE estimation accuracy, relative to indirect calorimetry with randomly selected testing data (10% of collected data). We also demonstrate a 5% improvement in PS classification accuracy and a 0.34 MET decrease in the mean absolute error when using multi-sensor approach relative to using only accelerometer data.

摘要

能够确定身体活动(PA)类型并量化其强度的算法可实现精准医疗方法,例如根据PA调节胰岛素给药的自动胰岛素输送系统。在这项工作中,来自多传感器腕带的数据被用于设计分类器,以区分五种不同的身体状态(PS)(休息、日常生活活动、跑步、骑自行车和阻力训练),并开发模型来估计用于糖尿病治疗的PA的能量消耗(EE)。收集到的数据经过滤波,从协调后的信号中提取特征,提取的特征被包括深度学习技术在内的机器学习算法用于获得准确的PS分类和EE估计。各种机器学习技术在对五种不同PS进行分类时的成功率各不相同,范围从75.7%到94.8%。具有长短期记忆的深度神经网络模型的分类准确率为94.8%。相对于使用随机选择的测试数据(收集数据的10%)进行间接量热法,我们在EE估计精度方面实现了0.5梅脱(代谢当量任务)的均方根误差。我们还证明,相对于仅使用加速度计数据,使用多传感器方法时PS分类准确率提高了5%,平均绝对误差降低了0.34梅脱。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9dea/7584145/a6b214337996/nihms-1634609-f0002.jpg

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