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Comparison of Several Algorithms to Estimate Activity Counts with Smartphones as an Indication of Physical Activity Level

机译:使用智能手机估算活动计数的几种算法的比较,以指示身体活动水平

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摘要

Background: Dedicated devices like GT3X+, Actical or ActivPal have been widely used to measure physical activity (PA) levels by using cut-points on activity counts. However, the calculation of activity counts relies on proprietary software. Since smartphones incorporate accelerometers they are suitable candidates to determine PA levels in a wider population.Objective: Our aim was to compare several algorithms so that smartphones can reproduce the results obtained with GT3X+. The influence of smartphone location was also investigated.Methods: Volunteers participated in the experiment performing several activities carrying two smartphones (hip and pocket) and one GT3X+ (hip). Four algorithms (A1-A4) were considered to obtain GT3X+ counts from smartphone accelerometer signals. A1 was based on a traditional filtering on temporal domain and a posterior calculation of the area under the curve. A2 was based on computing histograms of acceleration values, which were used as independent variables in a standard linear regression procedure. A3 also used a linear regression, but in this case the independent variables were power spectrum bands, leading to a kind of filtering in the frequency domain. A4 was based on a direct measure of area under the rectified curve of the raw accelerometer signal. Performance was measured in terms of raw activity counts or the corresponding PA level classification. The influence of the algorithm was tested with a Quade test. Multiple comparisons were performed with Wilcoxon test with Bonferroni's correction. Besides, battery consumption was also measured as a secondary parameter. The output of the selected algorithm was compared with GT3X+ counts using correlation (pearson and spearman) and agreement (Intra-Class Coefficient, ICC and Bland-Altmann plots for raw counts, and weighted kappa for activity levels). Several experimental conditions regarding smartphone location were compared with Wilcoxon tests.Results: Thirty-two volunteers participated in the experiment. More refined algorithms based on filtering techniques did not prove to achieve better performance than A2 or A4. In terms of classification of PA level, A4 got the lowest error rate, although in some cases the differences with other algorithms were not statistically significant (p-value 0.05). A4 is also the simplest and the one that implies less battery depletion. The comparison of A4 with GT3X+ gave good agreement (ICC = 0.937) and correlation (spearman = 0.927) for raw counts and good agreement when classifying four or two PA levels (weighted kappa = 0.874 or 0.923 respectively). Besides, in real situations, activity classification into four levels was significantly improved (p-value 0.05) if data from several body locations were used to find model parameters.Conclusions: Simple algorithms can reproduce the results of GT3X+. Thus, smartphones could be used to control the fulfillment of PA recommendations previously validated with cut-points. However, it must be acknowledged that accelerometers are not the gold standard to measure PA. (C) 2018 AGBM. Published by Elsevier Masson SAS. All rights reserved.
机译:背景:诸如GT3X +,Actical或ActivPal之类的专用设备已通过使用活动计数的切入点广泛用于测量身体活动(PA)水平。但是,活动计数的计算依赖于专有软件。由于智能手机集成了加速度计,因此它们是确定更广泛人群中PA水平的合适对象。目的:我们的目的是比较几种算法,以便智能手机可以重现GT3X +获得的结果。方法:志愿者参与了这项实验,进行了几项活动,携带两部智能手机(臀部和口袋)和一部GT3X +(臀部)。考虑使用四种算法(A1-A4)从智能手机加速度计信号中获取GT3X +计数。 A1基于对时域的传统过滤和曲线下面积的后验计算。 A2基于计算加速度值的直方图,这些直方图在标准线性回归程序中用作自变量。 A3还使用了线性回归,但是在这种情况下,自变量是功率谱带,从而导致了频域中的一种滤波。 A4是基于原始加速度计信号的校正曲线下面积的直接测量。根据原始活动计数或相应的PA水平分类来衡量表现。该算法的影响已通过Quade测试进行了测试。使用Wilcoxon检验和Bonferroni校正进行多次比较。此外,还测量了电池消耗作为第二参数。使用相关性(皮尔逊和斯皮尔曼)和一致性(类内系数,ICC和Bland-Altmann图作原始计数,加权Kappa作活动水平),将所选算法的输出与GT3X +计数进行比较。通过Wilcoxon测试比较了几种有关智能手机定位的实验条件。结果:32名志愿者参加了该实验。事实证明,基于过滤技术的更为精细的算法无法获得比A2或A4更好的性能。就PA级别的分类而言,A4的错误率最低,尽管在某些情况下与其他算法的差异没有统计学意义(p值> 0.05)。 A4也是最简单的一种,它意味着较少的电池电量消耗。将A4与GT3X +进行比较,在对四个或两个PA水平进行分类(加权kappa分别为0.874或0.923)时,原始计数具有良好的一致性(ICC = 0.937)和相关性(spearman = 0.927)和良好的一致性。此外,在实际情况下,如果使用多个身体部位的数据来查找模型参数,则可以将活动分为四个级别(p值<0.05)得到了显着改善。结论:简单的算法可以重现GT3X +的结果。因此,智能手机可用于控制先前通过切点验证的PA建议的实现。但是,必须承认,加速度计不是测量PA的金标准。 (C)2018年AGBM。由Elsevier Masson SAS发布。版权所有。

著录项

  • 来源
    《Innovation and research in biomedical en》 |2019年第2期|95-102|共8页
  • 作者单位

    EU Politecn, EduQTech, C Atarazana 2, Teruel 44003, Spain;

    EU Politecn, EduQTech, C Atarazana 2, Teruel 44003, Spain|Univ Zaragoza, Inst Invest Sanitaria Aragon, Zaragoza, Spain;

    EU Politecn, EduQTech, C Atarazana 2, Teruel 44003, Spain|Univ Zaragoza, Inst Invest Sanitaria Aragon, Zaragoza, Spain;

    Fac Ciencias Sociales & Humanas, EFYPAF, C Atarazana 2, Teruel 44003, Spain;

    Fac Ciencias Sociales & Humanas, EFYPAF, C Atarazana 2, Teruel 44003, Spain;

    Fac Ciencias Sociales & Humanas, EFYPAF, C Atarazana 2, Teruel 44003, Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Accelerometer; Physical activity; mHealth; Actigraph;

    机译:加速度计;身体活动;移动健康;活动记录仪;

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