Using Hidden Markov Models to Improve Quantifying Physical Activity in Accelerometer Data - A Simulation Study

被引:13
|
作者
Witowski, Vitali [1 ,2 ]
Foraita, Ronja [1 ]
Pitsiladis, Yannis [3 ]
Pigeot, Iris [1 ,2 ]
Wirsik, Norman [1 ]
机构
[1] Leibniz Inst Prevent Res & Epidemiol BIPS, Dept Biometry & Data Management, Bremen, Germany
[2] Univ Bremen, Dept Math & Comp Sci, D-28359 Bremen, Germany
[3] Univ Brighton, Sch Sport & Serv Management, Eastbourne, England
来源
PLOS ONE | 2014年 / 9卷 / 12期
关键词
ENERGY-EXPENDITURE; VALIDATION; CALIBRATION; CHILDREN;
D O I
10.1371/journal.pone.0114089
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Introduction: The use of accelerometers to objectively measure physical activity (PA) has become the most preferred method of choice in recent years. Traditionally, cutpoints are used to assign impulse counts recorded by the devices to sedentary and activity ranges. Here, hidden Markov models (HMM) are used to improve the cutpoint method to achieve a more accurate identification of the sequence of modes of PA. Methods: 1,000 days of labeled accelerometer data have been simulated. For the simulated data the actual sedentary behavior and activity range of each count is known. The cutpoint method is compared with HMMs based on the Poisson distribution (HMM[Pois]), the generalized Poisson distribution (HMM[GenPois]) and the Gaussian distribution (HMM[Gauss]) with regard to misclassification rate (MCR), bout detection, detection of the number of activities performed during the day and runtime. Results: The cutpoint method had a misclassification rate (MCR) of 11% followed by HMM[Pois] with 8%, HMM[GenPois] with 3% and HMM[Gauss] having the best MCR with less than 2%. HMM[Gauss] detected the correct number of bouts in 12.8% of the days, HMM[GenPois] in 16.1%, HMM[Pois] and the cutpoint method in none. HMM[GenPois] identified the correct number of activities in 61.3% of the days, whereas HMM[Gauss] only in 26.8%. HMM[Pois] did not identify the correct number at all and seemed to overestimate the number of activities. Runtime varied between 0.01 seconds (cutpoint), 2.0 minutes (HMM[Gauss]) and 14.2 minutes (HMM[GenPois]). Conclusions: Using simulated data, HMM-based methods were superior in activity classification when compared to the traditional cutpoint method and seem to be appropriate to model accelerometer data. Of the HMM-based methods, HMM[Gauss] seemed to be the most appropriate choice to assess real-life accelerometer data.
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页数:13
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