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An Artificial Neural Network to Estimate Physical Activity Energy Expenditure and Identify Physical Activity Type from an Accelerometer

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Date 2009 Aug 1
PMID 19644028
Citations 122
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Abstract

The aim of this investigation was to develop and test two artificial neural networks (ANN) to apply to physical activity data collected with a commonly used uniaxial accelerometer. The first ANN model estimated physical activity metabolic equivalents (METs), and the second ANN identified activity type. Subjects (n = 24 men and 24 women, mean age = 35 yr) completed a menu of activities that included sedentary, light, moderate, and vigorous intensities, and each activity was performed for 10 min. There were three different activity menus, and 20 participants completed each menu. Oxygen consumption (in ml x kg(-1) x min(-1)) was measured continuously, and the average of minutes 4-9 was used to represent the oxygen cost of each activity. To calculate METs, activity oxygen consumption was divided by 3.5 ml x kg(-1) x min(-1) (1 MET). Accelerometer data were collected second by second using the Actigraph model 7164. For the analysis, we used the distribution of counts (10th, 25th, 50th, 75th, and 90th percentiles of a minute's second-by-second counts) and temporal dynamics of counts (lag, one autocorrelation) as the accelerometer feature inputs to the ANN. To examine model performance, we used the leave-one-out cross-validation technique. The ANN prediction of METs root-mean-squared error was 1.22 METs (confidence interval: 1.14-1.30). For the prediction of activity type, the ANN correctly classified activity type 88.8% of the time (confidence interval: 86.4-91.2%). Activity types were low-level activities, locomotion, vigorous sports, and household activities/other activities. This novel approach of applying ANNs for processing Actigraph accelerometer data is promising and shows that we can successfully estimate activity METs and identify activity type using ANN analytic procedures.

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References
1.
Crouter S, Clowers K, Bassett Jr D . A novel method for using accelerometer data to predict energy expenditure. J Appl Physiol (1985). 2005; 100(4):1324-31. DOI: 10.1152/japplphysiol.00818.2005. View

2.
Brage S, Ekelund U, Brage N, Hennings M, Froberg K, Franks P . Hierarchy of individual calibration levels for heart rate and accelerometry to measure physical activity. J Appl Physiol (1985). 2007; 103(2):682-92. DOI: 10.1152/japplphysiol.00092.2006. View

3.
Bassett Jr D, Ainsworth B, Swartz A, Strath S, OBrien W, King G . Validity of four motion sensors in measuring moderate intensity physical activity. Med Sci Sports Exerc. 2000; 32(9 Suppl):S471-80. DOI: 10.1097/00005768-200009001-00006. View

4.
Zakeri I, Adolph A, Puyau M, Vohra F, Butte N . Application of cross-sectional time series modeling for the prediction of energy expenditure from heart rate and accelerometry. J Appl Physiol (1985). 2008; 104(6):1665-73. DOI: 10.1152/japplphysiol.01163.2007. View

5.
Swartz A, Strath S, Bassett Jr D, OBrien W, King G, Ainsworth B . Estimation of energy expenditure using CSA accelerometers at hip and wrist sites. Med Sci Sports Exerc. 2000; 32(9 Suppl):S450-6. DOI: 10.1097/00005768-200009001-00003. View