An artificial neural network model of energy expenditure using. nonintegrated acceleration signals

被引:101
作者
Rothney, Megan P.
Neumann, Megan
Beziat, Ashley
Chen, Kong Y.
机构
[1] Vanderbilt Univ, Dept Biomed Engn, Nashville, TN 37235 USA
[2] Vanderbilt Univ, Med Ctr, Dept Med, Div Gastroenterol, Nashville, TN USA
[3] NIDDK, NIH, Clin Endocrinol Branch, Bethesda, MD USA
关键词
physical activity; actigraph; IDEEA monitor; accelerometer; indirect calorimeter;
D O I
10.1152/japplphysiol.00429.2007
中图分类号
Q4 [生理学];
学科分类号
071003 ;
摘要
Accelerometers are a promising tool for characterizing physical activity patterns in free living. The major limitation in their widespread use to date has been a lack of precision in estimating energy expenditure (EE), which may be attributed to the oversimplified time-integrated acceleration signals and subsequent use of linear regression models for EE estimation. In this study, we collected biaxial raw (32 Hz) acceleration signals at the hip to develop a relationship between acceleration and minute-to-minute EE in 102 healthy adults using EE data collected for nearly 24 h in a room calorimeter as the reference standard. From each 1 min of acceleration data, we extracted 10 signal characteristics (features) that we felt had the potential to characterize EE intensity. Using these data, we developed a feed-forward/back-propagation artificial neural network (ANN) model with one hidden layer (12 X 20 X I nodes). Results of the ANN were compared with estimations using the ActiGraph monitor, a uniaxial accelerometer, and the IDEEA monitor, an array of five accelerometers. After training and validation (leave-one-subject out) were completed, the ANN showed significantly reduced mean absolute errors (0.29 +/- 0. 10 kcal/min), mean squared errors (0.23 +/- 0.14 kcal(2)/min(2)), and difference in total EE (21 +/- 115 kcal/day), compared with both the IDEEA (P < 0.01) and a regression model for the ActiGraph accelerometer (P < 0.001). Thus ANN combined with raw acceleration signals is a promising approach to link body accelerations to EE. Further validation is needed to understand the performance of the model for different physical activity types under free-living conditions.
引用
收藏
页码:1419 / 1427
页数:9
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