Objective Assessment of Physical Activity at Home Using a Novel Floor-Vibration Monitoring System: Validation and Comparison With Wearable Activity Trackers and Indirect Calorimetry Measurements

被引:0
作者
Nakajima, Yuki [1 ]
Kitayama, Asami [1 ]
Ohta, Yuji [1 ]
Motooka, Nobuhisa [1 ]
Kuno-Mizumura, Mayumi [2 ]
Miyachi, Motohiko [3 ,4 ]
Tanaka, Shigeho [4 ,5 ]
Ishikawa-Takata, Kazuko [4 ,6 ]
Tripette, Julien [1 ,4 ,7 ]
机构
[1] Ochanomizu Univ, Dept Human Environm Sci, Tokyo, Japan
[2] Ochanomizu Univ, Dept Performing Arts, Bunkyo, Japan
[3] Waseda Univ, Fac Sport Sci, Tokorozawa, Japan
[4] Natl Inst Biomed Innovat Hlth & Nutr, Natl Inst Hlth & Nutr, Settsu, Japan
[5] Kagawa Nutr Univ, Fac Nutr, Sakado, Japan
[6] Tokyo Univ Agr, Fac Appl Biosci, Tokyo, Japan
[7] Ochanomizu Univ, Ctr Interdisciplinary AI & Data Sci, 2-1-1 Otsuka, Bunkyo 1128610, Japan
关键词
smart home system; physical behavior; physical activity; activity tracker; floor vibration; housework-related activity; home-based activity; mobile phone; ENERGY-EXPENDITURE; RECOGNITION; PREDICTION; HEALTH;
D O I
10.2196/51874
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Background: The self-monitoring of physical activity is an effective strategy for promoting active lifestyles. However, accurately assessing physical activity remains challenging in certain situations. This study evaluates a novel floor-vibration monitoring system to quantify housework-related physical activity. Objective: This study aims to assess the validity of step-count and physical behavior intensity predictions of a novel floor-vibration monitoring system in comparison with the actual number of steps and indirect calorimetry measurements. The accuracy of the predictions is also compared with that of research-grade devices (ActiGraph GT9X). Methods: The Ocha-House, located in Tokyo, serves as an independent experimental facility equipped with high-sensitivity accelerometers installed on the floor to monitor vibrations. Dedicated data processing software was developed to analyze floor-vibration signals and calculate 3 quantitative indices: floor-vibration quantity, step count, and moving distance. In total, 10 participants performed 4 different housework-related activities, wearing ActiGraph GT9X monitors on both the waist and wrist for 6 minutes each. Concurrently, floor-vibration data were collected, and the energy expenditure was measured using the Douglas bag method to determine the actual intensity of activities. Results: Significant correlations (P<.001) were found between the quantity of floor vibrations, the estimated step count, the estimated moving distance, and the actual activity intensities. The step-count parameter extracted from the floor-vibration signal emerged as the most robust predictor (r(2)=0.82; P<.001). Multiple regression models incorporating several floor-vibration-extracted parameters showed a strong association with actual activity intensities (r(2)=0.88; P<.001). Both the step-count and intensity predictions made by the floor-vibration monitoring system exhibited greater accuracy than those of the ActiGraph monitor. Conclusions: Floor-vibration monitoring systems seem able to produce valid quantitative assessments of physical activity for selected housework-related activities. In the future, connected smart home systems that integrate this type of technology could be used to perform continuous and accurate evaluations of physical behaviors throughout the day.
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页数:15
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