| Literature DB >> 26225973 |
Angel Ruiz-Zafra1, Eva Orantes-González2, Manuel Noguera3, Kawtar Benghazi4, Jose Heredia-Jimenez5.
Abstract
The metabolic equivalent of task (MET) is currently the most used indicator for measuring the energy expenditure (EE) of a physical activity (PA) and has become an important measure for determining and supervising a person's state of health. The use of new devices which are capable of measuring inertial movements by means of built-in accelerometers enable the PA to be measured objectively on the basis of the reckoning of "counts". These devices are also known as inertial measurement units (IMUs) and each count is an aggregated value indicating the intensity of a movement and can be used in conjunction with other parameters to determine the MET rate of a particular physical activity and thus it's associated EE. Various types of inertial devices currently exist that enable count calculus and physical activity to be monitored. The advent of mobile devices, such as smartphones, with empowered computation capabilities and integrated inertial sensors, has enabled EE to be measure in a distributed, ubiquitous and natural way, thereby overcoming the reluctance of users and practitioners associated with in-lab studies. From the point of view of the process analysis and infrastructure needed to manage data from inertial devices, there are also various differences in count computing: extra devices are required, out-of-device processing, etc. This paper presents a study to discover whether the estimation of energy expenditure is dependent on the accelerometer of the device used in measurements and to discover the suitability of each device for performing certain physical activities. In order to achieve this objective, we have conducted several experiments with different subjects on the basis of the performance of various daily activities with different smartphones and IMUs.Entities:
Keywords: MET; accelerometers; energy expenditure; metabolic equivalent of task; mobile; physical activity; smartphones
Mesh:
Year: 2015 PMID: 26225973 PMCID: PMC4570320 DOI: 10.3390/s150818270
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Energy expenditure estimation procedure.
Summary of the study features.
| Subjects | Five Subjects: |
|---|---|
| Location(s) | Hip |
| Activities | Sweeping the floor |
| Duration of the activities | 60 s |
| Experiment schedule | All subjects performed the same physical activities in the same order: |
| Sensors | Five sensors: |
Figure 3Android application developed to capture data from accelerometers.
Figure 2Study stages.
Summary of the EE for the physical activity “Walking at 4 km/h”.
| Walking 4 km/h | Subject 1 | Subject 2 | Subject 3 | Subject 4 | Subject 5 | |||||
|---|---|---|---|---|---|---|---|---|---|---|
| Count | MET | Count | MET | Count | MET | Count | MET | Count | MET | |
| Nexus | 2624 | 3.27 | 2443 | 3.15 | 2199 | 2.99 | 2126 | 2.94 | 1913 | 2.8 |
| Samsung | 455 | 1.84 | 508 | 1.88 | 392 | 1.80 | 398 | 1.80 | 365 | 1.78 |
| LG L9 | 1350 | 2.43 | 2722 | 3.33 | 2728 | 3.34 | 2687 | 3.31 | 2243 | 3.02 |
| Zephyr | 6190 | 5.61 | 8632 | 7.22 | 6524 | 5.83 | 5936 | 5.45 | 5643 | 5.25 |
| SensorTag | 343 | 1.77 | 225 | 1.69 | 189 | 1.67 | 170 | 1.65 | 186 | 1.66 |
Summary of the EE for the physical activity “Sweeping the floor”.
| Sweeping the Floor | Subject 1 | Subject 2 | Subject 3 | Subject 4 | Subject 5 | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Count | MET | Count | MET | Count | MET | Count | MET | Count | MET | ||
| Nexus | 1323 | 2.41 | 1034 | 2.22 | 1230 | 2.35 | 838 | 2.09 | 882 | 2.12 | |
| Samsung | 376 | 1.79 | 325 | 1.76 | 413 | 1.81 | 282 | 1.73 | 360 | 1.78 | |
| LG L9 | 1516 | 2.54 | 1154 | 2.30 | 1149 | 2.30 | 833 | 2.09 | 1069 | 2.25 | |
| Zephyr | 3719 | 3.99 | 1711 | 2.67 | 2718 | 3.33 | 2129 | 2.94 | 2315 | 3.06 | |
| SensorTag | 121 | 1.62 | 95 | 1.60 | 118 | 1.62 | 93 | 1.60 | 122 | 1.62 | |
Summary of the EE for the physical activity “Watching TV”.
| Watching TV | Subject 1 | Subject 2 | Subject 3 | Subject 4 | Subject 5 | ||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Count | MET | Count | MET | Count | MET | Count | MET | Count | MET | ||
| Nexus 5 | 126 | 1.62 | 112 | 1.62 | 102 | 1.61 | 143 | 1.64 | 105 | 1.61 | |
| Samsung | 58 | 1.58 | 48 | 1.57 | 48 | 1.57 | 60 | 1.58 | 56 | 1.58 | |
| LG | 155 | 1.64 | 151 | 1.64 | 152 | 1.64 | 178 | 1.66 | 142 | 1.64 | |
| Zephyr | 1381 | 2.45 | 720 | 2.02 | 208 | 1.68 | 883 | 2.12 | 1641 | 2.62 | |
| SensorTag | 43 | 1.57 | 40 | 1.57 | 42 | 1.57 | 44 | 1.57 | 41 | 1.57 | |
Figure 4EE of the different accelerometers and subjects for the PA “Walking at 4 km/h”.
Figure 5EE of the different accelerometers and subjects for the PA “Sweeping the floor”.
Figure 6EE of the different accelerometers and subjects for the PA “Watching TV”.
Figure 7Relation between frequency (X axis) and accuracy of the results (Y axis).