| Literature DB >> 29498644 |
Daniel Leightley1, Moi Hoon Yap2.
Abstract
The aim of this study was to compare the performance between young adults (n = 15), healthy old people (n = 10), and masters athletes (n = 15) using a depth sensor and automated digital assessment framework. Participants were asked to complete a clinically validated assessment of the sit-to-stand technique (five repetitions), which was recorded using a depth sensor. A feature encoding and evaluation framework to assess balance, core, and limb performance using time- and speed-related measurements was applied to markerless motion capture data. The associations between the measurements and participant groups were examined and used to evaluate the assessment framework suitability. The proposed framework could identify phases of sit-to-stand, stability, transition style, and performance between participant groups with a high degree of accuracy. In summary, we found that a depth sensor coupled with the proposed framework could identify performance subtleties between groups.Entities:
Keywords: automated assessment; depth sensor; kinect; motion capture; short physical performance battery; sit-to-stand
Year: 2018 PMID: 29498644 PMCID: PMC5872228 DOI: 10.3390/healthcare6010021
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
Figure 1Example output of the Microsoft Kinect One depth sensor and skeleton model renders in MathWorks Matlab (2016B).
Figure 2Example recording enviorment with the Microsoft Kinect One placed on a tripod at 70 cm.
Figure 3Visual 2-D (y axis) representation of the Centre-of-Mass feature encoded from two sequences of sit-to-stand. Left: motion performed by a healthy old participant. Right: motion performed by a young adults.
Figure 4Example output of the proposed transition detection framework derived from the Centre-of-Mass feature vector.
Characteristics of participants divided by group.
| Parameter (SD) | Young Adult | Healthy Old | Masters Athletes | |
|---|---|---|---|---|
| Age, years | 26.40 (±3.16) | 74.90 (±4.11) | 66.93 (±5.03) a,b | 0.00 |
| Height, cm | 176.47 (±8.59) | 170.30 (±5.97) c | 166.01 (±10.07) | 0.04 |
| Weight, kg | 77.93 (±18.11) | 80.25 (±15.32) | 61.90 (±9.39) | 0.594 |
| Body mass index | 23.01 (±5.70) b,c | 22.65 (±5.38) | 19.14 (±2.11) | 0.04 |
The p-value represents the main effect obtained from the ANOVA. Results from dependent comparisons are included as a significantly different from Young; b significantly different from healthy old; c significantly different from masters athletes.
Transition detection rates for each point of interest.
| Parameter | Average Detection Rate (SD) |
|---|---|
| Sitting | 6 (±0) |
| Start of sit-to-stand | 4.76 (±0.48) |
| Peak standing | 4.93 (±0.35) |
| End of stand-to-sit | 4.34 (±0.63) |
Figure 5Classification results for each phase. Correct classifications versus incorrect classifications.
Computed results for the sit-to-stand motion for each participant group.
| Parameter | Young Adults | Healthy Old | Masters Athletes | |
|---|---|---|---|---|
| Stand Time (s) | 1.02 (±0.18) | 2.02 (±0.21) | 1.51 (±0.19) a | 0.02 |
| CoM Stand ML (cm) | 0.24 (0.05) | 0.03 (0.26) | 0.17 (0.06) | 0.56 |
| CoM Stand AP (cm) | 0.21 (±0.01) b | 0.01 (±0.19) | 0.04 (±0.14) | 0.04 |
| Stand UBFA (deg) | 12 (±2.86) | 18 (±4.09) | 14 (±3.58) | 0.62 |
| Stand UfV (m/s) | 0.82 (±0.19) | 0.71 (±0.38) | 0.73 (±0.19) | 0.16 |
| Sit Time (s) | 0.92 (±0.23) | 1.47 (±0.73) | 0.98 (±0.35) | 0.23 |
| CoM Sit ML (cm) | 0.22 (0.06) | 0.04 (0.28) a,c | 0.22 (0.09) | 0.00 |
| CoM Sit AP (cm) | 0.22 (±0.03) | 0.03 (±0.17) | 0.05 (±0.16) | 0.53 |
| Sit UBFA (deg) | 17 (±3.19) | 16 (±3.71) a | 10 (±2.38) a | 0.05 |
| Sit UfV (m/s) | 0.98 (±0.19) | 0.78 (±0.58) | 0.83 (±0.21) a | 0.04 |
| Total time (s) | 7.98 (±2.09) | 12.18 (±3.76) | 9.28 (±0.94) | 0.24 |
The p-value represents the main effect obtained from the ANOVA. Results from dependent comparisons are included as a significantly different from Young; b significantly different from healthy old; c significantly different from masters athletes.