| Literature DB >> 31073340 |
Inbar Hillel1, Eran Gazit1, Alice Nieuwboer2, Laura Avanzino3,4, Lynn Rochester5,6, Andrea Cereatti7,8, Ugo Della Croce7,8, Marcel Olde Rikkert9, Bastiaan R Bloem10, Elisa Pelosin3,4, Silvia Del Din5, Pieter Ginis2, Nir Giladi1,11,12, Anat Mirelman1,11,12, Jeffrey M Hausdorff1,11,13,14.
Abstract
BACKGROUND: The traditional evaluation of gait in the laboratory during structured testing has provided important insights, but is limited by its "snapshot" character and observation in an unnatural environment. Wearables enable monitoring of gait in real-world environments over a week. Initial findings show that in-lab and real-world measures differ. As a step towards better understanding these gaps, we directly compared in-lab usual-walking (UW) and dual-task walking (DTW) to daily-living measures of gait.Entities:
Keywords: Accelerometer; Aging; Dual tasking; Gait; Mobility; Wearables
Year: 2019 PMID: 31073340 PMCID: PMC6498572 DOI: 10.1186/s11556-019-0214-5
Source DB: PubMed Journal: Eur Rev Aging Phys Act ISSN: 1813-7253 Impact factor: 3.878
Fig. 1An example histogram from one subject of the values of gait speed obtained during 30-s walking bouts across the week during the daily-living recording. The subject’s typical (50%) gait speed was 98 cm/sec, the worst (10%) was 77 cm/sec and the best (90%) was 113 cm/sec. The use of descriptors “worst” and “best” is according to in-lab terminology where higher = better and lower = worst. These labels may not be appropriate when they are applied to some daily-living conditions (e.g., when walking on a wet, slippery surface, a slower gait speed and a shorter step length may actually be the most appropriate behavior and not the “worst” behavior)
Subject characteristics*
| ( | |
|---|---|
| Age (yrs) | 76.5 ± 6.3 |
| Gender (% men) | 37.6 |
| Height [cm] | 164 ± 8.83 |
| Education (yrs) | 12.8 ± 3.9 |
| Body Mass Index (BMI) (kg/m2) | 26.2 ± 4.4 |
| Montreal Cognitive Assessment | 24.5 ± 3.6 |
| SF-36 General Health | 61.3 ± 18.5 |
| Falls Efficacy Scale – International | 28.7 ± 8.3 |
| Mini Best Test of Balance (MiniBest) | 21.9 ± 6.1 |
| Four Square Step Test (FSST) | 12.4 ± 6.8 |
| Short Physical Performance Battery (SPPB) | 9.1 ± 2.3 |
| Number of falls in the previous 6 months | 2 (2,7) |
*Entries are mean ± SD, median (percentile 10, percentile 90), or % as indicated
Fig. 2In-lab usual-walking and in-lab dual-task walking compared to daily-living walking typical, best and worst gait values of: a) step length; b) gait speed; c) step regularity; d) stride regularity and e) step time. The light blue bars reflect the in-lab values of usual-walking (UW) and dual-task walking (DTW). The results shown here are based on 30-s walking bouts
Agreement analyses comparing in-lab features of usual and dual-task walking, on the one hand, and daily-living features, on the other hand, as measured using the intraclass correlation coefficient analyses (two way mixed, absolute, single measure)*
Fig. 3Scatter plots and Bland Altman plots illustrating the relationship between in-lab dual-task step length (a) and gait speed (b) and the daily-living features observed in 30-s walking bouts. CV: coefficient of variance; RPC: reproducibility coefficient (1.96*SD)
Fig. 4An example of a) gait speed and b) step regularity for a single subject’s 30-s daily-living walking bouts and his in-lab usual (green line) and dual-task (red line) values
Ranking of in-lab usual walking and in dual-task walking with respect to daily-living 30-s walking bouts*
| In-lab usual walking | In-lab dual-task walking | |
|---|---|---|
| Step length | 53.5 ± 23.1% | 45.1 ± 22.9% |
| Gait speed | 63.8 ± 23.3% | 50.9 ± 25.4% |
| Step regularity | 73.2 ± 26.6% | 64.1 ± 27.5% |
| Stride regularity | 72.3 ± 23.7% | 62.1 ± 25.8% |
| Step time | 63.8 ± 25.9% | 55.1 ± 29.9% |
| Average | 65.3 ± 24.5% | 55.4 ± 26.3% |
*Entries are mean ± SD. The values indicate that among 50.9% of all daily-living walking bouts, gait speed was lower than that seen during in-lab dual-task walking, for example