| Literature DB >> 31784691 |
Reed D Gurchiek1, Rebecca H Choquette2, Bruce D Beynnon2, James R Slauterbeck2, Timothy W Tourville3, Michael J Toth2,4, Ryan S McGinnis5.
Abstract
Critical to digital medicine is the promise of improved patient monitoring to allow assessment and personalized intervention to occur in real-time. Wearable sensor-enabled observation of physiological data in free-living conditions is integral to this vision. However, few open-source algorithms have been developed for analyzing and interpreting these data which slows development and the realization of digital medicine. There is clear need for open-source tools that analyze free-living wearable sensor data and particularly for gait analysis, which provides important biomarkers in multiple clinical populations. We present an open-source analytical platform for automated free-living gait analysis and use it to investigate a novel, multi-domain (accelerometer and electromyography) asymmetry measure for quantifying rehabilitation progress in patients recovering from surgical reconstruction of the anterior cruciate ligament (ACL). Asymmetry indices extracted from 41,893 strides were more strongly correlated (r = -0.87, p < 0.01) with recovery time than standard step counts (r = 0.25, p = 0.52) and significantly differed between patients 2- and 17-weeks post-op (p < 0.01, effect size: 2.20-2.96), and controls (p < 0.01, effect size: 1.74-4.20). Results point toward future use of this open-source platform for capturing rehabilitation progress and, more broadly, for free-living gait analysis.Entities:
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Year: 2019 PMID: 31784691 PMCID: PMC6884492 DOI: 10.1038/s41598-019-54399-1
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Graphical summary of the proposed remote gait analysis. The proposed approach is comprised of three basic steps: (1) walking bout identification, (2) stride extraction and gait phase segmentation, and (3) biomechanical analysis of individual strides.
Figure 2Scatter plot of the total time spent walking from the proposed method vs step counts estimated by Actigraph activity monitors.
Figure 3Percent difference in the median Actigraph step counts (a), strides times (b), and composite asymmetry scores (c) between the T1 (red) and T2 (green) groups. Error bars denote the 25th and 75th quantiles.
Comparison of daily average stride times and asymmetries.
| Mean (SD) | Pairwise Comparisons | |||||
|---|---|---|---|---|---|---|
| T1 | T2 | C | C-T1 | C-T2 | T1-T2 | |
| ST | 1.34 (0.08) | 1.14 (0.07) | 1.10 (0.05) | 0.34 | ||
| DF | 0.13 (0.05) | 0.04 (0.02) | 0.03 (0.01) | 0.61 | ||
| EMG St | 0.22 (0.12) | 0.13 (0.03) | 0.15 (0.04) | ANOVA | ||
| EMG Sw | 0.41 (0.14) | 0.27 (0.04) | 0.29 (0.12) | ANOVA | ||
| EMG(t) | 0.41 (0.10) | 0.29 (0.11) | 0.25 (0.07) | 0.52 | 0.07 | |
| AP(t) | 0.32 (0.13) | 0.10 (0.05) | 0.07 (0.04) | 0.49 | 0.08 | |
| ML(t) | 0.38 (0.13) | 0.28 (0.04) | 0.24 (0.06) | 0.51 | 0.08 | |
| CC(t) | 0.20 (0.08) | 0.06 (0.04) | 0.03 (0.02) | 0.26 | ||
| Comp. | 0.29 (0.05) | 0.17 (0.03) | 0.15 (0.03) | 0.65 | ||
ST: Stride Time; units seconds. Duty Factor (DF), EMG Stance (EMG St), and EMG Swing (EMG Sw) asymmetry scores are the percent difference between the healthy and injured leg (i.e. 0.5 indicates that the between leg difference is 50% that of the healthy leg). EMG(t), AP(t), ML(t), and CC(t) are pattern asymmetries for the sEMG time-series and the antero-posterior, medio-lateral, and cranial-caudal thigh acceleration time-series respectively. Composite asymmetry score (Comp.) is the average value of the other seven asymmetry scores. Bold numbers in the pairwise comparisons are effect sizes (*p ≤ 0.05, **p ≤ 0.01) and non-bold numbers are the p values for non-significant pairwise differences.
Figure 4Composite asymmetry score throughout the day (averaged over every 15-minute bin) for a patient with longitudinal observations: 2.1 weeks post-surgery (red dashed line) and 19.1 weeks post-surgery (blue dashed line). The solid lines illustrate the average trends for the T1 (red), T2 (blue), and C (black) groups. The longitudinal patient’s data was not included in the group means.
Figure 5Stride detection and segmentation example. (a) Foot contact (red circles) and foot off (green triangles) events are identified using the CC-axis accelerometer time-series lowpass filtered with a 5 Hz cutoff (black trace) and with cutoff frequencies equal to the approximate step frequency (orange trace) and stride frequency (blue trace). Step and stride frequencies are approximated using the power spectral density of the raw accelerometer signal (b).