| Literature DB >> 31779224 |
Keren Tchelet1, Alit Stark-Inbar1, Ziv Yekutieli1.
Abstract
Gait disorders and falls are common in elders and in many clinical conditions, yet they are typically infrequently and subjectively evaluated, limiting prevention and intervention. Completion-time of the Timed-Up-and-Go (TUG) test is a well-accepted clinical biomarker for rating mobility and prediction of falls risk. Using smartphones' integral accelerometers and gyroscopes, we already demonstrated that TUG completion-time can be accurately measured via a smartphone app. Here we present an extended app, EncephaLogTM, which provides gait analysis in much more detail, offering 9 additional gait biomarkers on top of the TUG completion-time. In this pilot, four healthy adults participated in a total of 32 TUG tests; simultaneously recorded by EncephaLog and motion sensor devices used in movement labs: motion capture cameras (MCC), pressure mat; and/or wearable sensors. Results show high agreement between EncephaLog biomarkers and those measured by the other devices. These preliminary results suggest that EncephaLog can provide an accurate, yet simpler, instrumented TUG (iTUG) platform than existing alternatives, offering a solution for clinics that cannot afford the cost or space required for a dedicated motion lab and for monitoring patients at their homes. Further research on a larger study population with pathologies is required to assess full validity.Entities:
Keywords: iTUG; mHealth; timed up and go; wearables
Mesh:
Year: 2019 PMID: 31779224 PMCID: PMC6929058 DOI: 10.3390/s19235179
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Timed-Up-and-Go (TUG) conventions. (A) Human coordinate system. Anterior-Posterior (AP) is the walking direction. (B) Event detection in EncephaLog TUG. Example of EncephaLog data from one TUG test, including nine raw signals collected by a smartphone device (lines), and the five TUG phases detected offline (shaded backgrounds). See Table A1 for events and biomarkers definitions.
EncephaLog biomarkers and events definitions.
| Completion Time (s) | Completion time of entire TUG sequence. Taken from the "Go" command until the subject re-sits with his/her back leaning on the chair’s backrest, identified by flattening of all signals (mostly identified by the Gyro ML signal). |
| Stand-Up time (s) | Begins when the subject stands up until the first step forward. Mostly identified from the Gyro-ML signal, which dramatically increases during the initial bending forward of the torso during stand-up, and then decreases dramatically at the straightening of the torso and return of the signal to baseline. |
| Walk-Away time (s) | From the first step forward (end of SU phase) until the first rotation step. During this phase, all accelerometers and gyroscopes are characterized by a harmonic, cyclic pattern, while the Yaw, Pitch, and Roll are flat. |
| Rotation Time (s) | When the subject turns around, until the first walking backward step. Clearly evident by a 180 degrees Yaw shift. Gyros SI and AP also change dramatically, while the accelerometers become quite flat, lacking the rhythmic pattern of straight walking. |
| Walk-Back Time (s) | Between rotations – from the first step backward after the end of the Rotation phase, until the last second before the turning part of the Sit-Down phase. Similarly to the WA phase, characterized by harmonic accelerometers and gyroscopes pattern, while the Yaw, Pitch, and Roll are flat. |
| Sit-Down Time [s] | Incudes a turn to orient the body to the chair and sitting down on the chair. Starts with the first turning step, indicating the intention to sit down, until the subject sits "fully" on chair with his/her back leaning on the chair’s backrest. As in the Rotation phase, the Yaw changes dramatically from 180 degrees back towards 0, and the Gyros perform a dramatic change. |
| Walking Steps (#) | Average number of steps during the straight walking phases (WA and WB; excluding steps while rotating). |
| Rotation Steps (#) | Number of steps during the Rotation phase. |
| AVG. Steps Frequency (Cadence) (#/s) | Cadence, i.e. the AVG. number of steps per second, during straight walking (WA and WB). |
| AVG. Steps Length (m) | Average of step length, defined as one heel strike followed by the other heel strike (half a cycle). Taken from straight walking phases (WA and WB) only. |
Figure 2TUG experimental setups. (A) Experiment 1. The motion capture cameras (MCC) setup included a system of 10 (six drawn for simplicity) motion capture cameras, and eight passive infrared sensors placed on the subject’s body (only seven displayed since the eighth was located on the subject’s back). Additionally, two smartphones devices (Android and iPhone) running EncephaLog were strapped to the subject’s sternum. (B) Experiments 2 and 3. Two smartphones devices (Android and iPhone) running EncephaLog and one wearable sensor (Opal) were strapped to the subject’s sternum, while he/she walked on a pressure walkway mat.
Figure A1MCC data analysis. MCC signals are composed from multiple sensors. Top: An example of MCC “SI signal” composed from data of 3 infrared markers (sternum SI, left shoulder SI, right shoulder SI, marked in cyan, red, and orange lines, respectively) combined in order to obtain one full SI signal that was used in this study. Bottom: Equivalent data from EncephaLog is captured by a single sensor (gyro ML, marked in blue). Shaded backgrounds represent the five TUG phases detected offline, as in Figure 1.
Bland–Altman agreement results between EncephaLog biomarkers and biomarkers from each of the three technologies used (top row—Android, bottom row—iOS) across all trials, including Mean of differences (), confidence intervals (95%), and the p value for two tailed t-test comparing the differences to zero. (-) Marks biomarkers that could not be derived from the pressure mat. All confidence intervals include 0, and all p-values > 0.05, indicating that we cannot reject H0, therefore we can state that the biomarkers are similar and there is a fine agreement between EncephaLog and each of the three methods.
| Motion Capture Cameras | Pressure Mat | Wearable Sensors | |||||||
|---|---|---|---|---|---|---|---|---|---|
|
| Agreement Limits |
| Agreement Limits |
| Agreement Limits | ||||
|
| −1.044 | [−6.327,4.238] | 0.833 | - | - | - | −0.858 | [−4.938,3.222] | 0.409 |
| −0.026 | [−5.184,5.132] | 0.996 | - | - | - | 0.039 | [−3.945,4.024] | 0.496 | |
|
| −0.024 | [−0.903,0854] | 0.855 | - | - | - | −0.051 | [−0.350,0.249] | 0.299 |
| 0.031 | [−0.848,0.910 | 0.812 | - | - | - | −0.003 | [−0.305,0.298] | 0.485 | |
|
| −0.350 | [−3.568,2.868] | 0.874 | - | - | - | −0.307 | [−2.543,1.928] | 0.424 |
| 0.018 | [−3.144,3.179] | 0.994 | - | - | - | 0.003 | [−2.193,2.198] | 0.424 | |
|
| 0.319 | [−0.908,1.545] | 0.481 | - | - | - | −0.082 | [−0.533,0.369] | 0.308 |
| 0.401 | [−0.801,1.603] | 0.369 | - | - | - | 0.005 | [−0.481,0.490] | 0.488 | |
|
| −0.970 | [−3.706,1.766] | 0.656 | - | - | - | −0.286 | [−2.147,1.574] | 0.429 |
| −0.532 | [−3.146,2.083] | 0.804 | - | - | - | 0.026 | [−1.730,1.781] | 0.499 | |
|
| −0.014 | [−1.414,1.387] | 0.962 | - | - | - | −0.038 | [−0.899,0.823] | 0.422 |
| 0.061 | [−1.279,1.402] | 0.828 | - | - | - | 0.082 | [−0.678,0.842] | 0.334 | |
|
| 1.912 | [−1.200,5.024] | 0.243 | - | - | - | 0.031 | [−0.911,0.974] | 0.407 |
| 1.912 | [−1.200,5.024] | 0.243 | - | - | - | 0.000 | [−0.943,0.943] | 0.500 | |
|
| −2.454 | [−9.771,4.864] | 0.633 | −1.103 | [−6.301,4.096] | 0.637 | −0.092 | [−5.646,5.462] | 0.484 |
| −2.485 | [−9.723,4.753] | 0.628 | −1.035 | [−6.255,4.185] | 0.665 | −0.025 | [−5.431,5.381] | 0.496 | |
|
| −0.102 | [−0.316,0.111] | 0.352 | 0.030 | [−0.026,0.086] | 0.691 | 0.026 | [−0.028,0.079] | 0.367 |
| −0.130 | [−0.354,0.093] | 0.381 | −0.001 | [−0.026,0.086] | 0.958 | −0.003 | [−0.062,0.055] | 0.483 | |
|
| −0.015 | [−0.087,0.058] | 0.849 | 0.036 | [−0.049,0.121] | 0.556 | 0.002 | [−0.073,0.077] | 0.488 |
| −0.015 | [−0.086,0.057] | 0.849 | 0.033 | [−0.052,0.117] | 0.596 | −0.002 | [−0.066,0.063] | 0.488 | |
Maximum relative error % between EncephaLog biomarkers and biomarkers from each of the three technologies used (top row—Android, bottom row—iOS). (-) Marks biomarkers that could not be derived from the pressure mat.
| Motion Capture Cameras | Pressure Mat | Wearable Sensors | |
|---|---|---|---|
|
| 11.192 | - | 4.959 |
| 7.930 | - | 2.737 | |
|
| 21.324 | - | 7.957 |
| 20.956 | - | 5.263 | |
|
| 21.313 | - | 6.381 |
| 16.794 | - | 1.725 | |
|
| 34.112 | - | 13.302 |
| 37.617 | - | 6.400 | |
|
| 32.904 | - | 3.896 |
| 28.860 | - | 3.506 | |
|
| 22.203 | - | 10.961 |
| 15.734 | - | 8.511 | |
|
| 50.000 | - | 20.000 |
| 50.000 | - | 0.000 | |
|
| 40.450 | 22.124 | 18.771 |
| 41.466 | 16.628 | 2.258 | |
|
| 49.564 | 7.204 | 4.996 |
| 50.646 | 3.874 | 2.500 | |
|
| 19.586 | 13.308 | 6.627 |
| 17.347 | 14.159 | 2.256 |
Figure 3MCC results. (A) Example of a visual comparison of MCC (top) and EncephaLog (bottom) signals. Note the similarity in the number and duration of steps during TUG Walk Away (WA) and Walk Back phases (WB), despite the different recourses: Superior-Inferior (SI) coordinates in 3D space in the MCC, and acceleration-SI in EncephaLog. (B) Bland–Altman plot, reflecting the degree of agreement between MCC and EncephaLog for TUG Completion Time (n = 17 samples). Presented here is data from an Android (blue) and iOS (green) devices. Dashed lines represent 95% confidence intervals of Bland–Altman (B&A) for Android (magenta) and iOS (red). Similar results and graphs were obtained for all biomarkers in this experiment.
Figure 4Pressure mat results. (A) Example of a visual comparison of pressure mat (bottom) and EncephaLog signals (top). Note the similar walking patterns captured simultaneously by both methods. (B) B&A plot, an agreement measurement for Average Steps Frequency between pressure mat and EncephaLog (n = 15 samples), performed on Android (blue) and iOS (green) devices.
Figure 5Wearable sensor results. (A) Comparison between EncephaLog and Opal WS of linear and angular accelerations. Correlation coefficient (R) and Normalized Root Mean Square Error (NRMSE) between signals of the two methods are presented above each graph. (B) B&A plot, an agreement measurement of Average Step Length between Opal and EncephaLog (n = 15 samples) performed on Android (blue) and iOS (green) devices.
Figure A2Examples for Opal (a) vs. EncephaLog (b) Raw Signals Correlation. Results from two different walking patterns.
Experiment 3—correlation of raw signals between EncephaLog and ‘OPAL’ wearable sensors. Average cross-correlation coefficients (R) and normalized root mean squared error (NRMSE) between sensors signals (n = 30 trials).
| Acc SI(X) | Acc ML(Y) | Acc AP(Z) | Gyro SI(X) | Gyro ML(Y) | Gyro AP(Z) | |||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| R | NRMSE | R | NRMSE | R | NRMSE | R | NRMSE | R | NRMSE | R | NRMSE | |
|
| 0.907 | 0.062 | 0.881 | 0.13 | 0.568 | 0.271 | 0.861 | 0.071 | 0.787 | 0.068 | 0.875 | 0.069 |
|
| 0.14 | 0.049 | 0.121 | 0.082 | 0.097 | 0.058 | 0.225 | 0.07 | 0.243 | 0.046 | 0.208 | 0.069 |