Examining Gait Characteristics in People with Osteoporosis Utilizing a Non-Wheeled Smart Walker through Spatiotemporal Analysis
Abstract
:1. Introduction
2. Materials and Methods
- Hardware setup:
- Connect four separate load cells to the input ports of the amplifier.
- Connect the cable of the load cell amplifier to a PASPORT interface.
- Connect the PASPORT interface to Personal Computer USB port.
- Software setup (Data studio):
- Once you connect the load cell amplifier to the computer via a PASPORT interface, the PASPortal window will open automatically as shown in Figure 2.
- Select launch Data Studio in PASPortal window.
- Click to begin data collection.
2.1. Sensor Specifications and Calibration
2.2. Gait Parameters Estimation from Smart Walker with Onboard Sensors
- Step Time: Average time in seconds between minimum–maximum (right) and minimum–maximum (left).
- Stride Time: Average time in seconds between maximum–maximum (right) and minimum–minimum (left).
- Number of steps: Number of inflection points.
- Time required to complete walk: Number of seconds that a user takes to complete the walk.
- Cadence: Number of steps taken * 60/time required to complete the walk.
- Distance: The distance covered by user during test i.e., 10 m.
- Walking Speed: Walking speed can be found by using distance (m)/time required to cover marked distance(s).
- Stride length: Walking speed (m/s) * Average time in seconds between maximum–maximum (right) and minimum–minimum (left).
- Step Length: walking speed (m/s) * Average time in seconds between minimum–maximum (right) and minimum–maximum (left).
2.3. Study Participants
Ethical Approval
2.4. Smart Walker Testing and Data Recording
3. Results
- For average left step length, the p-value was 0.03, (p(x ≤ F) = 0.01). The test statistic F was 0.350, which was not in the 95% region of acceptance: [0.3958: 2.5265]. S1/S2 = 0.59, was not in the 95% region of acceptance: [0.629: 1.589]. The 95% confidence interval of σ12/σ22 was: [0.138, 0.886].
- The p-value for time was found to be 0.00, (p(x ≤ F) = 0.000). The test statistic F was 0.186, which was not in the 95% region of acceptance: [0.395: 2.526]. S1/S2 = 0.43, was not in the 95% region of acceptance: [0.629: 1.589]. The 95% confidence interval of σ12/σ22 was: [0.073, 0.470].
- For walking speed, the p-value was found to be 0.02, (p(x ≤ F) = 0.988). The test statistic F was 2.961, which was not in the 95% region of acceptance: [0.395: 2.526. S1/S2 = 1.72, was not in the 95% region of acceptance: [0.629: 1.589]. The 95% confidence interval of σ12/σ22 was: [1.172, 7.481].
- The p-value for average stride length was 0.02, (p(x ≤ F) = 0.012). The test statistic F was 0.342, which was not in the 95% region of acceptance: [0.395: 2.526]. S1/S2 = 0.591, was not in the 95% region of acceptance: [0.629: 1.589]. The 95% confidence interval of σ12/σ22 was: [0.135, 0.865].
Gait Parameters | Participants without Osteoporosis | Participants with Osteoporosis | p-Value |
---|---|---|---|
Mean ± Standard Deviation | Mean ± Standard Deviation | ||
Age | 69.85 ± 10.17 | 70.85 ± 10.18 | |
Total Distance covered (m) | 10 ± 0.00 | 10 ± 0.00 | |
The number of steps counted | 19.00 ± 2.83 | 26.4 ± 2.65 | 0.69 |
Time (s) | 14.47± 3.23 | 33.75 ± 7.48 | 0.00 |
Average Left Step Length (m) | 0.49 ± 0.05 | 0.25 ± 0.09 | 0.03 |
Average Right Step Length (m) | 0.51 ± 0.08 | 0.29 ± 0.12 | 0.08 |
Average Left Step Time (s) | 0.63 ± 0.13 | 0.90 ± 0.21 | 0.15 |
Average Right Step Time (s) | 0.68 ± 0.12 | 0.99 ± 0.26 | 0.57 |
Walking speed (m/s) | 0.72 ± 0.13 | 0.31 ± 0.07 | 0.02 |
Cadence (steps/min) | 83.49 ± 15.37 | 47.72 ± 12.28 | 0.15 |
Average Stride Time (s) | 1.35 ± 0.23 | 1.83± 0.23 | 0.56 |
Average Stride Length (m) | 0.99 ± 0.11 | 0.54 ± 0.18 | 0.02 |
4. Discussion
5. Conclusions
6. Patents
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Robotic Walkers | |||||
---|---|---|---|---|---|
Reference | Technology | Methods | Results | Limitation | Year |
[19] | Mobility Assistance Robotic rollator | Data was collected by using a Laser range finder | Detected gait phases | Users needed to wear fitted clothes | 2014 |
[20] | Assistive Robot | A proximity Sensor was used by a robotic walker to measure the distance between the user’s leg and the robot. | Controlled forward walking speed of the robot according to distance between the user and robot. | Only distance and walking speed were detected. | 2018 |
[21] | Robotic Walker; Walk-IT | Multi-camera and multimodal dataset was used for biomechanical analysis. | Biomechanical analysis of posture and gait, pose estimation, and human gait detection and tracking algorithm. | Need to wear full body motion tracking system. | 2022 |
Canes | |||||
Reference | Technology | Methods | Results | Limitation | Year |
[16] | Cane | A Force sensor was attached to measure the load on the cane. | Continuously measurement using weight bearing during walking | No temporal-spatial gait parameters were estimated in this study. | 2019 |
[22] | Cane Robot | Laser range finders were used to detect the user’s leg motion. | Spatiotemporal gait parameters were measured | Users needed to wear tight pants or short skirts during monitoring. | 2022 |
Wheeled Walkers | |||||
Reference | Technology | Method | Results | Limitation | Year |
[14] | i-Walker Platform | Force sensors were embedded on handlebars of the walker. | Extracted spatiotemporal gait parameters. | The user needed to put a mass of at least 3 kg on the walker handlebars for use | 2015 |
[23] | Smart Walker | Gait monitoring by using feet position and orientation by using ISIR’s smart walker prototype with Active depth sensor. | Spatial patterns are reported in this study by using a camera depth sensor without markers. | Spatiotemporal parameters were not reported in this study. | 2015 |
[24] | Wheeled Walker | Microwave Doppler radars are embedded in the four wheels of the walker. | Gait velocity estimation for normal and abnormal gait. | Important gait parameters for diagnosis of the user’s condition are not the scope of this study for instance cadence, step length, etc. | 2015 |
[18] | i-Walker Platform | Embedded force sensors in handlebars of the walker. | Estimated force difference of handlebar sensors during walking | This system was interfaced with the optotrack system and a treadmill, so it needed a confined environment for operation. | 2016 |
[25] | Smart Rollator, i-Walker | Data of volunteers using a smart rollator based on a force sensor, an accelerometer, and a gyroscope was classified using machine learning. | Found distinct walking-age groups according to walking speed, the forces exerted by the individual on the i-Walker. | For assessment only two parameters were known i.e., walking speed and force. | 2018 |
[26] | Smart Walker | Smart Walker based on functionalities sit-stand assistance, navigation system, and obstacle detection with gait monitoring. | The gait parameters determined by smart walker and GaitRite were concurrently validated. | This walker only determined temporal gait parameters and extraction of spatial gait parameters are not in the scope of this system. | 2019 |
[27] | Smart Rollator Walk-IT | Open-source modular-based rollator for gait monitoring and support. It included force sensors, encoders in the wheel, and light detection and ranging sensors. | Assessment of spatiotemporal gait parameters by leg speed information and weight bearing of users. | The main draw of this device was that it needed users’ leg visibility during rollator use due to a laser-based gait analysis system. Walk-IT also encountered visibility issues when it came to tracking steps, a crucial element for gait assessment. | 2022 |
Standard Walker | |||||
Reference | Technology | Method | Results | Limitation | Year |
[28] | Pick up standard walker | In this study force sensors, light detection and ranging sensors were embedded in the walker’s legs. | Force unbalance on the walker’s leg and motor incoordination was estimated. | Spatiotemporal gait parameters were not in the scope of this study. | 2018 |
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Ejaz, N.; Khan, S.J.; Azim, F.; Faiz, M.; Teuțan, E.; Pleșa, A.; Ianosi-Andreeva-Dimitrova, A.; Stan, S.-D. Examining Gait Characteristics in People with Osteoporosis Utilizing a Non-Wheeled Smart Walker through Spatiotemporal Analysis. Appl. Sci. 2023, 13, 12017. https://doi.org/10.3390/app132112017
Ejaz N, Khan SJ, Azim F, Faiz M, Teuțan E, Pleșa A, Ianosi-Andreeva-Dimitrova A, Stan S-D. Examining Gait Characteristics in People with Osteoporosis Utilizing a Non-Wheeled Smart Walker through Spatiotemporal Analysis. Applied Sciences. 2023; 13(21):12017. https://doi.org/10.3390/app132112017
Chicago/Turabian StyleEjaz, Nazia, Saad Jawaid Khan, Fahad Azim, Mehwish Faiz, Emil Teuțan, Alin Pleșa, Alexandru Ianosi-Andreeva-Dimitrova, and Sergiu-Dan Stan. 2023. "Examining Gait Characteristics in People with Osteoporosis Utilizing a Non-Wheeled Smart Walker through Spatiotemporal Analysis" Applied Sciences 13, no. 21: 12017. https://doi.org/10.3390/app132112017
APA StyleEjaz, N., Khan, S. J., Azim, F., Faiz, M., Teuțan, E., Pleșa, A., Ianosi-Andreeva-Dimitrova, A., & Stan, S. -D. (2023). Examining Gait Characteristics in People with Osteoporosis Utilizing a Non-Wheeled Smart Walker through Spatiotemporal Analysis. Applied Sciences, 13(21), 12017. https://doi.org/10.3390/app132112017