Assessing Walking Strategies Using Insole Pressure Sensors for Stroke Survivors
Abstract
:1. Introduction
- Mastery experiences: Gaining confidence in achieving and accomplishing tasks.
- Modelling: The observation of similar individuals achieving and accomplishing tasks through direct observation or through written and visual material.
- Interpreting physiological signs: Having the ability and confidence to interpret symptoms and changes in symptoms such as, mobility, weakness, stiffness, and fatigue.
- Feedback and persuasion: The provision of some recognition of their performance and progress from personal achievement as well as significant others, i.e., family members.
2. Method
2.1. Aim
2.2. Inclusion Criteria
- A definite diagnosis of stroke (self-reported);
- Able to give informed consent;
- Able to walk (with or without walking aids); and
- Individuals with self-reported walking difficulties as a result of their stroke.
- Unable to speak or comprehend written English;
- Unable to give informed consent; and
- Medically unstable, or other neurological, neuromuscular, or orthopaedic disorders that would interfere with task performance (self-reported).
- 45 years of age or over;
- No conditions effecting their walking, e.g., back pain, hip conditions, and arthritis in the knees;
- Able to give informed consent;
- Able to speak and comprehend written English;
- No history of stroke; and
- Medically stable, and no other neurological, neuromuscular, or orthopaedic disorders that would interfere with task performance (self-reported).
2.3. Recruitment
2.4. Setting
2.5. Procedures
- Time in which the average pressure on the heel is bigger than the 80% of the maximum heel pressure;
- Maximum forefoot pressure;
- Ratio between the forefoot pressure at the point of maximum heel pressure and the maximum forefoot pressure;
- Anterior–posterior pressure pattern length;
- Ratio between the maximum forefoot pressure and the maximum heel pressure;
- Anterior–posterior pressure length and location; and
- Lateral pressure length and location.
2.6. Ethical Considerations
2.7. Consent
2.8. Stroke Survivor Participants Demographics
2.9. Control Participants Demographics
3. Walking Strategies and Selected Parameters
3.1. Heel Walking Strategy
- Time in which the average pressure on the heel is bigger than the 80% of the maximum heel pressure; and
- Maximum forefoot pressure.
3.2. Planar Stride Strategy
- Ratio between the forefoot pressure at the point of maximum heel pressure and the maximum forefoot pressure; and
- Anterior/posterior pressure pattern length.
3.3. Low Heel Pressure Strategy
- Ratio between the maximum forefoot pressure and the maximum heel pressure; and
- Anterior/posterior pressure length and location.
3.4. Gait Assymetries
3.5. Gait Variability over Time
4. Results
4.1. Heel Walking Strategy
4.2. Planar Stride Strategy
4.3. Low Heel Pressure Strategy
4.4. Gait Assymetries
4.5. Gait Variability over Time
4.6. Correlations with the Rivermead Mobility Index
5. Discussions and Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
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Unique ID | Gender | Age (years) | Affected Side | Insole Size | Weight (kg) |
---|---|---|---|---|---|
11 | F | 64 | Right | L | 105 |
12 | M | 61 | Right | L | 85 |
13 | F | 66 | Right | M | 75 |
15 | M | 50 | Left | XL | 90 |
16 | F | 79 | Left | S | 64.8 |
21 | F | 72 | Right | M | 73 |
22 | M | 64 | Left | XL | 90.8 |
23 | F | 75 | Right | L | 114.3 |
24 | M | 75 | Left | L | 80 |
25 | F | 68 | Both sides | M | 95.3 |
26 | F | 69 | Left | M | 66 |
27 | M | 84 | Right | XL | 95.3 |
29 | M | 39 | Both sides | L | 84.1 |
210 | M | 64 | Right | XL | 87.3 |
Unique ID | Gender | Age (years) | Insole Size | Weight (kg) |
---|---|---|---|---|
NKP1 | F | 45 | M | 63.5 |
NKP4 | M | 44 | L | 69.9 |
NKP5 | F | 46 | S | 64.8 |
NKP6 | F | 55 | M | 64.1 |
NKP7 | F | 54 | M | 75 |
NKP9 | M | 45 | XL | 80 |
NKPA | F | 52 | S | 64.2 |
NKPB | F | 50 | M | 72 |
NKPC | M | 46 | M | 70 |
NKPD | F | 51 | S | 54 |
Classified as | Heel Walking | No Heel Walking |
---|---|---|
Heel walking | 3 | 0 |
No heel walking | 0 | 21 |
Cluster | Mean | Standard Deviation |
---|---|---|
1 | 2.0906 | 0.9036 |
2 | 0.279 | 0.2033 |
Feature | p-Value |
---|---|
heel duration standard deviation | 0.0161 |
Forefoot vs. heel maximum pressure standard deviation | 0.0138 |
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Munoz-Organero, M.; Parker, J.; Powell, L.; Mawson, S. Assessing Walking Strategies Using Insole Pressure Sensors for Stroke Survivors. Sensors 2016, 16, 1631. https://doi.org/10.3390/s16101631
Munoz-Organero M, Parker J, Powell L, Mawson S. Assessing Walking Strategies Using Insole Pressure Sensors for Stroke Survivors. Sensors. 2016; 16(10):1631. https://doi.org/10.3390/s16101631
Chicago/Turabian StyleMunoz-Organero, Mario, Jack Parker, Lauren Powell, and Susan Mawson. 2016. "Assessing Walking Strategies Using Insole Pressure Sensors for Stroke Survivors" Sensors 16, no. 10: 1631. https://doi.org/10.3390/s16101631
APA StyleMunoz-Organero, M., Parker, J., Powell, L., & Mawson, S. (2016). Assessing Walking Strategies Using Insole Pressure Sensors for Stroke Survivors. Sensors, 16(10), 1631. https://doi.org/10.3390/s16101631