Deep Convolutional Neural Network-Based Detection of Gait Abnormalities in Parkinson’s Disease Using Fewer Plantar Sensors in a Smart Insole
Abstract
1. Introduction
2. Materials and Methods
2.1. Dataset Information
2.2. Region of Interests (ROIs)
2.3. Unit Step Analysis
2.4. Data Preprocessing
2.5. Model Design Strategy
2.6. Proposed CNN Model Architecture
2.7. Model Evaluation and Training Setup
3. Results
3.1. CNN Model Optimization
3.2. Results of Unit Step Analysis
3.3. Classification Results Using All Sensors
3.4. Classification Results by ROIs with Fewer Sensors
3.5. Classification Results Under Multiple-Sensor Failures
3.6. Classification Results by Different Gait Types
4. Discussion
4.1. Motivation and Practical Challenges in Wearable Gait Analysis
4.2. CNN Architecture Design and Comparative Analysis
4.3. Classification Performance and Robustness Analysis
4.4. Limitations and Challenges
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| PD | Parkinson’s disease |
| QoL | Quality of life |
| MRI | Magnetic resonance imaging |
| PET | Positron emission tomography |
| DaT-SPECT | Dopamine transporters and single-photon emission computed tomography |
| CNN | Convolutional neural network |
| WST | Walk straight and turn |
| TUG | Timed up and go |
| ADL | Activities of daily living |
| GCE | Gait cycle event |
| IRB | Institutional review board |
| ROIs | Region of interests |
| ASI | Absolute symmetry index |
| TCNN | Temporal convolutional neural network |
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| Layer No. | Layer Type | Accuracy (%) | |||||
|---|---|---|---|---|---|---|---|
| All | Hindfoot | Midfoot | Forefoot | Average | Average (ROI Only) | ||
| 1 | U | 95.13 | 86.27 | 76.36 | 59.96 | 79.43 | 74.19 |
| 2 | HS | 90.85 | 86.99 | 80.78 | 78.80 | 84.36 | 82.19 |
| 3 | STS | 89.96 | 91.08 | 87.18 | 74.95 | 85.79 | 84.40 |
| 4 | SHTT | 93.37 | 92.06 | 86.99 | 85.01 | 89.36 | 88.02 |
| 5 | HSTTT | 92.10 | 92.24 | 88.19 | 86.77 | 89.82 | 89.06 |
| 6 | STTSTT | 97.09 | 94.96 | 88.54 | 87.55 | 92.04 | 90.35 |
| 7 | STTTHTT | 95.51 | 91.27 | 88.55 | 86.55 | 90.47 | 88.79 |
| Feature Types | Kruskal-Wallis | Wilcoxon Rank-Sum with Holm Correction | ||
|---|---|---|---|---|
| p-Value | S vs. EL | S vs. PD | EL vs. PD | |
| Tmax1 | <0.001 | <0.001 *** | 0.460 | 0.104 |
| Tmax2 | <0.001 | 0.001 ** | <0.001 *** | 0.035 * |
| Tmin | 0.026 | 0.068 | 0.563 | 0.068 |
| MaxSL | 0.295 | — | — | — |
| Tms | 0.019 | 0.532 | 0.030 * | 0.030 * |
| NegSL | 0.007 | 0.146 | 0.044 * | 0.008 ** |
| Tns | <0.001 | <0.001 *** | <0.001 *** | 0.034 * |
| Ts | 0.002 | 0.006 ** | 0.009 ** | 0.760 |
| Gait Type | Accuracy (%) | ||||
|---|---|---|---|---|---|
| All | Hindfoot | Midfoot | Forefoot | Average | |
| Fast | 91.03 | 90.20 | 93.37 | 82.12 | 89.18 |
| Normal | 93.65 | 91.11 | 87.78 | 83.33 | 88.97 |
| Slow | 97.09 | 94.96 | 88.54 | 87.55 | 92.04 |
| TUG | 89.83 | 84.44 | 83.42 | 72.52 | 82.56 |
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Park, E.-S.; Liu, X.; Hwang, H.-J.; Han, C.-H. Deep Convolutional Neural Network-Based Detection of Gait Abnormalities in Parkinson’s Disease Using Fewer Plantar Sensors in a Smart Insole. Biosensors 2026, 16, 40. https://doi.org/10.3390/bios16010040
Park E-S, Liu X, Hwang H-J, Han C-H. Deep Convolutional Neural Network-Based Detection of Gait Abnormalities in Parkinson’s Disease Using Fewer Plantar Sensors in a Smart Insole. Biosensors. 2026; 16(1):40. https://doi.org/10.3390/bios16010040
Chicago/Turabian StylePark, Eun-Seo, Xianghong Liu, Han-Jeong Hwang, and Chang-Hee Han. 2026. "Deep Convolutional Neural Network-Based Detection of Gait Abnormalities in Parkinson’s Disease Using Fewer Plantar Sensors in a Smart Insole" Biosensors 16, no. 1: 40. https://doi.org/10.3390/bios16010040
APA StylePark, E.-S., Liu, X., Hwang, H.-J., & Han, C.-H. (2026). Deep Convolutional Neural Network-Based Detection of Gait Abnormalities in Parkinson’s Disease Using Fewer Plantar Sensors in a Smart Insole. Biosensors, 16(1), 40. https://doi.org/10.3390/bios16010040

