TY - JOUR
T1 - Freezing of gait detection
T2 - The effect of sensor type, position, activities, datasets, and machine learning model
AU - Borzì, Luigi
AU - Demrozi, Florenc
AU - Bacchin, Ruggero Angelo
AU - Turetta, Cristian
AU - Sigcha, Luis
AU - Rinaldi, Domiziana
AU - Fazzina, Giuliana
AU - Balestro, Giulio
AU - Picelli, Alessandro
AU - Pravadelli, Graziano
AU - Olmo, Gabriella
AU - Tamburin, Stefano
AU - Lopiano, Leonardo
AU - Artusi, Carlo Alberto
PY - 2025/2/1
Y1 - 2025/2/1
N2 - BackgroundFreezing of gait (FoG) is a complex, frequent, and disabling motor symptom of Parkinson's disease (PD). Wearable technology has the potential to improve FoG assessment by providing objective, quantitative, and continuous monitoring.ObjectiveThis study aims to develop a robust FoG detection algorithm that can be embedded in a simple and unobtrusive wearable sensor system and can lead to a reliable unsupervised home assessment.MethodsTwenty-two subjects with PD and FoG were enrolled, equipped with four inertial modules on the ankles, back, and wrist, and asked to perform different tasks. Feature-driven and data-driven machine learning approaches were implemented, optimized, and evaluated. Further testing was conducted on two external datasets including a total of 545 FoG episodes.ResultsSixteen subjects experienced FoG, providing a total number of 101 FoG events. Results demonstrated that a single sensor on the ankle, with an adequate algorithm of data analysis based on machine learning, can provide a non-invasive approach for accurate FoG detection. The model proved robust on the independent datasets, with 88-95% FoG episodes correctly detected. Interestingly, while FoG can be easily discriminated from walking, static positions, and postural transitions, turning represents a significant challenge. The high number of false alarms still represents the main limitation of the FoG recognition algorithms.ConclusionsThe collected dataset includes data from different sensors at different body positions. This, together with detailed labeling of tasks, activities, FoG episodes and their severity, can be a significant contribution to research on automatic FoG detection and characterization.
AB - BackgroundFreezing of gait (FoG) is a complex, frequent, and disabling motor symptom of Parkinson's disease (PD). Wearable technology has the potential to improve FoG assessment by providing objective, quantitative, and continuous monitoring.ObjectiveThis study aims to develop a robust FoG detection algorithm that can be embedded in a simple and unobtrusive wearable sensor system and can lead to a reliable unsupervised home assessment.MethodsTwenty-two subjects with PD and FoG were enrolled, equipped with four inertial modules on the ankles, back, and wrist, and asked to perform different tasks. Feature-driven and data-driven machine learning approaches were implemented, optimized, and evaluated. Further testing was conducted on two external datasets including a total of 545 FoG episodes.ResultsSixteen subjects experienced FoG, providing a total number of 101 FoG events. Results demonstrated that a single sensor on the ankle, with an adequate algorithm of data analysis based on machine learning, can provide a non-invasive approach for accurate FoG detection. The model proved robust on the independent datasets, with 88-95% FoG episodes correctly detected. Interestingly, while FoG can be easily discriminated from walking, static positions, and postural transitions, turning represents a significant challenge. The high number of false alarms still represents the main limitation of the FoG recognition algorithms.ConclusionsThe collected dataset includes data from different sensors at different body positions. This, together with detailed labeling of tasks, activities, FoG episodes and their severity, can be a significant contribution to research on automatic FoG detection and characterization.
KW - deep learning
KW - detection
KW - freezing of gait
KW - machine learning
KW - Parkinson’s disease
KW - wearable sensor
UR - https://www.scopus.com/pages/publications/105002420099
U2 - 10.1177/1877718X241302766
DO - 10.1177/1877718X241302766
M3 - Article
C2 - 40091409
AN - SCOPUS:105002420099
SN - 1877-7171
VL - 15
SP - 163
EP - 181
JO - Journal of Parkinson's Disease
JF - Journal of Parkinson's Disease
IS - 1
ER -