Abstract:
Freezing of Gait (FoG) is a disabling condition
in Parkinson’s patients, which could cause their motion to be
temporarily hindered. Wearable sensors have been commonly
used to detect FoG, but this will be of limited use since the patient
cannot be notified prior to the FoG event. In this research, a
system that can be used to predict the FoG in Parkinson’s patients
well ahead of the event was developed. This is a multimodal
sensor system that consists of Plantar pressure sensors placed in
the insole of the shoes and Inertial Measurement Units placed
on the shank of each leg. 3 machine learning algorithms were
developed: K means, K Nearest Neighbors, and Support Vector
Machines. Out of the 3 algorithms used, the KNN algorithm
was determined to have the highest FoG prediction sensitivity
of 0.88. The Pressure sensors captured more swift variations in
Gait during freezing compared to the IMUs. This system could
identify FoG 4.42s ahead of the event and used an optimal
time window of 1s. This system could be developed to yield
more accurate predictions, and this could be integrated with
an auditory biofeedback system to warn the patient of FoG, to
minimize its occurrence.
Citation:
V. Jayawardena, P. C. R. Karunasekara and D. Sirisena, "A Wearable Sensor-Based Biofeedback System to Predict the Freezing of Gait (FoG) in Parkinson’s Patients," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 509-514, doi: 10.1109/MERCon60487.2023.10355430.