Predicting the Freezing of Gait in Parkinson’s Patients based on Machine Learning and Wearable Sensors: A Review
Date
2022-09-29Author
Jayawardena, MDVAG
Karunasekara, PPCR
Sirisena, YVND
Metadata
Show full item recordAbstract
Freezing of Gait (FoG) is a common incapacitating complication in Parkinson’s
patients, which will temporarily hinder the forward progression and will prevent
them from re-initiating their normal gait. This can lead to potentially fatal falls and
severely affect the quality of life of the patient. Due to characteristic changes in their
gait, FoG can be identified by using wearable sensors such as pressure sensors,
Inertial Measurement Units (IMU), and Electroencephalogram (EEG) electrodes.
Classification models that run on machine learning algorithms have been frequently
used. Prediction of FoG would be highly useful for the patients since this identifies
the changes in their gait preceding the event and the patient can be notified. This
will allow them to overcome FoG. This systematic review identifies the best sensors,
sensor placements, predictive algorithms, and the limitations of the existing
prediction systems. Out of all the methods reviewed, combinations of plantar
pressure sensors placed on the insoles and IMUs placed on the shank produced the
highest accuracies with a specificity of 91.6%. The best algorithm was identified as
Convolutional Neural Networks.
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