Abstract
Freezing of gait (FOG) is an intermittent walking disturbance experienced by people with Parkinson’s disease (PD). Wearable FOG identification systems can improve gait and reduce the risk of falling due to FOG by detecting FOG in real-time and providing a cue to reduce freeze duration. However, FOG prediction and prevention is desirable. Datasets used to train machine learning models often generate ground truth FOG labels based on visual observation of specific lower limb movements (event-based definition) or an overall inability to walk effectively (period of gait disruption based definition). FOG definition ambiguity may affect model performance, especially with respect to multiple FOG in rapid succession. This research examined whether merging multiple freezes that occurred in rapid succession could improve FOG detection and prediction model performance. Plantar pressure and lower limb acceleration data were used to extract a feature set and train decision tree ensembles. FOG was labeled using an event-based definition. Additional datasets were then produced by merging FOG that occurred in rapid succession. A merging threshold was introduced where FOG that were separated by less than the merging threshold were merged into one episode. FOG detection and prediction models were trained for merging thresholds of 0, 1, 2, and 3 s. Merging slightly improved FOG detection model performance; however, for the prediction model, merging resulted in slightly later FOG identification and lower precision. FOG prediction models may benefit from using event-based FOG definitions and avoiding merging multiple FOG in rapid succession.
Highlights
Freezing of gait (FOG) is a walking disturbance experienced by approximately 68% of individuals with advanced Parkinson’s disease (PD) [1, 2]
For the FOG detection model (Table 6), the mean percentage of correctly identified FOG episodes increased from 91.3% for 0 s merging threshold to 93.3% for 2 s merging threshold
For the prediction model (Table 7), the mean percentage of correctly identified FOG episodes increased from 94.0% (0 s threshold) to 95.9% (3 s threshold)
Summary
Freezing of gait (FOG) is a walking disturbance experienced by approximately 68% of individuals with advanced Parkinson’s disease (PD) [1, 2]. FOG is a sudden inability to walk, usually. Grouping freezing of gait episodes: Effect on detection and prediction. Https://uwaterloo.ca/artificial-intelligenceinstitute/ (JK, JN, EL); Network for Aging Research, University of Waterloo, https://uwaterloo.ca/ network-for-aging-research/ (JK, SP, EL); Natural Sciences and Engineering Research Council of Canada (NSERC), https://www.nserc-crsng.gc.ca/ index_eng.asp (JK, SP, JN, EL); Ontario Ministry of Colleges and Universities, https://www.ontario.ca/ page/ministry-colleges-universities (SP); University of Waterloo, https://uwaterloo.ca/ (SP). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript
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