Researchers at Tel Aviv University led an international machine learning contest to tackle a significant challenge in Parkinson’s disease. The goal was to develop a machine learning model that could support a wearable sensor for continuous monitoring and quantification of Freezing of Gait (FOG) episodes in patients with Parkinson’s.
FOG is a debilitating phenomenon that affects a large percentage of individuals with Parkinson’s disease, leading to mobility issues, falls, and injuries. Traditional methods of diagnosing and tracking FOG rely on self-report questionnaires, visual observation by clinicians, and video analysis, which can be time-consuming and impractical for long-term monitoring.
In this groundbreaking study, data from over 100 patients and 5,000 FOG episodes were collected and uploaded to the Kaggle platform for an international machine learning competition. Nearly 1,400 teams from 83 countries participated, submitting over 24,000 solutions. The top algorithms were incorporated into wearable sensors, showing promising results comparable to video analysis methods.
The machine learning models not only quantified FOG parameters accurately but also revealed a daily pattern in FOG frequency, potentially linked to factors like fatigue or medication effects. These findings are expected to have significant implications for clinical treatment and further research on FOG in Parkinson’s disease.
Prof. Jeff Hausdorff, the lead researcher, emphasized the potential of wearable sensors supported by machine learning models in providing continuous monitoring of FOG episodes and patients’ overall functionality. This technology could offer clinicians real-time insights into patients’ conditions, leading to prompt interventions and the development of new treatments.
The success of this international machine learning contest highlights the power of collaborative efforts in advancing medical research. By bringing together diverse teams from around the world, significant progress was made in accurately quantifying FOG data. This study sets the stage for the next phase, focusing on long-term, real-world monitoring of FOG in patients’ daily lives.