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A machine learning contest enhances automated freezing of gait detection and reveals time-of-day effects

Medicine and Health

A machine learning contest enhances automated freezing of gait detection and reveals time-of-day effects

A. Salomon, E. Gazit, et al.

This groundbreaking study organized a machine-learning contest to tackle the challenging freezing of gait (FOG) in Parkinson's disease, attracting 1,379 teams and resulting in 24,862 solutions. The winning algorithms not only exhibited remarkable accuracy, but also unveiled new insights into FOG occurrences during daily life. Conducted by a diverse team of experts including Amit Salomon and Leslie C. Kirsch, this research showcases the transformative potential of machine learning in addressing critical medical issues.

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Abstract
Freezing of gait (FOG) is a debilitating problem that markedly impairs the mobility and independence of 38–65% of people with Parkinson’s disease. During a FOG episode, patients report that their feet are suddenly and inexplicably “glued” to the floor. The lack of a widely applicable, objective FOG detection method obstructs research and treatment. To address this problem, we organized a 3-month machine-learning contest, inviting experts from around the world to develop wearable sensor-based FOG detection algorithms. 1,379 teams from 83 countries submitted 24,862 solutions. The winning solutions demonstrated high accuracy, high specificity, and good precision in FOG detection, with strong correlations to gold-standard references. When applied to continuous 24/7 data, the solutions revealed previously unobserved patterns in daily living FOG occurrences. This successful endeavor underscores the potential of machine learning contests to rapidly engage AI experts in addressing critical medical challenges and provides a promising means for objective FOG quantification.
Publisher
Nature Communications
Published On
Jun 06, 2024
Authors
Amit Salomon, Eran Gazit, Pieter Ginis, Baurzhan Urazalinov, Hirokazu Takoi, Taiki Yamaguchi, Shuhei Goda, David Lander, Julien Lacombe, Aditya Kumar Sinha, Alice Nieuwboer, Leslie C. Kirsch, Ryan Holbrook, Brad Manor, Jeffrey M. Hausdorff
Tags
Freezing of gait
Parkinson's disease
machine learning
wearable sensors
healthcare
FOG detection
medical challenges
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