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Predicting ground contact events for a continuum of gait types: An application of targeted machine learning using principal component analysis. | LitMetric

Predicting ground contact events for a continuum of gait types: An application of targeted machine learning using principal component analysis.

Gait Posture

Running Injury Clinic, Calgary, AB, Canada T2V 5A8; Faculty of Kinesiology, University of Calgary, Calgary, AB, Canada T2N 1N4; Faculty of Nursing, University of Calgary, Calgary, AB, Canada T2N 1N4.

Published: May 2016

An ongoing challenge in the application of gait analysis to clinical settings is the standardized detection of temporal events, with unobtrusive and cost-effective equipment, for a wide range of gait types. The purpose of the current study was to investigate a targeted machine learning approach for the prediction of timing for foot strike (or initial contact) and toe-off, using only kinematics for walking, forefoot running, and heel-toe running. Data were categorized by gait type and split into a training set (∼30%) and a validation set (∼70%). A principal component analysis was performed, and separate linear models were trained and validated for foot strike and toe-off, using ground reaction force data as a gold-standard for event timing. Results indicate the model predicted both foot strike and toe-off timing to within 20ms of the gold-standard for more than 95% of cases in walking and running gaits. The machine learning approach continues to provide robust timing predictions for clinical use, and may offer a flexible methodology to handle new events and gait types.

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Source
http://dx.doi.org/10.1016/j.gaitpost.2016.02.021DOI Listing

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