Physics-informed machine learning improves detection of head impacts
Samuel J. Raymond, Nicholas J. Cecchi, Hossein Vahid Alizadeh, Ashlyn, A. Callan, Eli Rice, Yuzhe Liu, Zhou Zhou, Michael Zeineh, David B. Camarillo

TL;DR
This paper introduces a physics-informed machine learning model that enhances head impact detection accuracy by combining real and synthetic impact data, significantly reducing manual analysis time in sports safety monitoring.
Contribution
The study presents a novel approach integrating finite element simulations with machine learning to improve impact detection in sports, outperforming existing methods.
Findings
Achieved an impact detection F1 score of 0.95.
Reported 88% negative predictive value and 87% positive predictive value.
Reduced manual video analysis time by over 12 hours.
Abstract
In this work we present a new physics-informed machine learning model that can be used to analyze kinematic data from an instrumented mouthguard and detect impacts to the head. Monitoring player impacts is vitally important to understanding and protecting from injuries like concussion. Typically, to analyze this data, a combination of video analysis and sensor data is used to ascertain the recorded events are true impacts and not false positives. In fact, due to the nature of using wearable devices in sports, false positives vastly outnumber the true positives. Yet, manual video analysis is time-consuming. This imbalance leads traditional machine learning approaches to exhibit poor performance in both detecting true positives and preventing false negatives. Here, we show that by simulating head impacts numerically using a standard Finite Element head-neck model, a large dataset of…
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