Estimating Biomechanical Time-Series with Wearable Sensors: A Systematic Review of Machine Learning Techniques

Wearable sensors have the potential to enable comprehensive patient characterization and optimized clinical intervention. Critical to realizing this vision is accurate estimation of biomechanical time-series in daily-life, including joint, segment, and muscle kinetics and kinematics, from wearable s...

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Veröffentlicht in:Sensors (Basel, Switzerland) Switzerland), 2019-11, Vol.19 (23), p.5227
Hauptverfasser: Gurchiek, Reed D, Cheney, Nick, McGinnis, Ryan S
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creator Gurchiek, Reed D
Cheney, Nick
McGinnis, Ryan S
description Wearable sensors have the potential to enable comprehensive patient characterization and optimized clinical intervention. Critical to realizing this vision is accurate estimation of biomechanical time-series in daily-life, including joint, segment, and muscle kinetics and kinematics, from wearable sensor data. The use of physical models for estimation of these quantities often requires many wearable devices making practical implementation more difficult. However, regression techniques may provide a viable alternative by allowing the use of a reduced number of sensors for estimating biomechanical time-series. Herein, we review 46 articles that used regression algorithms to estimate joint, segment, and muscle kinematics and kinetics. We present a high-level comparison of the many different techniques identified and discuss the implications of our findings concerning practical implementation and further improving estimation accuracy. In particular, we found that several studies report the incorporation of domain knowledge often yielded superior performance. Further, most models were trained on small datasets in which case nonparametric regression often performed best. No models were open-sourced, and most were subject-specific and not validated on impaired populations. Future research should focus on developing open-source algorithms using complementary physics-based and machine learning techniques that are validated in clinically impaired populations. This approach may further improve estimation performance and reduce barriers to clinical adoption.
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subjects Algorithms
Biofeedback
Biomarkers
Biomechanics
Clinical decision making
Electromyography
Estimates
Humans
Joints (anatomy)
Kinematics
Kinetics
Machine Learning
Muscles
Neural networks
Physics
Populations
Review
Segments
Sensors
Systematic review
Wearable Electronic Devices
Wearable technology
title Estimating Biomechanical Time-Series with Wearable Sensors: A Systematic Review of Machine Learning Techniques
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