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The Importance of Real-World Validation of Machine Learning Systems in Wearable Exercise Biofeedback Platforms: A Case Study
Date Issued
2021-03-27
Date Available
2024-04-22T15:31:09Z
Abstract
Machine learning models are being utilized to provide wearable sensor-based exercise biofeedback to patients undertaking physical therapy. However, most systems are validated at a technical level using lab-based cross validation approaches. These results do not necessarily reflect the performance levels that patients and clinicians can expect in the real-world environment. This study aimed to conduct a thorough evaluation of an example wearable exercise biofeedback system from laboratory testing through to clinical validation in the target setting, illustrating the importance of context when validating such systems. Each of the various components of the system were evaluated independently, and then in combination as the system is designed to be deployed. The results show a reduction in overall system accuracy between lab-based cross validation (>94%), testing on healthy participants (n = 10) in the target setting (>75%), through to test data collected from the clinical cohort (n = 11) (>59%). This study illustrates that the reliance on lab-based validation approaches may be misleading key stakeholders in the inertial sensor-based exercise biofeedback sector, makes recommendations for clinicians, developers and researchers, and discusses factors that may influence system performance at each stage of evaluation.
Sponsorship
European Commission Horizon 2020
Science Foundation Ireland
Other Sponsorship
Insight Research Centre
Type of Material
Journal Article
Publisher
MDPI
Journal
Sensors
Volume
21
Issue
7
Copyright (Published Version)
2021 the Authors
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
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Name
The Importance of Real-World Validation of Machine Learning Systems in Wearable Exercise Biofeedback Platforms- A Case Study.pdf
Size
4.33 MB
Format
Adobe PDF
Checksum (MD5)
7bbe94160d7760252f626c2e84a06902
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