Using Artificial Intelligence-Enhanced Sensing and Wearable Technology in Sports Medicine and Performance Optimisation
Abstract
:1. Introduction
2. Methods
2.1. Literature Search
2.2. Selection and Quality Assessment of Studies
3. Before the Event: Prediction of Athlete’s Injury Risk
4. Before and during the Event: Optimisation of Athletic Performance
5. After the Event: AI-Based Wearable Devices as Diagnostic Systems
6. After the Event: An Opportunity to Improve Patient Experience
7. Challenges and Areas of Future Work
8. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Author | Year | Country | Design | Sample Size | Sex (% of Males) | Age | Sport/Activity | Outcome Measures | Sensor | Conclusion |
---|---|---|---|---|---|---|---|---|---|---|
Skazalski et al. [9] | 2018 | Qatar | Comparing IMU data with visual observation of jumps | 14 | 100 | Not Specified | Volleyball | 1. Jump Count recorded by IMU device, compared with visual observation 2. Jump height recorded by IMU device and compared with visual observation | Vert Classic (Model #JEM) with Vert Coach Application (version 2.0.6) | Vert device demonstrates excellent accuracy counting volleyball-specific jumps. Vert Device can be used to monitor athlete jump intensity |
Chen et al. [10] | 2018 | Taiwan | Using a Wearable heat-stroke-detection device (WHDD) to monitor a runner’s physiological information | 1 | 100 | 35 | Running | 1. Galvanic skin response. 2. Heart rate. 3. Body temperature. 4. Ambient temperature. 5. Ambient humidity. 6. Predicted risk of heat stroke. Above measures all recorded during a predertemined running programme | Custom WHDD with GSR, MLX90614 and SHT75 sensors. | WHDD detected the trend in a runner’s physiologcal information in advance of exercise intensity. The WHDD could specifically prevent the occurrence of heat stroke. |
Lewis [11] | 2018 | USA | Cross sectional study | 627 | 100 | Not specified | Basketball | 1. Injury events. 2. Player fatigue. 3. Performance load (total rebounds and field goal attempts). | Random-effects, multi-level logistic regression model | Higher levels of fatigue and workload led to greater injury risk. With these constant factors, a higher injury risk was associated with greater NBA experience and below average height. |
Karnuta et al. [12] | 2020 | USA | Descriptive Epidemiology Study | 139,783 | 100 | Not Specified | Baseball | Predictions for future injury risk based on logistic regression and machine learning algorithms. | Logistic regression, random forest, k-nearest neighbours, Naïve Bayers, XGBoost, Top 3 Ensemble. Models were built usnig scikit-learn Python library (Version 0.20.3) and XGBoost (Version 1.0.2) | Advanced machine learning models outperformed logistic regression and demonstrated fair capability of predicting whether a publicy reportable injury was likely to occur. |
Novatchkov and Baca [13] | 2013 | Austria | Descriptive Study | 15 | 53 | 24.6 | Weight Training | Force displacement parameters measured from a weght leg press machine | Weight leg press machine equipped wht a load cell (PW10A or PW12C3, Hottinger Baldwin) and a rotary encoder (DP18, Altmann). Modelling of signals by multilayer pattern recognition networks based on the Levenberg-Marquardt algorthm. | Computer based feedback frameworks can be used for analysis of performance during workouts. |
Ghasemzadeh et al. [14] | 2009 | USA | Quantitative analysis of golf swings using BSN | 4 | 75 | 20–35 | Golf | Degrees of wrist rotation during segments of a golf swing | TelosB from Xbow | Body Sensor Networks can provide information on the quality of a golf swing with respect to the angle of the wrist rotation |
Bloomfield et al. [15] | 2019 | Canada | Cross sectional study | 68 | 34 | 65.6 ± 9.1 | Timed-up-and-go tests | Post-operative recovery | custom wearable system | Wearable sensors during instrument functional tests during clinical visits and using machine learning to parse complex patterns can reveal clinically relevant parameters |
Coutts et al. [16] | 2020 | UK | Prospective cohort study | 100 in trial 1; 799 Iin trial 2 | 38; 224 | 18–38; 18–69 | Cycling | Heart rate; Perceived Stress Scale; Depression Anxiety Stress Scale; State and Trait Anxiety | Biobeam band; Deep Neural Networks (LSTMs) | Classification accuracy of up to 85% with the current AI model and biosensor. |
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Chidambaram, S.; Maheswaran, Y.; Patel, K.; Sounderajah, V.; Hashimoto, D.A.; Seastedt, K.P.; McGregor, A.H.; Markar, S.R.; Darzi, A. Using Artificial Intelligence-Enhanced Sensing and Wearable Technology in Sports Medicine and Performance Optimisation. Sensors 2022, 22, 6920. https://doi.org/10.3390/s22186920
Chidambaram S, Maheswaran Y, Patel K, Sounderajah V, Hashimoto DA, Seastedt KP, McGregor AH, Markar SR, Darzi A. Using Artificial Intelligence-Enhanced Sensing and Wearable Technology in Sports Medicine and Performance Optimisation. Sensors. 2022; 22(18):6920. https://doi.org/10.3390/s22186920
Chicago/Turabian StyleChidambaram, Swathikan, Yathukulan Maheswaran, Kian Patel, Viknesh Sounderajah, Daniel A. Hashimoto, Kenneth Patrick Seastedt, Alison H. McGregor, Sheraz R. Markar, and Ara Darzi. 2022. "Using Artificial Intelligence-Enhanced Sensing and Wearable Technology in Sports Medicine and Performance Optimisation" Sensors 22, no. 18: 6920. https://doi.org/10.3390/s22186920
APA StyleChidambaram, S., Maheswaran, Y., Patel, K., Sounderajah, V., Hashimoto, D. A., Seastedt, K. P., McGregor, A. H., Markar, S. R., & Darzi, A. (2022). Using Artificial Intelligence-Enhanced Sensing and Wearable Technology in Sports Medicine and Performance Optimisation. Sensors, 22(18), 6920. https://doi.org/10.3390/s22186920