Wearable and Portable Devices for Acquisition of Cardiac Signals while Practicing Sport: A Scoping Review
Abstract
:1. Introduction
2. Materials and Methods
2.1. Literature Search Strategy
- athlet*, sport*;
- wearable, portable, sensor*, electronic*, device*;
- heart rate, electrocardio*.
2.2. Selection of Studies
- studies focusing on commercially available wearable or portable devices able to acquire cardiac signals, namely, ECG and HR;
- studies proposing wearable and portable devices used during sport practice;
- studies considering populations of athletes, recruited without limits on sport level, from recreational to elite athletes.
2.3. Data Charting and Synthesis
3. Results
4. Discussion
Ref. | Validated Device | Reference Device | Acquired Signal | Sport Activity | Population | Validation Results |
---|---|---|---|---|---|---|
[21] | Polar Vantage V2 | Polar H10 chest strap | HR | Swimming | 10 healthy athletic subjects SEX: - AGE: 17.0 ± 3.0 years BMI: 19.80 ± 1.21 kg/m2 | Rest dry condition: μ = −5 bpm; 2σ = ±19 bpm; r = 0.32; CI95% = [–24, 13] bpm; MAPE = 7.32% Active dry condition: μ = −4 bpm; 2σ = ±24 bpm; r = 0.83; CI95% = [−28, 19] bpm; MAPE = 8.29% Rest in water: μ = −4 bpm; 2σ = ±28 bpm; r = 0.62; CI95% = [−32, 24] bpm; MAPE = 10.37% Swim in water: μ = −18 bpm; 2σ = ±68 bpm; r = 0.2; CI95% = [−84, 49] bpm; MAPE = 29.78% |
Garmin Venu Sq | Rest dry condition: μ = −1 bpm, 2σ = ±16 bpm; r = 0.65; CI95% = [−17, 15] bpm; MAPE = 4.83% Activity dry condition: μ = −1 bpm; 2σ = ±12 bpm; r = 0.32; CI95% = [−52, 28] bpm; MAPE = 17.32% Rest in water: μ = −12 bpm; 2σ = ±41 bpm; r = 0.32; CI95% = [−52, 28] bpm; MAPE = 17.32% Swim in water: μ = −57 bpm; 2σ = ±68 bpm; r = 0.13 CI95% = [−124, 10] bpm; MAPE = 58.94% | |||||
[22] | Kardia 6L AliveCor | 12-lead ECG | ECG | Cricket | 30 healthy athletes SEX: 17/13 AGE: mean 18.9 years WEIGHT: - HEIGHT: - BMI: - | Mean difference HR = 3 ± 9 bpm Mean difference QT = −18 ± 14 ms Mean difference QTc = −10 ± 18 ms Mean difference QRS = −3 ± 7 ms Mean difference PR = −6 ± 8 ms |
[23] | Polar Ignite sport watch | Polar H10 chest strap | HR | Specific training program | 11 recreational athletes SEX: 6/5 AGE: 21.73 ± 1.49 years BMI: 23.41 ± 2.99 kg/m2 | r = 0.714 ICC = 0.817 |
[24] | Polar H7 chest-strap | 3-lead ECG | HR | Running | 50 healthy athletic subjects SEX: 34/16 AGE: 29.5 ± 9.3 years BMI: 22.8 ± 2.4 kg/m2 | rc = 98 |
Apple Watch III | rc = 98 | |||||
Fitbit Ionic | rc = 89 | |||||
Garmin Vivosmart HR | rc = 89 | |||||
TomTom Spark 3 | rc = 89 | |||||
[25] | Garmin Fenix 5 | Polar H7 chest strap | HR | Trail running | 21 healthy subjects SEX: 11/10 AGE: 31.0 ± 11.0 years WEIGHT: 75.6 ± 12.9 kg HEIGHT: 173.0 ± 6.9 cm | MAPE = 13%; LOA = [−32, 162]; rc = 0.32 |
Jabra Elite Sport Earbuds | MAPE = 23%; LOA = [−464, 503]; rc = 0.38 | |||||
Motiv Ring | MAPE = 16%; LOA = [−52, 96]; rc = 0.29 | |||||
Scosche Rhythm+ | MAPE = 6%; LOA = [−114, 120]; rc = 0.79 | |||||
Suunto Spartan Sport watch | MAPE = 2%; LOA = [−62, 61]; rc = 0.96 | |||||
[26] | Polar H10 chest strap | 12-lead ECG | HR | Cycling incremental exercise | 25 recreational athletes SEX: 14/11 AGE: male 40.0 ± 14.0 years female 34.0 ± 10.0 years WEIGHT: male 82.2 ± 4.8 kg female 67.8 ± 9.5 kg HEIGHT: male 178.1 ± 9.0 cm female 169.1 ± 4.3 cm | Rest pre-exercise: r = 0.95; rc = 0.95; ICC3,1 = 0.95; Rest post-exercise: r = 0.86; rc = 0.84; ICC3,1 = 0.85 Incremental exercise: r > 0.93; rc > 0.93; ICC3,1 > 0.93 |
[27] | Polar H7 chest strap | 12-lead ECG | HR | Aerobic exercise | 50 healthy subjects SEX: 23/27 AGE: 38.0 ± 12.0 years BMI: 25.0 ± 3.5 kg/m2 | rc = 0.996 |
Scosche Rhythm+ | rc = 0.75 | |||||
Apple Watch I | rc = 0.92 | |||||
Fitbit Blaze | rc = 0.67 | |||||
Garmin Forerunner 235 | rc = 0.81 | |||||
TomTom Spark Cardio | rc = 0.83 | |||||
[28] | Polar OH1 | Polar H10 chest strap | HR | Light, moderate, vigorous, and sprint-based exercise | 20 healthy subjects SEX: 11/9 AGE: 40.0 ± 10.0 years WEIGHT: 71.6 ± 11.0 kg HEIGHT: 173.0 ± 10.0 cm | Mean bias = −1 bpm; LOA = [−20, 19] bpm; MAPE = 0.4%; r = 0.957; CI95% = [0.956, 0.958] bpm |
Fitbit Charge 3 | Mean bias = −7 bpm; LOA = [−46, 33] bpm; MAPE = −4%; r = 0.807; CI95% = [0.804, 0.811] bpm | |||||
[29] | Polar Vantage M | 3 leads plus V5 ECG | HR | Treadmill exercises (Bruce protocol) | 29 healthy subjects SEX: 16/13 AGE: male 26.25 ± 3.17 years female 26.00 ± 3.85 years BMI: male 25.54 ± 2.54 kg/m2 female 22.50 ± 2.07 kg/m2 | Stage 0: Test–retest reliability = 0.42; CI95% = [−0.27, 0.73] bpm Stage 1: Test–retest reliability = 0.78; CI95% = [0.54, 0.90] bpm Stage 2: Test–retest reliability = 0.78; CI95% = [0.54, 0.90] bpm Stage 3: Test–retest reliability = 0.68; CI95% = [0.32, 0.85] bpm Stage 4: Test–retest reliability = 0.58; CI95% = [0.14, 0.80] bpm Stage 5: Test–retest reliability = 0.92; % = [0.79, 0.97] bpm |
[30] | PulseOn | Polar V800 HR monitor | HR | Running | 24 healthy subjects SEX: 13/11 AGE: 36.2 ± 8.2 years BMI: 22.7 ± 1.9 kg/m2 | MAPE = 1.9% |
[31] | Adidas Smart sports bra | Polar H7 chest strap | HR | Walking Running | 24 healthy subjects SEX: 0/24 AGE: 22.2 ± 5.8 years WEIGHT: 71.2 ± 14.4 kg HEIGHT: 174.6 ± 9.9 cm | Valid at rest ICC = 0.79; MAPE = 4.5%; LoA = [−8, 8] |
Sensoria fitness sports bra + HRM | Valid at rest and walking ICC = 0.96; MAPE = 1.9%; LoA = [−19, 19] | |||||
Berlei sports bra | Valid at rest, walking and running ICC = 0.99; MAPE = 0.66%; LoA = [−15, 12] |
Ref. | Device | Acquired Signal | Sport Activity | Population | Aim of Device Application |
---|---|---|---|---|---|
[32] | Polar S810i | HR | Speed skating marathon | 1 highly trained athlete SEX: 1/0 AGE: 20.0 years WEIGHT: 73.4 kg HEIGHT: 178.0 cm | Monitoring HR (along with oxygen uptake and speed) to quantify and describe the exercise intensity |
[33] | Polar S810 | HR | Badminton | 7 professional players SEX: 3/4 AGE: 16.9 ± 2.1 years WEIGHT: 62.8 ± 9.2 kg HEIGHT: 171.0 ± 9.0 cm | To compare cardiorespiratory and metabolic responses during on-court and simulated badminton rally at different intensities |
[34] | Polar Team Pro sensor | HR | Basketball | 10 athletes SEX: 0/10 AGE: 19.8 ± 1.3 years WEIGHT: 78. 1 ± 5.8 kg HEIGHT: 179.1 ± 6.0 cm | Assess HR responses and time spent in 5 different HR zones to monitor NCAA division I women’s basketball athletes throughout each 4-quarter game |
[35] | Polar Team Pro sensor | HR | Basketball | 13 athletes SEX: 0/13 AGE: 19.6 ± 1.3 years WEIGHT: 77.7 ± 5.6 kg HEIGHT: 179.4 ± 5.6 cm | Monitoring HR and HR zones (along with VO2max, body weight training load) to assess factors that contribute to countermovement jump performance |
[36] | Polar Team Pro sensor | HR | Football | 20 players SEX: - AGE: <19 years WEIGHT: - HEIGHT: - BMI: - | To provide an understanding of how Polar Team Pro is being implemented in competitive football training process, in terms of evaluation and monitoring the official games’ parameters |
[37] | Polar Team Pro sensor | HR | Soccer, Basketball, Volleyball | 64 collegiate athletes SEX: 64/0 AGE: 20.7 ± 1.9 years WEIGHT: 62.6 ± 6.1 kg HEIGHT: 171.3 ± 6.2 cm | To quantify the physical and physiological response during three widely practiced leisure-time sports using the GPS and HR monitors |
[38] | Polar Team Pro sensor | HR | Basketball | 11 athletes SEX: 0/11 AGE: 19.6 ± 1.4 years WEIGHT: 78.5 ± 5.7 kg HEIGHT: 179.7 ± 6.0 cm | Measure HR and its peaks to assess caloric expenditure throughout 31 games |
[39] | Polar H10 chest strap | HR | Running, Basketball, Badminton | 14 recreational athletes SEX: 14/0 AGE: 24.9 ± 2.4 years WEIGHT: 74.6 ± 6.9 kg HEIGHT: 177.0 ± 4.0 cm | To quantify the strength of the relationship between the percentage of HR reserve and two acceleration-based intensity metrics under three intensity conditions |
[40] | Polar chest belt * | HR | Running in hilly terrain | 17 elite athletes SEX: 13/4 AGE: male 29.0 ± 4.0 years female 30.0 ± 8.0 years BMI: male 71.9 ± 5.6 kg/m2 female 59.9 ± 4.8 kg/m2 | To investigate cardiorespiratory and metabolic response. To compare whether HR adequately reflects the exercise intensity or whether the tissue saturation index could provide a more accurate measure |
[41] | Polar H10 chest strap | HR | Walking, Running | 120 healthy subjects 30 sedentary subjects SEX: 12/18 AGE: 21.9 ± 1.9 years BMI: 23.7 ± 3.5 kg/m2 30 Exercise habit group SEX: 14/16 AGE: 21.7 ± 1.6 years BMI: 23.1 ± 3.3 kg/m2 30 Non-endurance group SEX: 17/13 AGE: 21.1 ± 1.7 years BMI: 23.3 ± 4.7 kg/m2 30 Endurance group SEX: 19/11 AGE: 20.9 ± 1.7 years BMI: 20.8 ± 2.1 kg/m2 | To include the HR reserve as a compensatory parameter for physical intensity |
[42] | BioHarness 3.0 Zephyr | ECG HR | Running, Soccer, Cycling | 20 healthy subjects 10 sedentary subjects SEX: - AGE: 26 [25–31] years WEIGHT: 73 [70–78] kg HEIGHT: 179 [167–183] cm 10 amateur athletes SEX: - AGE: 28 [24–36] years WEIGHT: 69 [57–75] kg HEIGHT: 173 [165–185] cm | To develop and test a low-cost, large-scale procedure for HR and HRV monitoring from signals obtained using comfortable wearable sensors, finalized to evaluate the health status of an athlete besides his/her performance level |
[43] | BioHarness 3.0 Zephyr | ECG | Basket, Cycling, Fitness, Jogging, Middle-distance running, Tennis, CrossFit | 51 athletes SEX: 38/13 AGE: 29.0 ± 11.0 years WEIGHT: 68.0 ± 10.0 kg HEIGHT: 175.0 ± 6.0 cm | To provide normal reference values of HR and electrocardiographic features for the pre-exercise phase to support large-scale prevention programs fighting sport-related sudden cardiac death |
[44] | Hexoskin shirt | HR | Badminton | 1 elite badminton player SEX: - AGE: - WEIGHT: - HEIGHT: - BMI: - | To investigate of the relationship between movement accuracy and HR |
[45] | Kardia 6L AliveCor | ECG | Cricket, Running | 6 amateur and elite athletes SEX: 6/0 AGE: 28 [28–38] years WEIGHT: - HEIGHT: - BMI: - | To highlights the use of the device in aiding the diagnosis of arrhythmias in the setting of exercise-related symptoms in athletes through smartphone ECG |
Ref. | Device | Acquired Signal | Sport Activity | Population | Aim of Device Application |
---|---|---|---|---|---|
[46] | Polar H10 chest strap | ECG, HR | Running | 31 athletes SEX: 22/9 AGE: 34.0 ± 10.0 years WEIGHT: 70.0 ± 12.0 kg HEIGHT: 170.0 ± 9.0 cm | To assess the performance of breathing rate estimation algorithm using HR acquired with a chest belt during physical activities |
[47] | Polar T31TM Coded band | HR | Swimming | 10 federated athletes SEX: - AGE: [15,16,17] years WEIGHT: - HEIGHT: - BMI: - | To propose a data analytics system (including pre-processing of raw signals, feature representation, online recognition of the swimming style and turns, and post-analysis of the performance for coaching decision support) for swimmer performance |
[48] | Polar T31TM Coded band | HR | Swimming | 10 federated athletes SEX: - AGE: [15,16,17] years WEIGHT: - HEIGHT: - BMI: - | To propose a system that allows the technical staff to monitor and analyze the swimmer by integrating inertial data and bio-signal in real time |
[49] | BioHarness 3.0 Zephyr | ECG, HR | Aerial silks, Running, Tennis | 10 athletes SEX: 3/7 AGE: 27.0 ± 11.0 years WEIGHT: - HEIGHT: - | To propose an application, CaRiSMA 1.0, analyzing the ECG and HR acquired during a training session and provides intuitive graphical outputs on resting QTc and on exercise HR |
[50] | BioHarness 3.0 Zephyr | ECG and automatically computes HR series | Aerial silks, Basketball, CrossFit, Fitness, Jogging, Middle-distance running, Running, Soccer, Tennis, Zumba | 81 athletes SEX: 53/28 AGE: 30.0 ± 13.0 years WEIGHT: 71.0 ± 21.0 kg HEIGHT: 170.0 ± 30.0 cm | To provide a database of 126 cardiorespiratory data (demographic info—cardiorespiratory signals and training notes) acquired from 81 subjects while practicing 10 different sports |
[51] | BioHarness 3.0 Zephyr | HR | Soccer | 21 players SEX: 0/21 AGE: - WEIGHT: - HEIGHT: - BMI: - | To present a predictive analytics framework for analyzing and predicting soccer players’ performance data (HR and speed parameters) |
[52] | BioHarness 3.0 Zephyr | HR | Middle-distance running, Jogging | 17 athletes SEX: 15/2 AGE: 35.0 ± 14.0 years WEIGHT: - HEIGHT: - BMI: - | To develop an algorithm for automatic detection of training phases in HR series to boost signal processing for athletic cardiovascular monitoring with wearable devices |
[53] | Samsung Galaxy Watch 3 | HR | High intensity workout | 98 athletes SEX: 47/51 AGE: 33.00 ± 8.46 years BMI: 22.78 ± 2.92 kg/m2 | To develop an ultra-lightweight framework for a precise real-time HR monitoring during the high intensity physical exercises |
[54] | Garmin Forerunner 305 | HR | Aerobic activity | 8 athletes SEX: 7/1 AGE: 27.88 ± 2.17 years BMI: 23.68 ± 4.13 kg/m2 | To present a system able to estimate the intensity of activities and to identify physical activity and posture |
[55] | Hexoskin shirt | HR | Climbing | 1 athlete SEX: - AGE: - WEIGHT: - HEIGHT: - BMI: - | To examine time-resolved sensor-based measurements of multiple biometrics at different micro locations along a climbing route |
Device | Acquired Signal | Sensor Tech | Wear Location | Target User | Real time Output | Other integrated Sensor | Feedback | Associated App | Clinical Approval |
---|---|---|---|---|---|---|---|---|---|
Apple Watch I | HR | Optical | wrist | athlete | HR on watch | Accelerometer Gyroscope | Irregular cardiac rhythm notification | Apple watch app Health app | NO |
Apple Watch III | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer Gyroscope Barometric altimeter | Irregular cardiac rhythm notification | Apple watch app Health app | NO |
BioHarness 3.0 Zephyr | ECG HR | Capacitive electrode | chest | athlete | - | 3-axis accelerometer Breathing sensor Thermistor | Subject status indication | Bluetooth BioHerness test app | NO |
Fitbit Blaze | HR | Optical | wrist | athlete | HR on watch | MEMS 3-axis accelerometer Barometric altimeter | HR zones | Fitbit app | NO |
Fitbit Charge 3 | HR | Optical | wrist | athlete | HR on watch | MEMS 3-axis accelerometer Altimeter | HR zones | Fitbit app | NO |
Fitbit Ionic | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS MEMS 3-axis accelerometer Barometric altimeter | HR zones | Fitbit app | NO |
Garmin Fenix 5 | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer Gyroscope Barometric altimeter Compass Thermometer | HR zones and HR alerts | Garmin Connect Mobile app | NO |
Garmin Forerunner 235 | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS Accelerometer Thermometer | HR zones and HR alerts | Garmin Connect Mobile app | NO |
Garmin Forerunner 305 | HR | Capacitive electrode | wrist chest | athlete | HR on watch | GPS | HR zones and HR alerts | Garmin Express on computers | NO |
Garmin Venu Sq | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer Compass Thermometer Pulse OX blood oxygen saturation monitor | HR zones and HR alerts | Garmin Connect Mobile app | NO |
Garmin Vivosmart HR | HR | Optical | wrist | athlete | HR on watch | Accelerometer Barometric altimeter | HR zones and HR alerts | Garmin Connect Mobile app | NO |
Hexoskin shirt | 1-lead ECG HR | Capacitive electrode | chest | athlete | HR and ECG on smartphone | RIP 3-Axis accelerometer | HR zone, HRV, HR maximum and HR at rest, QRS events | Hexoskin app | NO |
Jabra Elite Sport Earbuds | HR | Optical | Ear | athlete | HR on smartphone | - | Cardio performance | Jabra Sport Life app | NO |
Adidas Smart sports bra | HR | HR sensing fabric | chest | athlete | - | - | - | - | NO |
PulseOn | ECG HR | Capacitive electrode Optical | wrist | doctor | - | - | Notification for irregular rhythm | PulseOn app | NO |
Scosche Rhythm+ | HR | Optical | Arm | athlete | HR on the receiving device | - | - | Compatible with >200 fitness apps | NO |
Suunto Spartan Sport watch | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS Accelerometer Altimeter | HR zones | Suunto app | NO |
Kardia AliveCor | ECG HR | Dry electrode | - | athlete doctor | HR and ECG on smartphone | - | Sinus rhythm, AF, bradycardia, tachycardia | Kardia app | FDA-cleared |
Kardia 6L AliveCor | ECG HR | Dry electrode | - | athlete doctor | HR and ECG on smartphone | - | Sinus rhythm, AF, bradycardia, tachycardia | Kardia app | FDA-cleared |
Motiv Ring | HR | Optical | finger | athlete | HR on smartphone | 3-axis accelerometer | - | Motiv 24/7 Smart Ring app | NO |
Polar H10 chest strap | HR | Capacitive electrode | chest | athlete | HR on the receiving device | - | HR zones and HR alerts | Polar Beat app Polar Flow app | NO |
Polar H7 chest strap | HR | Capacitive electrode | chest | athlete | HR on the receiving device | - | HR zones and HR alerts | Polar Beat app Polar Flow app | NO |
Polar OH1 | HR | Optical | forearm | athlete | HR on the receiving device | - | HR zones and HR alerts | Polar Beat app Polar Flow app | NO |
Polar S810 | HR | Capacitive electrode | wrist + chest | athlete | HR on watch | - | HR zones and HR alerts | - | NO |
Polar S810i | HR | Capacitive electrode | wrist + chest | athlete | HR on watch | - | HR zones and HR alerts | - | NO |
Polar T31TM Coded band | HR | Capacitive electrode | chest | athlete | HR on the receiving device | - | HR zones and HR alerts | Polar Beat app Polar Flow app | NO |
Polar Pro sensor | HR | Capacitive electrode | chest | athlete coach | HR on the receiving device | GPS Accelerometer Gyroscope Compass | HR zones and HR alerts | PC software PDA software (for online monitoring) | NO |
Polar V800 | HR | Capacitive electrode | wrist + chest | athlete | HR on watch | GPS Accelerometer | HR zones and HR alerts | Polar Flow app | NO |
Polar Vantage M | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer | HR zones | Polar Flow app | NO |
Polar Vantage V2 | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer Barometer Compass | HR zones | Polar Flow app | NO |
Polar Ignite sport watch | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer | HR zones | Polar Flow app | NO |
Samsung Galaxy Watch 3 | HR | Optical | wrist | athlete | HR on watch | GPS/GLONASS/Galileo Accelerometer Gyroscope Barometer | Normal and irregular sinus rhythm | Samsung Health Monitor app | NO |
Berlei sports bra | HR | Capacitive electrode | chest | athlete | - | - | - | - | NO |
Sensoria fitness sports bra + HRM | HR | Capacitive electrode | chest | athlete | HR on smartphone | - | - | Sensoria HRM Sensoria Fitness mobile app | NO |
TomTom Spark 3 | HR | Optical | wrist | athlete | HR on watch | GPS Accelerometer Barometer Compass | HR zones | TomTom Sports app | NO |
TomTom Spark Cardio | HR | Optical | wrist | athlete | HR on watch | GPS Accelerometer Compass | HR zones | TomTom Sports app | NO |
4.1. Validation Studies
4.2. Clinical Studies
4.3. Development Studies
4.4. Related Works
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Romagnoli, S.; Ripanti, F.; Morettini, M.; Burattini, L.; Sbrollini, A. Wearable and Portable Devices for Acquisition of Cardiac Signals while Practicing Sport: A Scoping Review. Sensors 2023, 23, 3350. https://doi.org/10.3390/s23063350
Romagnoli S, Ripanti F, Morettini M, Burattini L, Sbrollini A. Wearable and Portable Devices for Acquisition of Cardiac Signals while Practicing Sport: A Scoping Review. Sensors. 2023; 23(6):3350. https://doi.org/10.3390/s23063350
Chicago/Turabian StyleRomagnoli, Sofia, Francesca Ripanti, Micaela Morettini, Laura Burattini, and Agnese Sbrollini. 2023. "Wearable and Portable Devices for Acquisition of Cardiac Signals while Practicing Sport: A Scoping Review" Sensors 23, no. 6: 3350. https://doi.org/10.3390/s23063350
APA StyleRomagnoli, S., Ripanti, F., Morettini, M., Burattini, L., & Sbrollini, A. (2023). Wearable and Portable Devices for Acquisition of Cardiac Signals while Practicing Sport: A Scoping Review. Sensors, 23(6), 3350. https://doi.org/10.3390/s23063350