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Review

Wearable and Portable Devices for Acquisition of Cardiac Signals while Practicing Sport: A Scoping Review

Department of Information Engineering, Università Politecnica delle Marche, 60131 Ancona, Italy
*
Author to whom correspondence should be addressed.
Sensors 2023, 23(6), 3350; https://doi.org/10.3390/s23063350
Submission received: 27 February 2023 / Revised: 16 March 2023 / Accepted: 20 March 2023 / Published: 22 March 2023

Abstract

:
Wearable and portable devices capable of acquiring cardiac signals are at the frontier of the sport industry. They are becoming increasingly popular for monitoring physiological parameters while practicing sport, given the advances in miniaturized technologies, powerful data, and signal processing applications. Data and signals acquired by these devices are increasingly used to monitor athletes’ performances and thus to define risk indices for sport-related cardiac diseases, such as sudden cardiac death. This scoping review investigated commercial wearable and portable devices employed for cardiac signal monitoring during sport activity. A systematic search of the literature was conducted on PubMed, Scopus, and Web of Science. After study selection, a total of 35 studies were included in the review. The studies were categorized based on the application of wearable or portable devices in (1) validation studies, (2) clinical studies, and (3) development studies. The analysis revealed that standardized protocols for validating these technologies are necessary. Indeed, results obtained from the validation studies turned out to be heterogeneous and scarcely comparable, since the metrological characteristics reported were different. Moreover, the validation of several devices was carried out during different sport activities. Finally, results from clinical studies highlighted that wearable devices are crucial to improve athletes’ performance and to prevent adverse cardiovascular events.

1. Introduction

Over the last decade, wearable and portable devices for cardiac monitoring have become increasingly popular, as they are relatively inexpensive and user-friendly. Miniaturized technologies and powerful signal processing applications make them a noninvasive, cheap, and time-efficient tool for cardiac monitoring while playing sport outside a clinically controlled environment [1,2,3,4].
Wearable devices are designed to be worn on different body locations for noninvasive sensing of an individual’s parameters without interrupting or restricting the user’s movements. Portable devices are designed to monitor cardiac conditions more easily than traditional monitors, being small and lightweight. On a sport field, portable devices may be useful in documenting and contributing to diagnosis of exercise-induced arrhythmias [5,6].
Electrocardiography (ECG) and heart rate (HR) are the main signals used to evaluate cardiac status during sport [7]. The ECG represents cardiac electrical activity and HR is the number of times the heart beats within a one-minute period [8]. Usually, HR is derived from the time intervals among consecutive heart beats detectable from the ECG or the photoplethysmogram (PPG), which represent the peripheral effect of the heart pulse [9]. Thus, the sensing modality mainly used for cardiac signal acquisition are electrodes (wet, dry, and capacitive), able to acquire the ECG, or optical sensors, able to acquire the PPG [9,10]. A recent development is based on sensing the mechanical activity of the heart [9]. Mechanocardiography consists in detecting organ motion caused by the heart beat by measuring displacements and vibrations of the body surface caused by the pulse wave traveling through the body [9].
Some sensors have already been integrated into standard clinical practice, whereas some others exist for use in consumer health and medical research [2,4,10]. During sport activity, wearable and portable devices are commonly used to reliably acquire cardiac functionality and to provide useful clinical information on an athlete’s health status [4,11,12]. Information gathered from these devices may be used by coaches to optimize athlete training and performance and by clinicians to monitor athlete health and evaluate the cardiovascular risk under physical/psychological stress [3,4,13].
These technologies cover a big area of the consumer wearable market and lead development trends in sport industry [10,14,15]. Wearable devices were the top trend in an electronic survey of health and fitness trends by ACSM’s Health & Fitness Journal for 2022, and they have been estimated to be a $100 billion industry in the US [14]. Market research forecasts a grow in the sport and fitness industry with heavy future investment in terms of industrial research, with the aim to improve the sensors in terms of flexibility, motion, and smart textiles [10,14,16]. New innovations further include the reliable estimation of blood pressure, oxygen saturation, body temperature, and respiratory rate [14,17,18,19]. Of note, optical sensory components will lead revenue for wearable devices [10].
The present scoping review investigated the commercial wearable and portable devices acquiring cardiac signals that were/are used in the sport research field. The aim was to define the trends in wearable and portable devices usage and to identify research gaps in their application to the sport field.

2. Materials and Methods

The literature search and method reporting performed here followed the PRISMA extension for scoping reviews (PRISMA-ScR) [20].

2.1. Literature Search Strategy

A systematic literature search was conducted on three electronic bibliographic databases: PubMed, Scopus, and Web of Science. The roots “athlet” and “sport” were used to search for studies in the sport field. The roots “sensor”, “electronic” and “device” accompanied by the adjectives “wearable” and “portable” were used to search for studies on wearable and portable monitoring systems. The keyword “heart rate” and the root “electrocardio” were used to search for studies on cardiac signals. The search terms were organized into three concepts:
  • athlet*, sport*;
  • wearable, portable, sensor*, electronic*, device*;
  • heart rate, electrocardio*.
Terms within the first and third concepts were combined with the Boolean operator “OR”, within the second concept the terms “wearable” and “portable” were combined with the Boolean operator “OR”, and the terms “sensor*,” “electronic*,” and “device” were combined with the Boolean operator “OR” and between them were combined with the Boolean operator “AND”. Then, concepts were combined with the Boolean operator “AND”.
“Title” and “Abstract” were used as limits for the search field, English and Spanish as limits to filter language, “2022” as maximum limit to filter publication years, and “Review” as exclusion criterion for type of document (thus, all other document types were included). The search query is reported in Supplementary Materials, file name “Search_Query.pdf”.

2.2. Selection of Studies

Obtained documents were imported into the Mendeley reference management system for duplicate removal. Eligibility criteria for title, abstract, and full-text screening and selection were:
  • 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.
Documents for which the full text was not available were excluded.

2.3. Data Charting and Synthesis

A data-charting form was jointly developed by two reviewers to determine which variables to extract. The two reviewers independently charted the data, and discrepancies were resolved after joint discussion.
Studies were classified as validation studies if aiming to validate a device, clinical studies if aiming to evaluate the pathophysiological states and/or performances of athletes, and development studies if aiming to design and validate algorithms and/or to create databases. Validation studies were described in terms of validated device, reference devices, acquired signal, sport activity, population, and validation results. Clinical studies were described in terms of device, acquired signals, sport activity, population and aim of device application. Development studies were described in terms of device, acquired signal, sport activity, population and aim of device application. Data were synthesized in tables.
Each device was described in terms of acquired signal (ECG and/or HR), sensor tech (wet electrode, dry electrode, capacitive electrode, optical), wear location, target user (athlete, coach, clinician), real-time output, other integrated sensors, feedback, associated app, and clinical approval (such as FDA approval). Specification of wearable and portable devices were retrieved from technical and user manuals or in the manufacturer website. The sources are reported in Supplementary Materials, file name “Specification_Device_Sources.pdf”. Clinical approval was checked on the FDA website https://www.accessdata.fda.gov/scripts/cdrh/cfdocs/cfpmn/pmn.cfm (last access on 15 February 2023).

3. Results

Overall, 546 studies were identified in the bibliographic databases. Of these, 221 were duplicates, so 325 were left for further analysis. After title, abstract and full-text screening based on eligibility criteria, 35 studies were selected. Figure 1 depicts the entire process of the systematic literature search study selection and classification. The selected studies consisted of 26 journal papers, 8 conference proceedings, and 1 book chapter. Their classification provided 11 validation studies (Table 1), 14 clinical studies (Table 2), and 10 development studies (Table 3). Despite both English and Spanish languages being considered, all papers were written in English.
From 2011 to 2022, 38 different commercial wearable and portable devices were employed for research purposes: 23 wrist-worn, 5 chest straps, 2 forearm bands, 2 mobile ECG recorders, 1 biometric shirt, 3 bra, 1 earbud and 1 ring. Table 4 reports each device along with its characteristics: acquired signal (ECG and/or HR), sensor tech, wear location, target user, real-time output, other integrated sensor, feedback, associated app, and clinical approval (FDA). The most studied brand was Polar and the most studied sport running.

4. Discussion

In the last few decades, the use of wearable and portable devices that allow real-time acquisition of vital parameters has increased significantly. The purpose of this study was to investigate the commercial wearable and portable devices acquiring cardiac signals, ECG and HR used in sport.
After the literature search and review, 35 studies were included. Review-type documents were excluded because they are secondary studies. Moreover, quality and scope vary widely and thus can influence the conclusions drawn. A systematic literature search was conducted based on the generic terms in the search string without a specific name of device or sport, leading to the exclusion of some articles from the search because their title or abstract stated the specific name of the device and sport.
Table 1. Validation studies characterized by the validated device, the reference device, the acquired signal (ECG and/or HR), the practiced sport activity, the population characteristics and the validation results. Devices are reported with their commercial name and the population characterized in terms of sex (male/female), age, ethnicity and BMI. If not, present height and weight are reported. Information not available is reported as “-”.
Table 1. Validation studies characterized by the validated device, the reference device, the acquired signal (ECG and/or HR), the practiced sport activity, the population characteristics and the validation results. Devices are reported with their commercial name and the population characterized in terms of sex (male/female), age, ethnicity and BMI. If not, present height and weight are reported. Information not available is reported as “-”.
Ref.Validated
Device
Reference
Device
Acquired
Signal
Sport
Activity
PopulationValidation
Results
[21]Polar Vantage V2Polar H10 chest strapHRSwimming10 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 SqRest 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 AliveCor12-lead ECGECGCricket30 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 watchPolar H10 chest strapHRSpecific training program11 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-strap3-lead ECGHRRunning50 healthy athletic subjects
SEX: 34/16
AGE: 29.5 ± 9.3 years
BMI: 22.8 ± 2.4 kg/m2
rc = 98
Apple Watch IIIrc = 98
Fitbit Ionicrc = 89
Garmin Vivosmart HRrc = 89
TomTom Spark 3rc = 89
[25]Garmin Fenix 5Polar H7 chest strapHRTrail
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 EarbudsMAPE = 23%; LOA = [−464, 503]; rc = 0.38
Motiv RingMAPE = 16%; LOA = [−52, 96]; rc = 0.29
Scosche Rhythm+MAPE = 6%; LOA = [−114, 120]; rc = 0.79
Suunto Spartan Sport watchMAPE = 2%; LOA = [−62, 61]; rc = 0.96
[26]Polar H10 chest strap12-lead ECGHRCycling
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 strap12-lead ECGHRAerobic
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 Irc = 0.92
Fitbit Blazerc = 0.67
Garmin Forerunner 235rc = 0.81
TomTom Spark Cardiorc = 0.83
[28]Polar OH1Polar H10 chest strapHRLight,
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 3Mean bias = −7 bpm; LOA = [−46, 33] bpm; MAPE = −4%; r = 0.807;
CI95% = [0.804, 0.811] bpm
[29]Polar Vantage M3 leads plus V5 ECGHRTreadmill
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]PulseOnPolar V800 HR monitorHRRunning24 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 braPolar H7 chest strapHRWalking
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 + HRMValid at rest and walking
ICC = 0.96; MAPE = 1.9%;
LoA = [−19, 19]
Berlei sports braValid at rest, walking and running
ICC = 0.99; MAPE = 0.66%;
LoA = [−15, 12]
ICC = interclass correlation coefficient; μ = accuracy; 2σ = precision; CI95% = 95% confidence interval; MAPE = mean average percentage error; r = Pearson correlation coefficient, LOA = limit of agreement; rc = Lin’s concordance coefficient.
Table 2. Clinical studies characterized by the used wearable or portable device, the acquired signal (ECG and/or HR), the practiced sport activity, the population characteristics and the aim of device application. Devices are reported with their commercial name and the population characterized in terms of sex (male/female), age, and BMI. If not, present height and weight are reported. Information not available is reported as “-”.
Table 2. Clinical studies characterized by the used wearable or portable device, the acquired signal (ECG and/or HR), the practiced sport activity, the population characteristics and the aim of device application. Devices are reported with their commercial name and the population characterized in terms of sex (male/female), age, and BMI. If not, present height and weight are reported. Information not available is reported as “-”.
Ref.DeviceAcquired SignalSport ActivityPopulationAim of Device Application
[32]Polar S810iHRSpeed skating marathon1 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 S810HRBadminton7 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 sensorHRBasketball10 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 sensorHRBasketball13 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 sensorHRFootball20 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 sensorHRSoccer, 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 sensorHRBasketball11 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 strapHRRunning, 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 *HRRunning in hilly terrain17 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 strapHRWalking, Running120 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, Cycling20 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
ECGBasket, Cycling, Fitness, Jogging, Middle-distance running, Tennis, CrossFit51 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 shirtHRBadminton1 elite badminton player
SEX: -
AGE: -
WEIGHT: -
HEIGHT: -
BMI: -
To investigate of the relationship between movement accuracy and HR
[45]Kardia 6L
AliveCor
ECGCricket, Running6 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
GPS = Global Positioning System; NCAA = National Collegiate Athletic Association. * Chest belt version is not specified.
Table 3. Development studies characterized by the used wearable or portable device, the acquired signal (ECG and/or HR), the practiced sport activity, the population characteristics and the aim of device application. Devices are reported with their commercial name and the population characterized in terms of sex (male/female), age, and BMI. If not, present height and weight are reported. Information not available is reported as “-”.
Table 3. Development studies characterized by the used wearable or portable device, the acquired signal (ECG and/or HR), the practiced sport activity, the population characteristics and the aim of device application. Devices are reported with their commercial name and the population characterized in terms of sex (male/female), age, and BMI. If not, present height and weight are reported. Information not available is reported as “-”.
Ref.DeviceAcquired SignalSport ActivityPopulationAim of Device Application
[46]Polar H10 chest strapECG, HRRunning31 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 bandHRSwimming10 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 bandHRSwimming10 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, HRAerial silks, Running, Tennis10 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 seriesAerial silks, Basketball, CrossFit, Fitness, Jogging, Middle-distance running, Running, Soccer, Tennis, Zumba81 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
HRSoccer21 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
HRMiddle-distance running, Jogging17 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 3HRHigh intensity workout98 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
HRAerobic activity8 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 shirtHRClimbing1 athlete
SEX: -
AGE: -
WEIGHT: -
HEIGHT: -
BMI: -
To examine time-resolved sensor-based measurements of multiple biometrics at different micro locations along a climbing route
Table 4. Commercial wearable and portable devices characterized by acquired signal (ECG and/or HR), sensor tech, wear location, target user, real-time output, other integrated sensor, feedback, associated app, clinical approval. Information not available is reported as “-”.
Table 4. Commercial wearable and portable devices characterized by acquired signal (ECG and/or HR), sensor tech, wear location, target user, real-time output, other integrated sensor, feedback, associated app, clinical approval. Information not available is reported as “-”.
DeviceAcquired
Signal
Sensor
Tech
Wear
Location
Target
User
Real time
Output
Other integrated
Sensor
FeedbackAssociated
App
Clinical
Approval
Apple
Watch I
HROpticalwristathleteHR on watchAccelerometer
Gyroscope
Irregular cardiac rhythm notificationApple watch app
Health app
NO
Apple
Watch III
HROpticalwristathleteHR on watchGPS/GLONASS/Galileo
Accelerometer
Gyroscope
Barometric altimeter
Irregular cardiac rhythm notificationApple watch app
Health app
NO
BioHarness 3.0 ZephyrECG
HR
Capacitive electrodechestathlete-3-axis accelerometer
Breathing sensor
Thermistor
Subject status
indication
Bluetooth BioHerness test appNO
Fitbit BlazeHROptical wristathleteHR on watchMEMS 3-axis accelerometer
Barometric altimeter
HR zonesFitbit appNO
Fitbit
Charge 3
HROpticalwristathleteHR on watchMEMS 3-axis accelerometer
Altimeter
HR zonesFitbit appNO
Fitbit
Ionic
HROpticalwristathleteHR on watchGPS/GLONASS
MEMS 3-axis accelerometer
Barometric altimeter
HR zonesFitbit appNO
Garmin
Fenix 5
HROpticalwristathleteHR on watchGPS/GLONASS/Galileo
Accelerometer
Gyroscope
Barometric altimeter
Compass
Thermometer
HR zones and
HR alerts
Garmin Connect
Mobile app
NO
Garmin
Forerunner 235
HROpticalwristathleteHR on watchGPS/GLONASS
Accelerometer
Thermometer
HR zones and
HR alerts
Garmin Connect
Mobile app
NO
Garmin
Forerunner 305
HRCapacitive electrodewrist
chest
athleteHR on watchGPSHR zones and
HR alerts
Garmin Express on computersNO
Garmin
Venu Sq
HROpticalwristathleteHR on watchGPS/GLONASS/Galileo
Accelerometer
Compass
Thermometer
Pulse OX blood oxygen saturation monitor
HR zones and
HR alerts
Garmin Connect
Mobile app
NO
Garmin
Vivosmart HR
HROpticalwristathleteHR on watchAccelerometer
Barometric altimeter
HR zones and
HR alerts
Garmin Connect
Mobile app
NO
Hexoskin shirt1-lead ECG
HR
Capacitive electrodechestathleteHR and ECG on smartphoneRIP
3-Axis accelerometer
HR zone, HRV, HR maximum and HR at rest, QRS eventsHexoskin appNO
Jabra Elite Sport
Earbuds
HROpticalEarathlete HR on smartphone-Cardio
performance
Jabra Sport Life appNO
Adidas Smart sports braHRHR sensing fabricchestathlete----NO
PulseOnECG
HR
Capacitive electrode
Optical
wristdoctor--Notification for irregular rhythmPulseOn appNO
Scosche Rhythm+HROpticalArmathleteHR on the
receiving
device
--Compatible with >200 fitness appsNO
Suunto
Spartan Sport watch
HROpticalwristathleteHR on watchGPS/GLONASS
Accelerometer
Altimeter
HR zonesSuunto appNO
Kardia
AliveCor
ECG
HR
Dry
electrode
-athlete
doctor
HR and ECG on smartphone-Sinus rhythm, AF,
bradycardia,
tachycardia
Kardia appFDA-cleared
Kardia 6L
AliveCor
ECG
HR
Dry
electrode
-athlete
doctor
HR and ECG on smartphone-Sinus rhythm, AF,
bradycardia,
tachycardia
Kardia appFDA-cleared
Motiv RingHROpticalfingerathleteHR on smartphone3-axis accelerometer-Motiv 24/7 Smart Ring appNO
Polar H10
chest strap
HRCapacitive electrodechestathleteHR on the receiving device -HR zones and
HR alerts
Polar Beat app
Polar Flow app
NO
Polar H7
chest strap
HRCapacitive electrodechestathleteHR on the receiving device-HR zones and
HR alerts
Polar Beat app
Polar Flow app
NO
Polar OH1HROpticalforearm athleteHR on the receiving device-HR zones and
HR alerts
Polar Beat app
Polar Flow app
NO
Polar S810HRCapacitive electrodewrist +
chest
athleteHR on watch-HR zones and
HR alerts
-NO
Polar S810iHRCapacitive electrodewrist +
chest
athleteHR on watch-HR zones and
HR alerts
-NO
Polar T31TM Coded bandHRCapacitive electrodechestathleteHR on the receiving device-HR zones and
HR alerts
Polar Beat app
Polar Flow app
NO
Polar Pro sensorHRCapacitive electrodechestathlete
coach
HR on the receiving deviceGPS
Accelerometer
Gyroscope
Compass
HR zones and
HR alerts
PC software
PDA software (for online monitoring)
NO
Polar V800HRCapacitive electrodewrist + chestathleteHR on watch GPS
Accelerometer
HR zones and
HR alerts
Polar Flow appNO
Polar
Vantage M
HROpticalwristathleteHR on watch GPS/GLONASS/Galileo
Accelerometer
HR zonesPolar Flow appNO
Polar
Vantage V2
HROpticalwristathleteHR on watchGPS/GLONASS/Galileo
Accelerometer
Barometer
Compass
HR zonesPolar Flow appNO
Polar Ignite sport watchHROpticalwristathleteHR on watchGPS/GLONASS/Galileo
Accelerometer
HR zonesPolar Flow appNO
Samsung Galaxy Watch 3HROpticalwristathleteHR on watchGPS/GLONASS/Galileo
Accelerometer
Gyroscope
Barometer
Normal and irregular sinus rhythmSamsung Health Monitor appNO
Berlei sports braHRCapacitive electrodechestathlete----NO
Sensoria
fitness sports bra + HRM
HRCapacitive electrodechestathleteHR on smartphone--Sensoria HRM
Sensoria Fitness mobile app
NO
TomTom Spark 3HROpticalwristathleteHR on watchGPS
Accelerometer
Barometer
Compass
HR zonesTomTom Sports appNO
TomTom Spark CardioHROpticalwristathleteHR on watchGPS
Accelerometer
Compass
HR zonesTomTom Sports appNO
GPS = Global Positioning System; GLONASS = Global Navigation Satellite System; MEMS = micro electro-mechanical systems; RIP = respiratory inductance plethysmography.
In the present review, only devices satisfying the eligibility criteria were considered. Consequently, some device versions of considered brands (e.g., Applewatch series 6) or devices of unconsidered brands (e.g., Huawei) may not appear in our tables. Wristbands (23/38, 61% in this study) are becoming increasingly popular and investigated [21,23,24,25,27,28,29,30,53], in particular smart watches, which are fashion commodities offering purposes beyond visual appeal that in many cases provide users with a plethora of health-related data [11]. The user’s choice of which device to pick also depends on activity type. Specifically, a chest strap (e.g., Polar H10) is recommended for precise monitoring, because it provides better accuracy even in high-intensity training [21,23,26,28]. Although chest bands offer greater accuracy in HR monitoring and cost less, wristbands are more desirable, because of their multifunctionality and comfort. In sport, sensor-embedded equipment and smart textiles are also exploited to enable users to have high-quality signals without hindering any movement [31,44,55].
Sensor placement depends on sport, athletic movement or external factors, such as presence of possible concussions/contacts [10]. Further different sports of application and different types of users define the design of wearable and portable devices and the components needed. Some devices embed other sensors or exploit the ones embedded in the receiving device, usually a smartphone. Further components and measures usually are breathing sensors to derive respiration rate; accelerometers and gyroscope to derive body orientation, activity, steps, cadence, calories burned and sleep data; altimeters to derive floors climbed; and positioning systems based on satellites to derive distance covered and speed.
Of note, 11 devices were found to be discontinued and one recalled, namely, Fitbit Ionic, whose battery could overheat, posing a burn hazard to consumers. The devices still in production can be connected to another system via a specific application to display the data obtained during acquisition. Some wrist devices present a monitor that allows one to check data in real time. Among all the devices, the Kardia by AliveCor [22,45] stood out for its target user, the clinician, and is the only one FDA-cleared. This portable device is able to detect atrial fibrillation, bradycardia, tachycardia and normal heart rhythm. Monitoring for heightened risk of atrial fibrillation seems needed amongst endurance athletes [56,57,58]. Most others, on the other hand, estimate the user’s maximum HR based on actual HR zone, i.e., a set range of heart beats per minute. Many runners and other athletes are using HR zones to measure and increase their cardiovascular strength and improve their level of fitness.

4.1. Validation Studies

A rigorous assessment of validity should be in the mutual interests of manufacturers, scientific institutions, and consumers in order to judge whether a wearable device for assessment of HR is useful and performs with satisfactory accuracy.
To validate wearable devices against standard apparatus such as ECG through multiple-lead channels or simple chest straps consisting of two electrodes is strongly recommended. The 12-lead ECG is the current gold-standard reference; however, several studies used as a reference device a chest strap recorder if the device needed to be validated in dynamic conditions, such as sport activities. High-quality HR data for the Polar H7 was demonstrated by Pasadyn et al. [24] and Gillinov et al. [27], who compared the acquired HR to those acquired by clinical instrumentation and reported Lin’s concordance correlation coefficients of rc = 0.98 and rc = 0.99, respectively. In recent studies, the Polar H7 was superseded by the later model Polar H10 [21,23,24,25,26,27,28], which for incremental exercise shows a Lin’s concordance correlation coefficient of rc = 0.93 when comparing its ECG to a 12-lead ECG [26].
The validation process has been performed on many wearable devices, most of them wrist-worn devices based on optical PPG technology. Among them, the Apple Watch III proved to be the optimal choice for assessing HR during high-speed running (rc = 96) [24].
Accuracy and precision of the Polar Vantage V2 and Garmin Venu Sq have been analyzed during swimming, providing unsatisfactory results: water and arm movement acted as relevant interference inputs. Therefore, for monitoring of HR of swimming athletes, use-specific wearable devices are recommended [21].
Overall, these findings highlight that the validation process provides heterogeneous results due to the different types of activities and the intensity of these. Variability in the expression of the metrological characteristics also emerged, e.g., referring to accuracy, some authors used mean absolute percentage error (MAPE), others Pearson’s coefficient (r) or Lin’s concordance correlation coefficient (rc). As the data are quite inhomogeneous, they can be scarcely compared. Moreover, the number of wearable devices is rapidly growing, and companies and consumers would benefit from guiding standardized protocols.
Validation studies are important to guide device design since the effect of sensor technology, sensor wear location, and physical activity may affect the performance of the device [21,23,26,28]. Additionally, chest straps based on capacitive sensor technologies are precise and provide good accuracy even in high-intensity training, with breathing interference mainly affecting the measurement. Wristbands and smart watches based on optical sensor technologies are affected by artifact movements and usually underestimate HR. Acquisitions by smart watches are particularly affected by their multifunctionality (they may work as ECG recorders, watches, phones, etc. simultaneously). Sensor-embedded equipment and smart textiles may enable users to have high-quality signals without hindering any movement, especially in contact sports [31,44,55], hence the development of a validation protocol for wearable devices measuring cardiac signals is desirable. With this common aim, six universities and one industrial partner joined to present a set of guidelines to obtain more comparable data. The statement focused on six standardized domains: target population, criterion measure, index measure, testing conditions, data processing and statistical analysis [59].

4.2. Clinical Studies

Clinical studies were conducted for various sports using different type of wearables. Among the various devices, the Polar Pro Sensor was recurrent (5/35) [34,35,36,37,38]. This chest strap is included in the Polar Team Pro system and allows real-time HR monitoring of multiple athletes simultaneously. Therefore, this system is widely used in team sports, such as basketball, football, and volleyball [34,35,36,37,38]. This technology allows coaches to track athletes’ parameters during training session and competition.
Two other devices of remarkable interest are BioHarness 3.0 by Zephyr and Kardia by AliveCor. The BioHarness 3.0 by Zephyr was used in a great variety of sports [42,43,49,50,51,52] to evaluate the health status of athletes based on HR variability [42] and to characterize ECG during the pre-exercise phase [43], providing reference values for future diagnosis. ECG has also been acquired using a portable device called AliveCor Kardia, which helps the diagnosis of arrhythmias during exercise in athletes [45,56,57].
Only the AliveCor Kardia was FDA-cleared, whereas all other devices are not clinically approved and thus cannot be used for cardiac diagnosis. Typically, wearable sensors provide a reduced number of ECG leads, which do not necessarily match with one of the 12 standard ECG leads. Additionally, acquisition settings of these sensors do not match the typically strict protocols followed in the clinical setting [43]. Consequently, they cannot be used for diagnoses: considering that the normal reference values used in clinics are defined considering the standard 12-lead ECG, measured ECG values by wearable sensors should not be considered to evaluate the athlete’s health [43]. Validation studies [21,22,23,24,25,26,27,28,29,30,31] and a recent study on the development of normal reference values for ECG acquired through wearable chest straps in the pre-exercise phase [43] can play a pivotal role in the implementation of wearable devices in clinical practice.

4.3. Development Studies

Among the development studies, only one focused on proposing an open-source database that can be useful for new studies. The database is called Sport DB and consists of 126 cardiorespiratory datasets acquired through the chest strap BioHarness 3.0 by Zephyr from athletes practicing 10 different sports [50].
As for the algorithms, each study was conducted with a different aim and different devices were used. The Hexoskin biometric compression shirt was used in [55] to demonstrate the capability of the microlocation-specific biometric system. The BioHarness 3.0 was used in [49] for the proposal of a tool called CaRiSMA 1.0, in [51] for the presentation of a predictive analytics framework for predicting soccer players’ performance data, and in [52] for the development of an algorithm for automatic detection of training phases. The Polar H10 was used in [46] for indirect estimation of breathing rate from HR acquired by the chest belt during running. The Polar T31TM coded band was used in [47] for the proposal of an intelligent data analytics system for swimmer performance and in [48] for the proposal of a novel system that allows the technical staff to monitor and analyze the swimmer’s inertial and bio-signals in real time. The Samsung Galaxy Watch 3 in [53] for precise real-time HR monitoring during high-intensity physical exercises and the Garmin Forerunner 305 [54] device to estimate the intensity of activities were used.
The lack of databases suggests that future studies should develop open-source databases with the goal of making more information regarding sports activity available. Such data could be useful for further studies, such as the development of new automatic algorithms.

4.4. Related Works

This being a review study, Table 1, Table 2 and Table 3 do not report results from other review studies on the topic [2,60,61,62,63,64,65,66,67,68]. However, their qualitative analysis may be useful to highlight the strengths of this study. Li at al. [2] evaluated the applicability of wearable devices in sport science to increase training performance and focused on the modality of monitoring real-time physiological and movement parameters during training and competitive sports. Rao et al. [60] focused on the role of only wearable devices to diagnose and monitor cardiovascular disease in sport cardiology. Seshadri et al. [61] focused on the clinical translation of biomedical sensors for sports medicine. Other review papers focused on novel noncommercial sensing technologies (sensing textiles, flexible sensors, and sensor-embedded equipment) [62,63]. Other reviews focused only on specific sport activities [64,65] or on the validation of specific devices [66,67,68].
Differently from the abovementioned reviews, the present review focused on applications of not only wearable but also portable devices in training and cardiovascular monitoring. Moreover, our work investigated only commercial devices (i.e., consolidated technology) and highlighted their limits to support design of future innovative technology. Finally, our work represents a comprehensive (not specific) overview of the use of wearable and portable devices for cardiac signal acquisition and related tool validation while practicing sport.

5. Conclusions

Wearable and portable devices have been the leading technologies in sport trends in the last 11 years and represent the future of sport industry development. Results from clinical studies highlighted that wearable devices are crucial to improve athletes’ performance and to prevent adverse cardiovascular events. At the same time, the need for standardized validation of these technologies emerged. Future development of standardized data-acquisition protocols, signal processing procedures specifically designed for sport, and sport-oriented software applications will cover a key role in the clinical interpretation of data acquired through wearable and portable devices. This innovative approach will lead to athlete-centered monitoring, which will allow adaptation of the training regime for maximizing performance and minimizing cardiovascular risk.

Supplementary Materials

The following supporting information can be downloaded at https://www.mdpi.com/article/10.3390/s23063350/s1. Search queries: “Search_Query.pdf”, Sources of specification of wearable and portable devices “Specification_Device_Sources.pdf”.

Author Contributions

Conceptualization, S.R. and F.R.; methodology, S.R.; software, F.R.; validation, A.S., M.M. and L.B.; formal analysis, S.R.; investigation, S.R. and F.R.; resources, L.B.; data curation, F.R.; writing—original draft preparation, S.R.; writing—review and editing, S.R., F.R., A.S., M.M. and L.B.; visualization, S.R.; supervision, A.S.; project administration, L.B. and M.M. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Flowchart of systematic literature search study selection and classification.
Figure 1. Flowchart of systematic literature search study selection and classification.
Sensors 23 03350 g001
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MDPI and ACS Style

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

AMA Style

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 Style

Romagnoli, 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

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