Exploring the Use of Mobile and Wearable Technology among University Student Athletes in Lebanon: A Cross-Sectional Study
Abstract
:1. Introduction
1.1. Wearables and Health Apps for Physical Activity Tracking
1.2. Wearables among Student Populations
1.3. Study Background
1.4. Study Aims
2. Materials and Methods
2.1. Study Design
2.2. Setting
2.3. Participants and Procedures
2.4. Questionnaire
2.5. Analyses
3. Results
3.1. Sample Characteristics
3.2. Primary Objective
3.2.1. Ownership and Use of Wearable Devices and Fitness Apps
3.2.2. Reasons for Using and Not Using Wearable Devices
3.2.3. Reasons for Using Health and Fitness Apps
3.3. Secondary Objective
Factors Associated with the Use of Wearable Devices
4. Discussion
4.1. Use of Fitness Trackers and Health Apps among University Student Athletes
4.1.1. Reasons for Using Wearable Devices
4.1.2. Reasons for Using Health and Fitness Apps
4.2. Use of Wearable Devices and Sociodemographic Factors
4.3. Strengths and Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Participants’ Characteristics | Sample (n = 200) | Non-Users (n = 147) | Users (n = 53) | p-Value ‡ |
---|---|---|---|---|
Demographics | ||||
Age (years) a | 20.22 ± 0.16 | 19.97 ± 0.11 | 20.87 ± 0.48 | 0.075 |
Gender b | ||||
Females | 68 (34.7) | 49 (34.3) | 19 (35.8) | 0.836 |
Males | 128 (65.3) | 94 (65.7) | 34 (64.2) | |
Sport team c | ||||
Rugby | 42 (21.2) | 33 (22.8) | 9 (17.0) | 0.379 |
Football | 26 (13.1) | 20 (13.8) | 6 (11.3) | 0.648 |
Ultimate frisbee | 18 (9.1) | 17 (11.7) | 1 (1.9) | 0.047 |
Track & Field | 16 (8.1) | 7 (4.8) | 9 (17.0) | 0.009 |
Swimming | 16 (8.1) | 12 (8.3) | 4 (7.5) | 1.000 |
Handball | 16 (8.1) | 11 (7.6) | 5 (9.4) | 0.769 |
Basketball | 16 (8.1) | 10 (6.9) | 6 (11.3) | 0.377 |
Futsal | 11 (5.6) | 6 (4.1) | 5 (9.4) | 0.168 |
Water polo | 12 (6.1) | 6 (4.1) | 6 (11.3) | 0.088 |
Volleyball | 11 (5.6) | 2 (3.8) | 9 (6.2) | 0.731 |
Badminton | 9 (4.5) | 8 (5.5) | 1 (1.9) | 0.449 |
Table tennis | 7 (3.5) | 4 (2.8) | 3 (5.7) | 0.387 |
Tennis | 6 (3.0) | 4 (2.8) | 2 (3.8) | 1.000 |
Archery | 6 (3.0) | 5 (3.4) | 1 (1.9) | 0.686 |
Sport Category | ||||
Individual | 51 (25.8) | 36 (24.8) | 15 (28.3) | 0.621 |
Individual and group | 147 (74.2) | 109 (75.2) | 38 (71.7) | |
Health profile | ||||
BMI(kg/m2) d | 23.89 ± 0.27 | 23.66 ± 0.30 | 24.52 ± 0.56 | 0.157 |
BMI category d | ||||
Underweight/Normal | 137 (69.2) | 104 (71.7) | 33 (62.3) | 0.202 |
Overweight/Obese | 61 (30.8) | 41 (28.3) | 20 (37.7) | |
Body fat mass (%) e | 16.73 ± 0.87 | 17.20 ± 1.02 | 15.65 ± 1.67 | 0.414 |
Underfat | 13 (24.1) | 7 (18.9) | 6 (35.3) | |
Standard Minus/Plus | 34 (63.0) | 4 (64.9) | 10 (58.8) | |
Overfat/Obese | 7 (13.0) | 6 (16.2) | 1 (5.9) | |
Waist circumference (cm) f | 77.85 ± 2.37 | 77.50 ± 3.38 | 78.20 ± 3.51 | 0.887 |
Total Sample (n = 200) | Current Non-Users (n = 147) | Current Users (n = 53) | p-Value ‡ | |
---|---|---|---|---|
Phone ownership | 0.733 | |||
Yes | 194 (97.0) | 142 (96.5) | 52 (98.1) | |
No | 1 (0.5) | 1 (0.7) | 0 (0.0) | |
Missing/Don’t know | 5 (2.5) | 4 (2.7) | 1 (1.9) | |
Phone Operative System | <0.001 | |||
Android | 57(29.4) | 52 (35.4) | 5 (9.4) | |
iOS | 134(69.1) | 88 (59.9) | 46 (86.8) | |
Both | 3(1.5) | 2 (1.4) | 1 (1.9) | |
Missing/Don’t know | 6 (3.0) | 5 (3.4) | 1 (1.9) | |
Brand of ever owned wearable tracking device | ||||
Fitbit | 24 (12.0) | 19 (12.9) | 3 (5.7) | 1.000 |
Apple watch | 19 (9.5) | 9 (6.1) | 10 (18.9) | 1.000 |
Garmin | 8 (4.0) | 3 (2.0) | 5 (9.4) | 1.000 |
Polar | 3 (1.5) | 0 (0.0) | 3 (5.7) | 1.000 |
Misfit | 2 (1.0) | 0 (0.0) | 2 (3.8) | 1.000 |
Samsung gear fit | 1 (0.5) | 0 (0.0) | 1 (1.9) | 1.000 |
Other | 5 (2.5) | 1 (0.7) | 4 (7.5) | 1.000 |
Missing/Don’t know | 147 (73.5) | - | - | |
Ever used a health and fitness app | 0.006 | |||
Yes | 93 (46.5) | 60 (40.8) | 33 (62.3) | |
No | 106 (53.0) | 87 (59.2) | 19 (35.8) | |
Missing/Don’t know | 1 (0.5) | 0 (0.0) | 1 (1.9) | |
Currently using a health and fitness app | 0.673 | |||
Yes | 45 (22.5) | 30 (20.4) | 15 (78.9) | |
No | 50 (25.0) | 31 (21.1) | 19 (35.8) | |
Missing/Don’t know | 105 (52.5) | 86 (58.5) | 19 (35.8) | |
Brand of ever used health and fitness app | ||||
My Fitness Pal | 43 (21.5) | 27 (18.4) | 16 (36.1) | 0.829 |
Apple Health Kit | 20 (10.0) | 9 (6.1) | 11 (20.8) | 0.063 |
Samsung Health | 11 (5.5) | 10 (6.8) | 1 (1.9) | 0.090 |
Runtastic | 9 (4.5) | 7 (4.8) | 2 (3.8) | 0.484 |
Strava | 5 (2.5) | 1 (0.7) | 4 (7.5) | 0.052 |
Freeletics | 4 (2.0) | 3 (2.0) | 1 (1.9) | 1.000 |
SportsTracker | 3 (1.5) | 1 (0.7) | 2 (3.8) | 0.550 |
Lifesum | 3 (1.5) | 3 (2.0) | 0 (0.0) | 0.306 |
GetFit | 3 (1.5) | 2 (2.0) | 1 (1.9) | 1.000 |
Endomondo | 2 (1.0) | 1 (0.7) | 1 (1.9) | 1.000 |
Pacer | 1 (0.5) | 0 (0.0) | 1 (1.9) | 1.000 |
Other | 9 (4.5) | 7 (4.8) | 2 (3.8) | 0.484 |
Missing/Don’t know | 118 (59.0) | 94 (63.9) | 24 (45.3) |
Reasons | Responses k (%) | Brands Mentioned (Number of Users) |
---|---|---|
Reason for using (k = 37) | ||
I want to track my activity | 21 (56.8) | Fitbit (3), Polar (2), Garmin (5), Apple Watch (9), Suunto (1), Mi Fit 2 (1) |
I want to track my sleep | 6 (16.2) | Fitbit (2), Polar (1), Garmin (1), Apple Watch (2) |
I want to track the calories I consume | 5 (13.5) | Fitbit (1), Polar (2), Apple Watch (2) |
I want to track the water I drink | 1 (2.7) | Fitbit (1) |
Other reasons | 4 (10.8) | Apple Watch (1), Polar (1), Garmin (1), Samsung Gear (1) |
Reason for not using (k = 42) | ||
I lost interest in it | 24 (57.1) | Fitbit (11), Garmin (1), Apple Watch (4), Misfit (2), Mio (1), |
It got broken | 10 (23.8) | Fitbit (4), Garmin (1), Apple Watch (3), Nike Watch (2) |
It got stolen | 3 (7.1) | Fitbit (1), Apple Watch (3) |
Other reasons | 4 (9.5) | Fitbit (3), Apple Watch (2), Misfit (1) |
Reasons | Responses k (%) | Brands Mentioned (Number of Users) |
---|---|---|
Reason for using (k = 64) | ||
I want to track my activity | 41 (64.1) | MyFitnessPal (2), Strava (1), Endomondo (1), Runtastic (3), Pacer (1), Apple Health (13), Samsung Health (7), Nike Running Club (4), Huawei Health (2), Google Fit (1), Garmin Connect (1), Unspecified (3) |
I want to track my weight | 7 (10.9) | MyFitnessPal (5), Lifesum (1), Apple Health (1) |
I want to track my diet | 11 (17.2) | MyFitnessPal (5), Strava (1), Lifesum (1), Apple Health (1), Nike Running Club (1), |
Other reasons | 5 (7.8) | Freeletics (1), Lifesum (1), Apple Health (1), Nike Running Club (2) |
Reason for not using (k = 110) | ||
I lost interest in it | 61 (55.5) | MyFitnessPal (26), SportsTracker (1), Freeletics (3), Runtastic (3), Lifesum (2), GetFit (2), Apple Health (4), Samsung Health (4), Unspecified (17) |
It was not engaging with me | 17 (15.5) | MyFitnessPal (5), SportsTracker (1), Runtastic (2), Lifesum (1), GetFit (1), Apple Health (3), Samsung Health (1), Unspecified (3) |
It was not easy to use | 10 (9.1) | MyFitnessPal (6), SportsTracker (1), Runtastic (1), GetFit (1), Samsung Health (1) |
It had too many annoying ads and pop-ups | 10 (9.1) | MyFitnessPal (4), Freeletics (1), Runtastic (1), Lifesum (1), GetFit (1), Apple Health (1), Unspecified (1) |
It was too expensive | 3 (2.7) | Freeletics (1), Runtastic (1), Unspecified (1) |
It was of poor quality | 1 (0.9) | Runtastic (1) |
Other reasons | 8 (7.2) | MyFitnessPal (4), Strava (1), Endomondo (1), Runtastic (1) |
Participants’ Characteristics | Have You Ever Owned a Fitness Tracker to Track Your Activity or Diet (e.g., Fitbit, Polar, Apple Watch)? | |
---|---|---|
Unadjusted Odds Ratio (95% CI) | Adjusted Odds Ratio (95% CI) | |
Demographics | ||
Age (years) | 1.20 (1.02, 1.44), p = 0.029 | 1.25 (1.04, 1.50), p = 0.018 |
Gender | ||
Females | 1.0 | |
Males | 0.93 (0.48, 1.80), p = 0.836 | - |
Sport category | ||
Individual sport | 1.0 | |
Group sport | 0.77 (0.38, 1.59), p = 0.490 | - |
Individual and group sport | 2.40 (0.53, 10.88), p = 0.256 | - |
Health profile | ||
BMI category | ||
Underweight/Normal | 1.0 | |
Overweight | 1.62 (0.80, 3.28), p = 0.177 | - |
Obese | 1.18 (0.30, 4.71), p = 0.813 | - |
Body fat mass | 0.96 (0.88, 1.05), p = 0.408 | - |
Waist circumference (cm) | 1.01 (0.92, 1.09), p-0.880 | - |
Use of technology | ||
Ever used health and fitness mobile apps | 2.52 (1.31, 4.84), p = 0.006 | 2.61 (1.32, 2.18), p = 0.006 |
Currently using a mobile app | 0.82 (0.35, 1.89), p = 0.636 | - |
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Bardus, M.; Borgi, C.; El-Harakeh, M.; Gherbal, T.; Kharroubi, S.; Fares, E.-J. Exploring the Use of Mobile and Wearable Technology among University Student Athletes in Lebanon: A Cross-Sectional Study. Sensors 2021, 21, 4472. https://doi.org/10.3390/s21134472
Bardus M, Borgi C, El-Harakeh M, Gherbal T, Kharroubi S, Fares E-J. Exploring the Use of Mobile and Wearable Technology among University Student Athletes in Lebanon: A Cross-Sectional Study. Sensors. 2021; 21(13):4472. https://doi.org/10.3390/s21134472
Chicago/Turabian StyleBardus, Marco, Cecile Borgi, Marwa El-Harakeh, Tarek Gherbal, Samer Kharroubi, and Elie-Jacques Fares. 2021. "Exploring the Use of Mobile and Wearable Technology among University Student Athletes in Lebanon: A Cross-Sectional Study" Sensors 21, no. 13: 4472. https://doi.org/10.3390/s21134472
APA StyleBardus, M., Borgi, C., El-Harakeh, M., Gherbal, T., Kharroubi, S., & Fares, E. -J. (2021). Exploring the Use of Mobile and Wearable Technology among University Student Athletes in Lebanon: A Cross-Sectional Study. Sensors, 21(13), 4472. https://doi.org/10.3390/s21134472