Wearables and Their Potential to Transform Health Management: A Step towards Sustainable Development Goal 3
Abstract
:1. Introduction
2. Literature Review
2.1. Wearables for Health and Well-Being Management
2.2. Health and Well-Being as SDG: Significance and Progress
3. Theoretical Background: Affordance Theory (AT)
4. Methodology
5. Findings
6. Discussion
6.1. Health Monitoring Affordance (HMA)
6.2. Health Screening Affordance (HSA)
6.3. Health Detection Affordance (HDA)
6.4. Health Prediction Affordance (HPA)
6.5. Collaborative Health Management Affordance (CHMA)
6.6. Health Treatment and Medication Management Affordance (HTMMA)
6.7. Stress Management Affordance (SMA)
7. Implications for SDG-3 Achievement
8. Limitations and Future Research
9. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Types | Placement | Brand Name | Data Collected and Measured |
---|---|---|---|
Smartwatch | Wrist | PKG Watch | Parkinson’s motor symptoms like immobility, tremors, involuntary (Dyskinesia) or slow movements (Bradykinesia), and fluctuations in motor skills [23,38,39,40,41]. |
Apple Watch | Blood oxygen level, ECG, and sleep patterns [29,30,36]. | ||
Fitbit Sense | ECG data, Blood oxygen saturation, skin temperature, sleep pattern, and electrodermal activity [17,28]. | ||
Mi Band 6 | Heart rate [17]. | ||
Sony Smartwatch 4 | Heart rate [17]. | ||
Garmin VivoSmart | Heart rate and calories [17]. | ||
HELO LX | Heart rate, sugar level, blood pressure, ECG, blood temperature, oxygen saturation, breathing rate, calories, mood, and sleep cycle [24,37]. | ||
E4 Wristband | Blood pulse volume, skin temperature, movement, and stress level [37]. | ||
Reign Active recovery band | Heart rate, calories, and sleep patterns [37]. | ||
Amiigo | Blood pressure, heart rate, pulse volume, arterial blood gas, oxygen saturation, respiratory rate, skin temperature, calories burned, and sleep time and quality [37]. | ||
Smart handband | Wrist | Mio SLICETM | Heart rate [37]. |
Samsung Galaxy Fit | Heart rate [23]. | ||
Xiaomi Mi Smart Band 4 | Heart rate [23]. | ||
Huawei Band 3 Pro | Calories burned [23]. | ||
Smart headband | Head | MuseTM | Measures EEG-related data [37]. |
B2v2 Headband | EEG-related data [37]. | ||
Smart headset | Starstim fNIRS | Measuring EEG-related data and blood flow (hemodynamics) [37]. | |
Smart patches/e-patches | Chest | ZephyrTM | Heart rate, breathing rate, heart rate variability, blood pressure, arterial blood oxygen saturation, and calories burned [24,36,37]. |
Lief | ECG-related data such as breathing rate and heart rate variability [23,37]. | ||
Mesana | Data relating to circulatory diagnostics and cardiovascular prevention [23]. | ||
Wearable Ultrasound Patch | ECG-related data such as internal blood pressure like blood pressure inside deep arteries, lungs, or heart [19,23]. | ||
Smart glasses/eyewear | Eye | Lowdown Focus | EEG-related data like brain activity and cognitive training activities [37]. |
E-textiles/clothing | Body | Hexoskin | Heart rate, heart rate variability, breathing rate, tidal volume, cadence, and calories burned [24,37] |
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Affordances | Examples of Related RTs |
---|---|
Health Monitoring (f = 126) | RT1: “I’ve been doing research on my health condition about congestive heart failure… I suffered a cardiac arrest last year and comatose for 5 days and recovering, but I needed a device that will monitor my daily routine so I watched video of people who experienced sudden heart attack. This watch is perfect for me…” RT2: “Being that I have sleep apnea I want to track everything and get written reports” RT3: “… it’s about what you would expect with it constantly monitoring your vitals and anything else you set it up to keep track of”. RT4: “Got it for Heart monitoring…Works great. It must pair with your iPhone, confusing which is dominant on various apps. Helpful to have an Apple store nearby or a teenager”. |
Health Screening (f = 27) | RT1: “…The reason I did this was to try to make sure that I didn’t have any sleep apnea issues as I’ve been accused of snoring and wanted to make sure that that didn’t indicate any potential problems. So far the watch seems to indicate that I’m OK”. RT2: “I upgraded because I felt suspicious about my heartbeat. Sure enough, it was messaging me like crazy! I sent the results to my doctor who ordered more tests and now I’m on medication and feeling so much better”. RT3: “I used my Apple Watch to screen for heart arrhythmias and blood oxygen saturation levels. It works great for this purpose.” RT4: “As someone conscious of COVID hazards, I find having the oximeter App built in has me screening my blood O2 every day vs. a few times a week”. |
Health Detection (f = 31) | RT1: “I got the Apple Watch because, honestly, I’m getting older and I wanted the fall detection and health features” RT2: “…it helps me with my low blood pressure, it alerts me every time I’m in my anxieties and it tells me how much my heart rate is!!” RT3: “I’m 80 and was paying a monthly fee for a medical device w/fall detection & my Fitbit wasn’t syncing with my iPhone. So happy to find this Watch at such a great price that not only tracks my steps but has fall detection, and it fits on my wrist.” RT4: “First off this watch saved my life!! I have never been diagnosed with Afib. This past Friday night my watch told me I was in Afib and I went to the ER. My heart rate was 147 beats a minute. Had I not had this watch I would have just thought I was having an anxiety attack”. |
Health Prediction (f = 9) | RT1: “I live in a senior gated community and tell all seniors to buy one because this watch will sense if you are in trouble and you can hit the button for help. My neighbour came over and thanked me for recommending this watch to her it saved her life because it will monitor her heart, she told me the watch sent her a SOS about her heart being in trouble, she went to the hospital and it saved her from a heart attack, because of the early warning with this watch”. RT2: “This gives you an accurate Lead I (RA-LA) ECG waveform. You can print strips on your iPhone and bring them to your Cardiologist if needed, the SpO2 has been accurate as well. I compared all values to an acute care patient monitor for reference”. RT3: “The oxygen is another plus for since I have asthma I can keep a track when I’m sick”. |
Collaborative Health Management (f = 23) | RT1: “My heart doctor suggested I buy an Apple Watch after having a couple of procedures. Said heart apps were great way to monitor heart activity. He was right. The blood oxygen and ECG apps are easy to use and accurate. Heart Rate app keeps me updated on what my heart is doing and gives me the option to send results to my doctor”. RT2: “Due to health issues, my wife convinced me to get the cellular capability. In an emergency, these will call 911, even when your phone is not around, and even when you don’t subscribe for service. That’s important”. RT3: “ECG, sleep info, hard fall info being sent to emergency services are quality features for all of us and certainly important for octogenarians like my mom” |
Health Treatment and Medication Management (f = 13) | RT1: “…I had a cardioversion and was put on a beta blocker which worked well for about 6 days. Then my heart would kick back into AFIB for a little while, then the beta blocker would try to convert back to sinus rhythm, in doing so, my heart would do what they call ‘conversion pauses’, only mine would pause to the point of nearly passing out. I happened to catch one of the worst pauses that lasted 8.7 s. I was using my Apple Watch in the ECG mode to check AFIB, at the time. My heart was pausing multiple times. Sent the recordings to my heart Dr. and he took me off the beta blocker for now. I will go back on those after I get my pacemaker the end of the month. If it had not been for the watch and the ability to do the ECGs, I would have not known what was going on and would have thought it to be common under the circumstances. So, I think the watch may have saved my life, by helping to figure out the pauses, which kept getting worse”. RT2: “A few months back, I was diagnosed with a decrease in heart function. The most likely cause, tests revealed, was a sedentary lifestyle. So, in order to help me get moving, track my activity, and monitor my heart, I purchased this Apple Watch. I wear it everywhere except in the shower and when it is charging. It is helping me track longitudinal data about my movement habits…” |
Stress Management (f = 10) | RT1: …“In addition to indicating when you should take breaks to stop because you have been sitting for more than an hour and also control your breathing to relax and lower stress levels”. RT2: “I’m 37 have had 2 open heart surgery and brain surgery back in 2020 and its perfect for monitoring my stress my heart rate” RT3: “In terms of feature benefits, my main interest are the heart health functions including the Mindfulness/Breath app”. |
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Izu, L.; Scholtz, B.; Fashoro, I. Wearables and Their Potential to Transform Health Management: A Step towards Sustainable Development Goal 3. Sustainability 2024, 16, 1850. https://doi.org/10.3390/su16051850
Izu L, Scholtz B, Fashoro I. Wearables and Their Potential to Transform Health Management: A Step towards Sustainable Development Goal 3. Sustainability. 2024; 16(5):1850. https://doi.org/10.3390/su16051850
Chicago/Turabian StyleIzu, Lydia, Brenda Scholtz, and Ifeoluwapo Fashoro. 2024. "Wearables and Their Potential to Transform Health Management: A Step towards Sustainable Development Goal 3" Sustainability 16, no. 5: 1850. https://doi.org/10.3390/su16051850
APA StyleIzu, L., Scholtz, B., & Fashoro, I. (2024). Wearables and Their Potential to Transform Health Management: A Step towards Sustainable Development Goal 3. Sustainability, 16(5), 1850. https://doi.org/10.3390/su16051850