The Rise of Wearable Devices during the COVID-19 Pandemic: A Systematic Review †
Abstract
:1. Introduction
- First, we present a comprehensive review on ehealth wearables for COVID-19, emphasizing their data interpretation models based on machine learning (ML) and deep learning (DL), the types of devices that have been used until now and that have arisen over time, and the parameters they can measure. Then, we also analyze the cloud/edge/fog environments used in wearable-based solutions, the different application areas of these wearables the context of the pandemic, and finally, the position and diversity of devices attached to the body to record important signals;
- Secondly, we address the problems and solutions with respect to using wearables in the healthcare system regarding the social, technical, and political aspects.
2. Methodology
3. Research Directions in Terms of Wearables for the COVID-19 Pandemic
3.1. Wearable Sensors (Devices)
3.1.1. Types Of Sensors
- Temperature sensors: For COVID-19, fever is the most common symptom, making temperature sensors a critical component of a wearable sensing system. According to the review article [23], in 90% or more of cases, fever is the main clinical representation of COVID-19. Hence, monitoring fever is immensely important for diagnosis. Apart from this, its continuous monitoring can give insights into the cause and nature of the disease, which would aid in better estimation of the care and treatment needs. For COVID-19 decision-making, temperature measurement is crucial, and temperature sensors play a vital role. Commercially available temperature-sensing devices comprising temperature sensors and approved by the FDA are elaborated in Table 1. TempTraq [24] is an interesting sensing device that detects infants’ temperature and sends the data to a smartphone app. TempTraq is a soft and comfortable patch that continuously monitors temperature for around 48 h. The sharing of the data with the mobile app is performed using Bluetooth. Another similar commercially available wearable device is the oura smart ring [25], which records body temperature, step count, and heart rate (HR). The ring has a good battery life, lasting up to seven days. The ring is water-resistant and weighs 7 g. The readings can be checked using the mobile app via Bluetooth. Another wearable device is Fever Scout by VIvaLNK in the form of a thermometer patch [26] that records fever wirelessly. Numerous low-power temperature sensors are available with different structures and calibration methods, as illustrated in Table 1. Most are built using MOSFET technology, having a BJT-less temperature-to-frequency/digital structure, taking advantage of the low-power design by using subthreshold MOSFET transistors and removing the need for external clocks and power-consuming ADCs. This also depends on the number of features the device offers, for example reusability and remote data sharing, whether it is power hungry, and the battery life.
- Pulse oximeters: One of the significant processes of the human body is transporting oxygen by hemoglobin through the circulatory system. A lack of oxygen, i.e., SpO2, can cause brain damage, heart failure, or sudden death if it reduces to less than 95% [27]. To avoid this situation, pulse oximeter sensors play a very important role, as they obtain the photoplethysmogram (PPG) and determine the blood oxygen saturation level based on the light absorption characteristics of oxygenated and deoxygenated hemoglobin. Typical measuring sites are the finger, the toes, and the lobe of the ear. Most sensors, however, are located at the finger tip. References [28,29,30] introduced commercially available pulse oximeter devices, while [31] introduced a battery-free miniaturized fingernail wireless pulse oximeter, as explained in Table 1. Table 1 depicts the features of commercially available wearables, as well as the existing research methodologies adopted. The features that differentiate one device from other are long-term monitoring technology, battery life, the reusability of the device, as well as multimodal symptom detection. This points to the need to have a device that is reusable, has a long-lasting battery, measures multiple parameters, and is available to the general public.
- Respiratory rate: Changes or anomalies in the respiratory rate of a patient also help determine the progression of an illness. Together with SpO2, HR, and body temperature, RR is one of the clinical features for evaluating the severity of a respiratory disease, e.g., a patient with severe respiratory distress has an RR greater than 30 breaths/min, which can develop into acute respiratory distress syndrome (ARDS) [32,33]. However, for COVID-19, RR can serve as a vital prognostic factor. Wearable strain-gauge sensors, triboelectric sensors, and accelerometers have been extensively studied to detect respiratory movement in the thorax or abdomen caused by respiratory volumetric changes [34]. The wearable technologies include thermal, humidity, acoustic, pressure, resistive, inductive, acceleration, electromyography, and impedance sensors. A wearable device developed with these sensors can be attached to chest belts [35,36] or mounted to the skin [37]. Some of the wearable RR-monitoring products are RespiraSense [38], Spire [39], and epidermal thermal sensors as in [37]
- Cough and lung sound monitoring: Dry cough is one of the symptoms of COVID-19. People infected with COVID-19 may spread the disease when they cough. Therefore, the monitoring of dry cough not only helps in the diagnosis and progression of the illness, but also helps in its prevention. Cough signals are typically acquired with an audio or mechanical sensor that can detect the coughing sound or the vibration caused by the cough, respectively. Such sensors include a microphone that can be wearable or a piezoelectric transducer and a highly sensitive accelerometer that can be mounted at the throat or the thoracic area [40,41,42]. With audio signal processing and pattern recognition approaches such as ML classification algorithms, cough can be identified automatically [41]. Auscultation of the lungs is an important part of respiratory examinations. In [43,44], the authors proposed a wearable stethoscope patch that combines sensing modalities such as a MEMS stethoscope, ambient noise sensing, ECG, impedance pneumography, and nine-axis actigraphy. The system is able to perform auscultation continuously without requiring the distribution of sensors over different places of the body, to detect wheezing or other adventitious respiratory sounds.
- Electrocardiogram for monitoring COVID-19 patients: ECG is a diagnostic tool used to assess the activity of the heart and provide the risk assessment of COVID-19 treatment. Wearable-based tele-ECG monitoring instead of the traditional ECG monitoring systems used by medical practitioners can potentially reduce cross-infections by reducing staff-to-patient contact. Adhesive ECG patches are one of the most common wearable ECG monitoring approaches. The ECG patch device typically consists of a sensor system, a microelectronic circuit with a recorder and memory storage, and an internal embedded battery. These patches are small in size, wireless, with miniaturized electronics, easy to wear, and comfortable to use and can record ECG for many days. For example, the MCOT patch [45] (BioTelemetry, Malvern, PA, USA) is used to monitor the ECG of patients treated with hydroxychloroquine and azithromycin. Other ECG patch products with a similar function have been used in clinical studies including the Savvy monitor (Ljubljana, Slovenia) [46], the SEEQ MCT patch (Medtronic, Inc., Dublin, Ireland) [47] designed, developed and launched by Corventis, Inc. of San Jose, CA, USA, and the VitalPatch wearable sensor (VitalConnect, San Jose, CA, USA) [48].
- Blood pressure monitoring: Blood pressure (BP) is one of the most important vital signs that reveals cardiovascular and cerebrovascular functions. High BP, called hypertension, is the main risk factor for cardiovascular morbidity and mortality. The vulnerable population, i.e., those with underlying conditions, has a higher risk of severe complications from COVID-19 [49,50]. BP is usually measured by cuff-based sphygmomanometers by medical staff, which significantly increases their work load and the possibility of them becoming infected. According to [51], COVID-19-positive patients experience a sudden fall in BP, presumably due to the “cytokine storm”, which is the disastrous overreaction of the immune system. Hence, continuous and remote monitoring of BP in real time may help to prevent sudden events and reduce the possibility of cross-contamination. Some of the unobtrusive BP-monitoring wearables proposed are BP watches [52], BP eyeglasses [53], flexible BP patches [54], BP shirts [55], and wearable skin-like BP patches [56]. Although the research on continuous and unobtrusive monitoring is much more advanced, there are still some obstacles that need to be overcome, especially the accuracy when tracking responses to medications. Because of the dynamic nature of BP and its variability in different individuals, it is challenging to obtain accurate BP estimations for a long time without calibration.
3.1.2. Position of Sensors
3.2. Use of Artificial Intelligence for the Diagnosis and Prevention of COVID-19
- Infection risk: Is a particular group of people or an individual at a high risk of getting COVID-19? This risk can be attenuated when the following statistics are provided in the right manner, i.e., age, current health condition, general hygiene habits, social activities, number of outdoor meetings, frequency of interactions, location, and climate;
- Severity risk: It is always good to be on the safe side and stay away from complications that would result in the need for intensive care. Hence, healthcare practitioners need a system that predicts beforehand severe COVID-19 symptoms that would require hospitalization. Many individuals experience mild symptoms and some acute respiratory distress syndrome, which is certainly deadly, so it is better to begin treatment earlier if the symptoms are becoming worse. This can be solved by ML models, but some groundwork is needed, i.e., more data;
- Outcome risk: With the surge in cases and the increase of the severity of the symptoms in an individual, it is necessary to know the treatment’s outcome, which literally means knowing whether a patient would survive or not. This way, doctors will be confident and able to effectively treat patients. Since treatment methods for COVID-19 are still evolving, there is still some time before AI plays a role in this field, but similar work has been performed in outcome prediction in patients with epilepsy [61];
- Using wearable technology along with AI: At the start of the pandemic, the Apple and Fitbit [62,63] smartwatches made headlines regarding the following and tracking of COVID-19 symptoms; at that time, the research was still young, but now, researchers are using better computational algorithms, and have proven that the use of wearables along with AI gives promising results. If we take the process of diagnosing a viral infection, there is a high probability that the person who takes the sample from the patient may also become infected. The testing results take a few hours, and the person can transmit the virus to a group of people during this time. To avoid these problems, medical staff remotely monitor the patient’s BP, ECG, pulse rate, HR, and fever using wearable devices with AI technology. We summarize the work performed in the literature using AI technology during the COVID-19 pandemic in Table 2.
Role of Cloud, Edge, and Fog Computing along with Wearables to Mitigate COVID-19
- Cloud computing is undoubtedly one of the key research subjects for the past several years. It allows users to move their data and applications to the remote “cloud” and then access them in a simple and pervasive way [71]. A computing cloud is a set of network-enabled services, providing scalable, quality of service (QoS)-guaranteed, normally personalized, inexpensive computing infrastructures on demand;
- Edge computing is undoubtedly the main computing paradigm of the last decade. According to [72], “Edge computing refers to the enabling technologies allowing computation to be performed at the edge of the network, on downstream data on behalf of cloud services and upstream data on behalf of IoT services”. Basically, the idea is to extend cloud computing to the network edge with the aim of the computation being performed in the proximity of the data sources, i.e., IoT devices. This layer can be implemented in different ways. However, all the different implementations have been designed with the edge paradigm in mind; therefore, many similarities are present. The edge computing principles can be put in practice in several ways, in terms of the types of devices, the communication protocols, and the services;
- Fog computing provides distributed computing, storage, control, and networking capabilities closer to the user [73]. It is not just an another implementation of edge computing, but rather the highest evolution of the edge computing principles. Indeed, fog computing is not limited to only the edge of the network, but it incorporates the edge computing concept, providing a structured intermediate layer that fully bridges the gap between the IoT and cloud computing. In fact, fog nodes can be located anywhere between end devices and the cloud [74]; thus, they are not always directly connected to end devices. Moreover, fog computing does not only focus on the “things” side, but also provides its services to the cloud. In this vision, fog computing is not only an extension of the cloud to the edge of the network, nor a replacement of the cloud itself, but rather a new entity working between the cloud and the IoT to fully support and improve their interaction, integrating the IoT and edge and cloud computing.
3.3. Applications
3.3.1. Symptom Screening and Tracking
3.3.2. Use of Wearable Devices in Digital Contact Tracing and Social Distancing
3.3.3. Stress Management Using Wearables
3.3.4. Smart Learning
4. Potential Barriers to Wearables’ Usage and Their Solutions
4.1. Potential Barriers
- Technical issues: Wearables comprise a relatively new technology. Therefore, the utility of wearables at the clinical level is still limited. Healthcare beneficiaries are withholding wearables’ implementation at the clinical level as there is a strong need for more validation studies. This problem can be resolved by the government’s and individuals’ commitment to clinical trials. Based on the feedthrough mechanisms in the clinical atmosphere, there is a possibility to gather huge datasets from various sources. False information is also possible, but real monitoring and processing systems can lessen such problems. This can also decrease the time that the patient needs with the medical practitioner and will help generate a highly integrated real-time healthcare system. There is a high risk of security breaching, which is the most common issue in security systems. This issue can be solved by addressing the points such as where the data from a given device are deposited, to whom the access is provided, and the duration the data are available. Data collection and storage are usually determined by the user. Therefore, the accountability for their usage is user-defined. Apart from this, the wearable system also should not affect the daily behavior of the patient, nor seek to directly replace healthcare professionals. The wearable devices should be compact and easy to use and wear. It has become apparent that despite the importance of user preferences, there is a lack of high-quality studies in this area. These issues become increasingly important if they seek to obtain measurements over longer time periods, for example in monitoring a patient during quarantine;
- Social interruption: Internet access and device penetration are not the same world-over, though the data accumulated from a demonstrative cohort can have a positive influence on the broader public. Provided the comparatively lesser price of a few devices, there should be a governmental allocation to front-line workforces and susceptible groups. Wearable devices require a higher level of digital knowledge, though automatic functions can alert the users. Wearables can be especially efficient in elderly care; however, this group is less skilled with technology. There is a possibility that the alerts might make people nervous, but their use is elective and does not disclose diagnosis. For various people, comprehending one’s personal health and infection possibility would be advantageous, and the wider social effects might be positive;
- Regulatory aspects: There are various barriers that stop the wearables industry from reaching an advance level of innovation. One of them is that each device requires intricate and lengthy procedures before approval. For instance, during the COVID-19 pandemic, the U.S. FDA distributed a new plan that permits manufacturers having FDA-identified devices to increase their utilization so that healthcare beneficiaries can apply them to monitor patients, remotely. Recently, Apple watch’s ECG function has gained permission from the U.S. FDA and nineteen European controllers. Within the European Union, the delivery of new medical devices has been delayed as a result of the COVID-19 crisis.
4.2. Solutions
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
IoT | Internet of Things |
IoE | Internet of Everything |
ARDS | Acute respiratory distress syndrome |
AI | Artificial intelligence |
ML | Machine learning |
DL | Deep learning |
PPG | Photoplethysmography |
ECG | Electrocardiogram |
EMG | Electromyogram |
HR | Hear rate |
RR | Respiratory rate |
HRV | Heart rate variability |
WHO | World health organization |
5G | Fifth generation |
FDA | Food and Drug Administration |
LSTM | long short-term memory |
References
- Greenhalgh, T.; Jimenez, J.L.; Prather, K.A.; Tufekci, Z.; Fisman, D.; Schooley, R. Ten scientific reasons in support of airborne transmission of SARS-CoV-2. Lancet 2021, 397, 1603–1605. [Google Scholar] [CrossRef]
- Pitol, A.K.; Julian, T.R. Community transmission of SARS-CoV-2 by surfaces: Risks and risk reduction strategies. Environ. Sci. Technol. Lett. 2021, 8, 263–269. [Google Scholar] [CrossRef]
- Mortenson, L.Y.; Malani, P.N.; Ernst, R.D. Caring for someone with COVID-19. JAMA 2020, 324, 1016. [Google Scholar] [CrossRef] [PubMed]
- Walsh, K.A.; Spillane, S.; Comber, L.; Cardwell, K.; Harrington, P.; Connell, J.; Teljeur, C.; Broderick, N.; de Gascun, C.F.; Smith, S.M. The duration of infectiousness of individuals infected with SARS-CoV-2. J. Infect. 2020, 81, 847–856. [Google Scholar] [CrossRef] [PubMed]
- Marovich, M.; Mascola, J.R.; Cohen, M.S. Monoclonal antibodies for prevention and treatment of COVID-19. JAMA 2020, 324, 131–132. [Google Scholar] [CrossRef] [PubMed]
- Zaki, N.; Alashwal, H.; Ibrahim, S. Association of hypertension, diabetes, stroke, cancer, kidney disease, and high-cholesterol with COVID-19 disease severity and fatality: A systematic review. Diabetes Metab. Syndr. Clin. Res. Rev. 2020, 14, 1133–1142. [Google Scholar] [CrossRef] [PubMed]
- Indini, A.; Rijavec, E.; Ghidini, M.; Bareggi, C.; Cattaneo, M.; Galassi, B.; Gambini, D.; Grossi, F. Coronavirus infection and immune system: An insight of COVID-19 in cancer patients. Crit. Rev. Oncol./Hematol. 2020, 153, 103059. [Google Scholar] [CrossRef] [PubMed]
- WHO. WHO Coronavirus (COVID-19) Dashboard. Available online: https://covid19.who.int/ (accessed on 25 August 2021).
- Shubina, V.; Holcer, S.; Gould, M.; Lohan, E.S. Survey of decentralized solutions with mobile devices for user location tracking, proximity detection, and contact tracing in the covid-19 era. Data 2020, 5, 87. [Google Scholar] [CrossRef]
- Islam, S.R.; Kwak, D.; Kabir, M.H.; Hossain, M.; Kwak, K.S. The internet of things for healthcare: A comprehensive survey. IEEE Access 2015, 3, 678–708. [Google Scholar] [CrossRef]
- Yakoh, A.; Pimpitak, U.; Rengpipat, S.; Hirankarn, N.; Chailapakul, O.; Chaiyo, S. based electrochemical biosensor for diagnosing COVID-19: Detection of SARS-CoV-2 antibodies and antigen. Biosens. Bioelectron. 2021, 176, 112912. [Google Scholar] [CrossRef]
- Liberati, A.; Altman, D.G.; Tetzlaff, J.; Mulrow, C.; Gøtzsche, P.C.; Ioannidis, J.P.; Clarke, M.; Devereaux, P.J.; Kleijnen, J.; Moher, D. The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate healthcare interventions: Explanation and elaboration. J. Clin. Epidemiol. 2009, 62, e1–e34. [Google Scholar] [CrossRef] [Green Version]
- IEEE. IEEE Xplore Digital Library. Available online: https://ieeexplore.ieee.org/Xplore/home.jsp/ (accessed on 25 August 2021).
- PubMed. National Library of Medicine, National Center for Biotechnology Information. Available online: https://pubmed.ncbi.nlm.nih.gov/ (accessed on 25 August 2021).
- WebOfScience. Discover Multidisciplinary Contentfrom the World’s Most Trusted Global Citation Database. Available online: https://www.webofscience.com/wos/woscc/basic-search/ (accessed on 25 August 2021).
- Park, S.; Chung, K.; Jayaraman, S. Wearables: Fundamentals, advancements, and a roadmap for the future. In Wearable Sensors; Elsevier: Amsterdam, The Netherlands, 2014; pp. 1–23. [Google Scholar]
- Channa, A.; Popescu, N. Managing COVID-19 Global Pandemic with High-Tech Consumer Wearables: A Comprehensive Review. In Proceedings of the 2020 12th International Congress on Ultra Modern Telecommunications and Control Systems and Workshops (ICUMT), Brno, Czech Republic, 5–7 October 2020; pp. 222–228. [Google Scholar]
- Williamson, J.; Liu, Q.; Lu, F.; Mohrman, W.; Li, K.; Dick, R.; Shang, L. Data sensing and analysis: Challenges for wearables. In Proceedings of the 20th Asia and South Pacific Design Automation Conference, Chiba, Japan, 19–22 January 2015; pp. 136–141. [Google Scholar]
- MyHomeDoc. Medical Diagnosis via Smartphone. Available online: https://www.geektime.com/myhomedoc-secures-fda-ok-for-telehealth-diagnostics-tool/ (accessed on 25 August 2021).
- Oxitone. Medical Follow-Up Made Effortless. Available online: https://www.oxitone.com/ (accessed on 25 August 2021).
- Masimo. Solutions for COVID-19 Surge Capacity Monitoring. Available online: https://www.masimo.com/ (accessed on 25 August 2021).
- VitalConnect. Home Patient Monitoring. Available online: https://vitalconnect.com/ (accessed on 25 August 2021).
- Jiang, F.; Deng, L.; Zhang, L.; Cai, Y.; Cheung, C.W.; Xia, Z. Review of the clinical characteristics of coronavirus disease 2019 (COVID-19). J. Gen. Intern. Med. 2020, 35, 1545–1549. [Google Scholar] [CrossRef] [Green Version]
- TempTraq. Available online: https://www.temptraq.com/Home (accessed on 25 August 2021).
- Oura-Ring. Personal Insights to Empower Your Everyday. Available online: https://ouraring.com/ (accessed on 25 August 2021).
- VivaLNK-Inc. VivaLNK: Fever Scout. Available online: http://www.vivalnk.com/feverscout (accessed on 25 August 2021).
- Mahbub, I.; Islam, S.; Shamsir, S.; Pullano, S.; Fiorillo, A.; Gaylord, M.; Lorch, V. A low power wearable respiration monitoring sensor using pyroelectric transducer. In Proceedings of the 2017 United States National Committee of URSI National Radio Science Meeting (USNC-URSI NRSM), Boulder, CO, USA, 4–7 January 2017; pp. 1–2. [Google Scholar]
- MightySat. MightySat® Rx Fingertip Pulse Oximeter. Available online: https://www.masimo.com/products/monitors/spot-check/mightysatrx/ (accessed on 25 August 2021).
- PO3M. iHealth: Wireless Pulse Oximeter. Available online: https://ihealthlabs.com/ (accessed on 25 August 2021).
- CONTEC. CONTEC FDA Proved Wrist Fingertip Pulse Oximeter, Blood oxygen SpO2 Monitor, PR, Heart Rate Monitor, CMS50F with PC Software. Available online: https://www.newegg.com/contec-cms50f-oximeters/p/1JV-000S-00022 (accessed on 25 August 2021).
- Kim, J.; Gutruf, P.; Chiarelli, A.M.; Heo, S.Y.; Cho, K.; Xie, Z.; Banks, A.; Han, S.; Jang, K.I.; Lee, J.W.; et al. Miniaturized battery-free wireless systems for wearable pulse oximetry. Adv. Funct. Mater. 2017, 27, 1604373. [Google Scholar] [CrossRef] [Green Version]
- Huang, C.; Wang, Y.; Li, X.; Ren, L.; Zhao, J.; Hu, Y.; Zhang, L.; Fan, G.; Xu, J.; Gu, X.; et al. Clinical features of patients infected with 2019 novel coronavirus in Wuhan, China. Lancet 2020, 395, 497–506. [Google Scholar] [CrossRef] [Green Version]
- Pan, F.; Ye, T.; Sun, P.; Gui, S.; Liang, B.; Li, L.; Zheng, D.; Wang, J.; Hesketh, R.L.; Yang, L.; et al. Time course of lung changes on chest CT during recovery from 2019 novel coronavirus (COVID-19) pneumonia. Radiology 2020, 200370. [Google Scholar] [CrossRef] [Green Version]
- Ding, X.; Clifton, D.; Ji, N.; Lovell, N.H.; Bonato, P.; Chen, W.; Yu, X.; Xue, Z.; Xiang, T.; Long, X.; et al. Wearable sensing and telehealth technology with potential applications in the coronavirus pandemic. IEEE Rev. Biomed. Eng. 2020, 14, 48–70. [Google Scholar] [CrossRef] [PubMed]
- Zhang, H.; Zhang, J.; Hu, Z.; Quan, L.; Shi, L.; Chen, J.; Xuan, W.; Zhang, Z.; Dong, S.; Luo, J. Waist-wearable wireless respiration sensor based on triboelectric effect. Nano Energy 2019, 59, 75–83. [Google Scholar] [CrossRef]
- Yamamoto, A.; Nakamoto, H.; Bessho, Y.; Watanabe, Y.; Oki, Y.; Ono, K.; Fujimoto, Y.; Terada, T.; Ishikawa, A. Monitoring respiratory rates with a wearable system using a stretchable strain sensor during moderate exercise. Med. Biol. Eng. Comput. 2019, 57, 2741–2756. [Google Scholar] [CrossRef]
- Liu, Y.; Zhao, L.; Avila, R.; Yiu, C.; Wong, T.; Chan, Y.; Yao, K.; Li, D.; Zhang, Y.; Li, W.; et al. Epidermal electronics for respiration monitoring via thermo-sensitive measuring. Mater. Today Phys. 2020, 13, 100199. [Google Scholar] [CrossRef]
- Subbe, C.P.; Kinsella, S. Continuous monitoring of respiratory rate in emergency admissions: Evaluation of the RespiraSense™ sensor in acute care compared to the industry standard and gold standard. Sensors 2018, 18, 2700. [Google Scholar] [CrossRef] [Green Version]
- Spirehealth. SpireHealth. Available online: https://spirehealth.com// (accessed on 25 August 2021).
- Drugman, T.; Urbain, J.; Bauwens, N.; Chessini, R.; Valderrama, C.; Lebecque, P.; Dutoit, T. Objective study of sensor relevance for automatic cough detection. IEEE J. Biomed. Health Inform. 2013, 17, 699–707. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Amoh, J.; Odame, K. Deep neural networks for identifying cough sounds. IEEE Trans. Biomed. Circuits Syst. 2016, 10, 1003–1011. [Google Scholar] [CrossRef]
- Elfaramawy, T.; Fall, C.L.; Arab, S.; Morissette, M.; Lellouche, F.; Gosselin, B. A wireless respiratory monitoring system using a wearable patch sensor network. IEEE Sens. J. 2018, 19, 650–657. [Google Scholar] [CrossRef]
- Klum, M.; Leib, F.; Oberschelp, C.; Martens, D.; Pielmus, A.G.; Tigges, T.; Penzel, T.; Orglmeister, R. Wearable multimodal stethoscope patch for wireless biosignal acquisition and long-term auscultation. In Proceedings of the 2019 41st Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), Berlin, Germany, 23–27 July 2019; pp. 5781–5785. [Google Scholar]
- Klum, M.; Urban, M.; Tigges, T.; Pielmus, A.G.; Feldheiser, A.; Schmitt, T.; Orglmeister, R. Wearable cardiorespiratory monitoring employing a multimodal digital patch stethoscope: Estimation of ECG, PEP, LVETand respiration using a 55 mm single-lead ECG and phonocardiogram. Sensors 2020, 20, 2033. [Google Scholar] [CrossRef] [PubMed] [Green Version]
- Gabriels, J.; Saleh, M.; Chang, D.; Epstein, L.M. Inpatient use of mobile continuous telemetry for COVID-19 patients treated with hydroxychloroquine and azithromycin. Hear. Case Rep. 2020, 6, 241–243. [Google Scholar]
- Trobec, R.; Tomašić, I.; Rashkovska, A.; Depolli, M.; Avbelj, V. Commercial ECG systems. In Body Sensors and Electrocardiography; Springer: Berlin/Heidelberg, Germany, 2018; pp. 101–114. [Google Scholar]
- Shareghi, S.; Tavakol, M.; Lindborg, K.; Alfaro Vives, C.; Spaccavento, L. SEEQ mobile cardiac telemetry associated with a high yield of clinically relevant arrhythmias in patients with suspected arrhythmia. Circulation 2016, 134, A16078. [Google Scholar]
- Tonino, R.P.B.; Larimer, K.; Eissen, O.; Schipperus, M.R. Remote patient monitoring in adults receiving transfusion or infusion for hematological disorders using the VitalPatch and accelerateIQ monitoring system: Quantitative feasibility study. JMIR Hum. Factors 2019, 6, e15103. [Google Scholar] [CrossRef]
- Zhou, F.; Yu, T.; Du, R.; Fan, G.; Liu, Y.; Liu, Z.; Xiang, J.; Wang, Y.; Song, B.; Gu, X.; et al. Clinical course and risk factors for mortality of adult inpatients with COVID-19 in Wuhan, China: A retrospective cohort study. Lancet 2020, 395, 1054–1062. [Google Scholar] [CrossRef]
- Cao, X. COVID-19: Immunopathology and its implications for therapy. Nat. Rev. Immunol. 2020, 20, 269–270. [Google Scholar] [CrossRef] [Green Version]
- Meredith Wadman, J.C.F.; Jocelyn Kaiser, C.M. How does coronavirus kill? Clinicians trace a ferocious rampage through the body, from brain to toes. Science, 17 April 2020. [Google Scholar]
- Poon, C.C.; Wong, Y.M.; Zhang, Y.T. M-health: The development of cuff-less and wearable blood pressure meters for use in body sensor networks. In Proceedings of the 2006 IEEE/NLM Life Science Systems and Applications Workshop, Bethesda, MD, USA, 13–14 July 2006; pp. 1–2. [Google Scholar]
- Zhang, Q.; Hu, G.; Yan, X.; Chin, K.Y.; Strangman, G.E.; Zhao, N.; Zhang, Y.T. Pilot development of BP-glass for unobtrusive ambulatory blood pressure monitoring. Iproceedings 2015, 1, e8. [Google Scholar] [CrossRef] [Green Version]
- Luo, N.; Dai, W.; Li, C.; Zhou, Z.; Lu, L.; Poon, C.C.; Chen, S.C.; Zhang, Y.; Zhao, N. Flexible piezoresistive sensor patch enabling ultralow power cuffless blood pressure measurement. Adv. Funct. Mater. 2016, 26, 1178–1187. [Google Scholar] [CrossRef]
- Zhang, Y.T.; Poon, C.C.; Chan, C.H.; Tsang, M.W.; Wu, K.F. A health-shirt using e-textile materials for the continuous and cuffless monitoring of arterial blood pressure. In Proceedings of the 2006 3rd IEEE/EMBS International Summer School on Medical Devices and Biosensors, Cambridge, MA, USA, 4–6 September 2006; pp. 86–89. [Google Scholar]
- Li, H.; Ma, Y.; Liang, Z.; Wang, Z.; Cao, Y.; Xu, Y.; Zhou, H.; Lu, B.; Chen, Y.; Han, Z.; et al. Wearable skin-like optoelectronic systems with suppression of motion artifacts for cuff-less continuous blood pressure monitor. Natl. Sci. Rev. 2020, 7, 849–862. [Google Scholar] [CrossRef] [Green Version]
- Piwek, L.; Ellis, D.A.; Andrews, S.; Joinson, A. The rise of consumer health wearables: Promises and barriers. PLoS Med. 2016, 13, e1001953. [Google Scholar] [CrossRef] [PubMed]
- John Hopkins University and Medicine. Coronavirus Resource Center. Available online: https://coronavirus.jhu.edu/region (accessed on 25 August 2021).
- Zhu, T.; Watkinson, P.; Clifton, D.A. Smartwatch data help detect COVID-19. Nat. Biomed. Eng. 2020, 4, 1125–1127. [Google Scholar] [CrossRef] [PubMed]
- Piccialli, F.; di Cola, V.S.; Giampaolo, F.; Cuomo, S. The Role of Artificial Intelligence in Fighting the COVID-19 Pandemic. Inf. Syst. Front. 2021, 1–31. [Google Scholar]
- Munsell, B.C.; Wee, C.Y.; Keller, S.S.; Weber, B.; Elger, C.; da Silva, L.A.T.; Nesland, T.; Styner, M.; Shen, D.; Bonilha, L. Evaluation of machine learning algorithms for treatment outcome prediction in patients with epilepsy based on structural connectome data. Neuroimage 2015, 118, 219–230. [Google Scholar] [CrossRef] [Green Version]
- Apple. Apple Smartwatch. Available online: https://www.apple.com/watch/ (accessed on 25 August 2021).
- Fitbit Products. Fit versa2. Available online: https://www.fitbit.com/global/us/products/smartwatches/versa (accessed on 25 August 2021).
- Channa, A.; Popescu, N. Robust Technique to Detect COVID-19 Using Chest X-ray Images. In Proceedings of the 2020 International Conference on e-Health and Bioengineering (EHB), Iasi, Romania, 29–30 October 2020; pp. 1–6. [Google Scholar]
- Jiang, X.; Coffee, M.; Bari, A.; Wang, J.; Jiang, X.; Huang, J.; Shi, J.; Dai, J.; Cai, J.; Zhang, T.; et al. Towards an artificial intelligence framework for data-driven prediction of coronavirus clinical severity. Comput. Mater. Contin. 2020, 63, 537–551. [Google Scholar] [CrossRef]
- DeCaprio, D.; Gartner, J.; Burgess, T.; Garcia, K.; Kothari, S.; Sayed, S.; McCall, C.J. Building a COVID-19 vulnerability index. arXiv 2020, arXiv:2003.07347. [Google Scholar]
- Jeong, H.; Rogers, J.A.; Xu, S. Continuous on-body sensing for the COVID-19 pandemic: Gaps and opportunities. Sci. Adv. 2020, 6, eabd4794. [Google Scholar] [CrossRef]
- Bian, S.; Zhou, B.; Bello, H.; Lukowicz, P. A wearable magnetic field based proximity sensing system for monitoring COVID-19 social distancing. In Proceedings of the 2020 International Symposium on Wearable Computers, Virtual Event Mexico, 12–16 September 2020; pp. 22–26. [Google Scholar]
- Mishra, T.; Wang, M.; Metwally, A.A.; Bogu, G.K.; Brooks, A.W.; Bahmani, A.; Alavi, A.; Celli, A.; Higgs, E.; Dagan-Rosenfeld, O.; et al. Early detection of COVID-19 using a smartwatch. medRxiv 2020. [Google Scholar] [CrossRef]
- Mijuskovic, A.; Chiumento, A.; Bemthuis, R.; Aldea, A.; Havinga, P. Resource Management Techniques for Cloud/Fog and Edge Computing: An Evaluation Framework and Classification. Sensors 2021, 21, 1832. [Google Scholar] [CrossRef] [PubMed]
- Wang, L.; Von Laszewski, G.; Younge, A.; He, X.; Kunze, M.; Tao, J.; Fu, C. Cloud computing: A perspective study. New Gener. Comput. 2010, 28, 137–146. [Google Scholar] [CrossRef] [Green Version]
- Shi, W.; Cao, J.; Zhang, Q.; Li, Y.; Xu, L. Edge computing: Vision and challenges. IEEE Internet Things J. 2016, 3, 637–646. [Google Scholar] [CrossRef]
- Chiang, M.; Ha, S.; Risso, F.; Zhang, T.; Chih-Lin, I. Clarifying fog computing and networking: 10 questions and answers. IEEE Commun. Mag. 2017, 55, 18–20. [Google Scholar] [CrossRef] [Green Version]
- De Donno, M.; Tange, K.; Dragoni, N. Foundations and evolution of modern computing paradigms: Cloud, iot, edge, and fog. IEEE Access 2019, 7, 150936–150948. [Google Scholar] [CrossRef]
- Hassen, H.B.; Ayari, N.; Hamdi, B. A home hospitalization system based on the Internet of things, Fog computing and cloud computing. Inform. Med. Unlocked 2020, 20, 100368. [Google Scholar] [CrossRef]
- Debauche, O.; Mahmoudi, S.; Manneback, P.; Assila, A. Fog IoT for Health: A new Architecture for Patients and Elderly Monitoring. Procedia Comput. Sci. 2019, 160, 289–297. [Google Scholar] [CrossRef]
- Ranaweera, P.S.; Liyanage, M.; Jurcut, A.D. Novel MEC based Approaches for Smart Hospitals to Combat COVID-19 Pandemic. IEEE Consum. Electron. Mag. 2020, 10, 80–91. [Google Scholar] [CrossRef]
- Kalavakonda, R.R.; Masna, N.V.R.; Bhuniaroy, A.; Mandal, S.; Bhunia, S. A Smart Mask for Active Defense Against Coronaviruses and Other Airborne Pathogens. IEEE Consum. Electron. Mag. 2020, 10, 72–79. [Google Scholar] [CrossRef]
- Sardar, S.; Mishra, A.K.; Khan, M.Z. Crowd Size using CommSense Instrument for COVID-19 Echo Period. IEEE Consum. Electron. Mag. 2020, 10, 92–97. [Google Scholar] [CrossRef]
- Yu, K.; Tan, L.; Shang, X.; Huang, J.; Srivastava, G.; Chatterjee, P. Efficient and Privacy-Preserving Medical Research Support Platform Against COVID-19: A Blockchain-Based Approach. IEEE Consum. Electron. Mag. 2020, 10, 111–120. [Google Scholar] [CrossRef]
- Cislo, C.; Clingan, C.; Gilley, K.; Rozwadowski, M.; Gainsburg, I.; Bradley, C.; Barabas, J.; Sandford, E.; Olesnavich, M.; Tyler, J.; et al. Monitoring beliefs and physiological measures in students at risk for COVID-19 using wearable sensors and smartphone technology: Protocol for a mobile health study. JMIR Res. Protoc. 2021. [Google Scholar] [CrossRef]
- Emokpae, L.E.; Emokpae, R.N.; Lalouani, W.; Younis, M. Smart Multimodal Telehealth-IoT System for COVID-19 Patients. IEEE Pervasive Comput. 2021, 20, 73–80. [Google Scholar] [CrossRef]
- Polonelli, T.; Schulthess, L.; Mayer, P.; Magno, M.; Benini, L. H-Watch: An Open, Connected Platform for AI-Enhanced COVID19 Infection Symptoms Monitoring and Contact Tracing. In Proceedings of the 2021 IEEE International Symposium on Circuits and Systems (ISCAS), Daegu, Korea, 22–28 May 2021; pp. 1–5. [Google Scholar]
- Stojanović, R.; Škraba, A.; Lutovac, B. A headset like wearable device to track covid-19 symptoms. In Proceedings of the 2020 9th Mediterranean Conference on Embedded Computing (MECO), Budva, Montenegro, 8–11 June 2020; pp. 1–4. [Google Scholar]
- D’Aurizio, N.; Baldi, T.L.; Paolocci, G.; Prattichizzo, D. Preventing Undesired Face-Touches with Wearable Devices and Haptic Feedback. IEEE Access 2020, 8, 139033–139043. [Google Scholar] [CrossRef]
- Nachiar, C.C.; Ambika, N.; Moulika, R.; Poovendran, R. Design of Cost-effective Wearable Sensors with integrated Health Monitoring System. In Proceedings of the 2020 Fourth International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud)(I-SMAC), Palladam, India, 7–9 October 2020; pp. 1289–1292. [Google Scholar]
- Dhadge, A.; Tilekar, G. Severity Monitoring Device for COVID-19 Positive Patients. In Proceedings of the 2020 3rd International Conference on Control and Robots (ICCR), Tokyo, Japan, 26–29 December 2020; pp. 25–29. [Google Scholar]
- Das, A.; Ambastha, S.; Sen, S.; Samanta, S. Wearable system for Real-time Remote Monitoring of Respiratory Rate during Covid-19 using Fiber Bragg Grating. In Proceedings of the 2020 IEEE 17th India Council International Conference (INDICON), New Delhi, India, 10–13 December 2020; pp. 1–4. [Google Scholar]
- Michelin, A.M.; Korres, G.; Ba’ara, S.; Assadi, H.; Alsuradi, H.; Sayegh, R.R.; Argyros, A.; Eid, M. FaceGuard: A Wearable System To Avoid Face Touching. Front. Robot. AI 2021, 8, 47. [Google Scholar] [CrossRef] [PubMed]
- Hoang, M.L.; Carratù, M.; Paciello, V.; Pietrosanto, A. Body Temperature—Indoor Condition Monitor and Activity Recognition by MEMS Accelerometer Based on IoT-Alert System for People in Quarantine Due to COVID-19. Sensors 2021, 21, 2313. [Google Scholar] [CrossRef] [PubMed]
- Poongodi, M.; Hamdi, M.; Malviya, M.; Sharma, A.; Dhiman, G.; Vimal, S. Diagnosis and combating COVID-19 using wearable Oura smart ring with deep learning methods. Pers. Ubiquitous Comput. 2021, 1–11. [Google Scholar] [CrossRef]
- Dow, M.L.; Dugan, S.R. Hypothesis: A wearable device may help COVID-19 patients improve lung function. Med. Hypotheses 2021, 146, 110443. [Google Scholar] [CrossRef]
- Smarr, B.L.; Aschbacher, K.; Fisher, S.M.; Chowdhary, A.; Dilchert, S.; Puldon, K.; Rao, A.; Hecht, F.M.; Mason, A.E. Feasibility of continuous fever monitoring using wearable devices. Sci. Rep. 2020, 10, 1–11. [Google Scholar]
- Mishra, T.; Wang, M.; Metwally, A.A.; Bogu, G.K.; Brooks, A.W.; Bahmani, A.; Alavi, A.; Celli, A.; Higgs, E.; Dagan-Rosenfeld, O.; et al. Pre-symptomatic detection of COVID-19 from smartwatch data. Nat. Biomed. Eng. 2020, 4, 1208–1220. [Google Scholar] [CrossRef] [PubMed]
- Davies, H.J.; Williams, I.; Peters, N.S.; Mandic, D.P. In-Ear SpO2: A Tool for Wearable, Unobtrusive Monitoring of Core Blood Oxygen Saturation. Sensors 2020, 20, 4879. [Google Scholar] [CrossRef] [PubMed]
- Di Sebastiano, K.M.; Chulak-Bozzer, T.; Vanderloo, L.M.; Faulkner, G. Don’t walk so close to me: Physical distancing and adult physical activity in Canada. Front. Psychol. 2020, 11, 1895. [Google Scholar] [CrossRef] [PubMed]
- Bian, S.; Zhou, B.; Lukowicz, P. Social distance monitor with a wearable magnetic field proximity sensor. Sensors 2020, 20, 5101. [Google Scholar] [CrossRef] [PubMed]
- Naqiyuddin, F.A.; Mansor, W.; Sallehuddin, N.; Johari, M.M.; Shazlan, M.; Bakar, A. Wearable Social Distancing Detection System. In Proceedings of the 2020 IEEE International RF and Microwave Conference (RFM), Kuala Lumpur, Malaysia, 14–16 December 2020; pp. 1–4. [Google Scholar]
- Simmhan, Y.; Rambha, T.; Khochare, A.; Ramesh, S.; Baranawal, A.; George, J.V.; Bhope, R.A.; Namtirtha, A.; Sundararajan, A.; Bhargav, S.S.; et al. GoCoronaGo: Privacy respecting contact tracing for COVID-19 management. J. Indian Inst. Sci. 2020, 100, 623–646. [Google Scholar] [CrossRef] [PubMed]
- Vangipuram, S.L.; Mohanty, S.P.; Kougianos, E. CoviChain: A Blockchain Based Framework for Nonrepudiable Contact Tracing in Healthcare Cyber-Physical Systems During Pandemic Outbreaks. SN Comput. Sci. 2021, 2, 1–16. [Google Scholar] [CrossRef]
- Xu, K. Silicon electro-optic micro-modulator fabricated in standard CMOS technology as components for all silicon monolithic integrated optoelectronic systems. J. Micromech. Microeng. 2021, 31, 054001. [Google Scholar] [CrossRef]
- Amft, O.; Lopera, L.; Lukowicz, P.; Bian, S.; Burggraf, P. Wearables to fight COVID-19: From symptom tracking to contact tracing. IEEE Ann. Hist. Comput. 2020, 19, 53–60. [Google Scholar]
- Jahmunah, V.; Sudarshan, V.K.; Oh, S.L.; Gururajan, R.; Gururajan, R.; Zhou, X.; Tao, X.; Faust, O.; Ciaccio, E.J.; Ng, K.H.; et al. Future IoT tools for COVID-19 contact tracing and prediction: A review of the state-of-the-science. Int. J. Imaging Syst. Technol. 2021, 31, 455–471. [Google Scholar] [CrossRef]
- Anglemyer, A.; Moore, T.H.; Parker, L.; Chambers, T.; Grady, A.; Chiu, K.; Parry, M.; Wilczynska, M.; Flemyng, E.; Bero, L. Digital contact tracing technologies in epidemics: A rapid review. Cochrane Database Syst. Rev. 2020. [Google Scholar] [CrossRef]
- Ueafuea, K.; Boonnag, C.; Sudhawiyangkul, T.; Leelaarporn, P.; Gulistan, A.; Chen, W.; Mukhopadhyay, S.C.; Wilaiprasitporn, T.; Piyayotai, S. Potential applications of mobile and wearable devices for psychological support during the COVID-19 pandemic: A review. IEEE Sens. J. 2020, 21, 7162–7178. [Google Scholar] [CrossRef]
- Gaballah, A.; Tiwari, A.; Narayanan, S.; Falk, T.H. Context-Aware Speech Stress Detection in Hospital Workers Using Bi-LSTM Classifiers. In Proceedings of the ICASSP 2021–2021 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), Toronto, ON, Canada, 6–11 June 2021; pp. 8348–8352. [Google Scholar]
- Woodruff, S.J.; Coyne, P.; St-Pierre, E. Stress, physical activity, and screen-related sedentary behavior within the first month of the COVID-19 pandemic. Appl. Psychol. Health Well-Being 2021, 13, 454–468. [Google Scholar] [CrossRef] [PubMed]
- Zhuo, K.; Gao, C.; Wang, X.; Zhang, C.; Wang, Z. Stress and sleep: A survey based on wearable sleep trackers among medical and nursing staff in Wuhan during the COVID-19 pandemic. Gen. Psychiatry 2020, 33, 1–6. [Google Scholar] [CrossRef] [PubMed]
- Umematsu, T.; Sano, A.; Taylor, S.; Picard, R.W. Improving students’ daily life stress forecasting using LSTM neural networks. In Proceedings of the 2019 IEEE EMBS International Conference on Biomedical & Health Informatics (BHI), Chicago, IL, USA, 19–22 May 2019; pp. 1–4. [Google Scholar]
- Can, Y.S.; Chalabianloo, N.; Ekiz, D.; Fernandez-Alvarez, J.; Repetto, C.; Riva, G.; Iles-Smith, H.; Ersoy, C. Real-life stress level monitoring using smart bands in the light of contextual information. IEEE Sens. J. 2020, 20, 8721–8730. [Google Scholar] [CrossRef]
- Shrestha, S.K.; Furqan, F. IoT for Smart Learning/Education. In Proceedings of the 2020 5th International Conference on Innovative Technologies in Intelligent Systems and Industrial Applications (CITISIA), Sydney, Australia, 25–27 November 2020; pp. 1–7. [Google Scholar]
- Mahmood, S.; Palaniappan, S.; Hasan, R.; Sarker, K.U.; Abass, A.; Rajegowda, P.M. Raspberry PI and role of IoT in Education. In Proceedings of the 2019 4th MEC International Conference on Big Data And Smart City (ICBDSC), Muscat, Oman, 15–16 January 2019; pp. 1–6. [Google Scholar]
- Kumar, N.M.; Krishna, P.R.; Pagadala, P.K.; Kumar, N.S. Use of smart glasses in education-a study. In Proceedings of the 2018 2nd International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC) I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (I-SMAC), 2018 2nd International Conference on, Palladam, India, 30–31 August 2018; pp. 56–59. [Google Scholar]
- Arora, A.; Hariharan, P. Sensate Benches–A Modern Approach to Education. In Proceedings of the 2019 5th International Conference on Advanced Computing & Communication Systems (ICACCS), Coimbatore, India, 15–16 March 2019; pp. 401–404. [Google Scholar]
- Xheladini, A.; Saygili, S.D.; Dikbiyik, F. An IoT-based smart exam application. In Proceedings of the IEEE EUROCON 2017-17th International Conference on Smart Technologies, Ohrid, Macedonia, 6–8 July 2017; pp. 513–518. [Google Scholar]
Name | Category | Measurement | Wearability | FDA-Cleared | Reusable | Price |
---|---|---|---|---|---|---|
TempTraq [24] | Body temperature | Fever | Patch | Yes | No | USD 45 |
Oura ring [25] | Body temperature | Fever, steps, HR | Ring | Yes | Yes | USD 299 |
Fever Scout [26] | Body temperature | Fever | Patch | Yes | Yes | USD 20 |
CONTEC [30] | Pulse Oximetry | SpO2, PR, HR | Wristband with finger clip | Yes | Yes | USD 112 |
Battery-free pulse oximetry [31] | Pulse Oximetry | HR and HR variability | Finger nail | No | Yes | NA |
MightySat [28] | Blood oxygen level | SpO2 level only | Finger clip | Yes | No | USD 299 |
PO3M [29] | Pulse oximetry | HR | Finger Clip | Yes | Yes | NA |
Data | Modality | Results | Reference |
---|---|---|---|
Chest images | X-ray | In this study using deep-nets, COVID-19 was diagnosed with an accuracy of 91.67% and an accuracy of 100% in finding the survival ratio. | [64] |
Clinical, laboratory, and radiological | Medical records (all history) | 70% to 80% accuracy was achieved in predicting acute respiratory distress syndrome (ARDS) severity | [65] |
Clinical | Historical medical claims data | Helps curtail the worst effects | [66] |
RR, cough, temperature, accelerometry | Wearable patch | Detects cough related activity, seismocardiogram and RR observation using AI | [67] |
Oscillating magnetic field | Wearable belt | Tracing: proximity estimation up to 0.1m | [68] |
Step counts, sleep times, RHR | Stanfordwatch | 80% early detection rate | [69] |
Wearable Device | Sensors | Multimodal Sensing | Remote Monitoring | Features | Study |
---|---|---|---|---|---|
Smart Telehealth-IoT system | Uses a body area sensor network (BASN) incorporated with a mesh of wireless sensors | ✓ | ✓ | Monitoring vitals: PPG, ECG, EMG, ACG, and AMG, unusual patterns while breathing and allowing the physician to remotely assess them | [82] |
H-watch | Multiple sensors | ✓ | ✓ | Symptom monitoring and contact tracing | [83] |
Headset | NTC thermistor, microphone, and PPG sensor | ✓ | ✗ | Respiration rate (RR), PPG, rapid or shortened breathing, and cough are detected | [84] |
Smartwatch and a wearable accessory | Smartwatch sensors | ✗ | ✗ | Prevention from undesired face touching | [85] |
Headset and mask | Thermistor, microphone, and PPG sensor | ✓ | ✓ | SpO2, RR, HR, temperature, and ECG | [86] |
Wearable device | Pulse oximeter, HR sensor, temperature sensor, and vibration sensor | ✓ | ✓ | SpO2, HR, temperature, and hand movements to determine severity | [87] |
Wearable mask | Optical fiber Bragg grating sensor | ✓ | ✓ | Respiratory rate monitoring | [88] |
Smartwatch with an IMU module and a vibration motor | IMU sensors | ✗ | ✗ | Preventing touching the face | [89] |
M5stickC device | Ambient sensor, infrared, and contact thermometer | ✓ | ✓ | Temperature monitoring and human activity recognition during quarantine | [90] |
Oura ring | Infrared LEDs, accelerometer, gyroscope, and three temperature sensors | ✓ | ✓ | Diagnosis and prevention of COVID-19 | [91] |
Accelerometry-based device to prompt nonsupine positioning | Accelerometer sensors | ✗ | ✓ | Managing respiratory problems of COVID-19-positive patients | [92] |
Oura smart ring | Skin temperature sensor | ✗ | ✓ | Onset of COVID-19 symptoms, i.e., fever | [93] |
Smartwatch | Smartwatch sensors | ✓ | ✓ | Presymptomatic detection of COVID-19 | [94] |
Wearable in-ear (hearable) | Two PPG sensors | ✓ | ✗ | SpO2 measurement | [95] |
Multimodal patch stethoscope | Single-lead ECG and impedance pneumography, 9-axis magnetic, angular rate, and gravity (MARG) sensors, digital stethoscope, and ambient sound recording | ✓ | ✗ | Estimation of ECG, PEP, LVET, and respiration | [44] |
Wearable Device | Sensors | Multimodal Sensing | Wireless Connectivity | Features | Study |
---|---|---|---|---|---|
Fitbit, Garmin, Apple | Inertial and position-tracking sensors | ✓ | WiFi and Bluetooth | Social distancing | [96] |
Wearable (no specific position) | Multiple sensors | ✗ | Bluetooth | Social distancing and contact tracing | [97] |
Belt | Microcontroller with an ultrasonic sensor | ✗ | Bluetooth | Social distancing detection system | [98] |
Smartphone | Inertial sensors, HR sensor | ✓ | Bluetooth | Contact tracing | [99] |
Smartwatch and smartphone | Inertial sensors, vital sign monitoring sensors | ✓ | WiFi | Contact tracing | [100] |
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. |
© 2021 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Channa, A.; Popescu, N.; Skibinska, J.; Burget, R. The Rise of Wearable Devices during the COVID-19 Pandemic: A Systematic Review. Sensors 2021, 21, 5787. https://doi.org/10.3390/s21175787
Channa A, Popescu N, Skibinska J, Burget R. The Rise of Wearable Devices during the COVID-19 Pandemic: A Systematic Review. Sensors. 2021; 21(17):5787. https://doi.org/10.3390/s21175787
Chicago/Turabian StyleChanna, Asma, Nirvana Popescu, Justyna Skibinska, and Radim Burget. 2021. "The Rise of Wearable Devices during the COVID-19 Pandemic: A Systematic Review" Sensors 21, no. 17: 5787. https://doi.org/10.3390/s21175787
APA StyleChanna, A., Popescu, N., Skibinska, J., & Burget, R. (2021). The Rise of Wearable Devices during the COVID-19 Pandemic: A Systematic Review. Sensors, 21(17), 5787. https://doi.org/10.3390/s21175787