| Literature DB >> 34603926 |
Cecilia-Irene Loeza-Mejía1, Eddy Sánchez-DelaCruz1, Pilar Pozos-Parra2, Luis-Alfonso Landero-Hernández1.
Abstract
The COVID-19 pandemic has generated the need to evolve health services to reduce the risk of contagion and promote a collaborative environment even remotely. Advances in Industry 4.0, including the internet of things, mobile networks, cloud computing, and artificial intelligence make Health 4.0 possible to connect patients with healthcare professionals. Hence, the focus of this work is analyzing the potentiality, and challenges of state-of-the-art Health 4.0 applications to face the COVID-19 pandemic including augmented environments, diagnosis of the virus, forecasts, medical robotics, and remote clinical services. It is concluded that Health 4.0 can be applied in the prevention of contagion, improve diagnosis, promote virtual learning environments, and offer remote services. However, there are still ethical, technical, security, and legal challenges to be addressed. Additionally, more imaging datasets for COVID-19 detection need to be made available to the scientific community. Working in the areas of opportunity will help to address the new normal. Likewise, Health 4.0 can be applied not only in the COVID-19 pandemic, but also in future global viruses and natural disasters. © IUPESM and Springer-Verlag GmbH Germany, part of Springer Nature 2021.Entities:
Keywords: Artificial Intelligence; COVID-19; Communication networks; Health 4.0; Machine learning; Remote clinical services
Year: 2021 PMID: 34603926 PMCID: PMC8477175 DOI: 10.1007/s12553-021-00598-8
Source DB: PubMed Journal: Health Technol (Berl) ISSN: 2190-7196
Fig. 1Health 4.0 pipeline for assisted diagnosis
Fig. 2Example of COVID-19 forecast layout
Fig. 3Health 4.0 workflow for monitoring systems
Health 4.0 tasks to face the COVID-19 pandemic
| Assisted diagnosis | Lack of specialized physicians in remote places Partial or strict quarantine | Automatic diagnosis [ | AI [ Cloud computing [ Deep learning [ Fog computing [ Machine learning [ Sensors [ |
| Augmented environments | Contact restrictions Partial or strict quarantine Online classes | Lesion tracking Procedure planning [ Simulation Telesurgery [ Training [ | AR and VR [ Blockchain [ Computer Vision Haptic [ Holographic communication [ Kinect sensors Mobile computing Vibrotactile gloves |
| Forecasts of COVID-19 | Generation of industry, school, and government reopening strategies COVID-19 case tracking | Predict the outbreak [ Risk prediction [ | AI [ Deep learning [ Drone-borne cameras [ Mobile GIS [ Machine learning [ NLP [ Portable digital recorders [ Smartphone applications [ |
| Medical robotics | Contact restrictions | Ambulance robots [ Assisted surgery [ Nursing [ Receptionist robots [ Robotic based treatment [ Sterilization in surfaces [ Telesurgery [ Tracking of surgical activities [ | 5G-tactile internet [ AI [ Deep learning [ Laser printing Machine learning Robotics [ |
| Remote clinical services | Partial or strict quarantine Lack of specialized physician in remote places | COVID-19 symptom studies [ Electronic prescriptions [ Gather information [ Health monitoring [ Holographic communication [ Medical drones [ Postoperative evaluation [ Rehabilitation [ Remote surgery [ Teledentristy [ Transfer packages [ Virtual care platform [ | 5G [ AI [ Big data [ Bluetooth [ Cloud computing [ Deep learning [ Drones Fog computing [ High-performance HTTP [ Machine learning [ Mobile apps [ NLP [ Sensor networks [ Smart thermometers [ Smartphone applications [ Tactile internet [ Wearable devices [ Wi-Fi hotspots [ Wireless telemetry |
Fig. 4Stakeholders, tasks, and technologies in Health 4.0
AI techniques applied in the diagnosis of COVID-19
| Deep learning | CT | Lesion-attention deep neural network [ | 88.6% ACC |
| 94% AUC | |||
| 88.8% RE | |||
| 87.9% PRE | |||
| Multi-Task deep learning [ | 98.78% ACC | ||
| X-ray | Deep transfer learning [ | 98% RE ± 3 | |
| 90% SP | |||
| EfficientNet family of models [ | 93.9% ACC | ||
| 96.8% RE | |||
| Faster R–CNN [ | 97.36% ACC | ||
| 97.65% RE | |||
| 99.28% PRE | |||
| Inception V3 [ | >96% ACC | ||
| Multi-Task deep learning [ | 84.67% ACC | ||
| Machine learning | CT | Support Vector Machine [ | 99.68% ACC |
| X-ray | Support Vector Machine [ | 100% ACC | |
| Support Vector Machine [ | 99.27% ACC |
Health 4.0 tasks and challenges
| Assisted diagnosis | AI-based including machine learning and deep learning studies require a large amount of data to obtain reliable performance [ AI may not detect asymptomatic patients [ Biomedical imaging for COVID-19 is expensive for those living in low-developing countries. |
| Augmented environments | AR and VR are still in development [ High cost of VR applications [ Lack of experts for configuring VR [ |
| Forecasts of COVID-19 | It is necessary to work on publicly available datasets, so that the studies can be validated by different researchers. |
| Medical robotics | Robots need AC/DC power to ensure availability [ |
| Remote clinical services | Drones are exposed to hacking [ Lack of direct communication can lead to mistrust in the patient [ They need a high speed of network communication [ Telesurgery is still an emerging field [ |
| All tasks | 5G and 6G networks could be expensive in developing countries [ AI algorithms that use large amounts of computational resources [ Communication networks require a high level of security because the possible failure will impact the life of the patient [ It is necessary to redefine the business model in hospitals [ Health data are sensitive personal data and require privacy measures [ |