| Literature DB >> 35281536 |
Praveen Kumar Kollu1, Kailash Kumar2, Pravin R Kshirsagar3, Saiful Islam4, Quadri Noorulhasan Naveed5, Mohammad Rashid Hussain5, Venkatesa Prabhu Sundramurthy6.
Abstract
Internet of Things (IoT) is a successful area for many industries and academia domains, particularly healthcare is one of the application areas that uses IoT sensors and devices for monitoring. IoT transition replaces contemporary health services with scientific and socioeconomic viewpoints. Since the epidemic began, diverse scientific organizations have been making accelerated efforts to use a wide range of tools to tackle this global challenge and the founders of IoT analytics. Artificial intelligence (AI) plays a key role in measuring, assessing, and diagnosing the risk. It could be used to predict the number of alternate incidents, recovered instances, and casualties, also used for forecasting cases. Within the COVID-19 background, IoT technologies are used to minimize COVID-19 exposure to others by prenatal screening, patient monitoring, and postpatient incident response in specified procedures. In this study, the importance of IoT technology and artificial intelligence in COVID-19 is explored, and the 3 important steps discussed such as the evaluation of networks, implementations, and IoT industries to battle COVID-19, including early detection, quarantine times, and postrecovery activities, are reviewed. In this study, how IoT handles the COVID-19 pandemic at a new level of healthcare is investigated. In this research, the long short-term memory (LSTM) with recurrent neural network (RNN) is used for diagnosis purpose and in particular, its important architecture for the analysis of cough and breathing acoustic characteristics. In comparison with both coughing and respiratory samples, our findings indicate poor accuracy of the voice test.Entities:
Mesh:
Year: 2022 PMID: 35281536 PMCID: PMC8906945 DOI: 10.1155/2022/1987917
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1AI for COVID-19 pandemic.
Figure 2IoT tackles the epidemic of COVID-19.
Figure 3Increase IoT phase map to tackle the pandemic of COVID-19.
Figure 4Major advantages of IoT for pandemic COVID-19.
Figure 5(a) Suraksha Kawach device 5. (b) Sensor 5. (c) Smart band.
Various techniques for coronavirus sample collection.
| Technique | Analysis |
|---|---|
| NC | A collection of respiratory secretions from the back of the throat can be used for specific bacterial culture |
| NS | This approach includes having the breathing tube connected to a syringe, as opposed to nasopharyngeal swab procedure, for the processing of specimens from the nasopharynx |
| ETA | It is a bottom respiratory screening tool by means of a vertical pipe defined as bronchoscope that extracts the specimen from the lungs |
| BAL | A fiber-optical bronchoscope is transferred through nasal passage into the bronchoalveolary stress that after initiation of a sterile saline solution, a sample was obtained |
| Blood test | A pulse in the arm takes a blood sample |
Figure 6Use of AI to detect, respond, and recover from COVID-19.
Figure 7Flow diagram for detection of COVID-19 using IoT and AI.
Figure 8Recurrent neural network.
Figure 9COVID-19 effected cases.
Figure 10Problematic cases.
Figure 11Nonproblematic cases.
Forecasting of COVID-19 with the selective analytical aspects.
| S. no. | Population characteristics | Classification | Frequency bands described |
|---|---|---|---|
| 1 | Gender | Female | Female = 85 |
| Male | Male = 135 | ||
| Others | Others = 7 | ||
|
| |||
| 2 | Age | Below 18 | Below 18 = 30 |
| Between 19 and 30 | Between 19 and 30 = 63 | ||
| Between 31 and 59 | Between 31 and 59 = 92 | ||
| Above 60 | Above 60 = 42 | ||
|
| |||
| 3 | Temperature | Below 37 | Below 37 = 33 |
| Above 38, 39, 40 | Above 38, 39, 40 = 194 | ||
|
| |||
| 4 | Disease find | COVID-19 | COVID-19 = 123 |
| Others | Others = 104 | ||
|
| |||
| 5 | Danger zone | Breathing problem/no breathing problem | Breathing problem = 18 |
COVID-19 effected cases.
| COVID-19 effected cases = 123 | |
|---|---|
| Problematic | 18 |
| Nonproblematic | 105 |
Problematic cases.
| Problematic cases = 18 | |
|---|---|
| Age | Cases |
| Above 60 | 10 |
| 30–59 | 6 |
| 18–29 | 2 |
Nonproblematic cases.
| Nonproblematic cases = 105 | |
|---|---|
| Age | Cases |
| Above 60 | 8 |
| 30–59 | 38 |
| 18–29 | 47 |
| Below 18 | 12 |