| Literature DB >> 36156952 |
Israa Al-Barazanchi1,2, Wahidah Hashim1, Ammar Ahmed Alkahtani3, Haider Rasheed Abdulshaheed2,4, Hassan Muwafaq Gheni5, Aparna Murthy6, Elika Daghighi7, Shihab A Shawkat8, Zahraa A Jaaz1,9.
Abstract
As of late 2019, the COVID19 pandemic has been causing huge concern around the world. Such a pandemic posed serious threats to public safety, the well-being of healthcare workers, and the overall health of the population. If automation can be implemented in healthcare systems, patients could be better cared for and health industries could be less burdened. To combat such challenges, e-health requires apps and intelligent systems. Using WBAN sensors and networks, a doctor or medical professional can advise patients on the best course of action. Patients' fitness could be assessed using WBAN sensors without interfering with their daily activities. When designing a monitoring system, system performance reliability for competent healthcare is critical. Existing research has failed to create a large device capable of handling a large network or to improve WBAN topologies for fast transmitting and receiving patient data. As a result, in this research, we create a multisensor WBAN (MSWBAN) intelligent system for transmitting and receiving critical patient data. To gather information from all cluster nodes and send it to multisensor WBAN, a novel additive distance-threshold routing protocol (ADTRP) is proposed. In small networks where data are managed by the transmitting node and the best data route is determined, this protocol has less redundancy. An edge-cutting-based routing optimization (ES-EC-R ES-EC-RO) is used to find the best route. The Trouped blowfish MD5 (TB-MD5) algorithm is used to encrypt and decrypt data, and the encrypted data are stored in a cloud database for security. The performance metrics of our proposed model are compared to current techniques for the best results. End-to-end latency is 63 ms, packet delivery is 95%, security is 95.7%, and throughput is 9120 bps, according to the results. The purpose of this article is to encourage engineers and front-line workers to develop digital health systems for tracking and controlling virus outbreaks.Entities:
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Year: 2022 PMID: 36156952 PMCID: PMC9499756 DOI: 10.1155/2022/9879259
Source DB: PubMed Journal: Comput Intell Neurosci
Figure 1Architecture of MSWBAN.
Figure 2WBAN flowchart.
Summary of related works.
| Reference | Methods | Advantages | Drawbacks |
|---|---|---|---|
| Singla et al. [ | Secure routing technique | The pricey secure data transfer is not required if no incident is found. | Bandwidth is wasted. It requires a high computational cost for encryption and needs more RAM. |
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| Jabeen et al. [ | Nanosensors | It gives a high surface area/volume ratio by increasing their sensitivity. | These sensors always adopt a similar fundamental process. |
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| Majumder et al. [ | Remote patient monitoring | Increasing communication options strengthen the patient-provider connection and raise customer loyalty and satisfaction. | It relies on technology, which some people may not be able to afford. Reliable Internet connections are required for RPM systems. |
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| Kaur et al. [ | Routing protocol | No route setup delay for connections over small distances. Reactive routing for farther-off destinations results in reduced routing overhead. | They depend on routable network protocols to function. Compared to other network devices, they are expensive. |
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| Thomas and Suresh [ | Hospital management | Every piece of data is accessible by approved login from anywhere in the globe. This form of communication has become considerably less expensive. | User interface and user experience (UI/UX design) are complex designs concerned with a data breach. |
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| Rahman et al. [ | WSN | Because it is scalable, any additional nodes or devices may be added at any moment. | Due to its limited speed architecture, it cannot be utilised for high-speed communication. |
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| Paganelli et al. [ | Multistage fuzzy rules | Fuzzy logic systems have a straightforward and reasonable structure. The fuzzy logic is typically applied in practical and business contexts. | In the large organization industry, it is used for dynamic, emotionally supporting networks and individual assessments. |
Figure 3Schematic representation of the suggested methodology.
Figure 4Cluster head.
Figure 5End-to-end delay results of the proposed methodology.
Figure 6Packet delivery ratio results of the proposed methodology.
Figure 7Energy consumption results of the proposed methodology.
Figure 8Comparison of security level for the existing and proposed methodology.
Comparative analysis of the proposed methodology.
| S. no | Classification methods | End-to-end delay (ms) | Packet delivery rate (%) | Security level (%) | Throughput (bps) |
|---|---|---|---|---|---|
| (1) | GRP [ | 82 | 90 | 81 | 8460 |
| (2) | OEESR [ | 7 | 93 | 88 | 8830 |
| (3) | SEF-IoMT [ | 72 | 92 | 87 | 8786 |
| (4) | EERP [ | 81 | 81 | 80 | 8086 |
| (5) | ADTRP + TB-MD5 [proposed] | 63 | 95 | 95.7 | 9120 |
Simulation parameters.
| S.no | Parameter | Value |
|---|---|---|
| (1) | No. of nodes | 250 |
| (2) | Time | 270 s |
| (3) | Energy consumption | 16.3 j |
| (4) | Transmission power | −15 dBm |
| (5) | No. of packets | 250 |
| (6) | Depth threshold | 10 m |
| (7) | Min: and max: communication range | 225 m, 255 m |
| (8) | Packet generation frequency | 0.02 pkts/min |
| (9) | Transmission range | 32 cm |
| (10) | Node displacement | 0–5 m/s |
| (11) | Number of rounds taken for simulation | 450 rounds |
| (12) | Number of sinks | 1 |
| (13) | Data processing rate | 15,000 bits/s |
| (14) | Temperature threshold | 45°C |
| (15) | SNR | 16 dB |
Figure 9Throughput results of the proposed methodology.
Figure 10Encryption time results of the proposed methodology.
Figure 11Decryption time results of the proposed methodology.