| Literature DB >> 33217896 |
Syed Rizwan Hassan1, Ishtiaq Ahmad1, Shafiq Ahmad2, Abdullah Alfaify2, Muhammad Shafiq3.
Abstract
The integration of medical signal processing capabilities and advanced sensors into Internet of Things (IoT) devices plays a key role in providing comfort and convenience to human lives. As the number of patients is increasing gradually, providing healthcare facilities to each patient, particularly to the patients located in remote regions, not only has become challenging but also results in several issues, such as: (i) increase in workload on paramedics, (ii) wastage of time, and (iii) accommodation of patients. Therefore, the design of smart healthcare systems has become an important area of research to overcome these above-mentioned issues. Several healthcare applications have been designed using wireless sensor networks (WSNs), cloud computing, and fog computing. Most of the e-healthcare applications are designed using the cloud computing paradigm. Cloud-based architecture introduces high latency while processing huge amounts of data, thus restricting the large-scale implementation of latency-sensitive e-healthcare applications. Fog computing architecture offers processing and storage resources near to the edge of the network, thus, designing e-healthcare applications using the fog computing paradigm is of interest to meet the low latency requirement of such applications. Patients that are minors or are in intensive care units (ICUs) are unable to self-report their pain conditions. The remote healthcare monitoring applications deploy IoT devices with bio-sensors capable of sensing surface electromyogram (sEMG) and electrocardiogram (ECG) signals to monitor the pain condition of such patients. In this article, fog computing architecture is proposed for deploying a remote pain monitoring system. The key motivation for adopting the fog paradigm in our proposed approach is to reduce latency and network consumption. To validate the effectiveness of the proposed approach in minimizing delay and network utilization, simulations were carried out in iFogSim and the results were compared with the cloud-based systems. The results of the simulations carried out in this research indicate that a reduction in both latency and network consumption can be achieved by adopting the proposed approach for implementing a remote pain monitoring system.Entities:
Keywords: IoT; cloud computing; e-healthcare; fog computing; remote pain monitoring
Mesh:
Year: 2020 PMID: 33217896 PMCID: PMC7698725 DOI: 10.3390/s20226574
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Quality of service (QoS) requirements for real-time e-healthcare services.
| Real-Time E-Healthcare Services | Healthcare Applications | Type of Media | Maximum Delay |
|---|---|---|---|
| Audio communication | Audio conversation between patients and doctors | Audio | <150 milliseconds one-way |
| Video communication | Video conferencing between patients and doctors | Video | <250 milliseconds one-way |
| Robotic services | Tele-ultrasonography | Control signals related to robotics | <300 milliseconds round-trip time |
| Monitoring services | Remote pain monitoring | Biosignal of patients gathered by sensors | <300 milliseconds for real-time ECG |
Figure 1Three-tier architecture for a fog-based remote pain monitoring system.
Figure 2Interconnection of cloud server, fog devices, and sensors.
Figure 3The architecture of the remote pain monitoring system for one hospital.
Figure 4The architecture of the remote pain monitoring system for multiple hospitals.
Figure 5Flow diagram of proposed fog-based remote pain monitoring system.
Biopotential sensor configuration in iFogSim simulator.
| CPU Length | Network Length (bytes) | Sensor Detecting Interval |
|---|---|---|
| 1200 million instructions | 22,000 bytes | 25 milliseconds |
Figure 6iFogSim topology of the proposed fog-based remote pain monitoring system.
Value of parameters used for cloud- and fog-based implementations.
| Parameter | Cloud | Proxy Server | Web Server | Fog Node | Sensor Node |
|---|---|---|---|---|---|
| Level | 0 | 1 | 2 | 2 | 3 |
| Rate per MIPS | 0.01 | 0.0 | 0.0 | 0.0 | 0.0 |
| RAM (MB) | 40,000 | 4000 | 4000 | 4000 | 1000 |
| Idle power | 16 × 83.25 | 83.43 | 83.43 | 83.43 | 82.44 |
| Downlink bandwidth (MB) | 10,000 | 10,000 | 10,000 | 10,000 | - |
| CPU length (MIPS) | 44,800 | 2800 | 2800 | 2800 | 500 |
| Uplink bandwidth (MB) | 100 | 10,000 | 10,000 | 10,000 | 10,000 |
| Busy power (Watt) | 16 × 103 | 107.339 | 107.339 | 107.339 | 87.53 |
Figure 7iFogSim topology of the cloud-based remote pain monitoring system.
Figure 8Cost of execution in the cloud. (a) Comparison of execution cost between cloud- and fog-based implementation. (b) Reduction in execution cost using proposed approach.
Figure 9Latency comparison of proposed fog-based architecture with cloud computing architecture for implementing remote pain monitoring.
Figure 10Network usage comparison of proposed fog-based architecture with cloud computing architecture for implementing remote pain monitoring.
Comparison of the proposed remote pain monitoring system with the existing systems.
| Reference | Paradigm | Remote Monitoring | Response Time | Cost of Execution in Cloud | Network Consumption |
|---|---|---|---|---|---|
| [ | Cloud | Pain | Moderate | High | High |
| [ | Cloud | Pain | Moderate | High | High |
| [ | Cloud | Health | Moderate | High | High |
| [ | Cloud | Patient | Moderate | High | High |
| [ | Cloud | Pain | Moderate | High | High |
| Proposed System | Fog | Pain | Minimum | Low | Low |