| Literature DB >> 32438545 |
Adarsh Kumar1, Deepak Kumar Sharma2, Anand Nayyar3,4, Saurabh Singh5, Byungun Yoon5.
Abstract
In healthcare, interoperability is widely adopted in the case of cross-departmental or specialization cases. As the human body demands multiple specialized and cross-disciplined medical experiments, interoperability of business entities like different departments, different specializations, the involvement of legal and government monitoring issues etc. are not sufficient to reduce the active medical cases. A patient-centric system with high capability to collect, retrieve, store or exchange data is the demand for present and future times. Such data-centric health processes would bring automated patient medication, or patient self-driven trusted and high satisfaction capabilities. However, data-centric processes are having a huge set of challenges such as security, technology, governance, adoption, deployment, integration etc. This work has explored the feasibility to integrate resource-constrained devices-based wearable kidney systems in the Industry 4.0 network and facilitates data collection, liquidity, storage, retrieval and exchange systems. Thereafter, a Healthcare 4.0 processes-based wearable kidney system is proposed that is having the blockchain technology advantages. Further, game theory-based consensus algorithms are proposed for resource-constrained devices in the kidney system. The overall system design would bring an example for the transition from the specialization or departmental-centric approach to data and patient-centric approach that would bring more transparency, trust and healthy practices in the healthcare sector. Results show a variation of 0.10 million GH/s to 0.18 million GH/s hash rate for the proposed approach. The chances of a majority attack in the proposed scheme are statistically proved to be minimum. Further Average Packet Delivery Rate (ADPR) lies between 95% to 97%, approximately, without the presence of outliers. In the presence of outliers, network performance decreases below 80% APDR (to a minimum of 41.3%) and this indicates that there are outliers present in the network. Simulation results show that the Average Throughput (AT) value lies between 120 Kbps to 250 Kbps.Entities:
Keywords: attacks; bit-exchange; blockchain; challenge-response; cryptocurrency; game theory; gash rate; healthcare; lightweightness
Mesh:
Year: 2020 PMID: 32438545 PMCID: PMC7287825 DOI: 10.3390/s20102868
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Blockchain and Its Network.
Comparative state-of-the-art survey of consensus algorithms in various blockchain-based healthcare applications.
| Author | Year | Consensus Algorithm & Salient Features |
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| Witchey [ | 2015 | This work has mainly discussed the proof-of-work consensus algorithm for healthcare transactions. The healthcare data is provided to one or more validation devices. Thus, the consensus of these devices is maintained through the proof-of-work concept. |
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| Nichol et al. [ | 2016 | This work has mainly discussed proof-of-concept importance in building the trust of the healthcare system with associated applications. These applications are mainly in the healthcare field that requires interoperability. |
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| Peterson et al. [ | 2016 | This work has proposed proof of structural and semantic interoperability and mainly used proof-of-work in sharing healthcare data. This work has concentrated over applying consensus algorithms in institutions interoperability rather than concentration over the patient or data-centric issues. |
| Zhang et al. [ | 2016 | This work added the cryptography mechanisms to blockchain creation in healthcare. Elliptic curve cryptography and its variations are used for ensuring security. Further, a formal verification model is created to analyze the proposed approach. Results show that the proposed approach is protected from various types of attacks. |
| Alhadhrami et al. [ | 2017 | This work has integrated blockchain with the healthcare system and proposed a model to share medical and healthcare records among patients, doctors, hospitals, nurses etc. The aim of sharing this information is to increase interoperability among various sub-systems. |
| Zhang et al. [ | 2017 | This work has mainly addressed the proof-of-interoperability and its importance in the healthcare domain. This is a theoretical constitution to address, explore and analyze the present and future need of blockchain-based healthcare systems. Here, a DApp for Smart Health (DSH) framework is proposed as well to maintain the evolvability with minimum integration complexity. |
| Zhang et al. [ | 2017 | This work is an extension of work done to integrate interoperability in the healthcare sector [ |
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| Engelhardt [ | 2017 | This work has observed that the integration of blockchain technology would bring various advantages to the healthcare system with better administration, monitoring, and accessibility. These claims are made with concrete examples having clear and specified near and long-term goals, promises, and challenges. |
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| Kuo et al. [ | 2017 | This work has introduced the Bitcoin-based blockchain technology with proof-of-work in a decentralized mechanism-based healthcare system. The major topics discussed in the proposed healthcare framework are security, availability, robustness, data immutability etc. The discussed framework mainly explores the feasibility of blockchain in biomedical and healthcare applications, research or record management. |
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| Xia et al. [ | 2017 | This work has concentrated over interoperability through data sharing in a blockchain and cloud environment based healthcare system. This healthcare system emphasizes medical records over institution interoperability. Thus, a multilayered approach is proposed to have three consensus algorithms operated through cryptography primitives and protocols. |
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| Zhang et al. [ | 2017 | This work has realized that the present system does not interconnect the heterogeneous data sources to have interoperability whereas the proposed decentralized application will connect them to have a better environment. The healthcare environment would be better in terms of data accessibility and fault tolerance approaches. |
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| Funk et al. [ | 2018 | This work has realized the easiest implementation of blockchain in healthcare professional education. Here, the details of the regulatory body, technology, competency matrix, online learning, online courses, and media-based education are discussed for exploring and finding the trends of blockchain application in the real-time healthcare sector. |
| Gordon et al. [ | 2018 | This work emphasized over patient-centric data sharing and management system compared to the institution or specialization-centric system. Thereafter, the barriers to patient driving interoperability are explored, analyzed and facilitated for the transition from the present system to a patient-centric approach. |
| Mamoshina et al. [ | 2018 | This work hs presented the details of artificial intelligence and blockchain technology-based innovative healthcare solutions that can be used to speed-up the research aspects in the biomedical field. Further, the patient will be able to appraise and evaluate his/her records in a way that he/she chooses to be the best. |
| Zheng et al. [ | 2018 | This work has proposed conceptual design for data sharing in a secure and transparent manner with blockchain, cloud computing, and machine learning approaches. The goal of this work is to enroll users to self-control their data, apply security approaches in sharing data with associated stakeholders in the healthcare system under the General Data Protection Regulation (GDPR) compliance.? |
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| Griggs et al. [ | 2018 | This work has implemented a private blockchain using Ethereum protocol. Here, sensors are used to communicate with smart devices and provide data for all associated events on the blockchain. This data is more trustworthy because everyone is bound with smart contracts that are automated. |
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| Hölbl et al. [ | 2018 | This is a review work for analyzing the contributions in the field of blockchain technology usage in the healthcare domain. There are various statistics shown in this work to present the need and advantages of blockchain technology through several publications and findings. |
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| Shen et al. [ | 2019 | In this work, an efficient data-sharing scheme is proposed for the healthcare system using blockchain technology named as MedChain. The proposed scheme uses a session-based healthcare data sharing approach for finding the flexibility in the data availability approach securely and efficiently. |
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| De Aguiar et al. [ | 2020 | This work has surveyed over the various approaches applied in integrating the blockchain technology in the healthcare sector. Various types of data such as medical records, image sharing, and log management are found to be important in the healthcare system. |
Figure 2Generic Kidney Monitoring System.
Figure 3Wearable kidney monitoring system with blockchain technology.
Figure 4Proposed wearable kidney edge computing with IoT and blockchain technology.
Figure 5A proposed single-player single-bit PoG.
Figure 6Proposed single player maximal graph (SPMG) PoG Consensus.
Figure 7Proposed multi-player single-bit (MPSB) PoG consensus algorithm.
Figure 8Proposed multi-player multi-bits (MPMB) PoG consensus algorithm.
Figure 9Generic kidney monitoring system in execution.
Figure 10Lightweight and wearable kidney monitoring system in execution.
Figure 11Proposed wearable kidney edge computing with IoT and blockchain technology in execution.
Figure 12Average hash rate analysis (with IoT and edge).
Figure 13Average hash rate analysis (with IoT, edge, fog).
Figure 14Average hash rate analysis (with IoT, edge, fog, and cloud).
Figure 15Average hash rate analysis (with IoT and edge).
Figure 16Average hash rate analysis (with IoT, edge, fog).
Figure 17Average hash rate analysis (with IoT, edge, fog, and cloud).
Figure 18Average hash rate analysis (with IoT and edge).
Figure 19Average hash rate analysis (with IoT, edge, fog).
Figure 20Average hash rate analysis (with IoT, edge, fog, and cloud).
Figure 21Average hash rate analysis (with IoT and edge).
Figure 22Average hash rate analysis (with IoT, edge, fog).
Figure 23Average hash rate analysis (with IoT, edge, fog, and cloud).
Figure 24Average hash rate analysis (with IoT and edge).
Figure 25Average hash rate analysis (with IoT, edge, fog).
Figure 26Average hash rate analysis (with IoT, edge, fog, and cloud).
Figure 27Comparative uncle block analysis.
Figure 28Average block size variations over simulation time for five case-studies.
Figure 29Comparative analysis of blockchain priority level and number of blocks mined per participant.
Figure 30Analysis of the number of blocks mined as the number of participants associated with those blocks increases with time.
Figure 31Comparative analysis of change in the number of blocks mined per seconds with a change in block challenges.
Figure 32AnyLogicPoG Bit Verifier Circuit for Patient-Doctor Model.
Figure 33AnyLogicPoG Bit Verifier Circuit for Patient-Doctor Model in Execution.
Figure 34AnyLogic Graph for Patients and Doctor Statistics.
Figure 35AnyLogic Statistics for Bits Verifications in PoG.
Figure 36System Working Distribution Variations with simulation time.
Figure 37AnyLogic Patient-Doctor Simulation 3D Model in Execution (side viewpoint).
Figure 38AnyLogic Patient-Doctor Simulation 3D Model in Execution (top viewpoint).
Figure 39AnyLogic Patient-Doctor Simulation 2D Model in Execution (top viewpoint).
Figure 40Average Packet Data Rate (ADPR) for Proposed IoT-Sensor based Network.
Figure 41Average throughput (AT) for Proposed IoT-Sensor based network.
Figure 42Comparative analysis of proposed work with existing using average delay time variations in consensus building.