SECURE HEALTHCARE IN THE ERA OF DECENTRALIZATION-AN EDGE –ASSISTED BLOCKCHAIN FRAMWORK FOR DATA MANAGEMENT | IJCSE Volume 9 – Issue 6 | IJCSE-V9I6P40

IJCSE International Journal of Computer Science Engineering Logo

International Journal of Computer Science Engineering Techniques

ISSN: 2455-135X
Volume 9, Issue 6  |  Published:
Author

Abstract

The rapid digitization of healthcare systems has created unprecedented volumes of sensitive medical data, highlighting the need for secure, scalable, and efficient data management solutions. Traditional centralized healthcare infrastructures are vulnerable to cyberattacks, latency, and compliance challenges, limiting their effectiveness. This research paper proposes a decentralized edge-assisted blockchain framework that integrates IoTenabled medical devices, edge computing, and blockchain technology to address these limitations. The framework ensures real-time data processing at the edge, immutability and transparency via blockchain, and role-based access control for regulatory compliance. Performance evaluation demonstrates significant improvements in data security, latency, scalability, and auditability compared to conventional centralized systems. The proposed architecture provides a practical solution for hospitals, clinics, and remote telemedicine applications, while also offering the flexibility to incorporate AI-driven analytics and federated learning in future expansions. This research lays the foundation for next-generation healthcare data ecosystems that are secure, efficient, and privacy-preserving.

Keywords

Blockchain, Edge Computing, Healthcare Data Management, IoT Security, Smart Contracts, Data Privacy, Decentralized framework, Secure Data Management.

Conclusion

The study proposes a decentralized edge-assisted blockchain framework for secure healthcare data management, addressing latency, data breaches, scalability, and compliance challenges.

References

[1] A. A. Abdellatif, A. Z. Al-Marridi, A. Mohamed, A. Erbad, C. F. Chiasserini, and A. Refaey, “ssHealth: Toward secure, blockchain-enabled healthcare systems,” arXiv preprint arXiv:2006.10843, pp. 1–13, Jun. 2020. [2] N. Abbas, Y. Zhang, A. Taherkordi, and T. Skeie, “Mobile edge computing: A survey,” IEEE Internet of Things Journal, vol. 5, no. 1, pp. 450–465, Feb. 2018. [3] M. Conti, E. S. Kumar, C. Lal, and S. Ruj, “A survey on security and privacy issues of Bitcoin,” IEEE Communications Surveys & Tutorials, vol. 20, no. 4, pp. 3416–3452, Fourthquarter 2018. [4] M. Ejaz, T. Kumar, I. Kovačević, M. Ylianttila, and E. Harjula, “Health-BlockEdge: Blockchain-edge framework for reliable low-latency digital healthcare applications,” Sensors, vol. 21, no. 7, pp. 1–21, Apr. 2021. [5] M. S. Hossain, G. Muhammad, and N. Guizani, “Explainable AI and mass surveillance system-based healthcare framework to combat COVID-19-like pandemics,” IEEE Network, vol. 34, no. 4, pp. 126–132, Jul. 2020. [6] R. Kaur and K. Sood, “An efficient blockchain-based framework for secure data sharing in cloud environments,” IEEE Transactions on Cloud Computing, vol. 9, no. 1, pp. 210–222, Jan.–Mar. 2021. [7] S. Nakamoto, “Bitcoin: A peer-to-peer electronic cash system,” 2008. [Online]. Available: https://bitcoin.org/bitcoin.pdf [8] H. Shafagh, L. Burkhalter, A. Hithnawi, and S. Duquennoy, “Towards blockchain-based auditable storage and sharing of IoT data,” in Proceedings of the ACM Cloud Computing Security Workshop, Dallas, TX, USA, 2017, pp. 45–50. [9] G. Wood, “Ethereum: A secure decentralised generalised transaction ledger,” Ethereum Project Yellow Paper, 2014. [10] X. Xu, I. Weber, and M. Staples, Architecture for Blockchain Applications. Cham, Switzerland: Springer, 2019. [11] K. Zhang, J. Ni, K. Yang, X. Liang, J. Ren, and X. S. Shen, “Security and privacy in smart city applications: Challenges and solutions,” IEEE Communications Magazine, vol. 55, no. 1, pp. 122–129, Jan. 2017. [12] Z. Zheng, S. Xie, H. Dai, X. Chen, and H. Wang, “An overview of blockchain technology: Architecture, consensus, and future trends,” in Proceedings of the IEEE International Congress on Big Data (BigData Congress), Honolulu, HI, USA, 2017, pp. 557–564.
© 2025 International Journal of Computer Science Engineering Techniques (IJCSE).