A Machine Learning based Scalable Blockchain architecture for a secure Healthcare system

Mikail Mohammed Salim, Laihyuk Park, Jong Hyuk Park
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引用次数: 2

Abstract

The evolution of the Industrial revolution from 3.0 to 4.0 has transformed the Healthcare environment. Patient Electronic Health Records (EHR) are shared with medical research institutes for clinical research and to manage national disease outbreaks. Healthcare systems implementing centralized machine learning models risk cyberattacks exposing private patient data. Blockchain-based data storage systems enable data security of EHR. However, the low transactions/minute of decentralized systems limit the performance of Healthcare systems and increase network bottleneck concerns. In this paper, we propose a Machine Learning based Blockchain architecture for secure Healthcare systems to preserve patient data privacy using Federated Learning and address Blockchain bottleneck issues by adding sidechains for processing growing transaction requests. A local model using machine learning trains data locally in hospitals and uploads it via Smart Contracts to the Public Healthcare System for global model training. Sidechains enable increased processing speed of Smart Contracts reducing congestions in the network and increasing the transactions per second in the mainchain.
用于安全医疗保健系统的基于机器学习的可扩展区块链架构
工业革命从3.0到4.0的演变改变了医疗保健环境。患者电子健康记录(EHR)与医学研究机构共享,用于临床研究和管理国家疾病暴发。实施集中式机器学习模型的医疗保健系统可能会受到网络攻击,暴露患者的私人数据。基于区块链的数据存储系统,实现电子病历数据安全。然而,分散系统的低事务/分钟限制了医疗保健系统的性能,并增加了网络瓶颈问题。在本文中,我们提出了一种基于机器学习的区块链架构,用于安全医疗保健系统,使用联邦学习保护患者数据隐私,并通过添加侧链来处理不断增长的事务请求来解决区块链瓶颈问题。使用机器学习的本地模型在医院本地训练数据,并通过智能合约将其上传到公共医疗保健系统进行全球模型训练。侧链提高了智能合约的处理速度,减少了网络中的拥塞,增加了主链每秒的交易量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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