Blockchain for Healthcare Medical Records Management System with Sharing Control

Alaa Haddad, M. H. Habaebi, M. R. Islam, S. A. Zabidi
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引用次数: 3

Abstract

Nowadays, with large quantities of data in every industry and the advancement of technology, solutions to a wide range of problems can be resolved. In this paper, Machine Learning and Blockchain are used to propose a solution to difficulties linked to healthcare data management systems. Machine Learning allows the extraction of needed-only information that is relevant from data. This is achieved using trained algorithms that provide an intelligent decision strategy based on Convolutional Neural Networks (CNN) to automatically extract high-level semantic information from electronic medical records and then perform automatic diagnosis. Once medical data is saved, the next issue is data sharing and reliability. This is where Blockchain technology comes into play. The Blockchain with consensus protocol ensures that information is authentic, and transactions are safe. By putting the patient at the center of the healthcare system and boosting the privacy and interoperability of health data, this proposed solution can improve health care administration. This paper focuses on using Blockchain technology to solve healthcare data management problems while also incorporating some essential Machine Learning features. The expected result of the proposed system 98.67% accuracy and 96.02% recall, demonstrating that employing a convolutional neural network to learn high-level semantic aspects of electronic medical records and then undertake assist diagnosis is feasible and valuable.
区块链医疗记录管理系统与共享控制
如今,随着每个行业的大量数据和技术的进步,可以解决各种各样的问题。在本文中,机器学习和区块链被用来提出与医疗数据管理系统相关的困难的解决方案。机器学习允许从数据中提取只需要的相关信息。这是通过训练算法实现的,该算法提供基于卷积神经网络(CNN)的智能决策策略,自动从电子病历中提取高级语义信息,然后执行自动诊断。医疗数据保存后,下一个问题是数据共享和可靠性。这就是区块链技术发挥作用的地方。具有共识协议的区块链确保了信息的真实性和交易的安全性。通过将患者置于医疗保健系统的中心,并增强健康数据的隐私性和互操作性,该建议的解决方案可以改善医疗保健管理。本文的重点是使用区块链技术来解决医疗数据管理问题,同时还结合了一些基本的机器学习功能。该系统的预期准确率为98.67%,召回率为96.02%,表明利用卷积神经网络学习电子病历的高级语义方面进行辅助诊断是可行的,具有一定的应用价值。
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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