基于区块链和深度学习的电子健康记录综合分析方法

Jagendra Singh, P. Singhal, Shelly Gupta, Deepak
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引用次数: 0

摘要

区块链用于以数字方式评估健康记录,保护记录的安全性和不变性。这项研究的目的是让患者更容易访问他们的医疗记录,并向他们发送关于重要检查日期、健康饮食和预约的提醒信息。为了实现上述目标,启动了一种使用区块链和深度学习的综合方法。第一种方法是区块链中的Hyperledger Fabric,即私有区块链,用于将数据存储在医学记录的账本中,该账本可以在医院和卫生组织之间共享。第二种方法结合了深度学习算法。在算法的帮助下,我们可以分析分类账,然后向患者注册的移动设备发送警报,即咨询、健康饮食、药物等。所提出的工作使用了数据集中的九个特征;特征包括身份号码、年龄、性别、疾病、体重、就诊日期、药物、诊断和饮食规范。这项研究有几个特点,以给出准确的结果。这项建议工作中使用的集成模型使患者的警报系统自动执行各种活动。在精确度、召回率和F1分数方面,测试数据表明LSTM的性能优于其他模型。通过与安卓移动设备上的日历软件合作,未来可以改进警报系统。
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An Integrated Approach for Analysis of Electronic Health Records using Blockchain and Deep Learning
Blockchain is used to assess health records digitally, preserving the security and immutability of the records. The goal of this study is to make it easier for patients to access their medical records and to send them alert messages about important dates for their check-ups, healthy diet, and appointments. To achieve the above-mentioned objective, an integrated approach using Blockchain and Deep learning is initiated. The first approach is Hyperledger Fabric in Blockchain, i.e., private Blockchain, for storing the data in the medically documented ledger, which can be shared among hospitals as well as Health organizations. The second approach is incorporated with a deep learning algorithm. With the help of algorithms, we can analyse the ledger, after which an alert i.e. consultation, health diet, medication, etc., will be sent to the patient’s registered mobile device. The proposed work uses nine features from the dataset; the features are identification number, age, person gender, disease, weight, consultation date, medication, diagnosis, and diet specification. The study is conducted with several features to give accurate results. The integrated model used in this suggested piece of work automates the patient's alert system for a variety of activities. In terms of precision, recall, and F1 score, testing data demonstrate that the LSTM performs better than the other models. By working together with the calendar software on Android mobile devices, alert systems can be improved in the future.
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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