Department of Informatics, University of Piraeus, Karaoli & Dimitriou 80, 18534, Piraeus, Greece.
Department of Business Administration, School of Business, Athens University of Economics and Business, Patission 76, 10434, Athens, Greece.
BMC Med Inform Decis Mak. 2024 Oct 15;24(1):303. doi: 10.1186/s12911-024-02708-8.
As digital healthcare services handle increasingly more sensitive health data, robust access control methods are required. Especially in emergency conditions, where the patient's health situation is in peril, different healthcare providers associated with critical cases may need to be granted permission to acquire access to Electronic Health Records (EHRs) of patients. The research objective of this work is to develop a proactive access control method that can grant emergency clinicians access to sensitive health data, guaranteeing the integrity and security of the data, and generating trust without the need for a trusted third party.
A contextual and blockchain-based mechanism is proposed that allows access to sensitive EHRs by applying prognostic procedures where information based on context, is utilized to identify critical situations and grant access to medical data. Specifically, to enable proactivity, Long Short Term Memory (LSTM) Neural Networks (NNs) are applied that utilize patient's recent health history to prognose the next two-hour health metrics values. Fuzzy logic is used to evaluate the severity of the patient's health state. These techniques are incorporated in a private and permissioned Hyperledger-Fabric blockchain network, capable of securing patient's sensitive information in the blockchain network.
The developed access control method provides secure access for emergency clinicians to sensitive information and simultaneously safeguards the patient's well-being. Integrating this predictive mechanism within the blockchain network proved to be a robust tool to enhance the performance of the access control mechanism. Furthermore, the blockchain network of this work can record the history of who and when had access to a specific patient's sensitive EHRs, guaranteeing the integrity and security of the data, as well as recording the latency of this mechanism, where three different access control cases are evaluated. This access control mechanism is to be enforced in a real-life scenario in hospitals.
The proposed mechanism informs proactively the emergency team of professional clinicians about patients' critical situations by combining fuzzy and predictive machine learning techniques incorporated in the private and permissioned blockchain network, and it exploits the distributed data of the blockchain architecture, guaranteeing the integrity and security of the data, and thus, enhancing the users' trust to the access control mechanism.
随着数字医疗服务处理越来越多敏感的健康数据,需要强大的访问控制方法。特别是在紧急情况下,患者的健康状况处于危险之中,与危急情况相关的不同医疗服务提供者可能需要被授予获取患者电子健康记录(EHR)的权限。这项工作的研究目标是开发一种主动式访问控制方法,该方法可以允许急诊临床医生访问敏感的健康数据,保证数据的完整性和安全性,并且在不需要可信第三方的情况下产生信任。
提出了一种基于上下文和区块链的机制,该机制通过应用预测程序来允许访问敏感的 EHR,其中信息基于上下文,用于识别危急情况并授予医疗数据的访问权限。具体来说,为了实现主动性,应用了长短期记忆(LSTM)神经网络(NN),该网络利用患者最近的健康史来预测接下来两个小时的健康指标值。模糊逻辑用于评估患者健康状况的严重程度。这些技术被整合到一个私有和许可的 Hyperledger-Fabric 区块链网络中,该网络能够在区块链网络中保护患者的敏感信息安全。
所开发的访问控制方法为急诊临床医生提供了对敏感信息的安全访问,同时保护了患者的福祉。将这种预测机制集成到区块链网络中被证明是增强访问控制机制性能的强大工具。此外,这项工作的区块链网络可以记录谁以及何时访问了特定患者的敏感 EHR 的历史记录,保证数据的完整性和安全性,并记录该机制的延迟,评估了三种不同的访问控制情况。这种访问控制机制将在医院的实际场景中实施。
该机制通过在私有和许可的区块链网络中结合模糊和预测机器学习技术,主动向急诊团队的专业临床医生通报患者的危急情况,并利用区块链架构的分布式数据,保证数据的完整性和安全性,从而增强用户对访问控制机制的信任。