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Patient Privacy Violation Detection in Healthcare Critical Infrastructures: An Investigation Using Density-Based Benchmarking

机译:医疗保健关键基础设施中患者隐私违规检测:基于密度的基准测试的调查

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Hospital critical infrastructures have a distinct threat vector, due to (i) a dependence on legacy software; (ii) the vast levels of interconnected medical devices; (iii) the use of multiple bespoke software and that (iv) electronic devices (e.g., laptops and PCs) are often shared by multiple users. In the UK, hospitals are currently upgrading towards the use of electronic patient record (EPR) systems. EPR systems and their data are replacing traditional paper records, providing access to patients’ test results and details of their overall care more efficiently. Paper records are no-longer stored at patients’ bedsides, but instead are accessible via electronic devices for the direct insertion of data. With over 83% of hospitals in the UK moving towards EPRs, access to this healthcare data needs to be monitored proactively for malicious activity. It is paramount that hospitals maintain patient trust and ensure that the information security principles of integrity, availability and confidentiality are upheld when deploying EPR systems. In this paper, an investigation methodology is presented towards the identification of anomalous behaviours within EPR datasets. Many security solutions focus on a perimeter-based approach; however, this approach alone is not enough to guarantee security, as can be seen from the many examples of breaches. Our proposed system can be complementary to existing security perimeter solutions. The system outlined in this research employs an internal-focused methodology for anomaly detection by using the Local Outlier Factor (LOF) and Density-Based Spatial Clustering of Applications with Noise (DBSCAN) algorithms for benchmarking behaviour, for assisting healthcare data analysts. Out of 90,385 unique IDs, DBSCAN finds 102 anomalies, whereas 358 are detected using LOF.
机译:由于(i)对遗留软件的依赖,医院关键基础设施具有明显的威胁向量; (ii)广阔的互联医疗设备; (iii)使用多个定制软件和(iv)电子设备(例如,笔记本电脑和PC)通常由多个用户共享。在英国,医院目前正在升级到使用电子患者记录(EPR)系统。 EPR系统及其数据正在更换传统纸质记录,更有效地提供对患者的测试结果和整体护理的细节。纸质记录不再储存在患者的床上,而是通过电子设备访问,以便直接插入数据。在英国迈向EPRS中有超过83%的医院,需要积极监测对该医疗保健数据的获取恶意活动。这是医院维护患者信任并确保在部署EPR系统时维护完整性,可用性和机密性的信息安全原则。在本文中,朝着epr数据集中识别异常行为的调查方法。许多安全解决方案专注于基于周边的方法;然而,单独的这种方法不足以保证安全性,从违规的许多例子中可以看出。我们所提出的系统可以与现有的安全外围解决方案互补。本研究中概述的系统采用内部聚焦的异常检测方法,用于使用具有噪声(DBSCAN)算法的本地异常因素(LOF)和基于密度的空间聚类来用于基准测试行为,用于协助医疗保健数据分析师。在90,385个独特的ID中,DBSCAN发现102个异常,而使用LOF检测358。

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