Ünözkan Hüseyin, Ertem Mehmet, Bendak Salaheddine
Department of Industrial Engineering, Haliç University, Eyüpsultan, Istanbul, Turkey.
Department of Industrial Engineering, Eskişehir Osmangazi University, Eskişehir, Turkey.
Netw Model Anal Health Inform Bioinform. 2022;11(1):52. doi: 10.1007/s13721-022-00391-1. Epub 2022 Nov 16.
Cyber security encompasses a variety of financial, political, and social aspects with significant implications for the safety of individuals and organisations. Hospitals are among the least secure and most vulnerable organisations in terms of cybersecurity. Protecting medical records from cyberattacks is critical for protecting personal and financial records of those involved in medical institutions. Attack graphs, like in other systems, can be used to protect medical and hospital records from cyberattacks. In the current study, a total of 352 real-life cyberattacks on healthcare institutions using common vulnerability scoring system (CVSS) data were statistically examined to determine important trends and specifications in regard to those attacks. Following that, several machine learning techniques and an artificial neural network model were used to model industrial control systems (ICS) vulnerability data of those attacks. The average vulnerability score for attacks on healthcare IT systems was found to be very high. Moreover, this score was found to be higher in healthcare institutions which have experienced cyberattacks in the past and no mitigation actions were implemented. Using Python programming software, the most successful model that can be used in modelling cyberattacks on IT systems of healthcare institutions was found to be the -nearest neighbours (KNN) algorithm. The model was then enhanced further and then it was tried to make predictions for future cyberattacks on IT systems of healthcare institutions. Results indicate that the overall score is critical indicating that medical records are, in general, at high risk and that there is a high risk of cyberattacks on medical records in healthcare institutions. It is recommended, therefore, that those institutions should take urgent precautionary measures to mitigate such a high risk of cyberattacks and to make them more secure, reliable, and robust.
网络安全涵盖各种金融、政治和社会层面,对个人和组织的安全有着重大影响。就网络安全而言,医院是最不安全、最易受攻击的组织之一。保护医疗记录免受网络攻击对于保护医疗机构相关人员的个人和财务记录至关重要。与其他系统一样,攻击图可用于保护医疗和医院记录免受网络攻击。在本研究中,我们对352起使用通用漏洞评分系统(CVSS)数据的针对医疗机构的现实网络攻击进行了统计分析,以确定这些攻击的重要趋势和特征。随后,我们使用了几种机器学习技术和一个人工神经网络模型对这些攻击的工业控制系统(ICS)漏洞数据进行建模。结果发现,针对医疗IT系统的攻击的平均漏洞评分非常高。此外,在过去遭受过网络攻击且未采取缓解措施的医疗机构中,该评分更高。使用Python编程软件,我们发现可用于对医疗机构IT系统网络攻击进行建模的最成功模型是K近邻(KNN)算法。然后对该模型进行了进一步优化,并尝试对医疗机构IT系统未来的网络攻击进行预测。结果表明,总体评分很关键,这表明医疗记录总体上处于高风险状态,医疗机构的医疗记录存在遭受网络攻击的高风险。因此,建议这些机构应立即采取预防措施,以降低这种网络攻击的高风险,使其更安全、可靠和稳健。