Vulnerability prediction for secure healthcare supply chain service delivery

Author:

Islam Shareeful1,Abba Abdulrazaq2,Ismail Umar2,Mouratidis Haralambos3,Papastergiou Spyridon4

Affiliation:

1. School of Computing and Information Science, Anglia Ruskin University, UK

2. School of Architecture Computing and Engineering, University of East London, UK

3. Institute for Analytics and Data Science, School of Computer Science and Electronic Engineering, University of Essex, UK

4. Department of Informatics, University of Piraeus, Greece

Abstract

Healthcare organisations are constantly facing sophisticated cyberattacks due to the sensitivity and criticality of patient health care information and wide connectivity of medical devices. Such attacks can pose potential disruptions to critical services delivery. There are number of existing works that focus on using Machine Learning (ML) models for predicting vulnerability and exploitation but most of these works focused on parameterized values to predict severity and exploitability. This paper proposes a novel method that uses ontology axioms to define essential concepts related to the overall healthcare ecosystem and to ensure semantic consistency checking among such concepts. The application of ontology enables the formal specification and description of healthcare ecosystem and the key elements used in vulnerability assessment as a set of concepts. Such specification also strengthens the relationships that exist between healthcare-based and vulnerability assessment concepts, in addition to semantic definition and reasoning of the concepts. Our work also makes use of Machine Learning techniques to predict possible security vulnerabilities in health care supply chain services. The paper demonstrates the applicability of our work by using vulnerability datasets to predict the exploitation. The results show that the conceptualization of healthcare sector cybersecurity using an ontological approach provides mechanisms to better understand the correlation between the healthcare sector and the security domain, while the ML algorithms increase the accuracy of the vulnerability exploitability prediction. Our result shows that using Linear Regression, Decision Tree and Random Forest provided a reasonable result for predicting vulnerability exploitability.

Publisher

IOS Press

Subject

Artificial Intelligence,Computational Theory and Mathematics,Computer Science Applications,Theoretical Computer Science,Software

Reference49 articles.

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2. HIMSS. Cybersecurity Survey. https//www.himss.org/sites/hde/files/media/file/2020/11/16/2020_himss_cybersecurity_survey_final.pdf. 2020 (accessed 22 April 2022).

3. Cyrntia Institute. Kenna security, prioritization to prediction volume 1: Analyzing vulnerability remediation strategies. Leesburg, USA; 2018.

4. McGuinness DL. OWL web ontology language overview. W3C recommendation. 2004; 10(10).

5. Automating threat modeling using an ontology framework;Välja;Cybersecurity.,2020

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