Live Webinar

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Medical Device Cybersecurity Threat & Risk Scoring – How to Know How Severe Your Risks Are
May 13, 2025
| 1 pm EDT

Evaluating cybersecurity risk in medical devices requires a different approach than traditional safety risk assessments. That’s because probability-based methods – while suitable for assessing safety risks – fall short for cybersecurity due to limited historical data and the evolving nature of threats. This webinar offers a technical overview of a highly effective risk assessment approach tailored specifically for cybersecurity – one that leverages well-established industry standards such as ISO 18045:2022 and NIST 800-30r1. Additionally, this webinar explores the strengths and limitations of alternative methodologies, including the Common Vulnerability Scoring System (CVSS). 

Join us for this important discussion. You will gain insights into assessing attack feasibility and accurately determining overall cybersecurity risk. In turn, you’ll be able to make informed choices regarding cybersecurity risk management practices.

 

 

 

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About The Presenters

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Milton Yarberry
ICS

Milton is the Director of Medical Programs for ICS. He is a certified PMP and Scrum Master with a background in software architecture, medical device product development and program management. He has 20 years in product development with 10 years in software consulting and 15 years working with Class II and Class III medical device manufacturers.

Roman Lysecky
BG Networks

Dr. Roman Lysecky is the CTO of BG Networks and Professor Emeritus of Electrical and Computer Engineering at the University of Arizona. He is an expert on embedded systems, IoT security, medical device security, automated threat detection and mitigation, performance and energy optimization, and non-intrusive observation methods. He is an author of over 100 research publications in top journals and conferences. Roman holds PhD, MS, and BS degrees in computer science from the University of California, Riverside.