HEIDA - Homomorphic Encryption for Integrity protection in Data sharing Activities with health data Passed
Tuesday May 14, 2024 16:30 - 17:00 F2
Lecturer: Rickard Brännvall
Track: Emerging technologies
Currently, an individual’s opportunities for privacy protection are limited by their digital skills and external factors such as illness, residence, and socio-economic status. Technological development in the field is happening very quickly, but coordination and common platforms are needed to increase accessibility. The purpose of the HEIDA project has been to develop software examples for homomorphic encryption based on RISE’s winning solution in the innovation competition Vinter. This will enable calculations on encrypted data and thus increase the individual’s opportunities for privacy protection in digital health. The project has also explored the usefulness of the technology with federated learning and analyzed the reliability, efficiency, and memory usage of calculations to provide insight into the practical application of the technology. This work also resulted in the development of a new type of neural network that is more resource-efficient during encryption. The technology is of interest to health care decision makers and IT professionals that consider solutions for end-to-end privacy protection in health data platforms.
Topic
Data och Information Security, Cybersecurity
Seminar type
Pre-recorded + On-site
Lecture type
Presentation
Objective of lecture
Tools for implementation
Level of knowledge
Intermediate
Target audience
Management/decision makers
Politicians
Organizational development
Technicians/IT/Developers
Researchers
Students
Keyword
Innovation/research
Follow-up/Report of current status
Test/validation
Information security
Conference
Vitalis
Lecturers
Rickard Brännvall Lecturer
Senior forskare
RISE Research Institutes of Sweden
Rickard Nakamura Brännvall is a Senior Researcher in Applied AI at RISE Research Institutes of Sweden, with a background in Physics and Finance. His current research focuses on the application of privacy-enhancing technologies, particularly for health data applications and privacy-preserving machine learning.