Research Projects

PriviLEG
Privacy mechanisms for self-determined handling of medical data in the context of corporate health management
Start: 10/2021
End: 12/2024

PriviLEG developed innovative, data protection–compliant solutions for corporate health management (CHM) and demonstrated how highly sensitive health data can be used securely, efficiently, and in a self-determined manner. The project combined modern anonymization techniques, local AI processing, and flexible, consent-based data sharing to realize practical and trustworthy systems for companies.
The objective of PriviLEG was to reconcile data protection, data sovereignty, and usability. To this end, methods such as differential privacy, privacy-preserving data mining and data publishing, homomorphic encryption, as well as container-based systems with machine-readable consent and distributed ledger technologies were implemented and evaluated.

A central technical focus was the research and development of neural networks for the analysis of medical time-series data, in particular ECG signals. Two model types were systematically compared: a deep convolutional recurrent artificial neural network (ANN) and an energy-efficient spiking neural network (SNN) with biologically plausible leaky integrate-and-fire neurons. Both models were fully implemented in PyTorch, Norse, and snnTorch and trained using a robust data preprocessing pipeline.

The evaluation demonstrated that the developed models outperformed the state of the art in sleep–wake detection. In particular, the SNN architecture proved superior in multi-class classification (sleep/wake and REM phases) as well as in apnea detection, while also offering advantages for deployment on energy-efficient, battery-powered hardware. This work resulted in the publication “Sleep Stage and Apnea Classification from Single-Lead ECG Using Artificial and Spiking Neural Networks,” which received the Best Paper Award at the IEEE-EMBS Conference on Biomedical Engineering & Sciences in 2024 [1]. In addition, the publication “A Formal Treatment of Homomorphic Encryption Based Outsourced Computation in the Universal Composability Framework” [2] was produced.

Role of the FZI
FZI Research Center for Information Technology was responsible for the development and evaluation of the privacy-preserving mechanisms, the implementation of the AI-based analysis systems, and the development of the container-based data sharing solution. The technical feasibility of the approaches was demonstrated using real-world medical datasets, and the results were disseminated through scientific publications, professional events, and knowledge transfer to industry and academia.

PriviLEG thus made a significant contribution to the protection of sensitive health data in the corporate context, combining state-of-the-art privacy technologies with innovative AI approaches and opening new perspectives at the intersection of IT security, medical technology, and artificial intelligence. The developed technologies strengthen the foundation for trustworthy digital health solutions and particularly support small and medium-sized enterprises in implementing sustainable, future-oriented health services.

Contact person
Vice Department Manager
Division: Embedded Systems and Sensors Engineering
Headquarters Karlsruhe

Research focus
Applied Artificial Intelligence

In this research focus, the FZI concentrates on practical research into the key technology of Artificial Intelligence (AI). Innovative AI solutions are developed and transferred to application areas such as mobility, robotics, healthcare technology, logistics, production, and supply and disposal on behalf of our partners and customers.

Safety, Security and Law

Um die sichere Digitalisierung zu ermöglichen, erforscht und vermittelt das FZI in diesem Forschungsschwerpunkt anwendungsnah innovative Konzepte, Methoden zur Absicherung von IT-Systemen sowie rechtliche Rahmenbedingungen.

Illustration

Funding notice:
The BeACTIVE project is funded by the Federal Ministry of Research, Technology and Space.

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