Privacy Aware and Privacy Preserving Distributed and Robust Machine Learning for Medical Applications

Civil SecurityHORIZON-RIAID: 101070222
EC Contribution
€42,805
Consortium Size
9 orgs
Start Year
2022
Summary

PAROMA-MED will develop, validate and evaluate a platform - based hybrid-cloud delivery framework for privacy- and security- assured services and applications in federative cross-border environments.To this purpose, the project will develop new architectures, technologies, tools and services to support:-automatic attestation of federation partners-privacy- and security - by-design, integrating standard compliance and performance / QoS requirements into a policy framework-consumers with their rights for opt-in / opt-out consent, portability and right to be forgotten requests, as well as transparency in access to their private-data.-federative Identity and Access Management, based on Zero Trust principles, continuous risk assessment and on confidentiality, integrity and authenticity insurance-privacy-preserving and trusted data - storage and - processing in federative environments-flexible and secure access over the Internet to private-data and service resources-AI / ML by-design, integrating platform services to be used by application developers for data-intensive applications-Zero Touch deployment and automatic life-cycle management of services and applications-managed Privacy and Security operations for automated policy enforcement and cyberthreat detection and mitigationEfficiency and scalability will be insured by the implementation of cloud-native solutions, while future adoption and further development is insured by open-source implementations.The project will validate and evaluate the PAROMA-MED framework by developing of a comprehensive Use Case with real users in the Healthcare sector.The project will create impact on the application- creation and delivery ecosystem (including standardization and legal stakeholders), on society and environment and manage the impact via dedicated activities and communication channels.

Consortium (9)

Project Results (15)

Source: CORDIS, the EU research results database.

Publications (5)
Federated vs. centralized learning for medical images classification and segmentation
Medical Imaging 2025: Computer-Aided Diagnosis· 2025DOI
Irina Rakotoarisedy, Adam Fragkiadakis, Pascal Haigron, Antoine Simon
Chapter 2: Architecture and design choices for federated learning in modern digital healthcare systems
· 2024DOI
Konstantinos A. Koutsopoulos, Christoph Thümmler, Angelica Avila Castillo, Alice Abend, Stefan Covaci, Benjamin Ertl, Giannis Ledakis, Stéphane Lorin, Vincent Thouvenot, Sahar Haddad, Gouenou Coatrieux, Reda Bellafqira, Alessandro Bassi
Chapter 4: Recent Advances in federated learning for digital healthcare systems
· 2024DOI
Pooja Mohnani, Christoph Thümmler, Angelica Avila Castillo, Rasha Tolba, Alessandro Bassi, Antoine Simon, Anastasius Gavras, Orazio Toscano, Pascal Haigron
Federated machine learning through edge ready architectures with privacy preservation as a service
2022 IEEE Future Networks World Forum (FNWF)· 2023DOI
Anastasius Gavras; Konstantinos Koutsopoulos; Stefan Covaci; Benjamin Ertl; Spyridon Tompros; Antoine Simon; Gouenou Coatrieux; Katarzyna Kapista
When Federated Learning Meets Watermarking: A Comprehensive Overview of Techniques for Intellectual Property Protection
Machine Learning & knowledge extraction· 2023DOI
Mohammed Lansari; Vincent Thouvenot; Katarzyna Kapusta; Gouenou Coatrieux; Reda Bellafqira; Olivier Bettan
Deliverables (8)
Other Results (2)
PATH COMPUTATION IN A COMMUNICATION NETWORK
Periodic Reporting for period 1 - PAROMA-MED (Privacy Aware and Privacy Preserving Distributed and Robust Machine Learning for Medical Applications)