From Data to Diagnosis: how federated learning protects patient privacy while shaping the future of healthcare

Europe/Zurich
4/3-001 (CERN)

4/3-001

CERN

18
Show room on map
Description

Webinar Recording: https://www.youtube.com/watch?v=5IRFKrN1_zY

 

Machine learning is revolutionizing healthcare by creating new possibilities for clinical research and patient care. However, its effectiveness relies on access to large, diverse datasets, which often necessitates sharing sensitive patient information across institutions. This raises significant concerns about privacy and security, challenging the full realization of machine learning's potential in healthcare. 

 

The European Infrastructure for Translational Medicine (EATRIS) and CERN are jointly organizing this webinar to explore how federated learning can address these challenges by allowing the training of machine learning models across multiple institutions without sharing patient data. Through federated learning, algorithms are trained locally on decentralized data, with only model updates being shared and aggregated. This approach preserves patient privacy while leveraging extensive datasets that are crucial for developing accurate and effective predictive models. 

 

EATRIS will emphasize the importance of multidisciplinary collaboration in driving digitalization and artificial intelligence in healthcare, bringing in the example of TRUSTroke, a European project aimed at optimizing stroke treatment using AI and federated learning. In particular, Carlos Molina, Director of Vall d’Hebron Stroke Center at Vall d'Hebron Research Hospital in Barcelona, Spain, and TRUSTroke coordinator will describe specific challenges in managing stroke patients and assessing disease progression using clinical data. Luigi Serio, Principal Scientist at CERN, will illustrate how a federated learning platform developed and operated at CERN can provide robust machine learning algorithms trained across several data silos without exchanging any personal information. Additionally, the webinar will provide insights from Siemens Healthineers, discussing current gaps in the patient pathway and how the industry can help bridge these gaps to improve patient outcomes. 

 

The event will conclude with a round table discussion and Q&A session, providing participants with the opportunity to engage with experts on the ethical, technical, and practical considerations involved in the implementation of federated learning in healthcare. 

Furthermore, the webinar will include an interactive questionnaire throughout, allowing us to gauge the audience’s opinions on this new technology. 

 

The TRUSTroke project is funded by the European Union in the call HORIZON-HLTH-2022-STAYHLTH-01-two-stage under grant agreement No-101080564.   

 

Registration
Participants
    • 14:00 14:05
      Welcome and Introduction 5m
      Speaker: Mr Anton Ussi (EATRIS)
    • 14:05 14:15
      Multidisciplinary collaboration as enablers of digitalisation and AI (EATRIS) 10m
      Speaker: Dr Sara Zullino (EATRIS)
    • 14:15 14:25
      The Challenge in Stroke Treatment Optimisation (TRUSTroke Case Study) 10m
      Speaker: Dr Carlos Molina (Hospital Vall d'Hebron)
    • 14:25 14:35
      CAFEIN: CERN’s Federated Learning solution for the privacy-preserving training of AI algorithms (CERN) 10m
      Speaker: Dr Luigi Serio (CERN)
    • 14:35 14:45
      Industry perspective: Current efforts and bridging the gap (Siemens Healthineers) 10m
      Speaker: Mr Hanno Herrmann (Siemens Healthineers)
    • 14:45 15:30
      Round Table Discussion and Q&A 45m
      Speaker: Mr Anton Ussi (EATRIS)