ICT&health May 5, 2025
Artur Olesch

“LLMs are not yet able to address interoperability challenges when it comes to structuring unstructured text into standardized medical terminology,” says Dr. Carina Vorisek, digital health innovation leader at the Berlin Institute of Health and a medical informatics expert focused on building AI-ready, interoperable health systems. In our conversation, we explore data standards, AI in medicine, and everything in between.

The healthcare sector is eager to adopt AI, yet many systems still struggle with basic data interoperability. In your view, how realistic is widespread AI adoption without first solving these interoperability challenges?

Interoperability is foundational for the meaningful and safe adoption of AI in healthcare. Right now, most AI applications I’ve encountered are siloed, developed, and deployed within individual institutions....

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Topics: AI (Artificial Intelligence), Health IT, HIE (Interoperability), Interview / Q&A, Technology, Trends
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