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FHIR-Former: enhancing clinical predictions through Fast Healthcare Interoperability Resources and large language models
6
Zitationen
5
Autoren
2025
Jahr
Abstract
By harmonizing FHIR standardization with LLM flexibility, FHIR-Former advances scalable, interoperable predictive modeling in healthcare. The open-source framework facilitates automation, improves resource allocation, and supports personalized decision-making, bridging gaps between AI innovation and clinical practice.
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