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Enabling AI-Augmented Clinical Workflows by Accessing Patient Data in Real-Time with FHIR
4
Zitationen
3
Autoren
2023
Jahr
Abstract
AI systems developed for clinical applications often need to operate in real-time to achieve their intended impacts. However, sourcing data inputs in real-time remains a challenge. FHIR involves a set of interoperable resources that enable reading of patient data directly from the EHR and can be used to retrieve data inputs to feed into AI models. This tutorial will introduce FHIR and walk-through how to configure a FHIR app in Epic and develop python code to automatically read patient data and forward it to downstream AI systems.
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