Litcius/Paper detail

AscleAI: A LLM-based Clinical Note Management System for Enhancing Clinician Productivity

Jiyeon Han, Jimin Park, Jinyoung Huh, Uran Oh, Jaeyoung Do, Daehee Kim

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Abstract

While clinical notes are essential to the field of healthcare, they pose several challenges for clinicians since it is difficult to write down medical information, review prior notes, and extract the desired information at the same time while examining a patient. Thus, we designed a system that can automatically generate clinical notes from dialogues between patients and clinicians and provide specific information upon clinicians’ query using a Large Language Model (LLM) both in real-time. To explore how this system can be used to support clinicians in practice, we conducted an interview with six clinicians followed by a design probe study with the current version of our system for feedback. Findings suggest that our system has the potential to enable clinicians to write and access clinical notes and examine the patients simultaneously with reduced cognitive loads and increased efficiency and accuracy.

Topics & Concepts

Computer scienceProductivityField (mathematics)Healthcare systemHealth careClinical PracticeCognitionKnowledge managementMedical educationMedicineNursingPsychiatryEconomic growthMacroeconomicsEconomicsMathematicsPure mathematicsElectronic Health Records SystemsBiomedical Text Mining and OntologiesHealth Sciences Research and Education