Abstract Meaning Representation for Hospital Discharge Summarization
By: Paul Landes , Sitara Rao , Aaron Jeremy Chaise and more
Potential Business Impact:
Stops AI from making up fake medical notes.
The Achilles heel of Large Language Models (LLMs) is hallucination, which has drastic consequences for the clinical domain. This is particularly important with regards to automatically generating discharge summaries (a lengthy medical document that summarizes a hospital in-patient visit). Automatically generating these summaries would free physicians to care for patients and reduce documentation burden. The goal of this work is to discover new methods that combine language-based graphs and deep learning models to address provenance of content and trustworthiness in automatic summarization. Our method shows impressive reliability results on the publicly available Medical Information Mart for Intensive III (MIMIC-III) corpus and clinical notes written by physicians at Anonymous Hospital. rovide our method, generated discharge ary output examples, source code and trained models.
Similar Papers
Large Language Model-Based Generation of Discharge Summaries
Computation and Language
Helps doctors write patient visit notes faster.
Hallucinations and Key Information Extraction in Medical Texts: A Comprehensive Assessment of Open-Source Large Language Models
Computation and Language
Helps doctors quickly understand patient hospital notes.
Topic-aware Large Language Models for Summarizing the Lived Healthcare Experiences Described in Health Stories
Computers and Society
Helps doctors understand patient stories better.