TY - JOUR
T1 - Clinical Text Summarization
T2 - Adapting Large Language Models Can Outperform Human Experts
AU - Van Veen, Dave
AU - Van Uden, Cara
AU - Blankemeier, Louis
AU - Delbrouck, Jean-Benoit
AU - Aali, Asad
AU - Bluethgen, Christian
AU - Pareek, Anuj
AU - Polacin, Malgorzata
AU - Reis, Eduardo Pontes
AU - Seehofnerová, Anna
AU - Rohatgi, Nidhi
AU - Hosamani, Poonam
AU - Collins, William
AU - Ahuja, Neera
AU - Langlotz, Curtis P
AU - Hom, Jason
AU - Gatidis, Sergios
AU - Pauly, John
AU - Chaudhari, Akshay S
PY - 2023/10/30
Y1 - 2023/10/30
N2 - Sifting through vast textual data and summarizing key information from electronic health records (EHR) imposes a substantial burden on how clinicians allocate their time. Although large language models (LLMs) have shown immense promise in natural language processing (NLP) tasks, their efficacy on a diverse range of clinical summarization tasks has not yet been rigorously demonstrated. In this work, we apply domain adaptation methods to eight LLMs, spanning six datasets and four distinct clinical summarization tasks: radiology reports, patient questions, progress notes, and doctor-patient dialogue. Our thorough quantitative assessment reveals trade-offs between models and adaptation methods in addition to instances where recent advances in LLMs may not improve results. Further, in a clinical reader study with ten physicians, we show that summaries from our best-adapted LLMs are preferable to human summaries in terms of completeness and correctness. Our ensuing qualitative analysis highlights challenges faced by both LLMs and human experts. Lastly, we correlate traditional quantitative NLP metrics with reader study scores to enhance our understanding of how these metrics align with physician preferences. Our research marks the first evidence of LLMs outperforming human experts in clinical text summarization across multiple tasks. This implies that integrating LLMs into clinical workflows could alleviate documentation burden, empowering clinicians to focus more on personalized patient care and the inherently human aspects of medicine.
AB - Sifting through vast textual data and summarizing key information from electronic health records (EHR) imposes a substantial burden on how clinicians allocate their time. Although large language models (LLMs) have shown immense promise in natural language processing (NLP) tasks, their efficacy on a diverse range of clinical summarization tasks has not yet been rigorously demonstrated. In this work, we apply domain adaptation methods to eight LLMs, spanning six datasets and four distinct clinical summarization tasks: radiology reports, patient questions, progress notes, and doctor-patient dialogue. Our thorough quantitative assessment reveals trade-offs between models and adaptation methods in addition to instances where recent advances in LLMs may not improve results. Further, in a clinical reader study with ten physicians, we show that summaries from our best-adapted LLMs are preferable to human summaries in terms of completeness and correctness. Our ensuing qualitative analysis highlights challenges faced by both LLMs and human experts. Lastly, we correlate traditional quantitative NLP metrics with reader study scores to enhance our understanding of how these metrics align with physician preferences. Our research marks the first evidence of LLMs outperforming human experts in clinical text summarization across multiple tasks. This implies that integrating LLMs into clinical workflows could alleviate documentation burden, empowering clinicians to focus more on personalized patient care and the inherently human aspects of medicine.
U2 - 10.21203/rs.3.rs-3483777/v1
DO - 10.21203/rs.3.rs-3483777/v1
M3 - Journal article
C2 - 37961377
SN - 2693-5015
JO - Research square
JF - Research square
ER -