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Main Authors: Bolton, Elliot, Xiong, Betty, Muralidharan, Vijaytha, Schamroth, Joel, Muralidharan, Vivek, Manning, Christopher D., Daneshjou, Roxana
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.15894
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author Bolton, Elliot
Xiong, Betty
Muralidharan, Vijaytha
Schamroth, Joel
Muralidharan, Vivek
Manning, Christopher D.
Daneshjou, Roxana
author_facet Bolton, Elliot
Xiong, Betty
Muralidharan, Vijaytha
Schamroth, Joel
Muralidharan, Vivek
Manning, Christopher D.
Daneshjou, Roxana
contents Large language models, such as GPT-4 and Med-PaLM, have shown impressive performance on clinical tasks; however, they require access to compute, are closed-source, and cannot be deployed on device. Mid-size models such as BioGPT-large, BioMedLM, LLaMA 2, and Mistral 7B avoid these drawbacks, but their capacity for clinical tasks has been understudied. To help assess their potential for clinical use and help researchers decide which model they should use, we compare their performance on two clinical question-answering (QA) tasks: MedQA and consumer query answering. We find that Mistral 7B is the best performing model, winning on all benchmarks and outperforming models trained specifically for the biomedical domain. While Mistral 7B's MedQA score of 63.0% approaches the original Med-PaLM, and it often can produce plausible responses to consumer health queries, room for improvement still exists. This study provides the first head-to-head assessment of open source mid-sized models on clinical tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2404_15894
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Assessing The Potential Of Mid-Sized Language Models For Clinical QA
Bolton, Elliot
Xiong, Betty
Muralidharan, Vijaytha
Schamroth, Joel
Muralidharan, Vivek
Manning, Christopher D.
Daneshjou, Roxana
Computation and Language
Artificial Intelligence
Large language models, such as GPT-4 and Med-PaLM, have shown impressive performance on clinical tasks; however, they require access to compute, are closed-source, and cannot be deployed on device. Mid-size models such as BioGPT-large, BioMedLM, LLaMA 2, and Mistral 7B avoid these drawbacks, but their capacity for clinical tasks has been understudied. To help assess their potential for clinical use and help researchers decide which model they should use, we compare their performance on two clinical question-answering (QA) tasks: MedQA and consumer query answering. We find that Mistral 7B is the best performing model, winning on all benchmarks and outperforming models trained specifically for the biomedical domain. While Mistral 7B's MedQA score of 63.0% approaches the original Med-PaLM, and it often can produce plausible responses to consumer health queries, room for improvement still exists. This study provides the first head-to-head assessment of open source mid-sized models on clinical tasks.
title Assessing The Potential Of Mid-Sized Language Models For Clinical QA
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2404.15894