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Main Authors: Akaybicen, Ferit, Cummings, Aaron, Iwuagwu, Lota, Zhang, Xinyue, Adewuyi, Modupe
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.16341
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author Akaybicen, Ferit
Cummings, Aaron
Iwuagwu, Lota
Zhang, Xinyue
Adewuyi, Modupe
author_facet Akaybicen, Ferit
Cummings, Aaron
Iwuagwu, Lota
Zhang, Xinyue
Adewuyi, Modupe
contents The rapid identification of medical emergencies through digital communication channels remains a critical challenge in modern healthcare delivery, particularly with the increasing prevalence of telemedicine. This paper presents a novel approach leveraging large language models (LLMs) and prompt engineering techniques for automated emergency detection in medical communications. We developed and evaluated a comprehensive system using multiple LLaMA model variants (1B, 3B, and 7B parameters) to classify medical scenarios as emergency or non-emergency situations. Our methodology incorporated both system prompts and in-prompt training approaches, evaluated across different hardware configurations. The results demonstrate exceptional performance, with the LLaMA 2 (7B) model achieving 99.7% accuracy and the LLaMA 3.2 (3B) model reaching 99.6% accuracy with optimal prompt engineering. Through systematic testing of training examples within the prompts, we identified that including 10 example scenarios in the model prompts yielded optimal classification performance. Processing speeds varied significantly between platforms, ranging from 0.05 to 2.2 seconds per request. The system showed particular strength in minimizing high-risk false negatives in emergency scenarios, which is crucial for patient safety. The code implementation and evaluation framework are publicly available on GitHub, facilitating further research and development in this crucial area of healthcare technology.
format Preprint
id arxiv_https___arxiv_org_abs_2412_16341
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Machine Learning Approach for Emergency Detection in Medical Scenarios Using Large Language Models
Akaybicen, Ferit
Cummings, Aaron
Iwuagwu, Lota
Zhang, Xinyue
Adewuyi, Modupe
Machine Learning
Computation and Language
The rapid identification of medical emergencies through digital communication channels remains a critical challenge in modern healthcare delivery, particularly with the increasing prevalence of telemedicine. This paper presents a novel approach leveraging large language models (LLMs) and prompt engineering techniques for automated emergency detection in medical communications. We developed and evaluated a comprehensive system using multiple LLaMA model variants (1B, 3B, and 7B parameters) to classify medical scenarios as emergency or non-emergency situations. Our methodology incorporated both system prompts and in-prompt training approaches, evaluated across different hardware configurations. The results demonstrate exceptional performance, with the LLaMA 2 (7B) model achieving 99.7% accuracy and the LLaMA 3.2 (3B) model reaching 99.6% accuracy with optimal prompt engineering. Through systematic testing of training examples within the prompts, we identified that including 10 example scenarios in the model prompts yielded optimal classification performance. Processing speeds varied significantly between platforms, ranging from 0.05 to 2.2 seconds per request. The system showed particular strength in minimizing high-risk false negatives in emergency scenarios, which is crucial for patient safety. The code implementation and evaluation framework are publicly available on GitHub, facilitating further research and development in this crucial area of healthcare technology.
title A Machine Learning Approach for Emergency Detection in Medical Scenarios Using Large Language Models
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2412.16341