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Main Authors: van Zandvoort, Daphne, Wiersema, Laura, Huibers, Tom, van Dulmen, Sandra, Brinkkemper, Sjaak
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2311.13274
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author van Zandvoort, Daphne
Wiersema, Laura
Huibers, Tom
van Dulmen, Sandra
Brinkkemper, Sjaak
author_facet van Zandvoort, Daphne
Wiersema, Laura
Huibers, Tom
van Dulmen, Sandra
Brinkkemper, Sjaak
contents Customized medical prompts enable Large Language Models (LLM) to effectively address medical dialogue summarization. The process of medical reporting is often time-consuming for healthcare professionals. Implementing medical dialogue summarization techniques presents a viable solution to alleviate this time constraint by generating automated medical reports. The effectiveness of LLMs in this process is significantly influenced by the formulation of the prompt, which plays a crucial role in determining the quality and relevance of the generated reports. In this research, we used a combination of two distinct prompting strategies, known as shot prompting and pattern prompting to enhance the performance of automated medical reporting. The evaluation of the automated medical reports is carried out using the ROUGE score and a human evaluation with the help of an expert panel. The two-shot prompting approach in combination with scope and domain context outperforms other methods and achieves the highest score when compared to the human reference set by a general practitioner. However, the automated reports are approximately twice as long as the human references, due to the addition of both redundant and relevant statements that are added to the report.
format Preprint
id arxiv_https___arxiv_org_abs_2311_13274
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Enhancing Summarization Performance through Transformer-Based Prompt Engineering in Automated Medical Reporting
van Zandvoort, Daphne
Wiersema, Laura
Huibers, Tom
van Dulmen, Sandra
Brinkkemper, Sjaak
Computation and Language
Customized medical prompts enable Large Language Models (LLM) to effectively address medical dialogue summarization. The process of medical reporting is often time-consuming for healthcare professionals. Implementing medical dialogue summarization techniques presents a viable solution to alleviate this time constraint by generating automated medical reports. The effectiveness of LLMs in this process is significantly influenced by the formulation of the prompt, which plays a crucial role in determining the quality and relevance of the generated reports. In this research, we used a combination of two distinct prompting strategies, known as shot prompting and pattern prompting to enhance the performance of automated medical reporting. The evaluation of the automated medical reports is carried out using the ROUGE score and a human evaluation with the help of an expert panel. The two-shot prompting approach in combination with scope and domain context outperforms other methods and achieves the highest score when compared to the human reference set by a general practitioner. However, the automated reports are approximately twice as long as the human references, due to the addition of both redundant and relevant statements that are added to the report.
title Enhancing Summarization Performance through Transformer-Based Prompt Engineering in Automated Medical Reporting
topic Computation and Language
url https://arxiv.org/abs/2311.13274