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Main Authors: Kuan, Cecilia, Parikh, Aditya Kamlesh, Heuvel, Henk van den
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.09645
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author Kuan, Cecilia
Parikh, Aditya Kamlesh
Heuvel, Henk van den
author_facet Kuan, Cecilia
Parikh, Aditya Kamlesh
Heuvel, Henk van den
contents Medical conversations offer insights into clinical communication often absent from Electronic Health Records. However, developing reliable clinical Natural Language Processing (NLP) models is hampered by the scarcity of domain-specific datasets, as clinical data are typically inaccessible due to privacy and ethical constraints. To address these challenges, we present a pipeline for generating synthetic Dutch medical dialogues using a Dutch fine-tuned Large Language Model, with real medical conversations serving as linguistic and structural reference. The generated dialogues were evaluated through quantitative metrics and qualitative review by native speakers and medical practitioners. Quantitative analysis revealed strong lexical variety and overly regular turn-taking, suggesting scripted rather than natural conversation flow. Qualitative review produced slightly below-average scores, with raters noting issues in domain specificity and natural expression. The limited correlation between quantitative and qualitative results highlights that numerical metrics alone cannot fully capture linguistic quality. Our findings demonstrate that generating synthetic Dutch medical dialogues is feasible but requires domain knowledge and carefully structured prompting to balance naturalness and structure in conversation. This work provides a foundation for expanding Dutch clinical NLP resources through ethically generated synthetic data.
format Preprint
id arxiv_https___arxiv_org_abs_2604_09645
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Generating High Quality Synthetic Data for Dutch Medical Conversations
Kuan, Cecilia
Parikh, Aditya Kamlesh
Heuvel, Henk van den
Computation and Language
Artificial Intelligence
Medical conversations offer insights into clinical communication often absent from Electronic Health Records. However, developing reliable clinical Natural Language Processing (NLP) models is hampered by the scarcity of domain-specific datasets, as clinical data are typically inaccessible due to privacy and ethical constraints. To address these challenges, we present a pipeline for generating synthetic Dutch medical dialogues using a Dutch fine-tuned Large Language Model, with real medical conversations serving as linguistic and structural reference. The generated dialogues were evaluated through quantitative metrics and qualitative review by native speakers and medical practitioners. Quantitative analysis revealed strong lexical variety and overly regular turn-taking, suggesting scripted rather than natural conversation flow. Qualitative review produced slightly below-average scores, with raters noting issues in domain specificity and natural expression. The limited correlation between quantitative and qualitative results highlights that numerical metrics alone cannot fully capture linguistic quality. Our findings demonstrate that generating synthetic Dutch medical dialogues is feasible but requires domain knowledge and carefully structured prompting to balance naturalness and structure in conversation. This work provides a foundation for expanding Dutch clinical NLP resources through ethically generated synthetic data.
title Generating High Quality Synthetic Data for Dutch Medical Conversations
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2604.09645