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Assessing Linguistic and Structural Reliability in Text-Based LLM Simulations for Medical ESP

2026·0 Zitationen·Zenodo (CERN European Organization for Nuclear Research)Open Access
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2026

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Abstract

This exploratory study investigates the use of large language models in English for Medical Purposes (EMP) and broader ESP instruction by examining the linguistic and structural reliability of text-based medical consultation simulations. Using ChatGPT (GPT-5) with a fixed prompt, 26 simulated outpatient dialogues were generated in which the model acted as a patient. The analysis shows that the dialogues are highly regular, structurally coherent, and strongly patterned, with a clear dominance of closed questions and a limited range of recurring identities and scenarios. These findings are important for medical communication, as they suggest that LLM-generated consultations can provide stable, repeatable practice for routine interactional tasks such as history-taking, symptom elicitation, and basic diagnostic discussion. From an educational perspective, the study highlights the potential of LLMs in AI in education and autonomous learning, especially as a scaffolded resource for learners who need repeated exposure to medical discourse. At the same time, the limited variability of the interactions indicates that such simulations are best used as a supplementary tool rather than a replacement for human-mediated communication practice. The study contributes to current discussion on the pedagogical value and limitations of large language models in English for Medical Purposes, ESP, and digital language learning.

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Artificial Intelligence in Healthcare and EducationSimulation-Based Education in HealthcareClinical Reasoning and Diagnostic Skills
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