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Intelligent medical consultation system based on the GPT model

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Published:17 April 2024Publication History

ABSTRACT

To address the current problem of insufficient medical resources and the resulting difficulties in receiving timely medical treatment, this paper proposes the development of an intelligent medical consultation system using artificial intelligence technology. The system provides online medical advice and diagnostic suggestions to users. The system simulates the process of a doctor's consultation, interacts with users, and gathers information about their symptoms, medical history, and other relevant information. This paper utilizes the GPT model, and trained it with over 800,000 real medical dialogue data to achieve reliable symptom analysis and diagnostic suggestions. The intelligent medical consultation system can provide users with convenient, fast, and accurate medical advice and suggestions, helping to solve the current problems of limited medical resources and difficulties in seeking medical treatment. Additionally, it can serve as an auxiliary diagnostic tool to help users stay aware of their own physical condition in a timely manner.

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    • Published in

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      EITCE '23: Proceedings of the 2023 7th International Conference on Electronic Information Technology and Computer Engineering
      October 2023
      1809 pages
      ISBN:9798400708305
      DOI:10.1145/3650400

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      Publication History

      • Published: 17 April 2024

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