THE IMPORTANCE OF SYSTEMATIZATION AND STANDARDIZATION OF MEDICAL TERMINOLOGY WITH THE HELP OF ARTIFICIAL INTELLIGENCE IN MODERN BIOMEDICINE
Keywords:
tibbiy terminologiya; standartlashtirish; tizimlashtirish; sun’iy intellekt; SNOMED CT; Medline; ChatGPT; biotibbiyotAbstract
This article discusses the need for systematization of medical terminology in modern biomedicine and its standardization using artificial intelligence. The study emphasizes the importance of a unified terminology system in the integration and exchange of medical information. International standard terminology databases such as SNOMED CT, ICD, and MeSH provide a basis for the uniform representation of medical concepts. Artificial intelligence technologies, in particular large language models such as ChatGPT, can be used to automatically normalize terminology in medical texts. The article examines methods for standardizing medical terms using the ChatGPT and Medline/PubMed databases. According to the results, the unification of terminology using artificial intelligence improves the interoperability between clinical information systems and increases the efficiency of scientific research.
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