CLINICAL DECISION SUPPORT SYSTEMS BASED ON ARTIFICIAL INTELLIGENCE

Authors

  • Sevinch Sabirjanova Author
  • Sardor Normamatov Author
  • Ulug’bek Safarov Author
  • Polvon Otaxonov Author
  • Avazbek Koraboyev Tashkent State Medical University Author

Keywords:

artificial intelligence, clinical decision support system, AI in medicine, diagnosis, disease detection, treatment planning, data analysis, healthcare technologies, digital medicine, ethical issues, data security, artificial intelligence algorithms, healthcare management

Abstract

Artificial Intelligence (AI) technologies have become a crucial factor in the development of clinical decision support systems in healthcare. These systems assist physicians in patient diagnosis, treatment planning, and health monitoring, making the decision-making process more efficient and accurate. The article analyzes the principles, architecture, and main functions of AI-based clinical decision support systems. Additionally, it discusses the advantages of their application in medicine, particularly their role in disease detection and prevention, as well as existing limitations and ethical issues. Through examples of modern systems, the effectiveness of AI and its future prospects are examined. This article is useful for medical professionals, IT specialists, and researchers, promoting the wider adoption of digital technologies in clinical practice.

References

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Published

26.05.2025

How to Cite

CLINICAL DECISION SUPPORT SYSTEMS BASED ON ARTIFICIAL INTELLIGENCE. (2025). The New Uzbekistan Journal of Medicine, 1(2), 88-93. https://www.ijournal.uz/index.php/nujm/article/view/2318

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