THE ROLE OF ARTIFICIAL INTELLIGENCE IN EARLY DISEASE DETECTION

Mualliflar

  • D.U. Ismoilova Teacher of the Department of Languages Central Asian Medical University, Muallif
  • Sh. Muminjonova Student of International Medical Institute Central Asian Medical University. Fergana, Uzbekistan Muallif

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Artificial Intelligence (AI), Early Disease Detection, Parkinson's Disease, Healthcare Ethics, Patient Privacy, Machine Learning, Diagnostic Accuracy, Personalized Medicine, Healthcare Efficiency, Chronic Disease Management.

Abstrak

This article explores the transformative role of Artificial Intelligence (AI) in early disease detection, focusing on Parkinson's disease as a case study. It highlights how AI technologies, such as machine learning algorithms, enhance diagnostic accuracy and improve patient outcomes by enabling early intervention and personalized treatment strategies. The article discusses innovative AI applications, including the analysis of breathing patterns, vocal recordings, and medical imaging, which offer non-invasive and accurate methods for detecting Parkinson's disease. However, the integration of AI in healthcare also presents ethical challenges, particularly concerning patient privacy, data security, and algorithmic bias. The article examines existing policies and proposes strategies for responsible AI implementation, emphasizing the need for collaboration among stakeholders to maximize AI's benefits while safeguarding patient privacy and upholding ethical standards.

Iqtiboslar

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Nashr qilingan

2025-06-18

Iqtibos keltirish tartibi

THE ROLE OF ARTIFICIAL INTELLIGENCE IN EARLY DISEASE DETECTION. (2025). Yevroosiyo Akademik Tadqiqotlar Jurnali, 5(6), 147-151. https://in-academy.uz/index.php/EJAR/article/view/6510