MODERN APPROACHES TO THE APPLICATION OF ARTIFICIAL INTELLIGENCE TECHNOLOGIES IN CARDIOLOGY
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Abstract
Artificial Intelligence (AI) technologies are widely used in all fields of medicine, especially in cardiology. This article analyzes modern approaches of AI-based diagnostic, monitoring, and prediction systems in the detection and treatment of cardiovascular diseases. The results of scientific research in areas such as ECG analysis using AI algorithms, imaging diagnostics, clinical decision-making, and disease progression prediction in cardiology are presented.
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