ISSN: XXXX-XXXX

Revolutionizing Healthcare: Artificial Intelligence in Early Disease Detection and Diagnosis

Abstract

This technology has emerged as a revolution in the medical science world, specifically in diagnostics. This paper explores the integration of AI technologies in early disease detection, including advancements in machine learning algorithms, deep learning models, and natural language processing. By analyzing large datasets, AI systems can identify subtle patterns and anomalies that often elude traditional diagnostic methods, enabling earlier and more accurate detection of conditions such as cancer, cardiovascular diseases, and rare genetic disorders. The study also examines real-world applications, challenges in implementation, and the potential of AI to reduce diagnostic errors and improve patient outcomes. This study establishes that AI has a paramount place in diagnostics, as its applications shall open doors for a whole new chapter in precision medicine.

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How to Cite

Lalit Sharma, (2025-02-02 22:06:40.114). Revolutionizing Healthcare: Artificial Intelligence in Early Disease Detection and Diagnosis. Abhi International Journal of Artificial Intelligence Applications in Medical Science, Volume OAi2Xs7F6qlpyOvw7DXK, Issue 1.