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Revolutionizing Disease Detection: A Comparative Review of Traditional and AI-Driven Methods for Early Diagnosis of Parkinson’s, Cancer, Metabolic, and Genetic Diseases
  • Naeem Hamza,
  • Nuaman Ahmed,
  • Naeema Zainaba
Naeem Hamza
Iuliu Hagieganu University of Medicine and Pharmacy Faculty of Medicine

Corresponding Author:naeem.hamza@elearn.umfcluj.ro

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Nuaman Ahmed
Iuliu Hagieganu University of Medicine and Pharmacy Faculty of Medicine
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Naeema Zainaba
Iuliu Hagieganu University of Medicine and Pharmacy Faculty of Medicine
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Abstract

Early disease detection is crucial for effective treatment and improved patient outcomes. Traditional methods of disease detection rely on manual analysis of medical data, which can be time-consuming and prone to errors. The advent of Artificial Intelligence (AI) has transformed the field of disease detection, enabling rapid and accurate diagnosis. This review paper compares traditional and AI-driven methods of disease detection, focusing on Parkinson’s, cancer, metabolic, and genetic diseases. We discuss the advantages and limitations of AI-based approaches, including machine learning and deep learning, and their potential to revolutionize disease detection.