Revolutionizing Disease Detection: A Comparative Review of Traditional
and AI-Driven Methods for Early Diagnosis of Parkinson’s, Cancer,
Metabolic, and Genetic Diseases
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.