Roobini, Dr. M. S., Clemency, C. A. Daphine Desona, D., Aishwarya
The rise in Type 2 Diabetes cases has fueled research in robust diagnostic systems. Machine learning integration enhances these systems by analyzing diverse datasets and addressing associated complications like obesity, poor habits, and hypertension. Early detection is crucial, given the severe health implications. ML, paired with natural language processing, aids in prognosis, diagnosis, and prevention plans. Using the PIDD dataset (768 samples, 16 attributes), this research focuses on predicting diabetes with an expanded characteristic set. Pre-processing involves normalization, balancing...
The rise in Type 2 Diabetes cases has fueled research in robust diagnostic systems. Machine learning integration enhances these systems by analyzing d...