Abstract:
This paper introduces a hybrid machine learning approach for the detection of thyroid diseases, specifically focusing on Hyperthyroidism and
Hypothyroidism. By integrating Decision Tree and Random Forest algorithms, the proposed model aims to enhance the accuracy and efficiency of thyroid
disease prediction. The study demonstrates promising results with approximately 95% accuracy on the trained dataset. Additionally, efforts are made to
streamline the diagnostic process by reducing the number of disease detection parameters. The findings suggest the potential of the hybrid machine
learning approach in improving thyroid disease detection, thereby benefiting healthcare systems.