This research presents a deep learning approach for the classification and identification of coronary artery diseases using multislice CT angiogram images. It compares traditional machine learning methods, including RBF neural networks and SVM, highlighting that deep learning provides significantly improved accuracy and efficiency in real-time applications. The study utilizes various datasets and outlines a comprehensive methodology for data preparation, segmentation, and feature extraction, ultimately demonstrating the advantages of deep learning over previous methods.