Image-Enhanced Heart Disease Risk Assessment using CNN Algorithm
Keywords:
Convolutional Neural Convolution (CNN), Confusion Matrix, Dataset Collection, ECG, FCN layers, Heart Diseases, Machine LearningAbstract
The study delves into the profound dual nature of the heart, as both a vital organ sustaining human life and a powerful symbol deeply interwoven in human culture and emotions. It acknowledges the pervasive global challenge of heart disease, encompassing a myriad of heart and blood vessel disorders with severe health implications. The study's research methodology emphasizes the crucial selection of effective techniques for identifying and categorizing electrocardiogram (ECG) data, outlining research objectives, chosen algorithms, dataset description, and the proposed workflow. In this research, an analysis of the Cardiovascular ECG Images dataset is conducted, with a focus on data preprocessing steps, including image resizing, grayscale conversion, and dataset division for training and testing.
Downloads
Published
How to Cite
Issue
Section
License
This is an open Access Article published by Research Center of Computing & Biomedical Informatics (RCBI), Lahore, Pakistan under CCBY 4.0 International License