Machine Learning Based Cardiovascular Detection Approach
R. Kishore Kanna, A. Ambikapathy, Mohammed Brayyich, V Venkat Reddy, Amandeep Nagpal
Abstract
Heart failure is one of the most serious and important diseases to predict between the enzymes. Recently., artificial intelligence has become fundamental for the survival of the medical industry. There are more and more examples every day. We are using artificial intelligence methods to solve this. It has been observed that four people between the ages of 30 and 50 suffer from strokes per minute, which is a problem considering that it is being detected. For this experiment, the heart disease datasets were utilised through the Kaggle tool. This work analyses and visualizes the anticipated occurrence of coronary conditions using a variety of machine learning (ML) methods, including Forest randomization, Bayes with no information, SVM, and other approaches. The stacked ensemble training method improves the subsequent use of our classification models. among other things, diseases, pattern identification, SVM, predicting cardiac conditions, an Artificial Neural Network (ANN), data analysis, and data mining.