Heart Stroke Prediction Using Machine Learning
DOI:
https://doi.org/10.47750/pnr.2022.13.S05.395Keywords:
involved in this research— KNN, Naïve bayes, Decision Tree, Random Forest, Prediction of Heart Stroke, ECG images, ANN, Arrhythmia.Abstract
Present day, Deaths due to heart strokes are increasing greatly day by day. Unfortunately, detecting such conditions in humans is a complex task. Handling such complex tasks can be done by using data sets. Heart strokes occurrence prediction can be done only by automation because we need to keep monitoring the heart rate. MITBIH arrhythmia is one of the datasets which help us, so it is used in this paper. Automation for the mentioned task can be obtained by using various data mining techniques. Some of the techniques used in this paper are decision trees, naïve bayes, ANN algorithm & Random Forest algorithm. Therefore, the motto of this paper is to compare the above-mentioned algorithms & find out which is more accurate in accomplishing the task. At the end, after all the assessments we can say that the algorithm Random Forest has got 99% of accuracy which is recorded as highest among all the algorihms. But in the case of ECG images ANN algorithm has achieved an accuracy of 94%.