Heart Disease Prediction Using Machine Learning Algorithms: A Systematic Survey
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.11, No. 6)Publication Date: 2022-06-30
Authors : Pavan Kumar Tadiparthi; Vennelarani Kuna;
Page : 129-136
Keywords : cardiovascular diseases; machine learning; correlation matrices; metrics;
Abstract
The heart is the one of the most typical and important organ in our human body. Over few decades Cardiovascular Diseases became one of the most frequent reasons of deaths. This threatening not only in India but also the whole world. The heart was attacked by so many factors like age, sex, diet, stress, smoking etc. So there is a need to early diagnosing the disease accurately so that immediate treatment can be provided and saves millions of lives .The incorrect prediction may also cause side effects or loss of life. In the last few decades eminent researchers are proposed many approaches to predict the heart diseases. In this article, we are reviewed different types of efficient machine learning algorithms for heart disease prediction with correlation matrices; visualize the features and performance metrics like precision, recall, accuracy. In our survey the logistic regression approach gives the best accuracy result which is 81.9%.
Other Latest Articles
- HPLC DETECTION OF ANTITHROMBITIC CALIX[4]ARENE IN BLOOD PLASMA OF ANIMALS
- THE IMPACT, CHALLENGES AND OPPORTUNITIES OF ONLINE LEARNING: A REVIEW
- ACTIVITY OF AMP DEAMINASE AND 5′-NUCLEOTIDASE IN THE CYTOSOLIC KIDNEY FRACTION OF RATS UNDER THE CONDITIONS OF DIFFERENT PROTEIN AND SUCROSE CONTENT IN A DIET
- ADAPTOR PROTEIN RUK/CIN85 IS INVOLVED IN THE GLUCOSE METABOLISM REPROGRAMMING IN BREAST CANCER CELL
Last modified: 2022-06-30 20:12:41