| 1 | Title of the Article | A Comparative Study on Predicting Cardiovascular Disease Using Machine Learning Algorithms |
| 2 | Author's name | Ananya Sarker: Assistant Professor, Department of CSE, Bangladesh Army University of Engineering & Technology, Natore, Bangladesh |
| 3 | Author's name | Md. Harun Or Rashid, Arzuman Akhter, Ayesha Siddiqua, Shafriki Islam Shemul, Must. Asma Yasmin |
| 4 | Subject | Computer Science |
| 5 | Keyword(s) | Heart Disease, Classification, Machine Learning, Precision, Accuracy |
| 6 | Abstract | Heart disease is a global health concern because of eating patterns, office work cultures, and lifestyle changes. A machine learning-based heart attack prediction system is like having a vigilant watchdog in the medical field. To estimate the danger of a heart attack, it all boils down to analyzing data and complex algorithms. Four primary categories were established at the outset of this study: age, gender, BMI, and blood pressure. The data on heart illness was then classified using a variety of machine learning approaches, including XGBoost Model, Gradient Boosting Model, Random Forest, Logistic Regression, and Decision Trees. The results in terms of accuracy, false positive rate, precision, sensitivity, and specificity were then compared. Results in terms of accuracy, precision, recall, and f1_score were found to be greatest when using Logistic Regression (LR). It is therefore strongly recommended that data on cardiac disease can be classified using the logistic regression technique. |
| 7 | Publisher | Innovative Research Publication |
| 8 | Journal Name; vol., no. | International Journal of Innovative Research in Computer Science & Technology (IJIRCST); Volume-12 Issue-6 |
| 9 | Publication Date | November 2024 |
| 10 | Type | Peer-reviewed Article |
| 11 | Format | |
| 12 | Uniform Resource Identifier | https://ijircst.org/view_abstract.php?title=A-Comparative-Study-on-Predicting-Cardiovascular-Disease-Using-Machine-Learning-Algorithms&year=2024&vol=12&primary=QVJULTEzMzI= |
| 13 | Digital Object Identifier(DOI) | 10.55524/ijircst.2024.12.6.13 https://doi.org/10.55524/ijircst.2024.12.6.13 |
| 14 | Language | English |
| 15 | Page No | 95-100 |