Mahmud Istiak, Kabir Md Mohsin, Mridha M F, Alfarhood Sultan, Safran Mejdl, Che Dunren
Department of Electrical and Electronic Engineering, Ahsanullah University of Science and Technology, Dhaka 1208, Bangladesh.
Department of Computer Science and Engineering, Bangladesh University of Business and Technology, Dhaka 1216, Bangladesh.
Diagnostics (Basel). 2023 Jul 31;13(15):2540. doi: 10.3390/diagnostics13152540.
Accurate prediction of heart failure can help prevent life-threatening situations. Several factors contribute to the risk of heart failure, including underlying heart diseases such as coronary artery disease or heart attack, diabetes, hypertension, obesity, certain medications, and lifestyle habits such as smoking and excessive alcohol intake. Machine learning approaches to predict and detect heart disease hold significant potential for clinical utility but face several challenges in their development and implementation. This research proposes a machine learning metamodel for predicting a patient's heart failure based on clinical test data. The proposed metamodel was developed based on Random Forest Classifier, Gaussian Naive Bayes, Decision Tree models, and k-Nearest Neighbor as the final estimator. The metamodel is trained and tested utilizing a combined dataset comprising five well-known heart datasets (Statlog Heart, Cleveland, Hungarian, Switzerland, and Long Beach), all sharing 11 standard features. The study shows that the proposed metamodel can predict heart failure more accurately than other machine learning models, with an accuracy of 87%.
准确预测心力衰竭有助于预防危及生命的情况。有几个因素会导致心力衰竭风险,包括潜在的心脏病,如冠状动脉疾病或心脏病发作、糖尿病、高血压、肥胖、某些药物,以及吸烟和过量饮酒等生活习惯。用于预测和检测心脏病的机器学习方法在临床应用方面具有巨大潜力,但在其开发和实施过程中面临若干挑战。本研究提出了一种基于临床测试数据预测患者心力衰竭的机器学习元模型。所提出的元模型是基于随机森林分类器、高斯朴素贝叶斯、决策树模型和k近邻算法作为最终估计器开发的。该元模型使用包含五个著名心脏数据集(Statlog Heart、克利夫兰、匈牙利、瑞士和长滩)的组合数据集进行训练和测试,所有数据集都共享11个标准特征。研究表明,所提出的元模型能够比其他机器学习模型更准确地预测心力衰竭,准确率为87%。