A Method to Improve Human Heart Disease Prediction Using Machine Learning Algorithms

Jenifer A, Pratyush Priyadarshi, Harini R, Gayathri Devi K
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Abstract

There is great diversity in the field of medical science due to computational power and technical innovation, especially in identifying human heart disease. Today it is one of the deadliest human heart diseases in the world and have very serious effects on human life. Accurate and timely identification of heart disease in humans can be very helpful in prevent heart failure in its early stages and will improve patient survival. Manual method for determining the heart disease is biased and can vary between researchers. In this regard, efficient and reliable machine learning algorithms resources for detecting and classifying people with heart disease and those who are healthy. According to suggestion in our study, we identified and predicted heart disease in humans using a variety of machine learning algorithms and using heart disease dataset to evaluate its performance using various measures, such as sensitivity, specificity, F-measure, and classifier accuracy. For this purpose, we used nine machine learning classifiers for the final dataset before and after hyper parameter tuning of machine learning classifiers, such as AB, LR, ET, MNB, CART, SVM, LDA, RF, and XGB. In addition, we verify their accuracy on a standard heart disease dataset by performing several standardized, pre-processing procedures of the data set and hyper parameter tuning. In addition, to train and validate machine learning algorithms, we implemented standard K-fold cross-validation technique. Finally, the experimental results show that the accuracy of the predictive classifiers with improved hyper parameter tuning and achieved remarkable results with data normalization and hyper parameter tuning of machine learning classification.
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一种利用机器学习算法改进人类心脏病预测的方法
由于计算能力和技术创新,特别是在识别人类心脏病方面,医学科学领域存在很大的多样性。今天,它是世界上最致命的人类心脏疾病之一,对人类生活有非常严重的影响。准确和及时地识别人类心脏疾病可以非常有助于在早期阶段预防心力衰竭,并将提高患者的生存率。人工确定心脏病的方法是有偏见的,并且在研究人员之间可能会有所不同。在这方面,高效可靠的机器学习算法资源用于检测和分类心脏病患者和健康人群。根据我们的研究建议,我们使用各种机器学习算法识别和预测人类心脏病,并使用心脏病数据集使用各种度量来评估其性能,例如灵敏度,特异性,F-measure和分类器准确性。为此,我们在机器学习分类器超参数调优前后对最终数据集使用了9个机器学习分类器,如AB、LR、ET、MNB、CART、SVM、LDA、RF和XGB。此外,我们通过对数据集和超参数调优执行几个标准化的预处理程序,验证了它们在标准心脏病数据集上的准确性。此外,为了训练和验证机器学习算法,我们实现了标准的K-fold交叉验证技术。最后,实验结果表明,改进的超参数调优预测分类器的准确率较高,并且在机器学习分类的数据归一化和超参数调优方面取得了显著的效果。
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