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Performance Evaluation of Supervised Machine Learning Algorithms in Prediction of Heart Disease

机译:监督机学习算法中患心脏病预测的性能评估

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Big challenge in health care industry is to record and analyze the massive amount of information about patients. Innovations in technologies made revolution in the healthcare industries. In recent years the data analytics developed as promising tool for problem solving and decision making in healthcare professions. Data analytics process the data automatically to make healthcare system more dynamic and robust. It systematically uses and analyses the data of health care for better treatment with low costs. The chief applications of Machine learning in healthcare are the detection and diagnosis of diseases. The heart is the chief organ of human body. Heart disease increases the mortality rate in the world. Around 90% of heart diseases are preventable. Machine learning plays a remarkable role in the health care industry in prediction of heart disease. In this research paper, the presence of heart disease is predicted by employing Decision Tree, Naïve Bayes, Random Forest, Support Vector Machine, K-Nearest Neighbor and logistic Regression algorithms. The performance of the algorithms was analyzed using parameters such as Accuracy, Precision, AUC and F1-score. From the experimental result, it is found that the Random Forest is more accurate for predicting the heart disease with accuracy of 83.52% compared with other supervised machine learning algorithms. The F1- Score, AUC and precision score of Random forest classifiers are 84.21%, 88.24% and 88.89% respectively.
机译:医疗保健行业的大挑战是记录和分析有关患者的大量信息。技术的创新在医疗行业革命。近年来,数据分析成为医疗职业问题解决和决策的有前途的工具。数据分析自动处理数据以使医疗保健系统更具动态和强大。它系统地使用并分析了保健数据以更好地处理低成本。机器学习在医疗保健中的主要应用是对疾病的检测和诊断。心脏是人体的主要器官。心脏病增加了世界的死亡率。大约90%的心脏病是可预防的。机器学习在卫生保健行业中发挥着显着作用,以预测心脏病。在本研究论文中,通过使用决策树,天真贝叶斯,随机森林,支持向量机,K最近邻居和逻辑回归算法来预测心脏病的存在。使用参数分析算法的性能,例如精度,精度,AUC和F1分数。从实验结果来看,与其他监督机器学习算法相比,随机森林更准确地预测心脏病,精度为83.52%。随机森林分类器的F1得分,AUC和精确度分别为84.21%,88.24%和88.89%。

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