Ordinary Learning Method for Heart Disease Detection using Clinical Data

J. Iqbal, M. Iqbal, Umair Khadam, Ali Nawaz
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引用次数: 1

Abstract

Heart diseases are one of the major causes of human deaths today. About 610000 human beings expire annually in the United States due to this fatal disease and the condition is more severe in the underdeveloped countries lacking medical experts. Accurate detection of heart disease in a human being can be helpful in proper medication against this lethal disease and considerably reduce this alarming death rate. Data mining and machine learning techniques are being widely used for medical diagnosis these days. This research paper employs Ordinary Learning Method for the accurate detection of heart disease using clinical data. The proposed method is tested on the Standard UCI(University of California, Irvine) Cleveland Heart Disease dataset using 14 attributes. The achieved accuracy of the proposed method is 98.4615% which is compared with other states of the art techniques such as C5.0 decision trees, Support vector machine, KNN and Neural Network. Comparison results show that the proposed OLM technique outperforms the previous data mining techniques proposed in literature for the detection of heart disease.
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利用临床数据进行心脏病检测的普通学习方法
心脏病是当今人类死亡的主要原因之一。在美国,每年大约有61万人死于这种致命的疾病,而在缺乏医疗专家的不发达国家,这种情况更为严重。对人类心脏病的准确检测有助于对这种致命疾病进行适当的药物治疗,并大大降低这一惊人的死亡率。如今,数据挖掘和机器学习技术被广泛用于医学诊断。本研究采用普通学习方法,利用临床数据对心脏病进行准确检测。在标准UCI(加州大学欧文分校)克利夫兰心脏病数据集上使用14个属性对该方法进行了测试。与C5.0决策树、支持向量机、KNN和神经网络等技术相比,该方法的准确率达到98.4615%。对比结果表明,本文提出的OLM技术优于文献中提出的用于心脏病检测的数据挖掘技术。
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