Logistic regression technique for prediction of cardiovascular disease

Ambrish G, Bharathi Ganesh, Anitha Ganesh, Chetana Srinivas, Dhanraj, Kiran Mensinkal
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引用次数: 21

Abstract

One of the most life-threatening disease is cardiovascular disease. Its high mortality rate contributes to nearly 17 million deaths all over the world. Early diagnosis helps to treat the disease in timely manner to prevent mortality. There are several machine and deep learning techniques available to classify the presence and absence of the disease. In this research, Logistic Regression (LR) techniques is applied to UCI dataset to classify the cardiac disease. To improve the performance of the model, pre-processing of data by Cleaning the dataset, finding the missing values are done and features selection were performed by correlation with the target value for all the feature. The highly positive correlated features were selected. Then classification is performed by dividing the dataset into training. testing in the ratio of 90:10, 80:20, 70:30, 40:60 and 50:50. The splitting ratio of 90:10 gives best accuracy as listed below. The LR model obtained 87.10% accuracy.

预测心血管疾病的逻辑回归技术
最危及生命的疾病之一是心血管疾病。它的高死亡率导致全世界近1700万人死亡。早期诊断有助于及时治疗,防止死亡。有几种机器和深度学习技术可用于对疾病的存在和不存在进行分类。在本研究中,将Logistic回归(LR)技术应用于UCI数据集进行心脏病分类。为了提高模型的性能,对数据进行预处理,清洗数据集,寻找缺失值,并将所有特征与目标值进行关联,进行特征选择。选择高度正相关的特征。然后将数据集分成训练集进行分类。按90:10、80:20、70:30、40:60、50:50的比例进行测试。90:10的分割比例给出了如下所列的最佳精度。LR模型的准确率为87.10%。
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