基于新型卷积神经网络和门递归单元技术的心脏病诊断

Abdelmegeid Amin Ali, H. S. Hassan, Eman M. Anwar
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引用次数: 7

摘要

实际上,导致死亡的主要原因之一是心脏病,所以医学诊断试图推荐最合适的方法来诊断任何一种心脏病。研究人员通过加强各种机器学习方法,有几种独特的混合技术,可以帮助心脏病领域的专家进行预测。本文提出了一种名为“卷积神经网络和门递归单元(CNN GRU)”的技术。该方法的主要目标是提出一种最佳的机器学习方法,在预测心脏病方面达到高精度。利用线性判别分析(LDA)和主成分分析(PCA)特征选择算法从数据集中提取基本特征。将所提出的技术与几种具有选定特征的机器学习算法进行比较。采用“K-fold”交叉验证来提高准确性。结果表明,与其他技术相比,(CNN GRU)技术的准确率达到了94.5%。
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Heart Diseases Diagnosis based on a Novel Convolution Neural Network and Gate Recurrent Unit Technique
Actually, one of the leading causes of death is cardiac diseases so medical diagnosis tries to recommend the most candidate diagnose any kind of cardiac disease. Researchers have several distinctive hybrid techniques by strengthening a variety of machine learning methods that aid specialists in the field of cardiac disease expectations. This paper presented a technique named “Convolution Neural Network and Gate Recurrent Unit (CNN GRU).” The main goal of this methodology is to suggest an optimal machine learning approach that achieves high accuracy in the prediction of cardiac disease. The Linear Discriminant Analysis (LDA) and Principal Component Analysis (PCA) feature selection algorithms are utilized to extract essential features from the data set. The proposed technique was compared to several machine learning algorithms with the selected features. The “K-fold” cross-validation was utilized to enhance the accuracy. The results showed that the (CNN GRU) technique achieved 94.5 percent accuracy compared to other techniques.
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