Artificial Neural Network Based Cardiac Arrhythmia Disease Diagnosis

S. Jadhav, S. Nalbalwar, A. Ghatol
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引用次数: 20

Abstract

Changes in the normal rhythm of a human heart may result in different cardiac arrhythmias, which may be immediately fatal or cause irreparable damage to the heart sustained over long periods of time. The ability to automatically identify arrhythmias from ECG recordings is important for clinical diagnosis and treatment. In this paper we proposed an Artificial Neural Network (ANN) based cardiac arrhythmia disease diagnosis system using standard 12 lead ECG signal recordings data. In this study, we are mainly interested in classifying disease in normal and abnormal classes. We have used UCI ECG signal data to train and test three different ANN models. In arrhythmia analysis, it is unavoidable that some attribute values of a person would be missing. Therefore we have replaced these missing attributes by closest column value of the concern class. ANN models are trained by static backpropagation algorithm with momentum learning rule to diagnose cardiac arrhythmia. The classification performance is evaluated using measures such as mean squared error (MSE), classification specificity, sensitivity, accuracy, receiver operating characteristics (ROC) and area under curve (AUC). Out of three different ANN models Multilayer perceptron ANN model have given very attractive classification results in terms of classification accuracy and sensitivity of 86.67% and 93.75% respectively while Modular ANN have given 93.1% classification specificity.
基于人工神经网络的心律失常疾病诊断
人类心脏正常节律的变化可能导致不同的心律失常,这些心律失常可能立即致命或对心脏造成长期持续的不可修复的损害。从心电图记录中自动识别心律失常的能力对临床诊断和治疗非常重要。本文提出了一种基于人工神经网络的心律失常疾病诊断系统,该系统采用标准的12导联心电信号记录数据。在本研究中,我们主要感兴趣的是将疾病分为正常类和异常类。我们使用UCI心电信号数据来训练和测试三种不同的人工神经网络模型。在心律失常分析中,人的某些属性值丢失是不可避免的。因此,我们用关注类最接近的列值替换了这些缺失的属性。采用基于动量学习规则的静态反向传播算法对人工神经网络模型进行训练,用于心律失常诊断。使用均方误差(MSE)、分类特异性、敏感性、准确性、受试者工作特征(ROC)和曲线下面积(AUC)等指标评估分类性能。在三种不同的神经网络模型中,多层感知器神经网络模型的分类准确率和灵敏度分别为86.67%和93.75%,而模块化神经网络的分类特异性为93.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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