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Ensemble Neural Network Algorithm for Detecting Cardiac Arrhythmia

机译:用于检测心律失常的合奏神经网络算法

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摘要

Cardiac arrhythmias are electrical malfunctions in rhythmic beating of the heart. Sometimes, they cause life-threatening conditions. Hence, they need to be diagnosed quickly and accurately to save life and prevent further complications and effective management of the disease. In this paper, we propose an ensemble neural network algorithm to detect arrhythmia. Bagging approach with multilayer perceptron and radial basis neural networks is used to classify the standard 12-lead Electrocardiogram (ECG) recordings in the cardiac arrhythmia database available in UCI Machine Learning Repository. The classification performance of the diagnostic model was analyzed using the following performance metrics, namely precision, recall, F-measure, accuracy, mean absolute error, root mean square error, and area under the receiver-operating curve. The classifier accuracy obtained for the ensemble neural network (ENN) model is 93.9 and 94.9 % for ENN-RBFN and ENN-MLP, respectively.
机译:心脏心律失常是心脏搏动的电气故障。有时,他们造成危及生命的条件。因此,他们需要快速准确地诊断,以节省生命并预防进一步的并发症和有效的疾病管理。在本文中,我们提出了一种综合神经网络算法来检测心律失常。具有多层默认和径向基础神经网络的装订方法用于将心律失常数据库中的标准12引导心电图(ECG)记录分类为UCI机器学习存储库中可用的标准12铅心电图(ECG)记录。使用以下性能指标进行分析诊断模型的分类性能,即精度,召回,F测量,精度,平均绝对误差,根均线误差和接收器操作曲线下的区域。对于ENN-RBFN和ENN-MLP,集合神经网络(ENN)模型获得的分类器精度分别为93.9和94.9%。

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