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Design of an artificial neural network and feature extraction to identify arrhythmias from ECG

机译:人工神经网络的设计和特征提取以从ECG中识别心律不齐

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This paper presents a design of an artificial neural network (ANN) and feature extraction methods to identify two types of arrhythmias in datasets obtained through electrocardiography (ECG) signals, namely arrhythmia dataset (AD) and supraventricular arrhythmia dataset (SAD). No special ANN toolkit was used; instead, each neuron and necessary calculus were modeled and individually programmed. Thus, four temporal-based features are used: heart rate (HR), R-peaks root mean square (R-RMS), RR-peaks variance (RR-VAR), and QSR-complex standard deviation (QSR-SD). The network architecture presents four neurons in the input layer, eight in hidden layer and an output layer with two neurons. The proposed classification method uses the MIT-BIH Dataset (Massachusetts Institute of Technology-Beth Israel Hospital) for training, validation and execution or test phases. Preliminary results show the high efficiency of the proposed ANN design and its classification method, reaching accuracies between 98.76% and 98.91%, when in the identification of NSRD and arrhythmic ECG; and accuracies of 86.37% (AD) and 76.35% (SAD), when analyzing only classifications between both arrhythmias.
机译:本文提出了一种人工神经网络(ANN)和特征提取方法的设计,以识别通过心电图(ECG)信号获得的数据集中的两种类型的心律失常,即心律失常数据集(AD)和室上性心律失常数据集(SAD)。没有使用特殊的ANN工具包;取而代之的是,对每个神经元和必要的演算进行建模并分别进行编程。因此,使用了四个基于时间的特征:心率(HR),R峰均方根(R-RMS),RR峰方差(RR-VAR)和QSR复杂标准差(QSR-SD)。网络体系结构在输入层中显示四个神经元,在隐藏层中显示八个神经元,并在输出层中显示两个神经元。拟议的分类方法使用MIT-BIH数据集(马萨诸塞州理工大学贝斯以色列医院)进行培训,验证和执行或测试阶段。初步结果表明,所提出的人工神经网络设计及其分类方法在鉴别NSRD和心律不齐的心电图时,效率很高,准确度在98.76%至98.91%之间。仅分析两个心律不齐之间的分类时,准确度为86.37%(AD)和76.35%(SAD)。

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