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Application of Extension Neural Network Type 2 and Chaos Theory to the Electrocardiogram Recognition System

机译:2型扩展神经网络和混沌理论在心电图识别系统中的应用

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In this study, we combined the extension neural network type 2 (ENN2) with the chaos theory in the electrocardiogram (ECG) recognition system. The self-developed hardware measurement circuit and LabVIEW human-machine interface were used to measure and capture ECG signals. The master-slave chaos system was adopted to change the stored ECG data into a chaotic dynamic error distribution graph to obtain the chaotic eye coordinates of specific ECG signals. ENN2 was used for recognition. There were 36 research subjects. The first half of the data were measured using the signal capture circuit, while the second half were provided by the medical center of Massachusetts Institute of Technology (MIT). According to the results of analysis, the proposed method has a high accuracy when applied to the classification of ECG recognition, with a recognition rate of up to 89%. Hence, the automatic diagnosis ECG system designed in this study can effectively categorize irregular heart rhythms and reduce the huge labor cost for reading.
机译:在这项研究中,我们在心电图(ECG)识别系统中结合了2型扩展神经网络(ENN2)和混沌理论。自行开发的硬件测量电路和LabVIEW人机界面用于测量和捕获ECG信号。采用主从混沌系统,将存储的心电图数据更改为混沌动态误差分布图,以获得特定心电图信号的混沌眼坐标。 ENN2用于识别。有36个研究主题。数据的前半部分是使用信号捕获电路测量的,而后半部分是由麻省理工学院(MIT)的医学中心提供的。分析结果表明,该方法应用于心电图识别分类具有较高的准确性,识别率可达89%。因此,本研究设计的自动诊断心电图系统可以有效地对不规则的心律进行分类,并减少阅读所需的巨大人工成本。

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