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首页> 外文期刊>Informatica: An International Journal of Computing and Informatics >Noise-tolerant modular neural network system for classifying ECG signal
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Noise-tolerant modular neural network system for classifying ECG signal

机译:用于ECG信号分类的耐噪声模块化神经网络系统

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Millions of electrocardiograms (ECG) are interpreted every year, requiring specialized training for accurate interpretation. Because automated and accurate classification ECG signals will improve early diagnosis of heart condition, several neural network (NN) approaches have been proposed for classifying ECG signals. Current strategies for a critical step, the preprocessing for noise removal, still are unsatisfactory. We propose a modular NN approach based on artificial noise injection, to improve the generalization capability of the resulting model. The NN classifier initially performed a fairly accurate recognition of four types of cardiac anomalies in simulated ECG signals with minor, moderate, severe, and extreme noise, with an average accuracy of 99.2%, 95.1%, 91.4%, and 85.2% respectively.? Ultimately we discriminated normal and abnormal heartbeat patterns for single lead of raw ECG signals, obtained 95.7% of overall accuracy and 99.5% of Precision. Therefore, is a useful tool for the detection and diagnosis of cardiac abnormalities.
机译:每年要解读数百万个心电图(ECG),需要进行专门的培训才能进行准确的解释。由于自动准确地对ECG信号进行分类将改善心脏病的早期诊断,因此提出了几种用于对ECG信号进行分类的神经网络(NN)方法。当前用于关键步骤的策略,即去除噪声的预处​​理,仍然不能令人满意。我们提出了一种基于人工噪声注入的模块化NN方法,以提高所得模型的泛化能力。 NN分类器最初对带有轻微,中度,严重和极端噪声的模拟ECG信号中的四种类型的心脏异常进行了相当准确的识别,其平均准确度分别为99.2%,95.1%,91.4%和85.2%。最终,我们将原始ECG信号的单根导线区分为正常和异常心跳模式,获得了95.7%的总体准确度和99.5%的Precision。因此,是检测和诊断心脏异常的有用工具。

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