Automatic detection of premature ventricular contraction using quantum neural networks

Jie Zhou
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引用次数: 39

Abstract

Premature ventricular contractions (PVCs) are ectopic heart beats originating from ventricular area. It is a common form of heart arrhythmia. Electrocardiogram (ECG) recordings have been widely used to assist cardiologists to diagnose the problem. In this paper, we study the automatic detection of PVC using a fuzzy artificial neural network named Quantum Neural Network (QNN). With the quantum neurons in the network, trained QNN can model the levels of uncertainty arising from complex classification problems. This fuzzy feature is expected to enhance the reliability of the algorithm, which is critical for the applications in the biomedical domain. Experiments were conducted on ECG records in the MIT-BIH Arrhythmia Database. Results showed consistently higher or same reliability of QNN on all the available records compared to the backpropagation network. QNN, however, has a relatively higher resource requirement for training.
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利用量子神经网络自动检测室性早缩
室性早搏是源自心室区域的异位心跳。这是一种常见的心律失常。心电图(ECG)记录已被广泛用于帮助心脏病专家诊断问题。本文采用模糊人工神经网络量子神经网络(QNN)对PVC的自动检测进行了研究。利用网络中的量子神经元,经过训练的QNN可以对复杂分类问题产生的不确定性水平进行建模。这种模糊特征有望提高算法的可靠性,这对生物医学领域的应用至关重要。实验采用MIT-BIH心律失常数据库中的心电图记录。结果表明,与反向传播网络相比,QNN在所有可用记录上的可靠性始终更高或相同。然而,QNN对训练资源的要求相对较高。
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