应用人工神经网络定位12导联心电图的沃尔夫-帕金森-怀特综合征副通路。

Damin Huang, Kazunobu Yamauchi, Yasuya Inden, Jun Yang, Zheng Jiang, Hiromasa Ida, Kimiko Katsuyama, Kai Wang, Ken Kato, Hiroki Kato
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引用次数: 3

摘要

如今,射频消融已被证明是一种安全有效的治疗阵发性心动过速伴沃尔夫-帕金森-怀特综合征的方法。据报道,从12导联心电图中定位副通路位置的许多标准尚未被证明足以区分所有情况下副通路的正确位置。本研究训练了一个人工神经网络来区分10个辅助通路位置所需的不同特征。150例患者成功行导管消融,有明显的单行和顺行附属通路。利用delta波极性和R波在QRS复核中的份额这两种心电图特征,人工神经网络通过90个学习案例学习了10个辅助通路各位点的心电图波特征,并建立了适用的网络模型进行测试。在60个测试案例中,有58个(96.7%)的辅助通路被网络正确定位。基于本研究所采用的方法,利用人工神经网络和12导联心电图更详细地预测沃尔夫-帕金森-怀特综合征副通路的位置成为可能。未来,当该方法与传统的可分析δ波和ORS复波的自动心电图系统结合使用时,将有助于临床自动诊断Wolff-Parkinson-White综合征附属通路的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of an artificial neural network to localize accessory pathways of Wolff-Parkinson-White syndrome with 12-lead electrocardiogram.

Today, radio-frequency ablation has been shown to be a safe and effective method to treat paroxysmal tachycardia with Wolff-Parkinson-White syndrome. The many criteria reported for localizing the sites of accessory pathways from a 12-lead electrocardiogram have not proven adequate to differentiate the correct sites of accessory pathways for all situations. This study trained an artificial neural network to differentiate the varied features needed to localize 10 sites of accessory pathways. One hundred fifty patients underwent successful catheter ablation, with manifest single and antegradely conducting accessory pathways. Using the two electrocardiogram features of polarity of delta wave and R wave's share of QRS complex, an artificial neural network learned the characteristics of electrocardiogram waves for each site of the 10 accessory pathways through 90 learning cases, and an applicable network model was developed for testing. In 58 of 60 test cases (96.7%), sites of accessory pathways were localized correctly by the network. Based on the method employed in the present study, it thus becomes possible to predict the sites of accessory pathways with Wolff-Parkinson-White syndrome in more detail by using an artificial neural network with a 12-lead electrocardiogram. In the future, when this method is incorporated into a conventional automatic electrocardiogram system which could analyze delta waves and ORS complex, it will become useful to automatically diagnose the locations of the accessory pathways with Wolff-Parkinson-White syndrome in clinical practice.

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