Division of Cardiovascular Medicine, Department of Internal Medicine, Kobe University Graduate School of Medicine.
Division of Epidemiology, Kobe University Graduate School of Medicine.
Circ J. 2022 Jul 25;86(8):1273-1280. doi: 10.1253/circj.CJ-22-0065. Epub 2022 Apr 7.
Several algorithms have been proposed for differentiating the right and left outflow tracts (RVOT/LVOT) arrhythmia origins from 12-lead electrocardiograms (ECGs); however, the procedure is complicated. A deep learning (DL) model, a form of artificial intelligence, can directly use ECGs and depict the importance of the leads and waveforms. This study aimed to create a visualized DL model that could classify arrhythmia origins more accurately.
This study enrolled 80 patients who underwent catheter ablation. A convolutional neural network-based model that could classify arrhythmia origins with 12-lead ECGs and visualize the leads that contributed to the diagnosis using a gradient-weighted class activation mapping method was developed. The average prediction results of the origins by the DL model were 89.4% (88.2-90.6) for accuracy and 95.2% (94.3-96.2) for recall, which were significantly better than when a conventional algorithm is used. The ratio of the contribution to the prediction differed between RVOT and LVOT origins. Although leads V1 to V3 and the limb leads had a focused balance in the LVOT group, the contribution ratio of leads aVR, aVL, and aVF was higher in the RVOT group.
This study diagnosed the arrhythmia origins more accurately than the conventional algorithm, and clarified which part of the 12-lead waveforms contributed to the diagnosis. The visualized DL model was convincing and may play a role in understanding the pathogenesis of arrhythmias.
已有多种算法被提出,用于从 12 导联心电图(ECG)中区分右心流出道(RVOT)和左心流出道(LVOT)心律失常起源,但操作较为复杂。深度学习(DL)模型是人工智能的一种形式,可以直接使用 ECG 并描绘导联和波形的重要性。本研究旨在创建一个可视化的 DL 模型,以更准确地分类心律失常起源。
本研究纳入 80 例行导管消融术的患者。开发了一种基于卷积神经网络的模型,该模型可以使用 12 导联 ECG 对心律失常起源进行分类,并使用梯度加权类激活映射方法可视化有助于诊断的导联。DL 模型对起源的平均预测结果为准确度 89.4%(88.2%-90.6%)和召回率 95.2%(94.3%-96.2%),明显优于传统算法。对预测的贡献比例在 RVOT 和 LVOT 起源之间有所不同。尽管在 LVOT 组中 V1 到 V3 导联和肢体导联有一个集中的平衡,但在 RVOT 组中 aVR、aVL 和 aVF 导联的贡献比例更高。
与传统算法相比,本研究更准确地诊断了心律失常起源,并阐明了 12 导联波形的哪一部分有助于诊断。可视化的 DL 模型令人信服,可能有助于理解心律失常的发病机制。