Development of a Visualization Deep Learning Model for Classifying Origins of Ventricular Arrhythmias

Background: 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 a...

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Veröffentlicht in:Circulation Journal 2022/07/25, Vol.86(8), pp.1273-1280
Hauptverfasser: Nakasone, Kazutaka, Nishimori, Makoto, Kiuchi, Kunihiko, Shinohara, Masakazu, Fukuzawa, Koji, Takami, Mitsuru, Hamriti, Mustapha El, Sommer, Philipp, Sakai, Jun, Nakamura, Toshihiro, Yatomi, Atsusuke, Sonoda, Yusuke, Takahara, Hiroyuki, Yamamoto, Kyoko, Suzuki, Yuya, Tani, Kenichi, Iwai, Hidehiro, Nakanishi, Yusuke, Hirata, Ken-ichi
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Sprache:eng
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Zusammenfassung:Background: 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.Methods and Results: 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.Conclusions: 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.
ISSN:1346-9843
1347-4820
1347-4820
DOI:10.1253/circj.CJ-22-0065