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通过深度学习方法利用正常窦性心律心电图信号中的离散心跳预测心律失常的未来发生率。

Predicting Future Incidences of Cardiac Arrhythmias Using Discrete Heartbeats from Normal Sinus Rhythm ECG Signals via Deep Learning Methods.

作者信息

Kim Yehyun, Lee Myeonggyu, Yoon Jaeung, Kim Yeji, Min Hyunseok, Cho Hyungjoo, Park Junbeom, Shin Taeyoung

机构信息

Synergy A.I. Co., Ltd., Seoul 07573, Republic of Korea.

Department of Cardiology, Ewha Womans University Mokdong Hospital, Seoul 07985, Republic of Korea.

出版信息

Diagnostics (Basel). 2023 Sep 3;13(17):2849. doi: 10.3390/diagnostics13172849.

Abstract

This study aims to compare the effectiveness of using discrete heartbeats versus an entire 12-lead electrocardiogram (ECG) as the input for predicting future occurrences of arrhythmia and atrial fibrillation using deep learning models. Experiments were conducted using two types of inputs: a combination of discrete heartbeats extracted from 12-lead ECG and an entire 12-lead ECG signal of 10 s. This study utilized 326,904 ECG signals from 134,447 patients and categorized them into three groups: true-normal sinus rhythm (T-NSR), atrial fibrillation-normal sinus rhythm (AF-NSR), and clinically important arrhythmia-normal sinus rhythm (CIA-NSR). The T-NSR group comprised patients with at least three normal rhythms in a year and no atrial fibrillation or arrhythmias history. Clinically important arrhythmia included atrial fibrillation, atrial flutter, atrial premature contraction, atrial tachycardia, ventricular premature contraction, ventricular tachycardia, right and left bundle branch block, and atrioventricular block over the second degree. The AF-NSR group included normal sinus rhythm paired with atrial fibrillation or atrial flutter within 14 days, and the CIA-NSR group comprised normal sinus rhythm paired with CIA occurring within 14 days. Three deep learning models, ResNet-18, LSTM, and Transformer-based models, were utilized to distinguish T-NSR from AF-NSR and T-NSR from CIA-NSR. The experiments demonstrated the potential of using discrete heartbeats in predicting future arrhythmia and atrial fibrillation incidences extracted from 12-lead electrocardiogram (ECG) signals alone, without any additional patient information. The analysis reveals that these discrete heartbeats contain subtle patterns that deep learning models can identify. Focusing on discrete heartbeats may lead to more timely and accurate diagnoses of these conditions, improving patient outcomes and enabling automated diagnosis using ECG signals as a biomarker.

摘要

本研究旨在比较使用离散心跳与完整的12导联心电图(ECG)作为输入,通过深度学习模型预测心律失常和心房颤动未来发作情况的有效性。实验使用了两种类型的输入:从12导联ECG中提取的离散心跳组合以及10秒的完整12导联ECG信号。本研究使用了来自134447名患者的326904份ECG信号,并将其分为三组:真正的正常窦性心律(T-NSR)、心房颤动-正常窦性心律(AF-NSR)和具有临床意义的心律失常-正常窦性心律(CIA-NSR)。T-NSR组包括一年内至少有三次正常心律且无心房颤动或心律失常病史的患者。具有临床意义的心律失常包括心房颤动、心房扑动、房性早搏、房性心动过速、室性早搏、室性心动过速、左右束支传导阻滞以及二度以上房室传导阻滞。AF-NSR组包括在14天内与心房颤动或心房扑动配对的正常窦性心律,CIA-NSR组包括在14天内与CIA配对的正常窦性心律。使用三种深度学习模型,即ResNet-18、长短期记忆网络(LSTM)和基于Transformer的模型,来区分T-NSR与AF-NSR以及T-NSR与CIA-NSR。实验证明了仅使用离散心跳从12导联心电图(ECG)信号中预测未来心律失常和心房颤动发生率的潜力,无需任何额外的患者信息。分析表明,这些离散心跳包含深度学习模型可以识别的细微模式。关注离散心跳可能会导致对这些病症更及时、准确的诊断,改善患者预后,并能够使用ECG信号作为生物标志物进行自动诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d31c/10487044/115b0bfe7092/diagnostics-13-02849-g001.jpg

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