Department of Pediatrics, Children's Hospital of Pittsburgh, 4401 Penn Ave, Pittsburgh, PA 15224, USA.
Auton Lab, Carnegie Mellon University, Newell Simon Hall 3128, Forbes Ave, Pittsburgh, PA 15213, USA.
J Electrocardiol. 2023 Nov-Dec;81:111-116. doi: 10.1016/j.jelectrocard.2023.08.011. Epub 2023 Aug 23.
Despite the morbidity associated with acute atrial fibrillation (AF), no models currently exist to forecast its imminent onset. We sought to evaluate the ability of deep learning to forecast the imminent onset of AF with sufficient lead time, which has important implications for inpatient care.
We utilized the Physiobank Long-Term AF Database, which contains 24-h, labeled ECG recordings from patients with a history of AF. AF episodes were defined as ≥5 min of sustained AF. Three deep learning models incorporating convolutional and transformer layers were created for forecasting, with two models focusing on the predictive nature of sinus rhythm segments and AF epochs separately preceding an AF episode, and one model utilizing all preceding waveform as input. Cross-validated performance was evaluated using area under time-dependent receiver operating characteristic curves (AUC(t)) at 7.5-, 15-, 30-, and 60-min lead times, precision-recall curves, and imminent AF risk trajectories.
There were 367 AF episodes from 84 ECG recordings. All models showed average risk trajectory divergence of those with an AF episode from those without ∼15 min before the episode. Highest AUC was associated with the sinus rhythm model [AUC = 0.74; 7.5-min lead time], though the model using all preceding waveform data had similar performance and higher AUCs at longer lead times.
In this proof-of-concept study, we demonstrated the potential utility of neural networks to forecast the onset of AF in long-term ECG recordings with a clinically relevant lead time. External validation in larger cohorts is required before deploying these models clinically.
尽管急性心房颤动(AF)相关的发病率很高,但目前尚无模型能够预测其即将发作。我们试图评估深度学习预测 AF 即将发作的能力,以便提前足够的时间,这对住院患者的护理具有重要意义。
我们利用 Physiobank 长期 AF 数据库,其中包含有 AF 病史患者的 24 小时、标记的 ECG 记录。AF 发作定义为持续 AF 超过 5 分钟。我们创建了三个包含卷积层和转换器层的深度学习模型,用于预测,其中两个模型分别专注于窦性心律段和 AF 发作前分别出现的 AF 发作的预测性质,一个模型利用所有先前的波形作为输入。使用时间相关接收器操作特征曲线下面积(AUC(t))在 7.5、15、30 和 60 分钟的导前时间、精度-召回曲线和即将发生的 AF 风险轨迹进行交叉验证性能评估。
有 367 个 AF 发作来自 84 个 ECG 记录。所有模型在发作前约 15 分钟显示出有 AF 发作的患者和没有 AF 发作的患者之间的平均风险轨迹差异。窦性心律模型的 AUC 最高[AUC=0.74;7.5 分钟导前时间],尽管使用所有先前的波形数据的模型具有相似的性能,但在较长的导前时间下具有更高的 AUC。
在这项概念验证研究中,我们证明了神经网络在具有临床相关导前时间的长期 ECG 记录中预测 AF 发作的潜力。在临床应用这些模型之前,需要在更大的队列中进行外部验证。