利用人工智能心电图预测心房颤动的自发心律转复。

IF 4.4 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
European heart journal. Digital health Pub Date : 2025-08-05 eCollection Date: 2025-09-01 DOI:10.1093/ehjdh/ztaf081
Brandon Wadforth, Sobhan Salari Shahrbabaki, Campbell Strong, Jonathan Karnon, Jing Soong Goh, Luke Phillip O'Loughlin, Ivaylo Tonchev, Lewis Mitchell, Taylor Strube, Scott Lorensini, Darius Chapman, Evan Jenkins, Anand N Ganesan
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引用次数: 0

摘要

目的:自发性心律转复(SCV)常见于急诊科(ed)原发性心房颤动(AF)患者。预测SCV可以促进及时出院,避免昂贵的入院费用。我们试图评估是否可以使用人工智能心电图(AI-ECGs)预测SCV,以及这是否可以节省成本。方法和结果:我们招募了2022-23年间因原发性房颤就诊于急诊科的患者。如果患者房颤发作的结果不清楚,或者心电图无法获取,则排除患者。使用ResNet50、EfficientNet和DenseNet卷积神经网络(CNN)架构以及随后的集成学习模型,尝试进行自发性心律转复预测。然后,我们进行了成本最小化分析,以估计预测导向的“观望”方案的成本效应。共有1159份报告提交给委员会,其中502份有足够的资料纳入。中位年龄为74.0岁,女性占54.0%。227例(45.2%)患者发生自发性心律转复,年轻患者发生率更高(P < 0.001)。集成学习模型优于单个cnn,准确率达到69.7% (SD 5.91),接收者曲线下工作特征面积(ROC AUC)为0.742 (SD 0.037),灵敏度和特异性分别为0.736 (SD 0.068)和0.657 (SD 0.150)。如果所有患者都入院,每位患者的费用为4681美元,如果采用预测指导的“观望”方案,每位患者的费用降至3398美元,总住院率降低了33.3%。结论:人工智能心电图可以预测急诊科原发性房颤患者的SCV,利用人工智能心电图进行预测指导的“观望”方案可以节省大量成本并减少住院时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the spontaneous cardioversion of atrial fibrillation using artificial intelligence-enabled electrocardiography.

Aims: Spontaneous cardioversion (SCV) is commonly observed in patients presenting to emergency departments (EDs) with primary atrial fibrillation (AF). Predicting SCV could facilitate timely discharge and avoid costly admissions. We sought to evaluate whether SCV could be predicted using artificial intelligence-enabled electrocardiograms (AI-ECGs) and whether this could produce cost savings.

Methods and results: We recruited patients presenting to EDs with primary AF throughout 2022-23. Patients were excluded if the outcome of their AF episode was unclear, or the ECG was not accessible. Spontaneous cardioversion prediction was attempted using ResNet50, EfficientNet, and DenseNet convolutional neural network (CNN) architectures and subsequently an ensemble learning model. We then performed a cost-minimization analysis to estimate the cost effect of a prediction-guided 'wait-and-see' protocol. There were 1159 presentations to the ED, of which 502 had sufficient data for inclusion. The median age was 74.0 years and 54.0% were women. Spontaneous cardioversion occurred in 227 (45.2%) patients and was more frequent in younger patients (P < 0.001). The ensemble learning model outperformed individual CNNs, achieving an accuracy of 69.7% (SD 5.91) and a receiver operating characteristic area under the curve (ROC AUC) of 0.742 (SD 0.037) with a sensitivity and specificity of 0.736 (SD 0.068) and 0.657 (SD 0.150), respectively. The per patient cost was $4681 if all patients were admitted, which reduced to $3398 with a prediction-guided 'wait-and-see' protocol with a 33.3% reduction in overall hospitalization.

Conclusion: Artificial intelligence-enabled electrocardiogram can predict SCV in patients presenting to EDs with primary AF, and a prediction-guided 'wait-and-see' protocol utilizing AI-ECG could lead to substantial cost savings and reduced hospitalization.

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