Department of Cardiology University Medical Center Utrecht Utrecht The Netherlands.
QUVA Deep Vision Lab University of Amsterdam The Netherlands.
J Am Heart Assoc. 2020 May 18;9(10):e015138. doi: 10.1161/JAHA.119.015138. Epub 2020 May 14.
BACKGROUND The correct interpretation of the ECG is pivotal for the accurate diagnosis of many cardiac abnormalities, and conventional computerized interpretation has not been able to reach physician-level accuracy in detecting (acute) cardiac abnormalities. This study aims to develop and validate a deep neural network for comprehensive automated ECG triage in daily practice. METHODS AND RESULTS We developed a 37-layer convolutional residual deep neural network on a data set of free-text physician-annotated 12-lead ECGs. The deep neural network was trained on a data set with 336.835 recordings from 142.040 patients and validated on an independent validation data set (n=984), annotated by a panel of 5 cardiologists electrophysiologists. The 12-lead ECGs were acquired in all noncardiology departments of the University Medical Center Utrecht. The algorithm learned to classify these ECGs into the following 4 triage categories: normal, abnormal not acute, subacute, and acute. Discriminative performance is presented with overall and category-specific concordance statistics, polytomous discrimination indexes, sensitivities, specificities, and positive and negative predictive values. The patients in the validation data set had a mean age of 60.4 years and 54.3% were men. The deep neural network showed excellent overall discrimination with an overall concordance statistic of 0.93 (95% CI, 0.92-0.95) and a polytomous discriminatory index of 0.83 (95% CI, 0.79-0.87). CONCLUSIONS This study demonstrates that an end-to-end deep neural network can be accurately trained on unstructured free-text physician annotations and used to consistently triage 12-lead ECGs. When further fine-tuned with other clinical outcomes and externally validated in clinical practice, the demonstrated deep learning-based ECG interpretation can potentially improve time to treatment and decrease healthcare burden.
正确解读心电图对于准确诊断许多心脏异常至关重要,而传统的计算机化解读未能达到医生级别的准确性,无法检测到(急性)心脏异常。本研究旨在开发和验证一种用于日常实践中全面自动化心电图分诊的深度神经网络。
我们在一个包含 336835 个记录的数据集上开发了一个 37 层卷积残差深度神经网络,这些记录来自 142040 名患者,由 5 名心脏病学电生理学家组成的小组进行注释。深度神经网络在一个独立的验证数据集(n=984)上进行了验证,该数据集由 142040 名患者的 336835 个记录组成,由 5 名心脏病学电生理学家组成的小组进行注释。这些 12 导联心电图是在乌得勒支大学医学中心的所有非心脏病科采集的。该算法学会将这些心电图分类为以下 4 种分诊类别:正常、异常但非急性、亚急性和急性。分类性能以整体和类别特异性一致性统计、多项判别指数、敏感性、特异性、阳性和阴性预测值呈现。验证数据集中的患者平均年龄为 60.4 岁,54.3%为男性。深度神经网络的整体判别能力非常出色,整体一致性统计量为 0.93(95%置信区间,0.92-0.95),多项判别指数为 0.83(95%置信区间,0.79-0.87)。
本研究表明,端到端的深度神经网络可以在未经结构化处理的自由文本医生注释上进行准确训练,并用于一致地分诊 12 导联心电图。当与其他临床结果进一步微调并在临床实践中进行外部验证时,所展示的基于深度学习的心电图解释可能会提高治疗的及时性并减轻医疗负担。