论文标题
远程心房颤动负担估计使用深度复发神经网络
Remote atrial fibrillation burden estimation using deep recurrent neural network
论文作者
论文摘要
心房颤动负担(AFB)被定义为在足够长的监测期内在心房颤动(AF)上花费的时间百分比。最近的研究表明,与二进制诊断相比,使用AFB可获得更多的预后价值。我们首次使用深层复发中性网络(DRNN)方法首次评估了在长期连续记录中估算AFB的能力。方法:在p = 2,891例患者的大型数据库中开发和评估了模型,总计t = 68,800小时的连续心电图(ECG)录音(ECG)在弗吉尼亚大学心脏站获得的录音。具体而言,从单个便携式ECG频道获得了24小时的Beat-Beat时间序列。该网络(表示为Arnet)针对梯度提升(XGB)模型进行了基准测试,该模型训练了21个功能,包括样品熵(COSEN)和AFEFICENTE的系数。数据分为训练和测试集,而患者则根据AF的存在和严重程度进行分层。在独立的测试物理LTAF数据库上还评估了ARNET和XGB的概括。结果:测试集的绝对AF负担估计误差| E_AF |,中位数和四分位数为1.2(0.1-6.7),对于AF的人来说,AF的XGB为3.1(0.0-11.7)。 LTAF上的概括结果与ARNET的E_AF为2.6(1.1-14.7),XGB的E_AF和3.6(1.0-16.7)一致。结论:这项研究表明,利用DRNN的最新进展,AFB估计的24h beat to-beat间隔时间序列的可行性。意义:新型数据驱动方法可以实现AF的强大远程诊断和表型。
The atrial fibrillation burden (AFB) is defined as the percentage of time spend in atrial fibrillation (AF) over a long enough monitoring period. Recent research has demonstrated the added prognosis value that becomes available by using the AFB as compared with the binary diagnosis. We evaluate, for the first time, the ability to estimate the AFB over long-term continuous recordings, using a deep recurrent neutral network (DRNN) approach. Methods: The models were developed and evaluated on a large database of p=2,891 patients, totaling t=68,800 hours of continuous electrocardiography (ECG) recordings acquired at the University of Virginia heart station. Specifically, 24h beat-to-beat time series were obtained from a single portable ECG channel. The network, denoted ArNet, was benchmarked against a gradient boosting (XGB) model, trained on 21 features including the coefficient of sample entropy (CosEn) and AFEvidence. Data were divided into training and test sets, while patients were stratified by the presence and severity of AF. The generalizations of ArNet and XGB were also evaluated on the independent test PhysioNet LTAF database. Results: the absolute AF burden estimation error |E_AF|, median and interquartile, on the test set, was 1.2 (0.1-6.7) for ArNet and 3.1 (0.0-11.7) for XGB for AF individuals. Generalization results on LTAF were consistent with E_AF of 2.6 (1.1-14.7) for ArNet and 3.6 (1.0-16.7) for XGB. Conclusion: This research demonstrates the feasibility of AFB estimation from 24h beat-to-beat interval time series utilizing recent advances in DRNN. Significance: The novel data-driven approach enables robust remote diagnosis and phenotyping of AF.