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Convolutional Neural Network Based Detection of Atrial Fibrillation Combing R-R intervals and F-wave Frequency Spectrum *

机译:结合R-R间隔和F波频谱,基于卷积神经网络的心房颤动检测 *

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Atrial Fibrillation (AF) is one of the arrhythmias that is common and serious in clinic. In this study, a novel method of AF classification with a convolutional neural network (CNN) was proposed, and particularly two cardiac rhythm features of R-R intervals and F-wave frequency spectrum were combined into the CNN for a good applicability of mobile application. Over 23 patients’ ten-hours of Electrocardiogram (ECG) records were collected from the MIT-BIH database, and each of which was segmented into 10s-data fragments to train the designed CNN and evaluate the performance of the proposed method. Specifically, a total of 83,461 fragments were collected, 49,952 fragments of which are the normal fragments (type-N) and the others are the AF fragments. As results, the obtained average accuracy of the proposed method combining the two proposed features is 97.3%, which is shown a relative higher accuracy comparing with either that of the detection with the feature of R-R intervals (95.7%) or that with the feature of F-wave frequency spectrum (93.9%). Additionally, the sensitivity and the specificity of the present method are both of a high level of 97.4% and 97.2%, respectively. In conclusion, the CNN based approach by combining the R-R interval series and the F-wave frequency spectrum would be effectively to improve the performance of AF detection. Moreover, the proposed classification of AF with 10s-data fragments also could be potentially useful for a wearable real-time monitoring application for a pre-hospital screening of AF.
机译:心房颤动(AF)是临床上常见且严重的心律不齐之一。在这项研究中,提出了一种使用卷积神经网络(CNN)进行AF分类的新方法,尤其是将R-R间隔和F波频谱的两个心律特征结合到CNN中,以实现良好的移动应用性。从MIT-BIH数据库中收集了超过23位患者的十小时心电图(ECG)记录,并将每人分为10s数据片段以训练设计的CNN并评估所提出方法的性能。具体地,总共收集了83,461个片段,其中49,952个片段是正常片段(N型),其他是AF片段。结果,该方法结合两个提出的特征获得的平均准确度为97.3%,与具有RR间隔特征的检测(95.7%)或具有RR间隔特征的检测相比,具有较高的准确度。 F波频谱(93.9%)。另外,本方法的灵敏度和特异性都分别为97.4%和97.2%的高水平。总之,结合R-R间隔序列和F波频谱的基于CNN的方法将有效地改善AF检测的性能。此外,建议的具有10s数据片段的房颤分类也可能对可用于院前房颤筛查的可穿戴实时监控应用有用。

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