论文标题
使用RR间隙框架心电图检测深度学习的心律失常检测
Deep Learning-Based Arrhythmia Detection Using RR-Interval Framed Electrocardiograms
论文作者
论文摘要
应用于心电图(ECG)数据的深度学习可用于在生物识别安全应用中实现个人身份验证,但并未被广泛用于诊断心血管疾病。我们开发了一个深度学习模型,用于检测心律不齐,其中代表连续的R-Peaks之间距离的时间分配的ECG数据被用作卷积神经网络(CNN)的输入。主要目的是开发基于紧凑的深度学习检测系统,该检测系统最少使用数据集,但可以提供心律失常检测的自信精度率。这种紧凑的系统可以在可穿戴设备或实时监视设备中实现,因为复杂的ECG波形不需要功能提取步骤,只需要R-PEAK数据。两项测试的结果表明,紧凑的心律失常检测系统(CADS)匹配传统系统在两次连续测试中检测心律失常的性能。 CAD的所有功能均在MATLAB中完全实现并公开使用。
Deep learning applied to electrocardiogram (ECG) data can be used to achieve personal authentication in biometric security applications, but it has not been widely used to diagnose cardiovascular disorders. We developed a deep learning model for the detection of arrhythmia in which time-sliced ECG data representing the distance between successive R-peaks are used as the input for a convolutional neural network (CNN). The main objective is developing the compact deep learning based detect system which minimally uses the dataset but delivers the confident accuracy rate of the Arrhythmia detection. This compact system can be implemented in wearable devices or real-time monitoring equipment because the feature extraction step is not required for complex ECG waveforms, only the R-peak data is needed. The results of both tests indicated that the Compact Arrhythmia Detection System (CADS) matched the performance of conventional systems for the detection of arrhythmia in two consecutive test runs. All features of the CADS are fully implemented and publicly available in MATLAB.