首页> 外文会议>IEEE International Conference on Data Science and Advanced Analytics >Anomaly Detection in ECG Time signals via Deep Long Short-Term Memory Networks
【24h】

Anomaly Detection in ECG Time signals via Deep Long Short-Term Memory Networks

机译:通过深入短期内存网络的ECG时间信号中的异常检测

获取原文

摘要

Electrocardiography (ECG) signals are widely used to gauge the health of the human heart, and the resulting time series signal is often analyzed manually by a medical professional to detect any arrhythmia that the patient may have suffered. Much work has been done to automate the process of analyzing ECG signals, but most of the research involves extensive preprocessing of the ECG data to derive vectorized features and subsequently designing a classifier to discriminate between healthy ECG signals and those indicative of an Arrhythmia. This approach requires knowledge and data of the different types of Arrhythmia for training. However, the heart is a complex organ and there are many different and new types of Arrhythmia that can occur which were not part of the original training set. Thus, it may be more prudent to adopt an anomaly detection approach towards analyzing ECG signals. In this paper, we utilize a deep recurrent neural network architecture with Long Short Term Memory (LSTM) units to develop a predictive model for healthy ECG signals. We further utilize the probability distribution of the prediction errors from these recurrent models to indicate normal or abnormal behavior. An added advantage of using LSTM networks is that the ECG signal can be directly fed into the network without any elaborate preprocessing as required by other techniques. Also, no prior information about abnormal signals is needed by the networks as they were trained only on normal data. We have used the MIT-BIH Arrhythmia Database to obtain ECG time series data for both normal periods and for periods during four different types of Arrhythmias, namely Premature Ventricular Contraction (PVC), Atrial Premature Contraction (APC), Paced Beats (PB) and Ventricular Couplet (VC). Results are promising and indicate that Deep LSTM models may be viable for detecting anomalies in ECG signals.
机译:心电图(ECG)信号广泛用于衡量人体的健康,并且通过医学专业人员手动分析所得到的时间序列信号以检测患者可能遭受的任何心律失常。已经完成了很多工作来自动化分析ECG信号的过程,但大多数研究涉及广泛预处理ECG数据,以推导矢量化特征,并随后设计分类器以区分健康的ECG信号和指示心律失常的那些。这种方法需要不同类型的心律失常的知识和数据进行培训。然而,心脏是一个复杂的器官,并且存在许多不同和新的心律失常,这可能不会发生原始训练集的一部分。因此,采用异常检测方法朝向分析ECG信号可能更谨慎。在本文中,我们利用了具有长短期内存(LSTM)单元的深度经常性神经网络架构,用于为健康的ECG信号开发预测模型。我们进一步利用了这些复发模型的预测误差的概率分布,以指示正常或异常行为。使用LSTM网络的附加优点是ECG信号可以直接进入网络,而无需根据其他技术所要求的任何精确预处理。此外,网络不需要有关异常信号的先前信息,因为它们仅在正常数据上培训。我们使用了MIT-BIH心律失常数据库来获得正常时期的ECG时间序列数据,并且在四种不同类型的心律失常期间的期间,即早熟的心室收缩(PVC),心房过早收缩(APC),节奏节拍(PB)和心室对联(VC)。结果是有前途的,表明深度LSTM模型可能是可行的,用于检测心电图信号中的异常。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号