首页> 外文期刊>BioMedical Engineering OnLine >Robust detection of heartbeats using association models from blood pressure and EEG signals
【24h】

Robust detection of heartbeats using association models from blood pressure and EEG signals

机译:使用来自血压和EEG信号的关联模型对心跳进行稳健检测

获取原文
获取外文期刊封面目录资料

摘要

The heartbeat is fundamental cardiac activity which is straightforwardly detected with a variety of measurement techniques for analyzing physiological signals. Unfortunately, unexpected noise or contaminated signals can distort or cut out electrocardiogram (ECG) signals in practice, misleading the heartbeat detectors to report a false heart rate or suspend itself for a considerable length of time in the worst case. To deal with the problem of unreliable heartbeat detection, PhysioNet/CinC suggests a challenge in 2014 for developing robust heart beat detectors using multimodal signals. This article proposes a multimodal data association method that supplements ECG as a primary input signal with blood pressure (BP) and electroencephalogram (EEG) as complementary input signals when input signals are unreliable. If the current signal quality index (SQI) qualifies ECG as a reliable input signal, our method applies QRS detection to ECG and reports heartbeats. Otherwise, the current SQI selects the best supplementary input signal between BP and EEG after evaluating the current SQI of BP. When BP is chosen as a supplementary input signal, our association model between ECG and BP enables us to compute their regular intervals, detect characteristics BP signals, and estimate the locations of the heartbeat. When both ECG and BP are not qualified, our fusion method resorts to the association model between ECG and EEG that allows us to apply an adaptive filter to ECG and EEG, extract the QRS candidates, and report heartbeats. The proposed method achieved an overall score of 86.26?% for the test data when the input signals are unreliable. Our method outperformed the traditional method, which achieved 79.28?% using QRS detector and BP detector from PhysioNet. Our multimodal signal processing method outperforms the conventional unimodal method of taking ECG signals alone for both training and test data sets. To detect the heartbeat robustly, we have proposed a novel multimodal data association method of supplementing ECG with a variety of physiological signals and accounting for the patient-specific lag between different pulsatile signals and ECG. Multimodal signal detectors and data-fusion approaches such as those proposed in this article can reduce false alarms and improve patient monitoring.
机译:心跳是基本的心脏活动,可以通过各种用于分析生理信号的测量技术直接检测到心跳。不幸的是,在实践中,意外的噪声或污染的信号在实践中会扭曲或切断心电图(ECG)信号,误导心跳检测器报告错误的心率,或者在最坏的情况下将其自身暂停相当长的时间。为了解决心跳检测不可靠的问题,PhysioNet / CinC建议在2014年使用多模式信号开发鲁棒的心跳检测器。本文提出了一种多模式数据关联方法,当输入信号不可靠时,将ECG作为主要输入信号补充血压(BP)和脑电图(EEG)作为补充输入信号。如果当前信号质量指数(SQI)使ECG合格,则我们的方法会将QRS检测应用于ECG并报告心跳。否则,当前SQI在评估BP的当前SQI之后,选择BP和EEG之间的最佳补充输入信号。当BP被选择作为辅助输入信号,我们的ECG和BP之间的关联模型使我们能够计算它们的有规律的间隔,检测特性BP的信号,并且估计心跳的位置。当ECG和BP均不合格时,我们的融合方法将诉诸于ECG和EEG之间的关联模型,该模型允许我们将自适应过滤器应用于ECG和EEG,提取QRS候选物并报告心跳。当输入信号不可靠时,所提出的方法对测试数据的总得分为86.26%。我们的方法优于传统方法,使用PhysioNet的QRS检测器和BP检测器可达到79.28%。我们的多峰信号处理方法优于仅将ECG信号用于训练和测试数据集的常规单峰方法。为了稳健地检测心跳,我们提出了一种新颖的多模式数据关联方法,该方法用各种生理信号补充ECG并考虑了不同搏动信号和ECG之间的患者特定时滞。多模式信号检测器和数据融合方法(如本文中提出的方法)可以减少误报并改善患者监测。

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