Invention Grant
US07751873B2 Wavelet based feature extraction and dimension reduction for the classification of human cardiac electrogram depolarization waveforms 有权
基于小波的特征提取和尺寸减少用于人类心电图去极化波形的分类

  • Patent Title: Wavelet based feature extraction and dimension reduction for the classification of human cardiac electrogram depolarization waveforms
  • Patent Title (中): 基于小波的特征提取和尺寸减少用于人类心电图去极化波形的分类
  • Application No.: US11933924
    Application Date: 2007-11-01
  • Publication No.: US07751873B2
    Publication Date: 2010-07-06
  • Inventor: Christopher S. de Voir
  • Applicant: Christopher S. de Voir
  • Applicant Address: CH Baar
  • Assignee: Biotronik CRM Patent AG
  • Current Assignee: Biotronik CRM Patent AG
  • Current Assignee Address: CH Baar
  • Agency: ARC IP Law, PC
  • Agent Joseph J. Mayo
  • Main IPC: A61N1/365
  • IPC: A61N1/365
Wavelet based feature extraction and dimension reduction for the classification of human cardiac electrogram depolarization waveforms
Abstract:
A depolarization waveform classifier based on the Modified lifting line wavelet Transform is described. Overcomes problems in existing rate-based event classifiers. A task for pacemaker/defibrillators is the accurate identification of rhythm categories so correct electrotherapy can be administered. Because some rhythms cause rapid dangerous drop in cardiac output, it's desirable to categorize depolarization waveforms on a beat-to-beat basis to accomplish rhythm classification as rapidly as possible. Although rate based methods of event categorization have served well in implanted devices, these methods suffer in sensitivity and specificity when atrial/ventricular rates are similar. Human experts differentiate rhythms by morphological features of strip chart electrocardiograms. The wavelet transform approximates human expert analysis function because it correlates distinct morphological features at multiple scales. The accuracy of implanted rhythm determination can then be improved by using human-appreciable time domain features enhanced by time scale decomposition of depolarization waveforms.
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