Title :
Selection of myocardial electrogram features for use by implantable devices
Author :
Gibb, William J. ; Auslander, David M. ; Griffin, Jerrry C.
Author_Institution :
Cardiovascular Res. Inst., California Univ., San Francisco, CA, USA
Abstract :
Implantable devices that terminate ventricular tachycardia must be capable of correctly classifying heart rhythms to a high degree of reliability. The relative discriminating power of several myocardial electrogram features in six human subjects were evaluated by reducing the order of their corresponding feature spaces using three different optimization methods: minimizing univariate Bayes error rates (univariate parametric), maximizing the Kullback divergence (multivariate parametric), and pruning classification trees (nonparametric). It was found that although the composition of the optimal subspaces varied considerably from one subject to another, one frequency domain feature was common to most of the optimal subspaces.
Keywords :
electrocardiography; muscle; pacemakers; Kullback divergence; classification trees pruning; feature space order reduction; frequency domain feature; heart rhythms; human subjects; implantable devices; myocardial electrogram features; optimal subspaces composition; univariate Bayes error rates; Cardiology; Classification tree analysis; Electrocardiography; Error analysis; Frequency domain analysis; Heart; Humans; Myocardium; Optimization methods; Pacemakers; Rhythm; Surface morphology; Bayes Theorem; Decision Trees; Electrocardiography; Equipment Design; Heart Rate; Heart Ventricles; Humans; Multivariate Analysis; Pacemaker, Artificial; Regression Analysis; Sinoatrial Node; Tachycardia, Atrioventricular Nodal Reentry;
Journal_Title :
Biomedical Engineering, IEEE Transactions on