Advanced intracardiac electrogram analysis for arrhythmia ablation support
Fecha
2014-06
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Universidad Rey Juan Carlos
Resumen
The present Thesis addressed the proposal of advanced methods for the analysis
of intracardiac electrograms (EGMs). EGMs are a valuable source of
clinical and diagnostic information about arrhythmias in electrophysiological
(EP) studies. During EP procedures, the electrical activity of the heart is
examined in order to diagnose the arrhythmia mechanism and, if appropriate,
treat it. The treatments include the implantation of life support devices,
such as pacemaker and implantable cardioverter defibrillator (ICD), and the
application of ablation therapy, which sears the diseased tissue by means of
radiofrequency or intense cold. Besides, cardiac navigation systems (CNSs)
are used in order to build electrical and anatomical maps (EAMs) which help
in the arrhythmia diagnosis and treatments.
Nowadays, both the evaluation of the origin and activation sequence of an
arrhythmia and the generation of EAMs are made by heuristically sampling
the cardiac chamber. However, the number and spatial localization of EGMs
during the sampling process have not been formally established. In this
context, this Thesis aims to deal with this spatio-temporal analysis in two
clinical applications of interest: (1) the regionalization of the left ventricular
tachycardia (LVT) exit site by using EGMs from ICDs; and (2) the estimation
of the spatial sampling rate (SSR) to build accurate EAMs from EGMs
recovered in CNSs.
For this aim, a method for the extraction of the temporal variations of the
electrical signal (EGM) over time was first proposed based on digital image
processing techniques, in order to create a digital database of EGMs stored
in ICD and printed in paper. This method was tested using recording printed
by devices of two different manufacturers. The gold-standard digital signal
and the one recovered from printouts were compared by means of three time
synchronization methods.
The regionalization of LVT exit site was tackled by using machine learning
techniques in a supervised scheme for classification and regression. Waveform
and features (times and voltages) from EGMs were used as input spaces. The
best discrimination between regions was obtained for the septal and lateral
half, and for the basal-lateral-superior octant.
The SSR estimation was dealt with a methodology based on manifold
harmonic analysis. The methodology included the representation of the EAM
spectrum as a spectral density in Fourier analysis, the estimation of the cut-off
frequency, and then, the estimation of SSR. In addition, this methodology was
extended to meshes with a scalar field (electrical feature) measured at vertices
of the mesh representing the cardiac chamber. SSR was estimated for the
anatomy and EAMs (anatomy and features) of ventricles and atria. Between
65 and 80 samples were enough to reconstruct the anatomy of the cardiac
chambers, whereas the SSR of EAMs was dependent on the arrhythmia
mechanism. The use of advanced processing techniques for spatio-temporal analysis
tailored to specific applications can be useful for improving the technological
support to electrophysiologists performing EP studies for arrhythmia ablation.
Descripción
Tesis Doctoral leída en la Universidad Rey Juan Carlos de Madrid en 2014. Directores de la Tesis: Dr. José Luis Rojo Álvarez y Dra. Inmaculada Mora Jiménez