Data analytics for supporting clinical decision on patients with implantable cardioverter defibrillator
Fecha
2017
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Universidad Rey Juan Carlos
Resumen
Nowadays, the massive storage of cardiac arrhythmic episodes from Implantable Cardioverter
Defribrillators (ICDs) is opening up a new range of opportunities for electrophysiological knowledge
extraction. Large and high quality databases are increasingly encouraging the development
of new Data Analytics (DA) tools supporting cardiologists on their clinical decisions. Within
this new context, this Thesis aims to provide a computational solution for two current challenges
in cardiology: (1) the automatic classification of cardiac arrhythmic episodes recorded by ICDs;
and (2) the determination of a safety threshold on R-wave amplitudes during a normal Baseline
Rhythm (BR) for ensuring a low risk of undersensing fatal arrhythmic episodes in ICDs.
On the one hand, current ICDs are highly reliable detecting fatal arrhythmic episodes. However,
the accurate automatic classification into specific classes remains a field for improvement.
As a result, cardiologists still need to manually analyze each episode and to check whether the
ICD detection and treatment were adequate. Therefore, a novel DA-based methodology for the
automatic classification of ICD arrhythmic episodes is proposed in this Thesis. The methodology
is defined to be potentially used in real-world ICD scenarios, since: (1) it requires minimal signal
preprocessing due to memory and battery constraints; and (2) it deals with episodes of different
duration in the presence of non-recording intervals. Likewise, the proposed methodology emulates
the know-how of expert cardiologists, for which it simultaneously considers heart activation
events and signal waveforms. Results on a set of 6,233 actual ICD detected episodes from 599
patients showed test accuracy rate (and kappa coefficient) close to 78% (0.6) and 90% (0.8) in
both 8 and 3-class imbalanced schemes, respectively.
On the other hand, R-wave amplitudes during normal BR are the current indicators used
to subjectively characterize the risk of undersensing Ventricular Fibrillation (VF) episodes in
ICDs. However, a minimum value (or safety threshold) has not been established yet. Clinical
guidelines recommend R-wave amplitudes of at least 7 mV at the ICD implantation. When the
amplitude is lower, it is usual the induction of defibrillation tests in the clinical practice to ensure
that undersensing does not occur. The drawback of this is those inductions increase the patient
complications, and the efficacy and safety of ICD therapies are not improved by using these data
as secondary information. In order to tackle this challenge, a DA-based procedure for estimating
a safety threshold on BR R-wave amplitudes is proposed in this Thesis. To define this procedure:
(1) the behavior and undersensing rate of R-wave amplitudes during VF episodes are defined;
and (2) the R-wave amplitude relationship between BR and VF episodes is determined. Results
on a set of 229 actual VF episodes from 83 patients showed that R-wave amplitudes lower than
2.47 mV can lead to potentially risk situations of non or late detection of VF episodes.
This Thesis contributes to scientific literature by offering new insights for the development
of new DA-based tools to support cardiologists during the follow-up of patients with an ICD.
Results for both raised challenges convincingly demonstrate that the new generation of large and
high quality clinical databases plays a major role in future trends in cardiology.
Descripción
Tesis Doctoral leída en la Universidad Rey Juan Carlos de Madrid en 2017. Directores de la Tesis: Inmaculada Mora Jiménez y José Luis Rojo Álvarez