Resumen :
Hypertrophic cardiomyopathy, according to its prevalence, is a comparatively common
disease related to the risk of suffering sudden cardiac death, heart failure and stroke. This illness is
characterized by the excessive deposition of collagen among healthy myocardium cells. This situation,
which is medically known as fibrosis, constitutes effective conduction obstacles in the myocardium
electrical path, and when severe enough, it can be outlined as additional peaks or notches in the QRS,
clinically entitled as fragmentation. Nowadays, the fragmentation detection is performed by visual
inspection, but the fragmented QRS can be confused with the noise present in the electrocardiogram
(ECG). On the other hand, fibrosis detection is performed by magnetic resonance imaging with
late gadolinium enhancement, the main drawback of this technique being its cost in terms of
time and money. In this work, we propose two automatic algorithms, one for fragmented QRS
detection and another for fibrosis detection. For this purpose, we used four different databases,
including the subrogated database described in the companion paper and incorporating three
additional ones, one compounded by more accurate subrogated ECG signals and two compounded
by real and affected subjects as labeled by expert clinicians. The first real-world database contains
QRS fragmented records and the second one contains records with fibrosis and both were recorded
in Hospital Clínico Universitario Virgen de la Arrixaca (Spain). To deeply analyze the scope
of these datasets, we benchmarked several classifiers such as Neural Networks, Support Vector
Machines (SVM), Decision Trees and Gaussian Naïve Bayes (NB). For the fragmentation dataset,
the best results were 0.94 sensitivity, 0.88 specificity, 0.89 positive predictive value, 0.93 negative
predictive value and 0.91 accuracy when using SVM with Gaussian kernel. For the fibrosis databases,
more limited accuracy was reached, with 0.47 sensitivity, 0.91 specificity, 0.82 predictive positive
value, 0.66 negative predictive value and 0.70 accuracy when using Gaussian NB. Nevertheless, this is
the first time that fibrosis detection is attempted automatically from ECG postprocessing, paving
the way towards improved algorithms and methods for it. Therefore, we can conclude that the
proposed techniques could offer a valuable tool to clinicians for both fragmentation and fibrosis
diagnoses support.
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