Artículos de revistas
Geometrical features for premature ventricular contraction recognition with analytic hierarchy process based machine learning algorithms selection
Fecha
2019-02-01Registro en:
Computer Methods and Programs in Biomedicine, v. 169, p. 59-69.
1872-7565
0169-2607
10.1016/j.cmpb.2018.12.028
2-s2.0-85059183473
Autor
Universidade Estadual Paulista (Unesp)
Mato Grosso State University (UNEMAT)
Universidade Estadual de Mato Grosso do Sul (UEMS)
Institución
Resumen
Background and Objective: Premature ventricular contraction is associated to the risk of coronary heart disease, and its diagnosis depends on a long time heart monitoring. For this purpose, monitoring through Holter devices is often used and computational tools can provide essential assistance to specialists. This paper presents a new premature ventricular contraction recognition method based on a simplified set of features, extracted from geometric figures constructed over QRS complexes (Q, R and S waves). Methods: Initially, a preprocessing stage based on wavelet denoising electrocardiogram signal scaling is applied. Then, the signal is segmented taking into account the ventricular depolarization timing and a new set of geometrical features are extracted. In order to validate this approach, simulations encompassing eight different classifiers are presented. To select the best classifiers, a new methodology is proposed based on the Analytic Hierarchy Process. Results: The best results, achieved with an Artificial Immune System, were 98.4%, 91.1% and 98.7% for accuracy, sensitivity and specificity, respectively. When artificial examples were generated to balance the dataset, the recognition performance increased to 99.0%, 98.5% and 99.5%, employing the Support Vector Machine classifier. Conclusions: The proposed approach is compared with some of latest references and results indicate its effectiveness as a method for recognizing premature ventricular contraction. Besides, the overall system presents low computation load.