Título: Stochastic- and Neuro-Fuzzy-Analysis-based characterization and classification of 4-Channel Phonocardiograms for Cardiac Murmur Detection

Autor(es): UMAQUINGA CRIOLLO ANA CRISTINA, CRISTIAN MEJÍA ARBOLEDA, DIEGO HERNAN PELUFFO ORDOÑEZ, EDISON DELGADO TREJOS, MIGUEL BECERRA

Fecha de publicación: 31-may-2020

Resumen: Cardiac murmurs (CMs) are the most common heart’s diseases that are typically diagnosed from phonocardiogram (PCG) and echocardiogram tests -often supported by computerized systems. Research works have traditionally addressed the automatic CM diagnosis with no distinctively use of the four auscultation areas (one of each cardiac valve), resulting -most probably- in a constrained, nonimpartial diagnostic procedure. This study presents a comparison among four different CM detection systems from a 4-channel PCG. We first evaluate the acoustic characteristics derived from Mel-Frequency Cepstral Coefficients, Empirical Mode Decomposition (EMD), and statistical measures. Secondly, a relevance analysis is carried out using Fuzzy Rough Feature Selection. Thirdly, Hidden Markov Models (HMM), Adaptative Neuro-Fuzzy Inference System (ANFIS), Naïve Bayes, and Gaussian Mixture Model were applied for classification and validated using a 50- fold cross-validation procedure with a 70/30 split demonstrating the functionality and capability of EMD, Hidden Markov Model and ANFIS for CM classification.

Palabras clave: ANFIS, cardiac murmur, empirical mode decomposition, hidden markov models, phonocardiogram

ISSN: 1646-9895

Tipo publicación: Artículo

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