A classifier based on the artificial neural network approach for cardiologic auscultation in pediatrics

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Objective:This research work was aimed at developing a reliable screening device for diagnosis of heart murmurs in pediatrics. This is a significant problem in pediatric cardiology because of the high rate of incidence of heart murmurs in this population (reportedly 77–95%), of which only a small fraction arises from congenital heart disease. The screening devices currently available (e.g. chest X-ray, electrocardiogram, etc.) suffer from poor sensitivity and specificity in detecting congenital heart disease. Thus, patients with heart murmurs today are frequently assessed by consultation as well with advanced imaging techniques. The most prominent among these is echocardiography. However, echocardiography is expensive and is usually only available in healthcare centers in major cities. Thus, for patients being evaluated with a heart murmur, developing a more accurate screening device is vital to efforts in reducing health care costs.

论文关键词:Pediatric cardiac auscultation,Artificial neural network classifier,Phonocardiography

论文评审过程:Received 5 May 2003, Revised 15 July 2004, Accepted 24 July 2004, Available online 7 December 2004.

论文官网地址:https://doi.org/10.1016/j.artmed.2004.07.008