Publication | Open Access
Mobile Phonocardiogram Diagnosis in Newborns Using Support Vector Machine
23
Citations
12
References
2017
Year
Healthcare Monitoring SystemsMedical MonitoringEngineeringRemote Patient MonitoringBiometricsDiagnosisWearable TechnologySpeech RecognitionEarly DiagnosisSupport Vector MachineData SciencePattern RecognitionBiosignal ProcessingPatient MonitoringBiostatisticsEarly DetectionMobile Phonocardiogram DiagnosisPcg DataHealth SciencesHeart SoundAudiologyWaveform AnalysisSignal ProcessingPediatricsSpeech ProcessingHealth MonitoringPcg MethodHealth Informatics
Phonocardiogram (PCG) monitoring on newborns is one of the most important and challenging tasks in the heart assessment in the early ages of life. In this paper, we present a novel approach for cardiac monitoring applied in PCG data. This basic system coupled with denoising, segmentation, cardiac cycle selection and classification of heart sound can be used widely for a large number of the data. This paper describes the problems and additional advantages of the PCG method including the possibility of recording heart sound at home, removing unwanted noises and data reduction on a mobile device, and an intelligent system to diagnose heart diseases on the cloud server. A wide range of physiological features from various analysis domains, including modeling, time/frequency domain analysis, an algorithm, etc., is proposed in order to extract features which will be considered as inputs for the classifier. In order to record the PCG data set from multiple subjects over one year, an electronic stethoscope was used for collecting data that was connected to a mobile device. In this study, we used different types of classifiers in order to distinguish between healthy and pathological heart sounds, and a comparison on the performances revealed that support vector machine (SVM) provides 92.2% accuracy and AUC = 0.98 in a time of 1.14 seconds for training, on a dataset of 116 samples.
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