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DIAGNOSIS AND CLASSIFICATION OF SYSTOLIC MURMUR IN NEWBORNS

机译:新生儿收缩杂音的诊断与分类

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The problem addressed in this paper is the detection and classification of systolic murmurs in newborns. As the estimates of higher-order spectra have been shown to be useful in various signal processing problems, this paper uses bispectra and Wigner distribution for systolic murmurs detection. The diagnostic system that has been implemented is based on artificial neural networks, can be used for detecting and classifying systolic murmurs. The system outputs the classification of the sound as either normal (innocent murmurs) or a type of pathological systolic murmurs. The ultimate goal of this research is to implement a heart sounds diagnostic system that can be used to help physicians in the auscultation of patients, so to reduce number of unnecessary echocardiograms and prevent the release of newborns that are in fact patients. In this study, 96.4% accuracy, 97% sensitivity, and 97% specificity were obtained on a dataset of 56 samples.
机译:本文解决的问题是在新生儿中的收缩杂音的检测和分类。随着在各种信号处理问题中显示高阶光谱的估计,本文使用BISPectra和Wigner分布进行收缩杂音检测。已经实施的诊断系统基于人工神经网络,可用于检测和分类收缩杂音。该系统将声音的分类输出为正常(无辜杂音)或一种病理收缩杂音。本研究的最终目标是实施一种心脏声音诊断系统,可用于帮助医生在患者的听诊中,从而减少不必要的超声心动图的数量,并防止患者的新生儿释放。在该研究中,在56个样品的数据集上获得了96.4%的精度,97%的灵敏度和97%的特异性。

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