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Automatic heart sound segmentation and murmur detection in pediatric phonocardiograms

机译:儿科对小儿心发读的自动心声和杂音检测

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The digital analysis of heart sounds has revealed itself as an evolving field of study. In recent years, numerous approaches to create decision support systems were attempted. This paper proposes two novel algorithms: one for the segmentation of heart sounds into heart cycles and another for detecting heart murmurs. The segmentation algorithm, based on the autocorrelation function to find the periodic components of the PCG signal had a sensitivity and positive predictive value of 89.2% and 98.6%, respectively. The murmur detection algorithm is based on features collected from different domains and was evaluated in two ways: a random division between train and test set and a division according to patients. The first returned sensitivity and specificity of 98.42% and 97.21% respectively for a minimum error of 2.19%. The second division had a far worse performance with a minimum error of 33.65%. The operating point was chosen at sensitivity 69.67% and a specificity 46.91% for a total error of 38.90% by varying the percentage of segments classified as murmurs needed for a positive murmur classification.
机译:心脏声音的数字分析揭示了自己作为一种不断发展的研究领域。近年来,尝试了众多创建决策支持系统的方法。本文提出了两种新颖算法:一个用于心脏声音的细分,进入心脏周期,另一个用于检测心脏杂音。基于自相关函数的分割算法分别用于查找PC​​G信号的周期性分量的灵敏度和阳性预测值分别为89.2%和98.6%。杂音检测算法基于来自不同域收集的特征,并以两种方式进行评估:列车和试验集之间的随机分为和根据患者的分部。第一种呼吸敏感度和特异性分别为98.42%和97.21%,最小误差为2.19%。第二个师的性能越来越差,最小误差为33.65%。通过改变分类为杂音分类所需的群体的百分比,在灵敏度下选择69.67%的敏感度,特异性为3.9.91%,总误差为38.90%。

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