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A novel method for pediatric heart sound segmentation without using the ECG

机译:不使用ECG的小儿心音分割的新方法

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摘要

In this paper, we propose a novel method for pediatric heart sounds segmentation by paying special attention to the physiological effects of respiration on pediatric heart sounds. The segmentation is accomplished in three steps. First, the envelope of a heart sounds signal is obtained with emphasis on the first heart sound (Si) and the second heart sound (S2) by using short time spectral energy and autoregressive (AR) parameters of the signal. Then, the basic heart sounds are extracted taking into account the repetitive and spectral characteristics of Si and S2 sounds by using a Multi-Layer Perceptron (MLP) neural network classifier. In the final step, by considering the diastolic and systolic intervals variations due to the effect of a child's respiration, a complete and precise heart sounds end-pointing and segmentation is achieved.
机译:在本文中,我们特别关注呼吸对小儿心音的生理影响,提出了一种小儿心音分割的新方法。分割过程分为三个步骤。首先,通过使用短时频谱能量和信号的自回归(AR)参数,获得着重于第一心音(S1)和第二心音(S2)的心音信号的包络。然后,通过使用多层感知器(MLP)神经网络分类器,考虑到Si和S2声音的重复性和频谱特性,提取基本的心音。在最后一步中,通过考虑由于孩子的呼吸作用而引起的舒张间隔和收缩间隔的变化,可以实现完整而精确的心音终点和分段。

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