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Classification of short unsegmented heart sound based on deep learning

机译:基于深度学习的短段心音分类

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Heart-related ailments are one of the primary causes of death worldwide. Hence the early investigation of a heart for such ailments is crucial. Recent approaches for automated analysis of the heart sounds require segmentation of Phonocardiograms (PCG) signal. However, segmentation of PCG adds up to the complexity and expanded computational difficulty in the algorithm. Thereby, the main aim of this paper is to eliminate the segmentation process and to measure the benefit for accurate and detailed classification of short unsegmented 5 second PCG recordings. A novel approach for the classification of heart sounds that had been provided by PhysioNet2016 challenge, based on the convolutional neural network using a pre-trained (AlexNet) model has been analyzed in this study. After pre-processing short 5 second PCG recordings accompanied by continuous wavelet transform (CWT) results to the generation of 2D scalogram images. The scalogram images have been used to train and test Convolutional neural network based on deep learning. The proposed design has obtained comparable performance compared to the state-of-the-art methods. Test results have demonstrated that the proposed technique presents excellent performance outcomes by reducing segmentation complexity.
机译:与心脏有关的疾病是全世界主要的死亡原因之一。因此,对这种疾病的心脏进行早期检查至关重要。用于自动分析心音的最新方法要求对心音图(PCG)信号进行分段。但是,PCG的分割增加了算法的复杂性和扩展的计算难度。因此,本文的主要目的是消除分割过程,并测量对未分割的5秒PCG短记录进行准确和详细分类的好处。本研究分析了PhysioNet2016挑战提供的一种新颖的心音分类方法,该方法基于使用预训练(AlexNet)模型的卷积神经网络。经过预处理后,短短的5秒PCG记录伴随连续小波变换(CWT)生成2D比例尺图像。比例尺图像已被用于训练和测试基于深度学习的卷积神经网络。与最先进的方法相比,拟议的设计获得了可比的性能。测试结果表明,所提出的技术可通过降低分段复杂度来提供出色的性能结果。

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