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Classification of heart sound recordings using convolution neural network

机译:使用卷积神经网络对心音记录进行分类

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Aims: This study proposes a cardiac diagnostic model using convolution neural network (CNN). This model can predict whether a heart sound recording is normal or not by classifying phonocardiograms (PCGs) from both clinical and non-clinical environments - in accordance with the “2016 Physionet/CinCChallenge”. Methods: Heart sound recordings in the training data set are filtered by using Windowed-sinc Hamming filter algorithm to remove signals regarded as noise. The filtered recordings are then scaled and segmented. Using the filtered and segmented recordings, CNN is trained to extract features and construct a classification function. The CNN is trained by back propagation algorithm with stochastic gradient descent and mini-batch learning. To classify one sound recording, the signal should be filtered and segmented. Each segment of the signal is then classified by the trained CNN model. The model assigns each segment signal a relative probability between normal and abnormal labels. By accumulating these relative probability values for all the segmented signals, one can reliably and robustly determine whether the target signal is normal or abnormal. Results: The proposed model achieved an overall score of 79.5 with a sensitivity of 70.8 and a specificity of 88.2.
机译:目的:这项研究提出了一种使用卷积神经网络(CNN)的心脏诊断模型。根据“ 2016 Physionet / CinCChallenge”,此模型可以通过对来自临床和非临床环境的心电图(PCG)进行分类来预测心音记录是否正常。方法:使用Window-sinc Hamming滤波算法对训练数据集中的心音记录进行滤波,以去除被视为噪声的信号。然后对过滤后的记录进行缩放和分段。使用经过过滤和分段的记录,对CNN进行训练,以提取特征并构建分类功能。 CNN通过具有随机梯度下降和小批量学习的反向传播算法进行训练。为了对一个录音进行分类,应该对信号进行滤波和分段。然后,信号的每个片段都由经过训练的CNN模型进行分类。该模型为每个段信号分配正常和异常标签之间的相对概率。通过累加所有分段信号的这些相对概率值,可以可靠而可靠地确定目标信号是正常还是异常。结果:提出的模型获得了79.5的总分,敏感性为70.8,特异性为88.2。

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