使用卷积神经网络的自动心肺音分类

Qiyu Chen, Weibin Zhang, Xiang Tian, Xiaoxue Zhang, Shaoqiong Chen, Wenkang Lei
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引用次数: 26

摘要

本文研究了利用卷积神经网络(cnn)自动检测异常心肺音并对其进行分类的有效性。心脏和呼吸系统疾病长期以来一直影响着人类。即使在没有专业医生的情况下,也可以在早期发现潜在的威胁,因此有效的自动诊断方法具有很高的吸引力。我们收集了一组包含正常和异常心肺音的数据集。然后由专业医生对这些声音进行注释。采用基于cnn的系统将心音自动分类为正常、杂音、二尖瓣功能不全、二尖瓣狭窄、室间隔缺损、主动脉功能不全、主动脉狭窄等7类之一,将肺音自动分类为正常、湿润音、喘息音等3类之一。
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Automatic heart and lung sounds classification using convolutional neural networks
We study the effectiveness of using convolutional neural networks (CNNs) to automatically detect abnormal heart and lung sounds and classify them into different classes in this paper. Heart and respiratory diseases have been affecting humankind for a long time. An effective and automatic diagnostic method is highly attractive since it can help discover potential threat at the early stage, even at home without a professional doctor. We collected a data set containing normal and abnormal heart and lung sounds. These sounds were then annotated by professional doctors. CNNs based systems were implemented to automatically classify the heart sounds into one of the seven categories: normal, bruit de galop, mitral inadequacy, mitral stenosis, interventricular septal defect (IVSD), aortic incompetence, aorta stenosis, and the lung sounds into one of the three categories: normal, moist rales, wheezing rale.
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