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A Deep Learning Approach for Valve Defect Recognition in Heart Acoustic Signal

机译:心脏声信号阀缺陷识别的深度学习方法

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The analysis of phonocardiogram (PCG), although considered as well established in a clinical application, still constitutes the valuable source of diagnostic data. Currently, electronic auscultation provides digital signals which can be processed in order to automatically evaluate the condition of heart or lungs. In this paper, we propose a novel approach for the classification of phonocardio-graphic signals. We extracted a set of time-frequency parameters which enable to effectively differentiate between normal and abnormal heart beats (with valve defects). These features have constituted an input of the convolutional neural network, which we used for classification of pathological signals. The Aalborg University heart sounds database from PhysioNet/Computing in Cardiology Challenge 2016 was used for verification of developed algorithms. We obtained 99.1% sensitivity and 91.6% specificity on the test data, which is motivational for further research.
机译:PhonicardocoGram(PCG)的分析虽然在临床应用中被考虑在临床应用中确定,但仍然构成了诊断数据的宝贵来源。目前,电子听诊提供了可以处理的数字信号,以便自动评估心脏或肺的状况。在本文中,我们提出了一种用于对音乐室 - 图形信号分类的新方法。我们提取了一组时间频率参数,使能有效地区分正常和异常心跳(带阀门缺陷)。这些特征构成了卷积神经网络的输入,我们用于分类病理信号。 Aalborg大学Hearts Sounds来自PhysioIonet / Computing的心脏病学挑战2016的数据库用于验证发达的算法。我们在测试数据中获得了99.1%的灵敏度和91.6%的特异性,这是进一步研究的动机。

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