一种低成本数字听诊器用于心音正常与异常分类

Sorawit Khoruamkid, S. Visitsattapongse
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引用次数: 0

摘要

心脏病是大多数人死亡的主要原因。为了克服这种情况,心跳声分析是一种方便的心脏病诊断方法。心音分类是心音划分和特征提取的难点。听诊器是一种被医生广泛用于听心跳的医疗设备。听诊器在听诊者的胸部和耳朵上工作。主要问题是在听心音时信号电平低,难以分析。在声学听诊器上添加电子电路和软件将增强心率信号,并可以最大限度地减少对患者心脏状态的错误分析。机器学习被用来有效地分析和分类心音。卷积神经网络(CNN)模型和带特征提取器的支持向量机(SVM)是研究中使用的有效方法。首先,心音图(PCG)文件被分割成等长的片段。然后,我们将PCG文件转换为频谱图。频谱图图像被送入卷积神经网络和支持向量机。最好的结果是使用Inception V3模型和CNN分类器,准确率为0.909,灵敏度为0.948,特异性为0.869。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Low-Cost Digital Stethoscope For Normal and Abnormal Heart Sound Classification
Heart disease is a major problem in most deaths. To conquer this situation, heartbeat sound analysis is a convenient method for diagnosing heart disease. Heartbeat sound classification remains a challenging problem in heart sound division and feature extraction. A stethoscope is a medical device widely used by physicians to listen to the heartbeat. An acoustic stethoscope operates on the chest piece to the ears of the listener. The main problem is in listening to heart sounds that the low signal level and are difficult to be analyzed. Adding electronic circuitry and software to acoustic stethoscopes will strengthen the heart rate signal and can minimize error analysis of the state of the patient's heart. Machine learning is used to efficiently analyze and classify heart sounds. Convolutional Neural Network (CNN) models and Support Vector Machine (SVM) with feature extractors were effective methods and were used in this research. First, the Phonocardiogram (PCG) files are fragmented into pieces of equivalent length. Then, we convert the PCG files to a spectrogram. The spectrogram images are fed into a convolutional neural network and support vector machine. The best result is using an Inception V3 model with the CNN classifier which has an accuracy of 0.909, with 0.948 sensitivity and 0.869 specificity.
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