基于Inception V3的正常心音与收缩期杂音的特征提取模型

Jinhee Bae, Minwoo Kim, J. Lim
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引用次数: 1

摘要

在这项研究中,我们提出了一个模型,通过提取正常和象征性杂音出现的异常心音的特征来区分正常和异常的声音。通过电子听诊器获得的心音数据被转换成梅尔谱图图像。执行微调的预训练Inception V3模型使用mel光谱图图像作为输入。使用精细调整完成的Inception V3模型的卷积层作为特征提取器。采用点二值相关分析技术,从特征提取器提取的特征中选择有效的特征进行分类。晶体系数值是相关系数值的平方,用于特征之间的精确比较。在这个实验中,我们使用了人工神经网络作为分类器。经过微调的盗梦空间V3的平均准确率为87.7%。选取晶体系数值较高的前30个特征进行5次类验证,正确率为97.5%。这些结果可以极大地帮助医生发现收缩期杂音。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Extraction Model Based on Inception V3 to Distinguish Normal Heart Sound from Systolic Murmur
In this study, we propose a model for classifying normal and abnormal sounds by extracting characteristics from abnormal heart sounds in which normal and symbolic murmurs appear. Heart sound data obtained through an electronic stethoscope are converted into mel-spectrogram images. The pre-trained Inception V3 model that carries out fine-tuning uses the mel-spectrogram image as input. Convolutional layers of fine-tuning completed Inception V3 models were used as feature extractors. A point-binary correlation analysis technique was used to select effective features for classification from the features extracted through the feature extractor. A crystal coefficient value, which is the square of the correlation coefficient value, is used for an accurate comparison between the features. We used an artificial neural network as a classifier in this experiment. Fine-tuned Inception V3 has an average accuracy of 87.7%. When 5-fold class validation is advanced by selecting the top 30 characteristics with high crystal coefficient values, the accuracy is 97.5%. These results can greatly assist physicians trying to detect a systolic murmur.
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