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Classification of diffuse liver diseases based on ultrasound images with multimodal features

机译:基于多模式特征的超声图像对弥漫性肝病的分类

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This paper describes a method of classification of diffuse liver diseases based on ultrasound images with multimodal features. The CNN network were used to extract image structure features, while Multi-scale Gray-level Co-occurrence Matrix (MGLCM) and Wavelet Multi-sub-bands Co-occurrence Matrix(WMCM) were used to extract image texture features. These two kinds of features were combined into multimodal features, then used as the input of a lightGBM classifier. 2942 liver ultrasound images have been classified using the proposed method. Classification accuracies of normal, fatty liver disease and liver fibrosis are 82.1%, 85.0%, and 80.9%, respectively. It can be seen from contrast experiments that the method proposed in this paper can improve the overall classification accuracy by 5.4%.
机译:本文介绍了一种基于具有多峰特征的超声图像对弥漫性肝病进行分类的方法。 CNN网络用于提取图像结构特征,而多尺度灰度共现矩阵(MGLCM)和小波多子带共现矩阵(WMCM)用于提取图像纹理特征。这两种特征被组合成多峰特征,然后用作lightGBM分类器的输入。使用提出的方法对2942肝超声图像进行了分类。正常,脂肪肝和肝纤维化的分类准确度分别为82.1%,85.0%和80.9%。从对比实验可以看出,本文提出的方法可以将整体分类准确率提高5.4%。

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