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Focal and diffused liver disease classification from ultrasound images based on isocontour segmentation

机译:基于等高线分割的超声图像局灶性和弥漫性肝病分类

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摘要

Preliminary diagnosis based on ultrasound scanning is the first step in the treatment of many abdominal diseases. The noisy nature of the ultrasound image coupled with minimal contrasting features complicates the task of automatic classification if not impossible. This study presents a segmentation-based approach to automatic classification of ten types of diffused and focal liver diseases from ultrasound images. A novel approach using Isocontour Segmentation based on Marching Squares, a computer graphics algorithm is presented. GLCM and fractal features are extracted from the segmented ultrasound images and classified using support vector machines and artificial neural networks (ANN) and the results are analysed. An overall classification accuracy of 92% is achieved using fractal features and ANN.
机译:基于超声扫描的初步诊断是治疗许多腹部疾病的第一步。如果不是不可能的话,超声图像的噪声性质加上最小的对比特征会使自动分类的任务复杂化。这项研究提出了一种基于分割的方法,可以从超声图像中自动分类十种弥漫性和局灶性肝病。提出了一种基于等距分割的等值线分割的新方法,一种计算机图形算法。从分割的超声图像中提取GLCM和分形特征,并使用支持向量机和人工神经网络(ANN)对其进行分类,并对结果进行分析。使用分形特征和人工神经网络可以实现92%的总体分类精度。

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