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Support vector machine (SVM) based liver classification: fibrosis, steatosis, and inflammation

机译:基于支持向量机(SVM)的肝分类:纤维化,脂肪变性和炎症

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An SVM based liver classifier was developed to differentiate liver conditions, including normal, fibrosis with low fat, fibrosis with high fat, and inflammation. An in-vivo study was performed with 35 rats under normal conditions or after carbon tetrachloride (CCl4) or concanavalin A (ConA) dosing to induce fibrosis with varying degrees of steatosis, and inflammation, respectively. These livers were imaged in-vivo by an ultrasound, and approximately 30 frames for each rat were acquired. Therefore, a total of 998 ultrasound images were analyzed and used for training a SVM classifier. Each image has three measured parameters: H-scan scattering classification, estimated attenuation coefficient, and B-scan intensity. These parameters were assigned as inputs to the SVM. A liver diagnosis system based on the SVM and H-scan was produced. The clusters representing each state of liver are provided in two- and three- parameter space. From these, the SVM generates decision planes to classify the liver conditions. The classification accuracy is 92.2% with the three features. Therefore, these results provide the beginning of a coherent framework for determining the scattering signatures or clustering in multi-parametric space, of the normal liver compared with diseased livers.
机译:开发了基于SVM的肝脏分类器,以区分肝脏状况,包括正常,低脂纤维化,高脂纤维化和炎症。在正常条件下或在四氯化碳(CCl)之后对35只大鼠进行了体内研究 4 )或伴刀豆球蛋白A(ConA)的剂量,分别导致不同程度的脂肪变性和炎症引起的纤维化。通过超声对这些肝脏进行体内成像,并为每只大鼠获取约30帧。因此,总共分析了998张超声图像,并将其用于训练SVM分类器。每个图像具有三个测量参数:H扫描散射分类,估计的衰减系数和B扫描强度。这些参数被分配为SVM的输入。制作了基于SVM和H-scan的肝脏诊断系统。在两个参数和三个参数的空间中提供了表示每种肝脏状态的簇。通过这些,SVM生成决策平面以对肝脏状况进行分类。具有这三个特征的分类精度为92.2%。因此,这些结果为确定正常肝脏与患病肝脏相比在多参数空间中的散射特征或聚类提供了一个连贯框架的起点。

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