基于决策树的新疆地方性肝包虫病计算机断层图像分类

Azmat Rozjan, Roxangul Arxidin, Nadiya Abdukeyim, Chuanbo Yan, A. Kutluk, M. Hamit, Juan Yao, W. Liu
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引用次数: 1

摘要

目的:评价决策树分类器对CT图像的分类能力。方法:以医院提供的CT图像为数据来源。在这项研究中。选择正常肝脏、单囊性肝包虫病和多囊性肝包虫病的CT图像。每200件。然后利用灰度梯度共生矩阵(GGCM)和灰度直方图提取纹理特征;最后。使用决策树分类器进行分类,目的是验证哪个特征更适合决策树分类,并使用参数估计来评估分类器模型。结果:对于正常肝脏、单囊性肝包虫病和多囊性肝包虫病,灰度共现矩阵的分类准确率分别为71%、69%和69%。灰度直方图的分类准确率分别为74%、63.5%和69%。综合特征的分类准确率分别为75%、70.5%和80.5%。结论:综合特征的分类准确率比单一特征的分类准确率高11.5%,更适合多囊肝包虫病图像的分类。该算法可为CT图像的分类提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Computerized Tomography Images of Endemic Liver Hydatid in Xinjiang Based on Decision Tree
Objective: to assess the classification capability dealing with CT images, by means of Decision Tree classifier. Methods: the CT images were provided by the hospital was used as the data source. In this study.normal liver, Single cystic hepatic hydatid and Polycystic hepatic hydatid CT images were selected.each 200 pieces. Then the texture features were extracted by gray gradient co-occurrence matrix(GGCM) and gray scale histogram. At last. Decision tree classifier were used for classification, which aimed to verify Which feature is more suitable for decision tree classification, and Parameter estimation is used to evaluate the classifier model. Results: For normal liver, Single cystic hepatic hydatid and Polycystic hepatic hydatid, the classification accuracy of gray level co-occurrence matrix was 71%,69% and 69%, respectively. the classification accuracy of gray scale histogram was 74%,63.5% and 69%.the classification accuracy of comprehensive features was 75%, 70.5% and 80.5%. Conclusion: The classification accuracy of comprehensive feature is 11.5% higher than that of single features, which are more suitable for the classification of polycystic hepatic hydatid images. This algorithm can provide reference for the classification of CT images.
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