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首页> 外文期刊>Pattern recognition and image analysis: advances in mathematical theory and applications in the USSR >Detection of Liver Cancer Using Modified Fuzzy Clustering and Decision Tree Classifier in CT Images
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Detection of Liver Cancer Using Modified Fuzzy Clustering and Decision Tree Classifier in CT Images

机译:在CT图像中使用修改的模糊聚类和决策树分类检测肝癌

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摘要

Manual detection and characterization of liver cancer using computed tomography (CT) scan images is a challenging task. In this paper, we have presented an automatic approach that integrates the adaptive thresholding and spatial fuzzy clustering approach for detection of cancer region in CT scan images of liver. The algorithm was tested in a series of 123 real-time images collected from the different subjects at Institute of Medical Science and SUM Hospital, India. Initially the liver was separated from other parts of the body with adaptive thresholding and then the cancer affected lesions from liver was segmented with spatial fuzzy clustering. The informative features were extracted from segmented cancerous region and were classified into two types of liver cancers i.e., hepatocellular carcinoma (HCC) and metastatic carcinoma (MET) using multilayer perceptron (MLP) and C4.5 decision tree classifiers. The performance of the classifiers was evaluated using 10-fold cross validation process in terms of sensitivity, specificity, accuracy and dice similarity coefficient. The method was effectively detected the lesion with accuracy of 89.15% in MLP classifier and of 95.02% in C4.5 classifier. This results proves that the spatial fuzzy c-means (SFCM) based segmentation with C4.5 decision tree classifier is an effective approach for automatic recognition of the liver cancer.
机译:使用计算机断层扫描(CT)扫描图像手动检测和表征肝癌是一个具有挑战性的任务。在本文中,我们介绍了一种自动方法,它集成了肝脏CT扫描图像中癌症区检测的自适应阈值和空间模糊聚类方法。该算法在来自印度医学研究所的不同科目中收集的一系列123个实时图像中进行了测试。最初将肝脏与身体的其他部位分离,具有自适应阈值化,然后通过空间模糊聚类分割来自肝脏的癌症病变。从分段的癌症区域提取信息特征,并将其分为两种类型的肝癌,即使用多层感知(MLP)和C4.5决策树分类器的肝细胞癌(HCC)和转移性癌(Met)。在灵敏度,特异性,准确度和骰子相似度系数方面使用10倍交叉验证过程评估分类器的性能。该方法以MLP分类器中的89.15%的精度有效地检测到病变,C4.5分类器中的95.02%为95.02%。该结果证明,具有C4.5决策树分类器的空间模糊C型(SFCM)的分割是一种有效识别肝癌的有效方法。

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