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An expert system based on texture features and decision tree classifier for diagnosis of tumor in brain MR images

机译:基于纹理特征和决策树分类的专家系统,用于诊断脑MR图像中肿瘤的诊断

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摘要

In this paper a new tumor classification system has been designed and developed for MRI systems. The MR imaging is a mostly used scheme for high excellence in medical imaging, it gives clear imageing capability especially in brain imaging where the soft-tissues contrast and non invasiveness is a clear advantage. The proposed method consists of three stages namely pre-processing, feature extraction and classification. In the first stage, gausian filter is applied for extracting the noise for experimental image. In the second stage, Statistical texture features are extracted for the purpose of classification. Finally, the decision tree classifier is used to classify the type of tumor image. In our proposed system classification has two divisions: i) training stage and ii) testing stage. In the training stage, various features are extracted from the tumor and non tumor images. In testing stage, based on the knowledge base, the classifier classify the image into tumor and non- tumor. Thus, the proposed system has been evaluated on a dataset of 40 patients. The proposed system was found efficient in classification with a success of more than 95% of accuracy.
机译:本文为MRI系统设计和开发了一种新的肿瘤分类系统。 MR成像是医学成像的高卓越卓越方案的主要方法,它尤其在脑成像中提供清晰的造型能力,其中软组织对比和非侵入性是一个明显的优势。所提出的方法由三个阶段组成,即预处理,特征提取和分类。在第一阶段,施加高斯滤波器用于提取实验图像的噪声。在第二阶段,提取统计纹理特征以进行分类。最后,决策树分类器用于对肿瘤图像的类型进行分类。在我们所提出的系统分类中有两个部门:i)培训阶段和ii)测试阶段。在训练阶段,从肿瘤和非肿瘤图像中提取各种特征。在测试阶段,基于知识库,分类器将图像分类为肿瘤和非肿瘤。因此,所提出的系统已经在40名患者的数据集上进行了评估。拟议的系统在分类​​中有效,成功的准确性超过95%。

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