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A region-based segmentation of tumour from brain CT images using nonlinear support vector machine classifier

机译:使用非线性支持向量机分类器的脑部CT图像基于区域的肿瘤分割

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摘要

The proposed system provides new textural information for segmenting tumours, efficiently and accurately and with less computational time, from benign and malignant tumour images, especially in smaller dimensions of tumour regions of computed tomography (CT) images. Region-based segmentation of tumour from brain CT image data is an important but time-consuming task performed manually by medical experts. The objective of this work is to segment brain tumour from CT images using combined grey and texture features with new edge features and nonlinear support vector machine (SVM) classifier. The selected optimal features are used to model and train the nonlinear SVM classifier to segment the tumour from computed tomography images and the segmentation accuracies are evaluated for each slice of the tumour image. The method is applied on real data of 80 benign, malignant tumour images. The results are compared with the radiologist labelled ground truth. Quantitative analysis between ground truth and the segmented tumour is presented in terms of segmentation accuracy and the overlap similarity measure dice metric. From the analysis and performance measures such as segmentation accuracy and dice metric, it is inferred that better segmentation accuracy and higher dice metric are achieved with the normalized cut segmentation method than with the fuzzy c-means clustering method.
机译:所提出的系统从良性和恶性肿瘤图像,特别是在计算机断层扫描(CT)图像的肿瘤区域的较小尺寸中,提供了新的纹理信息,用于高效,准确且以较少的计算时间来分割肿瘤。从脑部CT图像数据对肿瘤进行基于区域的分割是一项重要但耗时的任务,由医学专家手动执行。这项工作的目的是使用结合了新的边缘特征和非线性支持向量机(SVM)分类器的灰度和纹理特征从CT图像中分割脑肿瘤。所选的最佳特征用于对非线性SVM分类器进行建模和训练,以从计算机断层扫描图像中分割出肿瘤,并对肿瘤图像的每个切片评估分割精度。该方法应用于80例良性,恶性肿瘤图像的真实数据。将结果与放射科医生标记为地面真相的结果进行比较。根据分割的准确性和重叠相似性度量骰子度量,对地面真相和分割的肿瘤之间的定量分析进行了介绍。从分割精度和骰子度量等分析和性能指标来看,归一化分割分割方法比模糊c均值聚类方法能获得更好的分割精度和更高的骰子度量。

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