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Brain tumor segmentation using genetic algorithm and ANN techniques

机译:使用遗传算法和ANN技术进行脑肿瘤分割

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The Research of experiment is to develop an interaction CAD system as helpful medical in multiple brain tumor classify. The Research is performance on a diversified dataset of 350 post con trast T1-weighted MR images of 30 patients and publically available dataset of 280 post contrastT1-weighted MR images of 30 patients. The first dataset includes main brain tumors such as Astrocystoma (AS), Glioblastoma Multiforme (GBM), childhood tumor-Medullobla stoma (MED) and Meningioma(MEN), along with secondary tumor-Metastatic (MET). The second dataset consists of (AS), Low Grade Glioma (LGL) and Meningioma (MEN). The tumor regions are marked by content based active contour (CBAC) model. The regions are than saved as segmented regions of interest (SROIs). 71 intensity and texture feature set is extracted from these SROIs. The features are specifically selected based on the pathological details of brain tumors provided by the research. Genetic Algorithm (GA) selects the set of optimal features from this input set. Two hybrid machine learning models are implemented using GA with support vector machine (SVM) and artificial neural network (ANN) (GA-SVM and GA-ANN) and are tested on two different datasets. GA-SVM is proposed for finding preliminary probability in identifying tumor class and GA-ANN is used for confirmation of accuracy.
机译:实验的研究是在多脑肿瘤分类中开发一种有用的医疗的相互作用的CAD系统。该研究是在30名患者的30名患者的多元化数据集上的分化数据集和30名患者的280次临时上可用数据集的30例患者的公共数据集。第一个数据集包括主要脑肿瘤,如星形细胞瘤(AS),胶质母细胞瘤多形状(GBM),儿童肿瘤 - Medullobla Stoma(Med)和脑膜瘤(男性)以及次级肿瘤转移(MET)。第二个数据集由(AS),低级胶质瘤(LGL)和脑膜瘤(男性)组成。肿瘤区域标有基于内容的活性轮廓(CBAC)模型。这些地区省指被保存为分段的兴趣区域(SROIS)。从这些Srois中提取了71强度和纹理功能集。基于研究提供的脑肿瘤的病理细节具体选择该特征。遗传算法(GA)从该输入集中选择一组最佳功能。两个混合机器学习模型使用支持向量机(SVM)和人工神经网络(ANN)(GA-SVM和GA-ANN)来实现,并在两个不同的数据集上进行测试。为了在识别肿瘤类和GA-ANN中用于确定准确性的初步概率,提出了GA-SVM。

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