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Classification of Grades of Astrocytoma Images from MRI Using Deep Neural Network

机译:深度神经网络的MRI星形细胞瘤图像等级分类

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Due to increased size and volume in medical images the automatic diagnosis process is obligatory. Among all other types of cancer, the mortality rate of brain cancer is the highest. The MRI (Magnetic Resonance Imaging) brain images need to be accurately classified into different grades for better treatment decision. Astrocytoma is one of the common type of glioma brain tumors, comprises 34% of brain tumor. In the proposed system, Astrocytoma MRI images is preprocessed using PCNN (Pulse Coupled Neural Network) and median filter. Three class FCM (Fuzzy Clustering Means) thresholding is used for successful segmentation. From the features obtained from DWT (Discrete Wavelet Transform), texture features are extracted using Gray level co-occurrence matrix (GL-CM). Shape attributes are extracted by manipulating Canny edge detection algorithm. Training set consists of feature vectors created from 400 images from two grades of tumor. Classification of 100 test data into different grade is done using classifiers such as Radial Basis Function Neural Network (RBF NN) and Deep Neural Network (DNN).
机译:由于医学图像中尺寸和体积的增加,因此必须进行自动诊断过程。在所有其他类型的癌症中,脑癌的死亡率最高。 MRI(磁共振成像)脑部图像需要准确分类为不同等级,以便更好地做出治疗决策。星形细胞瘤是神经胶质瘤脑瘤的常见类型之一,占脑瘤的34%。在提出的系统中,使用PCNN(脉冲耦合神经网络)和中值滤波器对星形细胞瘤MRI图像进行预处理。三类FCM(模糊聚类均值)阈值用于成功进行分割。从DWT(离散小波变换)获得的特征中,使用灰度共生矩阵(GL-CM)提取纹理特征。形状属性是通过操作Canny边缘检测算法提取的。训练集由特征向量组成,这些特征向量是根据来自两个肿瘤级别的400张图像创建的。使用径向基函数神经网络(RBF NN)和深层神经网络(DNN)等分类器将100个测试数据分类为不同等级。

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