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Multilevel thresholding and fractal analysis based approach for classification of brain MR I images into tumour and non-tumour

机译:基于多阈值和分形分析的脑MR I图像分类为肿瘤和非肿瘤的方法

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摘要

In this paper, a method is proposed for classification of brain magnetic resonance imaging (MRI) images as tumour and non-tumour. A multilevel thresholding is used for segmentation. Thresholding is applied to convert MRI images to binary images. Fractal texture analysis is carried out for texture feature extraction. Mean and area features are extracted from binary images. We have computed fractal dimension (FD) using box counting method. The fractal measurements describe the boundary complexity of objects and structures beings segmented. Three features extracted, namely, mean, area and FD are used for classification. The images are classified as tumour or non-tumour using artificial neural network (ANN). The experiments are carried out on coronal, sagittal and axial views of brain MRI images. We have used the different number of thresholds (t) in the range [0-10], We have found that the required value of t is three. Eight different parameters viz. specificity, sensitivity, accuracy, false positive rate (FPR), positive predictive value (PPV), negative predictive value (NPV), false discovery rate (FDR), F-SCORE for optimum number of thresholds are evaluated. We have obtained 100% classification accuracy for all the views of brain MRI images.
机译:本文提出了一种将脑磁共振成像(MRI)图像分类为肿瘤和非肿瘤的方法。多级阈值用于分割。应用阈值将MRI图像转换为二进制图像。分形纹理分析用于纹理特征提取。从二值图像中提取均值和面积特征。我们已经使用盒计数法计算了分形维数(FD)。分形测量描述了被分割的对象和结构的边界复杂性。提取的三个特征即均值,面积和FD用于分类。使用人工神经网络(ANN)将图像分类为肿瘤或非肿瘤。实验是在大脑MRI图像的冠状,矢状和轴向视图上进行的。我们使用了[0-10]范围内的不同阈值数(t)。我们发现t的要求值为3。八个不同的参数。评估特异性,敏感性,准确性,假阳性率(FPR),阳性预测值(PPV),阴性预测值(NPV),假发现率(FDR)和最佳阈值数量的F-SCORE。对于大脑MRI图像的所有视图,我们已经获得100%的分类精度。

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