A Novel Deep CNN Model for Classification of Brain Tumor from MR Images

H. Rai, K. Chatterjee, Apita Gupta, Alok Dubey
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引用次数: 4

Abstract

the segmentation of brain tumor and its classification in the early stage is very important for the purpose of diagnosis and treatment. This work introduces a new deep neural network model Lu-Net with less layers, less complexity and very efficient for identifying tumors. The work involves classifying brain magnetic resonance (MR) images from a dataset of 253 images of high pixels into two categories of tumors and non-tumors. MR images are initially resized, cropped, preprocessed, and augmented for accurate and rapid training of deep convolutional neural network (CNN) models. The performance of the Lu-Net model has been evaluated using five types of statistical evaluation matrix accuracy, recall, specificity, F-score and accuracy, and its performance also compared with other two types of model Le-Net and VGG-16. CNN models were trained and evaluated on augmented dataset and tested on untrained datasets. The overall accuracy of Le-Net, VGG-16 and the proposed model is 88%, 90% and 98%, respectively, indicating the superiority of the proposed model.
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一种新的深度CNN模型用于从MR图像中分类脑肿瘤
脑肿瘤的早期分割和分类对诊断和治疗具有重要意义。本文提出了一种新的深度神经网络模型Lu-Net,该模型具有层数少、复杂度低、肿瘤识别效率高的特点。这项工作包括将253张高像素图像数据集中的脑磁共振(MR)图像分为肿瘤和非肿瘤两类。为了准确快速地训练深度卷积神经网络(CNN)模型,MR图像最初被调整大小、裁剪、预处理和增强。采用统计评价矩阵准确率、召回率、特异性、f值和准确率五种类型对Lu-Net模型的性能进行评价,并与其他两种类型的Le-Net模型和VGG-16模型进行比较。CNN模型在增强数据集上进行训练和评估,在未训练的数据集上进行测试。Le-Net、VGG-16和本文模型的总体准确率分别为88%、90%和98%,表明本文模型的优越性。
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