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首页> 外文期刊>Journal of ambient intelligence and humanized computing >Automated Categorization of Brain Tumor from MRI Using CNN features and SVM
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Automated Categorization of Brain Tumor from MRI Using CNN features and SVM

机译:使用CNN特性和SVM自动分类MRI的脑肿瘤

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Automated tumor characterization has a prominent role in the computer-aided diagnosis (CAD) system for the human brain. Despite being a well-studied topic, CAD of brain tumors poses severe challenges in some specific aspects. One such challenging problem is the category-based classification of brain tumors among glioma, meningioma, and pituitary tumors using magnetic resonance imaging (MRI) images. The emergence of deep learning and machine learning algorithms have addressed image classification tasks with promising results. But an associated limitation with the medical image classification is the small sizes of medical image databases. This limitation, in turn, limits the availability of medical images for training deep neural networks. To mitigate this challenge, we adopt a combination of convolutional neural network (CNN) features with support vector machine (SVM) for classification of the medical images. The fully automated system is evaluated usingFigshareopen dataset containing MRI images for the three types of brain tumors. CNN is designed to extract features from brain MRI images. For enhanced performance, a multiclass SVM is used with CNN features. Testing and evaluation of the integrated system followed a fivefold cross-validation procedure. The proposed model attained an overall classification accuracy of 95.82%, better than the state-of-the-art method. Extensive experiments are performed on other MRI datasets for the brain to ascertain the improved performance of the proposed system. When the amount of available training data is small, the SVM classifier is observed to perform better than the softmax classifier for the CNN features. Compared to transfer learning-based classification, the adopted strategy of CNN-SVM has lesser computations and memory requirements.
机译:自动肿瘤表征在人脑的计算机辅助诊断(CAD)系统中具有突出作用。尽管是一项良好的主题,但脑肿瘤的CAD在一些具体方面存在严重的挑战。一个如此挑战性问题是使用磁共振成像(MRI)图像的胶质瘤,脑膜瘤和垂体肿瘤之间的基于类别的脑肿瘤分类。深度学习和机器学习算法的出现已经解决了具有有前途的结果的图像分类任务。但是,与医学图像分类的相关限制是医学图像数据库的小尺寸。反过来,这种限制限制了用于训练深神经网络的医学图像的可用性。为了缓解这一挑战,我们采用卷积神经网络(CNN)特征的组合,其中具有支持向量机(SVM)进行医学图像的分类。使用FigshareOpen DataSet评估全自动系统,该数据集包含三种类型的脑肿瘤的MRI图像。 CNN旨在提取脑MRI图像的特征。为了提高性能,多LSSVM与CNN特征一起使用。集成系统的测试和评估遵循五倍交叉验证程序。拟议的模型达到了95.82%的整体分类精度,优于最先进的方法。对大脑的其他MRI数据集进行了广泛的实验,以确定所提出的系统的提高性能。当可用培训数据的量很小时,观察到SVM分类器以更好地执行CNN特征的软MAX分类器。与基于学习的分类相比,CNN-SVM采用的策略具有较小的计算和内存要求。

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