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Automated diagnosis of multi-class brain abnormalities using MRI images: A deep convolutional neural network based method

机译:利用MRI图像自动诊断多级脑异常:基于深度卷积神经网络的方法

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Automated detection of multi-class brain abnormalities through magnetic resonance imaging (MRI) has received much attention due to its clinical significance and therefore has become an active area of research over the years. The earlier automated schemes often followed traditional machine learning paradigms, in which the proper choice of features and classifiers has remained a major concern. Therefore, deep learning algorithms have been profoundly applied in various medical imaging applications. In this paper, a deep convolutional neural network (CNN) based automated approach is designed for the diagnosis of multi-class brain abnormalities. The proposed CNN model comprises five layers with learnable parameters: four convolutional layers and one fully-connected layer. The objective of designing such a custom deep network is to achieve greater classification performance with reduced number of parameters. The proposed model is evaluated on two benchmark multi-class brain MRI datasets namely, MD1 and MD-2. The model achieved a classification accuracy of 100.00% and 97.50% on MD-1 and MD-2 datasets respectively. Moreover, four pre-trained CNN models based on the transfer learning approach have been tested over the same datasets. The comparative analysis with existing schemes indicates the superiority of the proposed method. (C) 2020 Elsevier B.V. All rights reserved.
机译:通过磁共振成像(MRI)自动检测多级脑异常,由于其临床意义,因此受到了很大的关注,因此多年来已成为一个活跃的研究领域。早期的自动化方案经常遵循传统的机器学习范式,其中特征和分类器的正确选择仍然是一个主要问题。因此,在各种医学成像应用中,深度学习算法已经深入应用。本文基于深度卷积神经网络(CNN)的自动化方法专为诊断多级脑异常的诊断。所提出的CNN模型包括五层具有可学习参数:四个卷积层和一个完全连接的层。设计这种自定义深度网络的目标是通过减少参数数量来实现更大的分类性能。所提出的模型是在两个基准多级脑MRI数据集上进行评估,即MD1和MD-2。该模型分别在MD-1和MD-2数据集中实现了100.00%和97.50%的分类精度。此外,已经在相同的数据集上测试了基于转移学习方法的四种预先训练的CNN模型。现有方案的比较分析表明了所提出的方法的优越性。 (c)2020 Elsevier B.v.保留所有权利。

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