Using a Saliency-Driven Convolutional Neural Network Framework for Brain Tumor Detection

Paulo Henrique de C. Oliveira, Mylène C. Q. Farias, Daniel S. Ferreira, A. Krylov, Yong Ding
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Abstract

The process of diagnosing brain tumors from magnetic resonance imaging (MRI) is often time-consuming. Thus, a rapid analyses through an automated system could help improve the treatment possibilities and optimize hospital resources. This paper proposes a method for the classification of brain tumors by means of pre-selecting the tumor region. We estimate the region of interest using attention algorithms and input it to a neural network that classifies the regions as tumoral and non-tumoral. Pre-selecting the region of interest, instead of using the entire image, produced a final classification accuracy of 91.68%, 92.58%, 92.69%, and 93.4% with the models Resnet18, Resnet34, VGG16, and Alexnet, respectively. Once the dimensional space of the input image is reduced, the neural networks is able to capture additional details of the tumor regions during the training stage. This study demonstrates the importance of saliency maps for identifying tumor regions in magnetic resonance images.
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利用显著性驱动的卷积神经网络框架进行脑肿瘤检测
从磁共振成像(MRI)诊断脑肿瘤的过程往往是耗时的。因此,通过自动化系统进行快速分析可以帮助提高治疗可能性并优化医院资源。提出了一种预先选择肿瘤区域的脑肿瘤分类方法。我们使用注意力算法估计感兴趣的区域,并将其输入到神经网络中,该神经网络将这些区域分类为肿瘤和非肿瘤。预先选择感兴趣的区域,而不是使用整个图像,使用Resnet18、Resnet34、VGG16和Alexnet模型,最终的分类准确率分别为91.68%、92.58%、92.69%和93.4%。一旦输入图像的维空间减少,神经网络就能够在训练阶段捕获肿瘤区域的额外细节。本研究证明了显著性图在磁共振图像中识别肿瘤区域的重要性。
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