Classification of Medical Images with Synergic Graph Convolutional Networks

Bin Yang, Haiwei Pan, Jieyao Yu, Kun Han, Yanan Wang
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引用次数: 8

Abstract

Medicine has always been an important area of concern for people's lives. Medical images, as an important basis for doctors to diagnose diseases, has its own particularity. For example, many medical images are often difficult to distinguish due to intra-class variation and inter-class similarity, and medical images have high requirements for processing accuracy. A synergic graph convolutional networks (SGCN) model is proposed for image classification. This model is based on convolutional neural networks on graphs with fast localized spectral filtering. In our model, two graph convolutional networks (GCN) can learn from each other. We choose the Kth-order Chebyshev polynomials of the Laplacian to control K-localized of spectral filters conveniently. Specifically, we concatenate the image representation learned by both GCNs as the input of our synergic deep learning framework to predict whether the pair of input images belong to the same class. The intra-class similarity and inter-class variability of the dataset itself makes the performance of a single graph convolutional neural network better. We evaluated our SGCN model on MNIST and some Brain MRI image classification dataset and achieved advanced performance.
基于协同图卷积网络的医学图像分类
医学一直是人们生活中关心的一个重要领域。医学图像作为医生诊断疾病的重要依据,有其自身的特殊性。例如,许多医学图像往往由于类内变化和类间相似而难以区分,并且医学图像对处理精度要求很高。提出了一种用于图像分类的协同图卷积网络(SGCN)模型。该模型基于快速局部谱滤波的卷积神经网络。在我们的模型中,两个图卷积网络(GCN)可以相互学习。我们选择拉普拉斯函数的第k阶切比雪夫多项式来方便地控制谱滤波器的k局域化。具体来说,我们将两个GCNs学习到的图像表示连接起来,作为我们的协同深度学习框架的输入,以预测这对输入图像是否属于同一类。数据集本身的类内相似性和类间可变性使得单图卷积神经网络的性能更好。我们在MNIST和一些脑MRI图像分类数据集上对我们的SGCN模型进行了评估,取得了较好的性能。
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