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Hybrid Topology of Graph Convolution and Autoencoder Deep Network For Multiple Sclerosis Lesion Segmentation

机译:用于多发性硬化病变分割的图卷积和AutoEncoder深网络的混合拓扑

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The notion of deep learning is being revolutionised, e.g., the advent of graph convolution network (GCN) in the application of medical image classification. Though GCN is gaining significant popularity, the potential of GCN is not exploited to its maximum. This work proposes a new hybrid network based on convolution neural network (CNN) autoencoder and GCN. The proposed method has been applied to graph datasets which are designed by considering 3D medical resonance image (MRI) voxel as a node. CNN autoencoder is used to extract the imaging grid information and GCN learns these features in graph connectivity space. This hybrid network has been applied for the application of segmentation of lesions in multiple sclerosis (MS) diseases. This framework has been used for training on 30 MS patients of white matter lesions captured at the university medical center Ljubljana (UMCL) and validated on 20 longitudinal MS patient dataset of UMCL at one time instant. This novel framework improves the performance of dice similarity coefficient 85.5 % score in segmentation for three neighbors in graph data.
机译:深度学习的概念正在彻底改变,例如,在应用医学图像分类中的图形卷积网络(GCN)的出现。虽然GCN越来越受欢迎,但GCN的潜力不会被利用到其最大值。这项工作提出了一种基于卷积神经网络(CNN)AutoEncoder和GCN的新的混合网络。所提出的方法已经应用于绘图数据集,其通过将3D医学共振图像(MRI)体素作为节点考虑到设计。 CNN AutoEncoder用于提取成像网格信息,GCN在图形连接空间中了解这些功能。该混合网络已被应用于在多发性硬化症(MS)疾病中的病变分段施用。该框架已被用于培训在大学医疗中心Ljubljana(UMCL)捕获的30毫米白质病变患者,并在一次瞬间验证了UMCL的20个纵向MS患者数据集。这种新颖框架提高了图形数据中三个邻居分段的骰子相似度系数85.5%的性能。

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