基于密集连接三维卷积神经网络的多模态脑肿瘤分割

M. Ghaffari, A. Sowmya, R. Oliver, Len Hamey
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引用次数: 7

摘要

可靠的脑肿瘤分割方法从脑部扫描是必不可少的准确诊断和治疗计划。在本文中,我们提出了一种基于卷积神经网络的语义分割方法,用于基于多模态脑部扫描的脑肿瘤分割。提出的模型是众所周知的U-net体系结构的改进版本。它从U-net的编码器和解码器部分之间的DenseNet块中获益,从而将更多的语义信息从输入传输到输出。此外,为了加快训练过程,我们采用深度监督,在解码器层的末端添加分割块,并将它们的输出相加,以生成网络的最终输出。我们使用BraTS 2018数据集训练和评估了我们的模型。将所提出的模型与通用U-net的结果进行比较,我们的模型在Dice得分方面取得了更高的分割精度。
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Multimodal Brain Tumour Segmentation using Densely Connected 3D Convolutional Neural Network
Reliable brain tumour segmentation methods from brain scans are essential for accurate diagnosis and treatment planning. In this paper, we propose a semantic segmentation method based on convolutional neural networks for brain tumour segmentation using multimodal brain scans. The proposed model is a modified version of the well-known U-net architecture. It gains from DenseNet blocks between the encoder and decoder parts of the U-net to transfer more semantic information from the input to the output. In addition, to speed up the training process, we employed deep supervision by adding segmentation blocks at the end of the decoder layers and summing up their outputs to generate the final output of the network. We trained and evaluated our model using the BraTS 2018 dataset. Comparing the results from the proposed model and a generic U-net, our model achieved higher segmentation accuracy in terms of the Dice score.
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