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Multi-task Learning for Neonatal Brain Segmentation Using 3D Dense-Unet with Dense Attention Guided by Geodesic Distance

机译:使用3D致密粘连的新生儿脑细分的多任务学习与测地距离引导密集的关注

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The deep convolutional neural network has achieved outstanding performance on neonatal brain MRI tissue segmentation. However, it may fail to produce reasonable results on unseen datasets that have different imaging appearance distributions with the training data. The main reason is that deep learning models tend to have a good fitting to the training dataset, but do not lead to a good generalization on the unseen datasets. To address this problem, we propose a multi-task learning method, which simultaneously learns both tissue segmentation and geodesic distance regression to regularize a shared encoder network. Furthermore, a dense attention gate is explored to force the network to learn rich contextual information. By using three neonatal brain datasets with different imaging protocols from different scanners, our experimental results demonstrate superior performance of our proposed method over the existing deep learning-based methods on the unseen datasets.
机译:深度卷积神经网络在新生脑MRI组织分割上取得了出色的表现。但是,它可能未能在具有培训数据的不同成像外观分布的看不见的数据集中产生合理的结果。主要原因是深入学习模型往往对训练数据集具有良好的拟合,但不会导致看不见的数据集良好的概括。为了解决这个问题,我们提出了一种多任务学习方法,它同时学习组织分割和测地距离回归,以规范共享编码器网络。此外,探索密集的注意门来强制网络学习丰富的上下文信息。通过使用来自不同扫描仪的不同成像协议的三个新生脑数据集,我们的实验结果表明了我们提出的方法在看不见的数据集上存在的基于深度学习的方法的卓越性能。

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