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A deep convolutional neural network for brain tissue segmentation in Neonatal MRI

机译:新生儿mRI中脑组织分割的深度卷积神经网络

摘要

Brain tissue segmentation is a prerequisite for many subsequent automatic quantitative analysis techniques. As with many medical imaging tasks, a shortage of manually annotated training data is a limiting factor which is not easily overcome, particularly using recent deep-learning technology. We present a deep convolutional neural network (CNN) trained on just 2 publicly available manually annotated volumes, trained to annotate 8 tissue types in neonatal T2 MRI. The network makes use of several recent deep-learning techniques as well as artificial augmentation of the training data, to achieve state-of-the- art results on public challenge data.
机译:脑组织分割是许多后续自动定量分析技术的前提。与许多医学成像任务一样,缺少手动注释的训练数据是一个不易克服的限制因素,尤其是使用最新的深度学习技术时。我们提出了仅在2个公开可用的手动注释卷上训练的深度卷积神经网络(CNN),经过训练可对新生儿T2 MRI中的8种组织类型进行注释。该网络利用了几种最新的深度学习技术以及对训练数据的人工扩充,以实现有关公共挑战数据的最新结果。

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