Automatic Accurate Infant Cerebellar Tissue Segmentation with Densely Connected Convolutional Network.

Jiawei Chen, Han Zhang, Dong Nie, Li Wang, Gang Li, Weili Lin, Dinggang Shen
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引用次数: 3

Abstract

The human cerebellum has been recognized as a key brain structure for motor control and cognitive function regulation. Investigation of brain functional development in the early life has recently been focusing on both cerebral and cerebellar development. Accurate segmentation of the infant cerebellum into different tissues is among the most important steps for quantitative development studies. However, this is extremely challenging due to the weak tissue contrast, extremely folded structures, and severe partial volume effect. To date, there are very few works touching infant cerebellum segmentation. We tackle this challenge by proposing a densely connected convolutional network to learn robust feature representations of different cerebellar tissues towards automatic and accurate segmentation. Specifically, we develop a novel deep neural network architecture by directly connecting all the layers to ensure maximum information flow even among distant layers in the network. This is distinct from all previous studies. Importantly, the outputs from all previous layers are passed to all subsequent layers as contextual features that can guide the segmentation. Our method achieved superior performance than other state-of-the-art methods when applied to Baby Connectome Project (BCP) data consisting of both 6- and 12-month-old infant brain images.

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利用密集连接卷积网络实现婴儿小脑组织的自动精确分割。
人类小脑已被公认为运动控制和认知功能调节的关键大脑结构。对早期大脑功能发育的研究最近集中在大脑和小脑的发育上。将婴儿小脑精确分割成不同的组织是定量发育研究的最重要步骤之一。然而,由于弱组织对比度、极度折叠的结构和严重的部分体积效应,这是极具挑战性的。到目前为止,很少有作品涉及婴儿小脑的分割。我们通过提出一种密集连接的卷积网络来学习不同小脑组织的鲁棒特征表示,以实现自动准确的分割,从而应对这一挑战。具体来说,我们通过直接连接所有层来开发一种新的深度神经网络架构,以确保即使在网络中的遥远层之间也能实现最大的信息流。这与以前的所有研究都不同。重要的是,来自所有先前层的输出被传递到所有后续层,作为可以指导分割的上下文特征。当应用于由6个月和12个月大的婴儿大脑图像组成的婴儿连接体项目(BCP)数据时,我们的方法比其他最先进的方法获得了更好的性能。
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