基于深度特征学习的脑结构变异性建模

Aishwarya H. Balwani, Eva L. Dyer
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引用次数: 3

摘要

长期以来,人们一直根据大脑的局部微观结构,或细胞、基因和蛋白质的模式组成,将大脑划分为不同的区域。虽然这种分类学非常有用,并为比较两个大脑提供了必要的路线图,但在大脑结构模型中也必须纳入区域内巨大的解剖学差异。在这项工作中,我们利用深度神经网络的表达能力来创建一个数据驱动的脑内和脑间区域可变性模型。为此,我们训练了一个卷积神经网络,它直接从大脑图像中学习相关的微观结构特征。然后,我们从网络中提取特征,并对其进行简单的分类器拟合,从而创建一个简单、鲁棒且可解释的大脑结构模型。我们进一步提出并展示了将深度神经网络特征与无监督学习技术结合使用以发现大脑区域内的细粒度结构的初步结果。我们将我们的方法应用于跨越小鼠大脑多个区域的微米级x射线微断层扫描图像,并证明我们基于深度特征的模型可以可靠地区分大脑区域,对噪声具有鲁棒性,并且可以用于揭示神经结构中解剖学相关的模式,这些模式是神经网络没有训练过的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Variability in Brain Architecture with Deep Feature Learning
The brain has long been divided into distinct areas based upon its local microstructure, or patterned composition of cells, genes, and proteins. While this taxonomy is incredibly useful and provides an essential roadmap for comparing two brains, there is also immense anatomical variability within areas that must be incorporated into models of brain architecture. In this work we leverage the expressive power of deep neural networks to create a data-driven model of intra- and inter-brain area variability. To this end, we train a convolutional neural network that learns relevant microstructural features directly from brain imagery. We then extract features from the network and fit a simple classifier to them, thus creating a simple, robust, and interpretable model of brain architecture. We further propose and show preliminary results for the use of features from deep neural networks in conjunction with unsupervised learning techniques to find fine-grained structure within brain areas. We apply our methods to micron-scale X-ray microtomography images spanning multiple regions in the mouse brain and demonstrate that our deep feature-based model can reliably discriminate between brain areas, is robust to noise, and can be used to reveal anatomically relevant patterns in neural architecture that the network wasn’t trained to find.
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