Method to Obtain Neuromorphic Reservoir Networks from Images of in Vitro Cortical Networks

Gustavo B. M. Mello, S. Pontes-Filho, I. Sandvig, V. Valderhaug, E. Zouganeli, Ola Huse Ramstad, A. Sandvig, S. Nichele
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引用次数: 1

Abstract

In the brain, the structure of a network of neurons defines how these neurons implement the computations that underlie the mind and the behavior of animals and humans. Provided that we can describe the network of neurons as a graph. We can employ methods from graph theory to investigate its structure or use cellular automata to mathematically assess its function. Additionally, these graphs can provide biologically plausible designs for networks, which can be integrated as reservoirs to support computing. Although, software for the analysis of graphs and cellular automata are widely available. Graph extraction from the image of networks of brain cells remains difficult. Nervous tissue is heterogeneous, and differences in anatomy may reflect relevant differences in function. Here we introduce a deep learning based toolbox to extracts graphs from images of brain tissue. This toolbox provides an easy- to-use framework allowing system neuroscientists to generate graphs based on images of brain tissue by combining methods from image processing, deep learning, and graph theory. The goals are to simplify the training and usage of deep learning methods for computer vision and facilitate its integration into graph extraction pipelines. In this way, the toolbox provides an alternative to the required laborious manual process of tracing, sorting and classifying. We expect to democratize the machine learning methods to a wider community of users beyond the computer vision experts and improve the time-efficiency of graph extraction from large brain image datasets, which may lead to further understanding of the human mind.
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从体外皮层网络图像获取神经形态储层网络的方法
在大脑中,神经元网络的结构决定了这些神经元如何实现构成动物和人类思想和行为基础的计算。假设我们可以用图来描述神经元网络。我们可以用图论的方法来研究它的结构,或者用元胞自动机在数学上评估它的功能。此外,这些图可以为网络提供生物学上合理的设计,这些网络可以集成为存储库来支持计算。虽然,用于分析图形和元胞自动机的软件是广泛可用的。从大脑细胞网络图像中提取图形仍然很困难。神经组织是异质的,解剖结构的差异可能反映了相关功能的差异。在这里,我们介绍了一个基于深度学习的工具箱来从脑组织图像中提取图形。这个工具箱提供了一个易于使用的框架,允许系统神经科学家通过结合图像处理、深度学习和图论的方法,基于脑组织图像生成图。目标是简化计算机视觉深度学习方法的训练和使用,并促进其集成到图提取管道中。通过这种方式,工具箱提供了一种替代所需的费力的手动跟踪、排序和分类过程的方法。我们希望将机器学习方法普及到计算机视觉专家之外的更广泛的用户社区,并提高从大型大脑图像数据集中提取图形的时间效率,这可能会导致对人类思维的进一步理解。
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