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卷积神经网络在大规模细胞构筑学大脑图谱中的应用。

Convolutional neural networks for cytoarchitectonic brain mapping at large scale.

机构信息

Institute of Neuroscience and Medicine (INM-1), Research Centre Jülich, Germany; Helmholtz AI, Research Centre Jülich, Germany.

Institute of Computational Biology, Helmholtz Zentrum München, Germany.

出版信息

Neuroimage. 2021 Oct 15;240:118327. doi: 10.1016/j.neuroimage.2021.118327. Epub 2021 Jul 2.

Abstract

Human brain atlases provide spatial reference systems for data characterizing brain organization at different levels, coming from different brains. Cytoarchitecture is a basic principle of the microstructural organization of the brain, as regional differences in the arrangement and composition of neuronal cells are indicators of changes in connectivity and function. Automated scanning procedures and observer-independent methods are prerequisites to reliably identify cytoarchitectonic areas, and to achieve reproducible models of brain segregation. Time becomes a key factor when moving from the analysis of single regions of interest towards high-throughput scanning of large series of whole-brain sections. Here we present a new workflow for mapping cytoarchitectonic areas in large series of cell-body stained histological sections of human postmortem brains. It is based on a Deep Convolutional Neural Network (CNN), which is trained on a pair of section images with annotations, with a large number of un-annotated sections in between. The model learns to create all missing annotations in between with high accuracy, and faster than our previous workflow based on observer-independent mapping. The new workflow does not require preceding 3D-reconstruction of sections, and is robust against histological artefacts. It processes large data sets with sizes in the order of multiple Terabytes efficiently. The workflow was integrated into a web interface, to allow access without expertise in deep learning and batch computing. Applying deep neural networks for cytoarchitectonic mapping opens new perspectives to enable high-resolution models of brain areas, introducing CNNs to identify borders of brain areas.

摘要

人类大脑图谱为不同水平的大脑组织数据提供了空间参考系统,这些数据来自不同的大脑。细胞构筑是大脑微观结构组织的基本原则,因为神经元细胞排列和组成的区域差异是连接和功能变化的指标。自动化扫描程序和观察者独立的方法是可靠识别细胞构筑区域和实现大脑分割可重复模型的前提。当从对单个感兴趣区域的分析转向对大量全脑切片的高通量扫描时,时间就成为一个关键因素。在这里,我们提出了一种新的工作流程,用于在大量人体死后大脑细胞染色组织学切片中绘制细胞构筑区域。它基于深度卷积神经网络(CNN),该网络在一对带有注释的切片图像上进行训练,中间有大量未注释的切片。该模型学会了以高精度在切片之间创建所有缺失的注释,并且比我们之前基于观察者独立映射的工作流程更快。新的工作流程不需要预先对切片进行 3D 重建,并且对组织学伪影具有鲁棒性。它可以高效地处理大小为多个太字节的数据。该工作流程已集成到一个网络界面中,无需深度学习和批处理计算方面的专业知识即可访问。应用深度神经网络进行细胞构筑映射为实现大脑区域的高分辨率模型开辟了新的前景,引入了 CNN 来识别大脑区域的边界。

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