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The DIADEM Data Sets: Representative Light Microscopy Images of Neuronal Morphology to Advance Automation of Digital Reconstructions

机译:DIADEM数据集:神经元形态学的代表性光学显微镜图像可促进数字重建的自动化

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摘要

The comprehensive characterization of neuronal morphology requires tracing extensive axonal and dendritic arbors imaged with light microscopy into digital reconstructions. Considerable effort is ongoing to automate this greatly labor-intensive and currently rate-determining process. Experimental data in the form of manually traced digital reconstructions and corresponding image stacks play a vital role in developing increasingly more powerful reconstruction algorithms. The DIADEM challenge (short for DIgital reconstruction of Axonal and DEndritic Morphology) successfully stimulated progress in this area by utilizing six data set collections from different animal species, brain regions, neuron types, and visualization methods. The original research projects that provided these data are representative of the diverse scientific questions addressed in this field. At the same time, these data provide a benchmark for the types of demands automated software must meet to achieve the quality of manual reconstructions while minimizing human involvement. The DIADEM data underwent extensive curation, including quality control, metadata annotation, and format standardization, to focus the challenge on the most substantial technical obstacles. This data set package is now freely released (http://diademchallenge.org) to train, test, and aid development of automated reconstruction algorithms.
机译:神经元形态的全面表征需要将用光学显微镜成像的大量轴突和树突状乔木追踪到数字重建中。为了使此劳动密集型和当前确定速率的过程自动化,正在进行大量的工作。手动跟踪的数字重建形式的实验数据和相应的图像堆栈在开发功能越来越强大的重建算法中起着至关重要的作用。 DIADEM挑战(轴突和树突形态数字化重建的缩写)通过利用来自不同动物物种,大脑区域,神经元类型和可视化方法的六个数据集成功地刺激了该领域的进展。提供这些数据的原始研究项目代表了该领域解决的各种科学问题。同时,这些数据为自动化软件必须满足的需求类型提供了基准,以实现人工重建的质量,同时最大程度地减少了人工干预。 DIADEM数据经过了广泛的管理,包括质量控制,元数据注释和格式标准化,以将挑战集中在最严重的技术障碍上。该数据集程序包现已免费发布(http://diademchallenge.org),以训练,测试和帮助开发自动重建算法。

著录项

  • 来源
    《Neuroinformatics》 |2011年第3期|p.143-157|共15页
  • 作者单位

    Krasnow Institute for Advanced Study, George Mason University, Fairfax, VA, USA;

    Department of Neuroscience, University of Pittsburgh, Pittsburgh, PA, USA;

    MRC Clinical Sciences Centre, Imperial College London, London, UK;

    MRC Clinical Sciences Centre, Imperial College London, London, UK;

    Department of Biological Sciences, University of Southern California, Los Angeles, CA, USA;

    Division of Neurobiology, MRC Laboratory of Molecular Biology, Cambridge, UK;

    Department of Biological Sciences, James H. Clark Center for Biomedical Engineering and Sciences, Stanford University, Stanford, CA, USA;

    MRC Clinical Sciences Centre, Imperial College London, London, UK;

    Department of Systems Neurophysiology, Tokyo Medical and Dental University School of Medicine, Tokyo, Japan;

    Krasnow Institute for Advanced Study, George Mason University, Fairfax, VA, USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Axons; Dendrites; Neuroanatomy; Tracing; High-throughput; Morphometry; Optical imaging;

    机译:轴突;树突;神经解剖学;追踪;高通量;形态计量学;光学成像;

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