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Whole-cell organelle segmentation in volume electron microscopy

机译:体积电子显微镜中的全细胞细胞器分段

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摘要

Focused ion beam scanning electron microscopy (FIB-SEM) combined with deep-learning-based segmentation is used to produce three-dimensional reconstructions of complete cells and tissues, in which up to 35 different organelle classes are annotated.Cells contain hundreds of organelles and macromolecular assemblies. Obtaining a complete understanding of their intricate organization requires the nanometre-level, three-dimensional reconstruction of whole cells, which is only feasible with robust and scalable automatic methods. Here, to support the development of such methods, we annotated up to 35 different cellular organelle classes-ranging from endoplasmic reticulum to microtubules to ribosomes-in diverse sample volumes from multiple cell types imaged at a near-isotropic resolution of 4 nm per voxel with focused ion beam scanning electron microscopy (FIB-SEM)(1). We trained deep learning architectures to segment these structures in 4 nm and 8 nm per voxel FIB-SEM volumes, validated their performance and showed that automatic reconstructions can be used to directly quantify previously inaccessible metrics including spatial interactions between cellular components. We also show that such reconstructions can be used to automatically register light and electron microscopy images for correlative studies. We have created an open data and open-source web repository, 'OpenOrganelle', to share the data, computer code and trained models, which will enable scientists everywhere to query and further improve automatic reconstruction of these datasets.
机译:聚焦离子束扫描电子显微镜(FIB-SEM)与基于深度学习的分割结合使用,用于产生完整细胞和组织的三维重建,其中最多35个不同的细胞器类被注释.Cells包含数百个细胞器和数百个细胞器大分子组件。获得完全了解其复杂组织需要纳米级,整个细胞的三维重建,这只是具有稳健和可扩展的自动方法的可行性。在这里,为了支持这些方法的开发,我们向多达35种不同的细胞器类别 - 从内质网对微管中的微管,从多种细胞类型中的多种样品体积从近在各向同性分辨率为每种体素的近在同质分辨率聚焦离子束扫描电子显微镜(FIB-SEM)(1)。我们培训了深度学习架构,以在每个体素FIB-SEM卷中分段为4 nm和8nm的这些结构,验证了它们的性能,并显示了自动重建可用于直接量化先前无法访问的蜂窝组件之间的空间相互作用。我们还表明,这种重建可用于自动注册光和电子显微镜图像以进行相关研究。我们已经创建了一个开放数据和开源Web存储库,“OpenOrgonelle”,分享数据,计算机代码和培训的模型,这将使​​科学家能够查询并进一步改进这些数据集的自动重建。

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  • 来源
    《Nature》 |2021年第7883期|141-146|共6页
  • 作者单位

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA|UZH ETHZ Inst Neuroinformat Zurich Switzerland;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

    Howard Hughes Med Inst Janelia Res Campus Ashburn VA 20147 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
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