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1.
Science ; 384(6696): eadk4858, 2024 May 10.
Article in English | MEDLINE | ID: mdl-38723085

ABSTRACT

To fully understand how the human brain works, knowledge of its structure at high resolution is needed. Presented here is a computationally intensive reconstruction of the ultrastructure of a cubic millimeter of human temporal cortex that was surgically removed to gain access to an underlying epileptic focus. It contains about 57,000 cells, about 230 millimeters of blood vessels, and about 150 million synapses and comprises 1.4 petabytes. Our analysis showed that glia outnumber neurons 2:1, oligodendrocytes were the most common cell, deep layer excitatory neurons could be classified on the basis of dendritic orientation, and among thousands of weak connections to each neuron, there exist rare powerful axonal inputs of up to 50 synapses. Further studies using this resource may bring valuable insights into the mysteries of the human brain.


Subject(s)
Cerebral Cortex , Humans , Axons/physiology , Axons/ultrastructure , Cerebral Cortex/blood supply , Cerebral Cortex/ultrastructure , Dendrites/physiology , Neurons/ultrastructure , Oligodendroglia/ultrastructure , Synapses/physiology , Synapses/ultrastructure , Temporal Lobe/ultrastructure , Microscopy
2.
Nat Methods ; 20(12): 2011-2020, 2023 Dec.
Article in English | MEDLINE | ID: mdl-37985712

ABSTRACT

Maps of the nervous system that identify individual cells along with their type, subcellular components and connectivity have the potential to elucidate fundamental organizational principles of neural circuits. Nanometer-resolution imaging of brain tissue provides the necessary raw data, but inferring cellular and subcellular annotation layers is challenging. We present segmentation-guided contrastive learning of representations (SegCLR), a self-supervised machine learning technique that produces representations of cells directly from 3D imagery and segmentations. When applied to volumes of human and mouse cortex, SegCLR enables accurate classification of cellular subcompartments and achieves performance equivalent to a supervised approach while requiring 400-fold fewer labeled examples. SegCLR also enables inference of cell types from fragments as small as 10 µm, which enhances the utility of volumes in which many neurites are truncated at boundaries. Finally, SegCLR enables exploration of layer 5 pyramidal cell subtypes and automated large-scale analysis of synaptic partners in mouse visual cortex.


Subject(s)
Neuropil , Visual Cortex , Humans , Animals , Mice , Neurites , Pyramidal Cells , Supervised Machine Learning , Image Processing, Computer-Assisted
3.
Histochem Cell Biol ; 160(3): 223-251, 2023 Sep.
Article in English | MEDLINE | ID: mdl-37428210

ABSTRACT

A growing community is constructing a next-generation file format (NGFF) for bioimaging to overcome problems of scalability and heterogeneity. Organized by the Open Microscopy Environment (OME), individuals and institutes across diverse modalities facing these problems have designed a format specification process (OME-NGFF) to address these needs. This paper brings together a wide range of those community members to describe the cloud-optimized format itself-OME-Zarr-along with tools and data resources available today to increase FAIR access and remove barriers in the scientific process. The current momentum offers an opportunity to unify a key component of the bioimaging domain-the file format that underlies so many personal, institutional, and global data management and analysis tasks.


Subject(s)
Microscopy , Software , Humans , Community Support
4.
bioRxiv ; 2023 May 07.
Article in English | MEDLINE | ID: mdl-36865282

ABSTRACT

A growing community is constructing a next-generation file format (NGFF) for bioimaging to overcome problems of scalability and heterogeneity. Organized by the Open Microscopy Environment (OME), individuals and institutes across diverse modalities facing these problems have designed a format specification process (OME-NGFF) to address these needs. This paper brings together a wide range of those community members to describe the cloud-optimized format itself -- OME-Zarr -- along with tools and data resources available today to increase FAIR access and remove barriers in the scientific process. The current momentum offers an opportunity to unify a key component of the bioimaging domain -- the file format that underlies so many personal, institutional, and global data management and analysis tasks.

5.
Nat Methods ; 15(8): 605-610, 2018 08.
Article in English | MEDLINE | ID: mdl-30013046

ABSTRACT

Reconstruction of neural circuits from volume electron microscopy data requires the tracing of cells in their entirety, including all their neurites. Automated approaches have been developed for tracing, but their error rates are too high to generate reliable circuit diagrams without extensive human proofreading. We present flood-filling networks, a method for automated segmentation that, similar to most previous efforts, uses convolutional neural networks, but contains in addition a recurrent pathway that allows the iterative optimization and extension of individual neuronal processes. We used flood-filling networks to trace neurons in a dataset obtained by serial block-face electron microscopy of a zebra finch brain. Using our method, we achieved a mean error-free neurite path length of 1.1 mm, and we observed only four mergers in a test set with a path length of 97 mm. The performance of flood-filling networks was an order of magnitude better than that of previous approaches applied to this dataset, although with substantially increased computational costs.


Subject(s)
Image Processing, Computer-Assisted/methods , Nerve Net/ultrastructure , Neurons/ultrastructure , Algorithms , Animals , Brain/ultrastructure , Drosophila/ultrastructure , Finches/anatomy & histology , Imaging, Three-Dimensional/methods , Machine Learning , Male , Mice , Microscopy, Electron, Transmission , Neurites/ultrastructure
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