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A Computational Framework for Ultrastructural Mapping of Neural Circuitry

Circuitry mapping of metazoan neural systems is difficult because canonical neural regions (regions containing one or more copies of all components) are large, regional borders are uncertain, neuronal diversity is high, and potential network topologies so numerous that only anatomical ground truth c...

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Autores principales: Anderson, James R, Jones, Bryan W, Yang, Jia-Hui, Shaw, Marguerite V, Watt, Carl B, Koshevoy, Pavel, Spaltenstein, Joel, Jurrus, Elizabeth, UV, Kannan, Whitaker, Ross T, Mastronarde, David, Tasdizen, Tolga, Marc, Robert E
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2661966/
https://www.ncbi.nlm.nih.gov/pubmed/19855814
http://dx.doi.org/10.1371/journal.pbio.1000074
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author Anderson, James R
Jones, Bryan W
Yang, Jia-Hui
Shaw, Marguerite V
Watt, Carl B
Koshevoy, Pavel
Spaltenstein, Joel
Jurrus, Elizabeth
UV, Kannan
Whitaker, Ross T
Mastronarde, David
Tasdizen, Tolga
Marc, Robert E
author_facet Anderson, James R
Jones, Bryan W
Yang, Jia-Hui
Shaw, Marguerite V
Watt, Carl B
Koshevoy, Pavel
Spaltenstein, Joel
Jurrus, Elizabeth
UV, Kannan
Whitaker, Ross T
Mastronarde, David
Tasdizen, Tolga
Marc, Robert E
author_sort Anderson, James R
collection PubMed
description Circuitry mapping of metazoan neural systems is difficult because canonical neural regions (regions containing one or more copies of all components) are large, regional borders are uncertain, neuronal diversity is high, and potential network topologies so numerous that only anatomical ground truth can resolve them. Complete mapping of a specific network requires synaptic resolution, canonical region coverage, and robust neuronal classification. Though transmission electron microscopy (TEM) remains the optimal tool for network mapping, the process of building large serial section TEM (ssTEM) image volumes is rendered difficult by the need to precisely mosaic distorted image tiles and register distorted mosaics. Moreover, most molecular neuronal class markers are poorly compatible with optimal TEM imaging. Our objective was to build a complete framework for ultrastructural circuitry mapping. This framework combines strong TEM-compliant small molecule profiling with automated image tile mosaicking, automated slice-to-slice image registration, and gigabyte-scale image browsing for volume annotation. Specifically we show how ultrathin molecular profiling datasets and their resultant classification maps can be embedded into ssTEM datasets and how scripted acquisition tools (SerialEM), mosaicking and registration (ir-tools), and large slice viewers (MosaicBuilder, Viking) can be used to manage terabyte-scale volumes. These methods enable large-scale connectivity analyses of new and legacy data. In well-posed tasks (e.g., complete network mapping in retina), terabyte-scale image volumes that previously would require decades of assembly can now be completed in months. Perhaps more importantly, the fusion of molecular profiling, image acquisition by SerialEM, ir-tools volume assembly, and data viewers/annotators also allow ssTEM to be used as a prospective tool for discovery in nonneural systems and a practical screening methodology for neurogenetics. Finally, this framework provides a mechanism for parallelization of ssTEM imaging, volume assembly, and data analysis across an international user base, enhancing the productivity of a large cohort of electron microscopists.
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spelling pubmed-26619662009-03-31 A Computational Framework for Ultrastructural Mapping of Neural Circuitry Anderson, James R Jones, Bryan W Yang, Jia-Hui Shaw, Marguerite V Watt, Carl B Koshevoy, Pavel Spaltenstein, Joel Jurrus, Elizabeth UV, Kannan Whitaker, Ross T Mastronarde, David Tasdizen, Tolga Marc, Robert E PLoS Biol Research Article Circuitry mapping of metazoan neural systems is difficult because canonical neural regions (regions containing one or more copies of all components) are large, regional borders are uncertain, neuronal diversity is high, and potential network topologies so numerous that only anatomical ground truth can resolve them. Complete mapping of a specific network requires synaptic resolution, canonical region coverage, and robust neuronal classification. Though transmission electron microscopy (TEM) remains the optimal tool for network mapping, the process of building large serial section TEM (ssTEM) image volumes is rendered difficult by the need to precisely mosaic distorted image tiles and register distorted mosaics. Moreover, most molecular neuronal class markers are poorly compatible with optimal TEM imaging. Our objective was to build a complete framework for ultrastructural circuitry mapping. This framework combines strong TEM-compliant small molecule profiling with automated image tile mosaicking, automated slice-to-slice image registration, and gigabyte-scale image browsing for volume annotation. Specifically we show how ultrathin molecular profiling datasets and their resultant classification maps can be embedded into ssTEM datasets and how scripted acquisition tools (SerialEM), mosaicking and registration (ir-tools), and large slice viewers (MosaicBuilder, Viking) can be used to manage terabyte-scale volumes. These methods enable large-scale connectivity analyses of new and legacy data. In well-posed tasks (e.g., complete network mapping in retina), terabyte-scale image volumes that previously would require decades of assembly can now be completed in months. Perhaps more importantly, the fusion of molecular profiling, image acquisition by SerialEM, ir-tools volume assembly, and data viewers/annotators also allow ssTEM to be used as a prospective tool for discovery in nonneural systems and a practical screening methodology for neurogenetics. Finally, this framework provides a mechanism for parallelization of ssTEM imaging, volume assembly, and data analysis across an international user base, enhancing the productivity of a large cohort of electron microscopists. Public Library of Science 2009-03 2009-03-31 /pmc/articles/PMC2661966/ /pubmed/19855814 http://dx.doi.org/10.1371/journal.pbio.1000074 Text en © 2009 Anderson et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Anderson, James R
Jones, Bryan W
Yang, Jia-Hui
Shaw, Marguerite V
Watt, Carl B
Koshevoy, Pavel
Spaltenstein, Joel
Jurrus, Elizabeth
UV, Kannan
Whitaker, Ross T
Mastronarde, David
Tasdizen, Tolga
Marc, Robert E
A Computational Framework for Ultrastructural Mapping of Neural Circuitry
title A Computational Framework for Ultrastructural Mapping of Neural Circuitry
title_full A Computational Framework for Ultrastructural Mapping of Neural Circuitry
title_fullStr A Computational Framework for Ultrastructural Mapping of Neural Circuitry
title_full_unstemmed A Computational Framework for Ultrastructural Mapping of Neural Circuitry
title_short A Computational Framework for Ultrastructural Mapping of Neural Circuitry
title_sort computational framework for ultrastructural mapping of neural circuitry
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2661966/
https://www.ncbi.nlm.nih.gov/pubmed/19855814
http://dx.doi.org/10.1371/journal.pbio.1000074
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