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A Petascale Automated Imaging Pipeline for Mapping Neuronal Circuits with High-throughput Transmission Electron Microscopy

Authors :
Marie E. Scott
Marc Takeno
Daniel Kapner
Daniel J. Bumbarger
Christopher S. Own
R. Clay Reid
M.F. Murfitt
Adam Bleckert
Derric Williams
Brett J. Graham
Wenjing Yin
David Reid
Daniel Castelli
Wei-Chung Allen Lee
Nuno Macarico da Costa
Colin Farrell
Derrick Brittain
Jed Perkins
Jay Borseth
Russel Torres
Publication Year :
2019
Publisher :
Cold Spring Harbor Laboratory, 2019.

Abstract

Serial-section electron microscopy is the method of choice for studying cellular structure and network connectivity in the brain. We have built a pipeline of parallel imaging using transmission electron automated microscopes (piTEAM) that scales this technology and enables the acquisition of petascale datasets containing local cortical microcircuits. The distributed platform is composed of multiple transmission electron microscopes that image, in parallel, different sections from the same block of tissue, all under control of a custom acquisition software (pyTEM) that implements 24/7 continuous autonomous imaging. The suitability of this architecture for large scale electron microscopy imaging was demonstrated by acquiring a volume of more than 1 mm3 of mouse neocortex spanning four different visual areas. Over 26,500 ultrathin tissue sections were imaged, yielding a dataset of more than 2 petabytes. Our current burst imaging rate is 500 Mpixel/s (image capture only) per microscope and net imaging rate is 100 Mpixel/s (including stage movement, image capture, quality control, and post processing). This brings the combined burst acquisition rate of the pipeline to 3 Gpixel/s and the net rate to 600 Mpixel/s with six microscopes running acquisition in parallel, which allowed imaging a cubic millimeter of mouse visual cortex at synaptic resolution in less than 6 months.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....d589a5578b48ad51be15849931c1685f
Full Text :
https://doi.org/10.1101/791889