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A searchable image resource ofDrosophilaGAL4-driver expression patterns with single neuron resolution

Authors :
Brian Melton
Geoffrey W. Meissner
Aljoscha Nern
Gerald M. Rubin
Jody Clements
Gabriella R Sterne
Masayoshi Ito
Robert Svirskas
Cristian Goina
Yoshinori Aso
Yisheng He
Theresa Gibney
Oz Malkesman
Tanya Wolff
Kelley Lee
Jennifer Jeter
Ryo Minegishi
Erica Ehrhardt
Shigehiro Namiki
Brianna Yarbrough
Zachary Dorman
Kaitlyn Forster
Wyatt Korff
Barry J. Dickson
Hideo Otsuna
Gwyneth M Card
Konrad Rokicki
Lauren Johnson
Jens Goldammer
Publication Year :
2020
Publisher :
Cold Spring Harbor Laboratory, 2020.

Abstract

Precise, repeatable genetic access to specific neurons via the GAL4/UAS system and related methods is a key advantage of Drosophila neuroscience. Neuronal targeting is typically documented using light microscopy of full GAL4 expression patterns, which mostly lack the single-cell resolution required for reliable cell type identification. Here we use stochastic GAL4 labeling with the MultiColor FlpOut approach to generate cellular resolution confocal images at large scale. We are releasing aligned images of 27,000 such adult central nervous systems. An anticipated use of this resource is to bridge the gap between electron microscopy-identified neurons and light microscopy-based intersectional genetic approaches such as the split-GAL4 system. Identifying the individual neurons that make up each GAL4 expression pattern improves the prediction of which GAL4 enhancer fragments best combine via split-GAL4 to target neurons of interest. To this end we have developed the NeuronBridge search tool, which matches these light microscope neuronal images to neurons in the recently published FlyEM hemibrain. This work thus provides a resource and search tool that will significantly enhance both the efficiency and efficacy of split-GAL4 targeting of EM-identified neurons and further advance Drosophila neuroscience.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........8764b1ad1351fe18ac133dc2ef620022
Full Text :
https://doi.org/10.1101/2020.05.29.080473