Multiscale and multimodal reconstruction of cortical structure and function
Author:
Turner Nicholas L.ORCID, Macrina ThomasORCID, Bae J. AlexanderORCID, Yang RunzheORCID, Wilson Alyssa M., Schneider-Mizell CaseyORCID, Lee Kisuk, Lu Ran, Wu JingpengORCID, Bodor Agnes L., Bleckert Adam A.ORCID, Brittain DerrickORCID, Froudarakis EmmanouilORCID, Dorkenwald SvenORCID, Collman ForrestORCID, Kemnitz NicoORCID, Ih Dodam, Silversmith William M.ORCID, Zung JonathanORCID, Zlateski Aleksandar, Tartavull IgnacioORCID, Yu Szi-chieh, Popovych Sergiy, Mu Shang, Wong William, Jordan Chris S., Castro Manuel, Buchanan JoAnnORCID, Bumbarger Daniel J., Takeno MarcORCID, Torres Russel, Mahalingam Gayathri, Elabbady LeilaORCID, Li Yang, Cobos Erick, Zhou Pengcheng, Suckow Shelby, Becker Lynne, Paninski Liam, Polleux FranckORCID, Reimer JacobORCID, Tolias Andreas S.ORCID, Reid R. ClayORCID, da Costa Nuno MaçaricoORCID, Seung H. SebastianORCID
Abstract
SummaryWe present a semi-automated reconstruction of L2/3 mouse primary visual cortex from 3 million cubic microns of electron microscopic images, including pyramidal and inhibitory neurons, astrocytes, microglia, oligodendrocytes and precursors, pericytes, vasculature, mitochondria, and synapses. Visual responses of a subset of pyramidal cells are included. The data are being made publicly available, along with tools for programmatic and 3D interactive access. The density of synaptic inputs onto inhibitory neurons varies across cell classes and compartments. We uncover a compartment-specific correlation between mitochondrial coverage and synapse density. Frequencies of connectivity motifs in the graph of pyramidal cells are predicted quite accurately from node degrees using the configuration model of random graphs. Cells receiving more connections from nearby cells exhibit stronger and more reliable visual responses. These example findings illustrate the resource’s utility for relating structure and function of cortical circuits as well as for neuronal cell biology.
Publisher
Cold Spring Harbor Laboratory
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