| Literature DB >> 28250467 |
Sven Dorkenwald1,2, Philipp J Schubert1,2, Marius F Killinger1,2, Gregor Urban2, Shawn Mikula1, Fabian Svara1, Joergen Kornfeld1.
Abstract
Teravoxel volume electron microscopy data sets from neural tissue can now be acquired in weeks, but data analysis requires years of manual labor. We developed the SyConn framework, which uses deep convolutional neural networks and random forest classifiers to infer a richly annotated synaptic connectivity matrix from manual neurite skeleton reconstructions by automatically identifying mitochondria, synapses and their types, axons, dendrites, spines, myelin, somata and cell types. We tested our approach on serial block-face electron microscopy data sets from zebrafish, mouse and zebra finch, and computed the synaptic wiring of songbird basal ganglia. We found that, for example, basal-ganglia cell types with high firing rates in vivo had higher densities of mitochondria and vesicles and that synapse sizes and quantities scaled systematically, depending on the innervated postsynaptic cell types.Entities:
Mesh:
Year: 2017 PMID: 28250467 DOI: 10.1038/nmeth.4206
Source DB: PubMed Journal: Nat Methods ISSN: 1548-7091 Impact factor: 28.547