SynEM, automated synapse detection for connectomics

Benedikt Staffler(Max Planck Institute for Brain Research), Manuel Berning(Max Planck Institute for Brain Research), Kevin M. Boergens(Max Planck Institute for Brain Research), Anjali Gour(Max Planck Institute for Brain Research), Patrick van der Smagt(Data:Lab Munich (Germany)), Moritz Helmstaedter(Max Planck Institute for Brain Research)
eLife
July 14, 2017
Cited by 71Open Access
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Abstract

in the mammalian cerebral cortex. Thus, even for small blocks of nerve tissue, dense connectomic mapping requires the identification of millions to billions of synapses. While the focus of connectomic data analysis has been on neurite reconstruction, synapse detection becomes limiting when datasets grow in size and dense mapping is required. Here, we report SynEM, a method for automated detection of synapses from conventionally en-bloc stained 3D electron microscopy image stacks. The approach is based on a segmentation of the image data and focuses on classifying borders between neuronal processes as synaptic or non-synaptic. SynEM yields 97% precision and recall in binary cortical connectomes with no user interaction. It scales to large volumes of cortical neuropil, plausibly even whole-brain datasets. SynEM removes the burden of manual synapse annotation for large densely mapped connectomes.


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