3.8 Proceedings Paper

SYNAPTIC PARTNER ASSIGNMENT USING ATTENTIONAL VOXEL ASSOCIATION NETWORKS

出版社

IEEE
DOI: 10.1109/isbi45749.2020.9098489

关键词

Microscopy - Electron; Brain; Connectivity Analysis; Machine Learning; Pattern Recognition and classification

资金

  1. Intelligence Advanced Research Projects Activity (IARPA) via Department of Interior/Interior Business Center (DoI/IBC) [D16PC0005]
  2. NIH/NINDS [U19NS104648, R01NS104926]
  3. NIH/NEI [R01EY027036]
  4. ARO [W911NF-12-10594]
  5. NIH/NIMH [U01MH114824, U01MH117072, RF1MH117815]

向作者/读者索取更多资源

Connectomics aims to recover a complete set of synaptic connections within a dataset imaged by volume electron microscopy. Many systems have been proposed for locating synapses, and recent research has included a way to identify the synaptic partners that communicate at a synaptic cleft. We reframe the problem of identifying synaptic partners as directly generating the mask of the synaptic partners from a given cleft. We train a convolutional network to perform this task. The network takes the local image context and a binary mask representing a single cleft as input. It is trained to produce two binary output masks: one which labels the voxels of the presynaptic partner within the input image, and another similar labeling for the postsynaptic partner. The cleft mask acts as an attentional gating signal for the network. We find that an implementation of this approach performs well on a dataset of mouse somatosensory cortex, and evaluate it as part of a combined system to predict both clefts and connections.

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