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RoboEM: automated 3D flight tracing for synaptic-resolution connectomics

Martin Schmidt, Alessandro Motta, Meike Sievers, Moritz Helmstaedter

2024Nature Methods28 citationsDOIOpen Access PDF

Abstract

Mapping neuronal networks from three-dimensional electron microscopy (3D-EM) data still poses substantial reconstruction challenges, in particular for thin axons. Currently available automated image segmentation methods require manual proofreading for many types of connectomic analysis. Here we introduce RoboEM, an artificial intelligence-based self-steering 3D 'flight' system trained to navigate along neurites using only 3D-EM data as input. Applied to 3D-EM data from mouse and human cortex, RoboEM substantially improves automated state-of-the-art segmentations and can replace manual proofreading for more complex connectomic analysis problems, yielding computational annotation cost for cortical connectomes about 400-fold lower than the cost of manual error correction.

Topics & Concepts

ConnectomicsTracingNeuroscienceConnectomeComputer scienceComputational biologyBiologyFunctional connectivityOperating systemAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringMachine Learning in Materials Science
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