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NEURD: A mesh decomposition framework for automated proofreading and morphological analysis of neuronal EM reconstructions.

Brendan CeliiStelios PapadopoulosZhuokun DingPaul G FaheyEric Y WangChristos PapadopoulosAlexander B KuninSaumil PatelJ Alexander BaeAgnes L BodorDerrick BrittainJoAnn BuchananDaniel J BumbargerManuel A CastroErick CobosSven DorkenwaldLeila ElabbadyAkhilesh HalageriZhen JiaChris JordanDan KapnerNico KemnitzSam KinnKisuk LeeKai LiRan LuThomas MacrinaGayathri MahalingamEric MitchellShanka Subhra MondalShang MuBarak NehoranSergiy PopovychCasey M Schneider-MizellWilliam M SilversmithMarc M TakenoRussel TorresNicholas L TurnerWilliam WongJingpeng WuSzi-Chieh YuWenjing YinDaniel XenesLindsey M KitchellPatricia K RivlinVictoria A RoseCaitlyn A BishopBrock WesterEmmanouil FroudarakisEdgar Y WalkerFabian H SinzH Sebastian SeungForrest CollmanNuno Maçarico da CostaR Clay ReidXaq PitkowAndreas Savas ToliasJacob Reimer
Published in: bioRxiv : the preprint server for biology (2023)
We are now in the era of millimeter-scale electron microscopy (EM) volumes collected at nanometer resolution (Shapson-Coe et al., 2021; Consortium et al., 2021; Eichler et al., 2017; Zheng et al., 2018). Dense reconstruction of cellular compartments in these EM volumes has been enabled by recent advances in Machine Learning (ML) (Lee et al., 2017; Wu et al., 2021; Lu et al., 2021; Macrina et al., 2021). Automated segmentation methods can now yield exceptionally accurate reconstructions of cells, but despite this accuracy, laborious post-hoc proofreading is still required to generate large connectomes free of merge and split errors. The elaborate 3-D meshes of neurons produced by these segmentations contain detailed morphological information, from the diameter, shape, and branching patterns of axons and dendrites, down to the fine-scale structure of dendritic spines. However, extracting information about these features can require substantial effort to piece together existing tools into custom workflows. Building on existing open-source software for mesh manipulation, here we present "NEURD", a software package that decomposes each meshed neuron into a compact and extensively-annotated graph representation. With these feature-rich graphs, we implement workflows for state-of-the art automated post-hoc proofreading of merge errors, cell classification, spine detection, axon-dendritic proximities, and other features that can enable many downstream analyses of neural morphology and connectivity. NEURD can make these new massive and complex datasets more accessible to neuro-science researchers focused on a variety of scientific questions.
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