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NBLAST: Rapid, Sensitive Comparison of Neuronal Structure and Construction of Neuron Family Databases.

Published version
Peer-reviewed

Change log

Authors

Costa, Marta 
Manton, James D 
Ostrovsky, Aaron D 
Prohaska, Steffen 
Jefferis, Gregory SXE 

Abstract

Neural circuit mapping is generating datasets of tens of thousands of labeled neurons. New computational tools are needed to search and organize these data. We present NBLAST, a sensitive and rapid algorithm, for measuring pairwise neuronal similarity. NBLAST considers both position and local geometry, decomposing neurons into short segments; matched segments are scored using a probabilistic scoring matrix defined by statistics of matches and non-matches. We validated NBLAST on a published dataset of 16,129 single Drosophila neurons. NBLAST can distinguish neuronal types down to the finest level (single identified neurons) without a priori information. Cluster analysis of extensively studied neuronal classes identified new types and unreported topographical features. Fully automated clustering organized the validation dataset into 1,052 clusters, many of which map onto previously described neuronal types. NBLAST supports additional query types, including searching neurons against transgene expression patterns. Finally, we show that NBLAST is effective with data from other invertebrates and zebrafish. VIDEO ABSTRACT.

Description

Keywords

NBLAST, cell type, clustering, neuroinformatics, neuron similarity, online resource, Algorithms, Animals, Brain, Cluster Analysis, Computational Biology, Databases, Factual, Nerve Net, Neurons, Statistics as Topic, Time Factors

Journal Title

Neuron

Conference Name

Journal ISSN

0896-6273
1097-4199

Volume Title

Publisher

Elsevier BV
Sponsorship
European Research Council (649111)
This work was supported by the Medical Research Council [MRC file reference U105188491] and European Research Council Starting and Consolidator Grants to G.S.X.E.J., who is an EMBO Young Investigator.