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D-LMBmap: a fully automated deep-learning pipeline for whole-brain profiling of neural circuitry.

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Peer-reviewed

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Abstract

Recent proliferation and integration of tissue-clearing methods and light-sheet fluorescence microscopy has created new opportunities to achieve mesoscale three-dimensional whole-brain connectivity mapping with exceptionally high throughput. With the rapid generation of large, high-quality imaging datasets, downstream analysis is becoming the major technical bottleneck for mesoscale connectomics. Current computational solutions are labor intensive with limited applications because of the exhaustive manual annotation and heavily customized training. Meanwhile, whole-brain data analysis always requires combining multiple packages and secondary development by users. To address these challenges, we developed D-LMBmap, an end-to-end package providing an integrated workflow containing three modules based on deep-learning algorithms for whole-brain connectivity mapping: axon segmentation, brain region segmentation and whole-brain registration. D-LMBmap does not require manual annotation for axon segmentation and achieves quantitative analysis of whole-brain projectome in a single workflow with superior accuracy for multiple cell types in all of the modalities tested.

Description

Acknowledgements: This work was supported by the Medical Research Council, as part of United Kingdom Research and Innovation (UK Research and Innovation) (MC_UP_1201/22). For the purpose of open access, the Medical Research Council Laboratory of Molecular Biology has applied a CC BY public copyright license to any Author Accepted Manuscript version arising. This work was also partially funded by NARSAD Young Investigator Award (2020, BBRF) to J.R. and Ministry of Science and Technology (2022ZD0206700) and the Beijing Municipal Government of P.R.C. to R.L. We thank D. Friedmann for advice on Adipo-Clear, J. Kebschull and D. Friedmann for data sharing, and L. Luo, M. Hastings, A.M.J. Adams and J. Song for critique on the manuscript.


Funder: Medical Research Council, as part of the United Kingdom Research and Innovation, MC_UP_1201/22

Journal Title

Nat Methods

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Journal ISSN

1548-7091
1548-7105

Volume Title

20

Publisher

Springer Nature

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Except where otherwised noted, this item's license is described as http://creativecommons.org/licenses/by/4.0/
Sponsorship
Brain and Behavior Research Foundation (Brain & Behavior Research Foundation) (NARSAD 2020)
Chinese Ministry of Science and Technology | Department of S and T for Social Development (Department of S&T for Social Development) (2022ZD0206700)