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High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization

Atlases provide a framework for spatially mapping information from diverse sources into a common reference space. Specifically, brain atlases allow annotation of gene expression, cell morphology, connectivity, and activity. In larval zebrafish, advances in genetics, imaging, and computational method...

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Detalles Bibliográficos
Autores principales: Marquart, Gregory D., Tabor, Kathryn M., Horstick, Eric J., Brown, Mary, Geoca, Alexandra K., Polys, Nicholas F., Nogare, Damian Dalle, Burgess, Harold A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5597853/
https://www.ncbi.nlm.nih.gov/pubmed/28873968
http://dx.doi.org/10.1093/gigascience/gix056
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author Marquart, Gregory D.
Tabor, Kathryn M.
Horstick, Eric J.
Brown, Mary
Geoca, Alexandra K.
Polys, Nicholas F.
Nogare, Damian Dalle
Burgess, Harold A.
author_facet Marquart, Gregory D.
Tabor, Kathryn M.
Horstick, Eric J.
Brown, Mary
Geoca, Alexandra K.
Polys, Nicholas F.
Nogare, Damian Dalle
Burgess, Harold A.
author_sort Marquart, Gregory D.
collection PubMed
description Atlases provide a framework for spatially mapping information from diverse sources into a common reference space. Specifically, brain atlases allow annotation of gene expression, cell morphology, connectivity, and activity. In larval zebrafish, advances in genetics, imaging, and computational methods now allow the collection of such information brain-wide. However, due to technical considerations, disparate datasets may use different references and may not be aligned to the same coordinate space. Two recent larval zebrafish atlases exemplify this problem: Z-Brain, containing gene expression, neural activity, and neuroanatomical segmentations, was acquired using immunohistochemical stains, while the Zebrafish Brain Browser (ZBB) was constructed from live scans of fluorescent reporters in transgenic larvae. Although different references were used, the atlases included several common transgenic patterns that provide potential “bridges” for transforming each into the other's coordinate space. We tested multiple bridging channels and registration algorithms and found that the symmetric diffeomorphic normalization algorithm improved live brain registration precision while better preserving cell morphology than B-spline-based registrations. Symmetric diffeomorphic normalization also corrected for tissue distortion introduced during fixation. Multi-reference channel optimization provided a transformation that enabled Z-Brain and ZBB to be co-aligned with precision of approximately a single cell diameter and minimal perturbation of cell and tissue morphology. Finally, we developed software to visualize brain regions in 3 dimensions, including a virtual reality neuroanatomy explorer. This study demonstrates the feasibility of integrating whole brain datasets, despite disparate reference templates and acquisition protocols, when sufficient information is present for bridging. Increased accuracy and interoperability of zebrafish digital brain atlases will facilitate neurobiological studies.
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spelling pubmed-55978532017-09-25 High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization Marquart, Gregory D. Tabor, Kathryn M. Horstick, Eric J. Brown, Mary Geoca, Alexandra K. Polys, Nicholas F. Nogare, Damian Dalle Burgess, Harold A. Gigascience Research Atlases provide a framework for spatially mapping information from diverse sources into a common reference space. Specifically, brain atlases allow annotation of gene expression, cell morphology, connectivity, and activity. In larval zebrafish, advances in genetics, imaging, and computational methods now allow the collection of such information brain-wide. However, due to technical considerations, disparate datasets may use different references and may not be aligned to the same coordinate space. Two recent larval zebrafish atlases exemplify this problem: Z-Brain, containing gene expression, neural activity, and neuroanatomical segmentations, was acquired using immunohistochemical stains, while the Zebrafish Brain Browser (ZBB) was constructed from live scans of fluorescent reporters in transgenic larvae. Although different references were used, the atlases included several common transgenic patterns that provide potential “bridges” for transforming each into the other's coordinate space. We tested multiple bridging channels and registration algorithms and found that the symmetric diffeomorphic normalization algorithm improved live brain registration precision while better preserving cell morphology than B-spline-based registrations. Symmetric diffeomorphic normalization also corrected for tissue distortion introduced during fixation. Multi-reference channel optimization provided a transformation that enabled Z-Brain and ZBB to be co-aligned with precision of approximately a single cell diameter and minimal perturbation of cell and tissue morphology. Finally, we developed software to visualize brain regions in 3 dimensions, including a virtual reality neuroanatomy explorer. This study demonstrates the feasibility of integrating whole brain datasets, despite disparate reference templates and acquisition protocols, when sufficient information is present for bridging. Increased accuracy and interoperability of zebrafish digital brain atlases will facilitate neurobiological studies. Oxford University Press 2017-08-19 /pmc/articles/PMC5597853/ /pubmed/28873968 http://dx.doi.org/10.1093/gigascience/gix056 Text en Published by Oxford University Press on behalf of BGI. This work is written by (a) US Government employee(s) and is in the public domain in the US.
spellingShingle Research
Marquart, Gregory D.
Tabor, Kathryn M.
Horstick, Eric J.
Brown, Mary
Geoca, Alexandra K.
Polys, Nicholas F.
Nogare, Damian Dalle
Burgess, Harold A.
High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
title High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
title_full High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
title_fullStr High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
title_full_unstemmed High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
title_short High-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
title_sort high-precision registration between zebrafish brain atlases using symmetric diffeomorphic normalization
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5597853/
https://www.ncbi.nlm.nih.gov/pubmed/28873968
http://dx.doi.org/10.1093/gigascience/gix056
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