aMAP is a validated pipeline for registration and segmentation of high-resolution mouse brain data

The validation of automated image registration and segmentation is crucial for accurate and reliable mapping of brain connectivity and function in three-dimensional (3D) data sets. While validation standards are necessarily high and routinely met in the clinical arena, they have to date been lacking...

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Veröffentlicht in:Nature communications 2016-07, Vol.7 (1), p.11879-11879, Article 11879
Hauptverfasser: Niedworok, Christian J., Brown, Alexander P. Y., Jorge Cardoso, M., Osten, Pavel, Ourselin, Sebastien, Modat, Marc, Margrie, Troy W.
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Sprache:eng
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Zusammenfassung:The validation of automated image registration and segmentation is crucial for accurate and reliable mapping of brain connectivity and function in three-dimensional (3D) data sets. While validation standards are necessarily high and routinely met in the clinical arena, they have to date been lacking for high-resolution microscopy data sets obtained from the rodent brain. Here we present a tool for optimized automated mouse atlas propagation (aMAP) based on clinical registration software (NiftyReg) for anatomical segmentation of high-resolution 3D fluorescence images of the adult mouse brain. We empirically evaluate aMAP as a method for registration and subsequent segmentation by validating it against the performance of expert human raters. This study therefore establishes a benchmark standard for mapping the molecular function and cellular connectivity of the rodent brain. Anatomical segmentation of high-resolution 3D microscopy datasets is necessary to map large samples at cellular resolution. Here the authors present a pipeline for automated mouse atlas propagation (aMAP) to segment fluorescence images of the adult mouse brain and validate it against human segmentations.
ISSN:2041-1723
2041-1723
DOI:10.1038/ncomms11879