| Literature DB >> 33570495 |
David M Young1,2, Siavash Fazel Darbandi1, Grace Schwartz1, Zachary Bonzell1, Deniz Yuruk1, Mai Nojima1, Laurent C Gole2, John Lr Rubenstein1, Weimiao Yu2, Stephan J Sanders1.
Abstract
3D imaging data necessitate 3D reference atlases for accurate quantitative interpretation. Existing computational methods to generate 3D atlases from 2D-derived atlases result in extensive artifacts, while manual curation approaches are labor-intensive. We present a computational approach for 3D atlas construction that substantially reduces artifacts by identifying anatomical boundaries in the underlying imaging data and using these to guide 3D transformation. Anatomical boundaries also allow extension of atlases to complete edge regions. Applying these methods to the eight developmental stages in the Allen Developing Mouse Brain Atlas (ADMBA) led to more comprehensive and accurate atlases. We generated imaging data from 15 whole mouse brains to validate atlas performance and observed qualitative and quantitative improvement (37% greater alignment between atlas and anatomical boundaries). We provide the pipeline as the MagellanMapper software and the eight 3D reconstructed ADMBA atlases. These resources facilitate whole-organ quantitative analysis between samples and across development.Entities:
Keywords: 3D atlas; computational biology; developmental biology; image processing; mouse; mouse development; neuroanatomy; neurodevelopment; systems biology; tissue clearing
Mesh:
Year: 2021 PMID: 33570495 PMCID: PMC7994002 DOI: 10.7554/eLife.61408
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.140