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@MISC{Lepage:1048769,
      author       = {Lepage, Claude and Mohlberg, Hartmut and Lewis, Lindsay B.
                      and Toussaint, Paule-Joanne and Wenzel, Susanne and Evans,
                      Alan C. and Amunts, Katrin},
      title        = {{B}ig{B}rain2 3{D} whole brain model (v1)},
      publisher    = {EBRAINS},
      reportid     = {FZJ-2025-04884},
      year         = {2025},
      abstract     = {This dataset contains the BigBrain2 whole-brain model, a 3D
                      reconstruction at 20µm resolution from digital scans of
                      7676 coronal histological sections of the brain of a
                      deceased 30 years old, male organ donor. The brain sections
                      were stained for cell bodies using the same procedure as for
                      the original BigBrain whole-brain model ([Amunts et al.
                      2013](https://doi.org/10.1126/science.1235381)). BigBrain2
                      will contribute new insight into inter-subject
                      cytoarchitectonic variability. Due to technical advances,
                      BigBrain2 offers better quality staining, favourable to
                      regional segmentation and registration, and contains fewer
                      artifacts through sectioning and staining than the original
                      BigBrain. Same as the original BigBrain, its native space
                      can be used as a common coordinate space (full name:
                      BigBrain2 whole-brain model; short name: BigBrain2;
                      abbreviation: BB2; version: 1.0) to anatomical anchor data
                      at high resolution. An additional image registration of
                      BigBrain2 to the MNI ICBM152 Average Brain Stereotaxic
                      Registration Model (short name: MNI152; version: 2009c,
                      nonlinear, asymmetric) preserves comparability to functional
                      imaging studies.},
      keywords     = {Neuroscience (Other)},
      cin          = {INM-1},
      cid          = {I:(DE-Juel1)INM-1-20090406},
      pnm          = {5254 - Neuroscientific Data Analytics and AI (POF4-525) /
                      EBRAINS 2.0 - EBRAINS 2.0: A Research Infrastructure to
                      Advance Neuroscience and Brain Health (101147319) / HIBALL -
                      Helmholtz International BigBrain Analytics and Learning
                      Laboratory (HIBALL) (InterLabs-0015)},
      pid          = {G:(DE-HGF)POF4-5254 / G:(EU-Grant)101147319 /
                      G:(DE-HGF)InterLabs-0015},
      typ          = {PUB:(DE-HGF)32},
      doi          = {10.25493/81J8-0G9},
      url          = {https://juser.fz-juelich.de/record/1048769},
}