Published on 04 November 2020
Ultrahigh resolution 3D cytoarchitectonic map of Area hOc3v (LingG) created by a Deep-Learning assisted workflow
View DatasetDescription
This dataset contains automatically created cytoarchitectonic maps of Area hOc3v (LingG) in the BigBrain. Mappings were created using Deep Convolutional Neural networks trained on delineations on every 60th section using multivariate statistical image analysis, applied to GLI-images of coronal histological sections of 1 micron resolution. Resulting mappings are available on every section. Maps were transformed to the 3D reconstructed BigBrain space. Individual sections were used to assemble a 3D volume of the area, low quality results were replaced by interpolations between nearest neighboring sections. The volume was then smoothed using an 11³ median filter and largest connected components were identified to remove false positive results. The dataset consists of a HDF5 file containing the volume in RAS dimension ordering (20 micron isotropic resolution, dataset “volume”) and an affine transformation matrix (dataset “affine”). An additional dataset “interpolation_info” contains an integer vector for each section which indicates if a section was interpolated due to low quality results (value 2) or not (value 1).
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Publication Details
Subfield
Economics and Econometrics
Field
Economics, Econometrics and Finance
Domain
Social Sciences
Confidence Score
43%
Source
Scholar Data Model