Published on 07 May 2021
Probabilistic cytoarchitectonic map of Area hIP3 (IPS) (v9.0)
View DatasetDescription
This dataset contains the distinct architectonic Area hIP3 (IPS) in the individual, single subject template of the MNI Colin 27 as well as the MNI ICBM 152 2009c nonlinear asymmetric reference space. As part of the Julich-Brain cytoarchitectonic atlas, the area was identified using cytoarchitectonic analysis on cell-body-stained histological sections of 10 human postmortem brains obtained from the body donor program of the University of Düsseldorf. The results of the cytoarchitectonic analysis were then mapped to both reference spaces, where each voxel was assigned the probability to belong to Area hIP3 (IPS). The probability map of Area hIP3 (IPS) are provided in the NifTi format for each brain reference space and hemisphere. The Julich-Brain atlas relies on a modular, flexible and adaptive framework containing workflows to create the probabilistic brain maps for these structures. Note that methodological improvements and integration of new brain structures may lead to small deviations in earlier released datasets. Other available data versions of Area hIP3 (IPS): Scheperjans et al. (2018) [Data set, v8.2] DOI: 10.25493/J9T6-TX9 Scheperjans et al. (2018) [Data set, v8.4] DOI: 10.25493/P8X0-V1G The most probable delineation of Area hIP3 (IPS) derived from the calculation of a maximum probability map of all currently released Julich-Brain brain structures can be found here: Amunts et al. (2019) [Data set, v1.13] DOI: 10.25493/Q3ZS-NV6 Amunts et al. (2019) [Data set, v1.18] DOI: 10.25493/8EGG-ZAR Amunts et al. (2020) [Data set, v2.2] DOI: 10.25493/TAKY-64D Amunts et al. (2020) [Data set, v2.4] DOI: 10.25493/A7Y0-NX9 Amunts et al. (2020) [Data set, v2.5] DOI: 10.25493/8JKE-M53 Amunts et al. (2021) [Data set, v2.6] DOI: 10.25493/KJQN-AM0
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Publication Details
Subfield
Economics and Econometrics
Field
Economics, Econometrics and Finance
Domain
Social Sciences
Confidence Score
45%
Source
Scholar Data Model