A Chinese multi-modal neuroimaging data release for increasing diversity of human brain mapping

被引:0
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作者
Peng Gao
Hao-Ming Dong
Si-Man Liu
Xue-Ru Fan
Chao Jiang
Yin-Shan Wang
Daniel Margulies
Hai-Fang Li
Xi-Nian Zuo
机构
[1] Taiyuan University of Technology,College of Information and Computer
[2] Beijing Normal University,State Key Laboratory of Cognitive Neuroscience and Learning
[3] National Basic Science Data Center,Institute of Psychology
[4] Chinese Academy of Sciences,School of Psychology
[5] Capital Normal University,Centre National de la Recherche Scientifique
[6] Frontlab,Developmental Population Neuroscience Research Center, IDG/McGovern Institute for Brain Research
[7] Brain and Spinal Cord Institute,Key Laboratory of Brain and Education, School of Education Science
[8] Beijing Normal University,undefined
[9] Nanning Normal University,undefined
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摘要
The big-data use is becoming a standard practice in the neuroimaging field through data-sharing initiatives. It is important for the community to realize that such open science effort must protect personal, especially facial information when raw neuroimaging data are shared. An ideal tool for the face anonymization should not disturb subsequent brain tissue extraction and further morphological measurements. Using the high-resolution head images from magnetic resonance imaging (MRI) of 215 healthy Chinese, we discovered and validated a template effect on the face anonymization. Improved facial anonymization was achieved when the Chinese head templates but not the Western templates were applied to obscure the faces of Chinese brain images. This finding has critical implications for international brain imaging data-sharing. To facilitate the further investigation of potential culture-related impacts on and increase diversity of data-sharing for the human brain mapping, we released the 215 Chinese multi-modal MRI data into a database for imaging Chinese young brains, namely’I See your Brains (ISYB)’, to the public via the Science Data Bank (https://doi.org/10.11922/sciencedb.00740).
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