TY - JOUR
T1 - Global diversity in individualized cortical network topography
AU - Yang, Guoyuan
AU - Bozek, Jelena
AU - Noble, Stephanie
AU - Han, Meizhen
AU - Wu, Xinyu
AU - Xue, Mufan
AU - Kang, Jujiao
AU - Jia, Tianye
AU - Fu, Jilian
AU - Ge, Jianqiao
AU - Cui, Zaixu
AU - Li, Xuesong
AU - Feng, Jianfeng
AU - Gao, Jia Hong
N1 - Publisher Copyright:
© The Author(s) 2023. Publishe3d by Oxford University Press. All rights reserved.
PY - 2023/6/1
Y1 - 2023/6/1
N2 - Individualized cortical network topography (ICNT) varies between people and exhibits great variability in the association networks in the human brain. However, these findings were mainly discovered in Western populations. It remains unclear whether and how ICNT is shaped by the non-Western populations. Here, we leveraged a multisession hierarchical Bayesian model to define individualized functional networks in White American and Han Chinese populations with data from both US and Chinese Human Connectome Projects. We found that both the size and spatial topography of individualized functional networks differed between White American and Han Chinese groups, especially in the heteromodal association cortex (including the ventral attention, control, language, dorsal attention, and default mode networks). Employing a support vector machine, we then demonstrated that ethnicity-related ICNT diversity can be used to identify an individual’s ethnicity with high accuracy (74%, pperm <0.0001), with heteromodal networks contributing most to the classification. This finding was further validated through mass-univariate analyses with generalized additive models. Moreover, we reveal that the spatial heterogeneity of ethnic diversity in ICNT correlated with fundamental properties of cortical organization, including evolutionary cortical expansion, brain myelination, and cerebral blood flow. Altogether, this case study highlights a need for more globally diverse and publicly available neuroimaging datasets.
AB - Individualized cortical network topography (ICNT) varies between people and exhibits great variability in the association networks in the human brain. However, these findings were mainly discovered in Western populations. It remains unclear whether and how ICNT is shaped by the non-Western populations. Here, we leveraged a multisession hierarchical Bayesian model to define individualized functional networks in White American and Han Chinese populations with data from both US and Chinese Human Connectome Projects. We found that both the size and spatial topography of individualized functional networks differed between White American and Han Chinese groups, especially in the heteromodal association cortex (including the ventral attention, control, language, dorsal attention, and default mode networks). Employing a support vector machine, we then demonstrated that ethnicity-related ICNT diversity can be used to identify an individual’s ethnicity with high accuracy (74%, pperm <0.0001), with heteromodal networks contributing most to the classification. This finding was further validated through mass-univariate analyses with generalized additive models. Moreover, we reveal that the spatial heterogeneity of ethnic diversity in ICNT correlated with fundamental properties of cortical organization, including evolutionary cortical expansion, brain myelination, and cerebral blood flow. Altogether, this case study highlights a need for more globally diverse and publicly available neuroimaging datasets.
KW - ethnicity
KW - functional brain networks
KW - individualized parcellation
KW - resting state
KW - variability
UR - http://www.scopus.com/inward/record.url?scp=85160966077&partnerID=8YFLogxK
U2 - 10.1093/cercor/bhad002
DO - 10.1093/cercor/bhad002
M3 - Article
C2 - 36657772
AN - SCOPUS:85160966077
SN - 1047-3211
VL - 33
SP - 6803
EP - 6817
JO - Cerebral Cortex
JF - Cerebral Cortex
IS - 11
ER -