Zhaoning Li | tʂɑu niŋ li | 李肇宁

PhD Student | Social Psychology | University of Macau

Every individual makes a difference: A trinity derived from linking individual brain morphometry, connectivity and mentalising ability


Journal article


Zhaoning Li, Qunxi Dong, Bin Hu, Haiyan Wu
Human Brain Mapping, vol. 44, 2023, pp. 3343-3358


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APA   Click to copy
Li, Z., Dong, Q., Hu, B., & Wu, H. (2023). Every individual makes a difference: A trinity derived from linking individual brain morphometry, connectivity and mentalising ability. Human Brain Mapping, 44, 3343–3358. https://doi.org/10.1002/hbm.26285


Chicago/Turabian   Click to copy
Li, Zhaoning, Qunxi Dong, Bin Hu, and Haiyan Wu. “Every Individual Makes a Difference: A Trinity Derived from Linking Individual Brain Morphometry, Connectivity and Mentalising Ability.” Human Brain Mapping 44 (2023): 3343–3358.


MLA   Click to copy
Li, Zhaoning, et al. “Every Individual Makes a Difference: A Trinity Derived from Linking Individual Brain Morphometry, Connectivity and Mentalising Ability.” Human Brain Mapping, vol. 44, 2023, pp. 3343–58, doi:10.1002/hbm.26285.


BibTeX   Click to copy

@article{li2023a,
  title = {Every individual makes a difference: A trinity derived from linking individual brain morphometry, connectivity and mentalising ability},
  year = {2023},
  journal = {Human Brain Mapping},
  pages = {3343-3358},
  volume = {44},
  doi = {10.1002/hbm.26285},
  author = {Li, Zhaoning and Dong, Qunxi and Hu, Bin and Wu, Haiyan}
}

Citations: 5; JCR-Q1; 2022 JIF: 4.8; 2023中科院分区升级版 医学2区Top

Abstract

Mentalising ability, indexed as the ability to understand others' beliefs, feelings, intentions, thoughts and traits, is a pivotal and fundamental component of human social cognition. However, considering the multifaceted nature of mentalising ability, little research has focused on characterising individual differences in different mentalising components. And even less research has been devoted to investigating how the variance in the structural and functional patterns of the amygdala and hippocampus, two vital subcortical regions of the 'social brain', are related to inter-individual variability in mentalising ability. Here, as a first step toward filling these gaps, we exploited inter-subject representational similarity analysis (IS-RSA) to assess relationships between amygdala and hippocampal morphometry (surface-based multivariate morphometry statistics, MMS), connectivity (resting-state functional connectivity, rs-FC) and mentalising ability (interactive mentalisation questionnaire (IMQ) scores) across the participants (N = 24). In IS-RSA, we proposed a novel pipeline, i.e., computing patching and pooling operations-based surface distance (CPP-SD), to obtain a decent representation for high-dimensional MMS data. On this basis, we found significant correlations (i.e., second-order isomorphisms) between these three distinct modalities, indicating that a trinity existed in idiosyncratic patterns of brain morphometry, connectivity and mentalising ability. Notably, a region-related mentalising specificity emerged from these associations: self-self and self-other mentalisation are more related to the hippocampus, while other-self mentalisation shows a closer link with the amygdala. Furthermore, by utilising the dyadic regression analysis, we observed significant interactions such that subject pairs with similar morphometry had even greater mentalising similarity if they were also similar in rs-FC. Altogether, we demonstrated the feasibility and illustrated the promise of using IS-RSA to study individual differences, deepening our understanding of how individual brains give rise to their mentalising abilities.

Keywords

dyadic regression analysis, interactive mentalisation questionnaire, inter-subject representational similarity analysis, mentalising, resting-state functional connectivity, surface-based multivariate morphometry statistics
[Picture]
A schematic illustration of the inter-subject representational similarity analysis framework
[Picture]
Main results