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深度学习在人类社会大脑中识别出部分重叠的子网。

Deep learning identifies partially overlapping subnetworks in the human social brain.

机构信息

Department of Psychiatry, Psychotherapy, and Psychosomatics, RWTH Aachen University, Aachen, Germany.

Laboratory of Brain and Cognition, Montreal Neurological Institute, Department of Neurology and Neurosurgery, McGill University, Montreal, QC, Canada.

出版信息

Commun Biol. 2021 Jan 14;4(1):65. doi: 10.1038/s42003-020-01559-z.

DOI:10.1038/s42003-020-01559-z
PMID:33446815
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7809473/
Abstract

Complex social interplay is a defining property of the human species. In social neuroscience, many experiments have sought to first define and then locate 'perspective taking', 'empathy', and other psychological concepts to specific brain circuits. Seldom, bottom-up studies were conducted to first identify explanatory patterns of brain variation, which are then related to psychological concepts; perhaps due to a lack of large population datasets. In this spirit, we performed a systematic de-construction of social brain morphology into its elementary building blocks, involving ~10,000 UK Biobank participants. We explored coherent representations of structural co-variation at population scale within a recent social brain atlas, by translating autoencoder neural networks from deep learning. The learned subnetworks revealed essential patterns of structural relationships between social brain regions, with the nucleus accumbens, medial prefrontal cortex, and temporoparietal junction embedded at the core. Some of the uncovered subnetworks contributed to predicting examined social traits in general, while other subnetworks helped predict specific facets of social functioning, such as the experience of social isolation. As a consequence of our population-level evidence, spatially overlapping subsystems of the social brain probably relate to interindividual differences in everyday social life.

摘要

复杂的社会相互作用是人类物种的一个决定性特征。在社会神经科学中,许多实验试图首先定义,然后将“换位思考”、“同理心”和其他心理概念定位到特定的大脑回路。很少有自下而上的研究首先确定大脑变异的解释模式,然后将这些模式与心理概念联系起来;这可能是由于缺乏大型人群数据集。本着这种精神,我们对社会大脑形态进行了系统的解构,将其分解为基本的组成部分,涉及到约 10000 名英国生物银行参与者。我们通过将深度学习中的自动编码器神经网络进行转换,探索了在最近的社会大脑图谱中,在人群范围内对结构协变进行一致表示。所学到的子网揭示了社会大脑区域之间结构关系的基本模式,其中伏隔核、内侧前额叶皮层和颞顶联合处在核心位置。一些发现的子网有助于预测一般的被检查的社会特征,而其他子网则有助于预测社会功能的特定方面,例如社会孤立的体验。由于我们的人群水平证据,社会大脑的空间重叠子系统可能与日常社会生活中的个体间差异有关。

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