Timm B Poeppl, Emile Dimas, Katrin Sakreida, Julius M Kernbach, Ross D Markello, Oliver Schöffski, Alain Dagher, Philipp Koellinger, Gideon Nave, Martha J Farah, Bratislav Mišić, Danilo Bzdok
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引用次数: 4
摘要
社会经济地位(SES)将个体锚定在其社会网络层中。我们在社会结构中的嵌入与习惯、世界观、机会和健康差距产生了共鸣。SES的不同方面如何反映在中枢神经系统的结构中,这一点仍然不清楚。在这里,我们利用多元多输出学习算法在更广泛的人群(n≈10,000 UK Biobank参与者)中探索SES在灰质和白质结构中的可能印记。与社会地位较低的个体相比,社会地位较高的个体表现出左脑区域容量增加而右脑区域容量减少的模式。类似的侧化模式出现在解剖白质束的纤维结构中。我们的多模态研究结果表明,半球不对称是SES相关的大脑特征,这在SES的六个不同指标上是一致的:学位、教育、收入、工作、社区和车辆数量。因此,在人类灵长类动物中,半球特化可能以某种方式进化,揭示了与SES的关键联系。
Pattern learning reveals brain asymmetry to be linked to socioeconomic status.
Socioeconomic status (SES) anchors individuals in their social network layers. Our embedding in the societal fabric resonates with habitus, world view, opportunity, and health disparity. It remains obscure how distinct facets of SES are reflected in the architecture of the central nervous system. Here, we capitalized on multivariate multi-output learning algorithms to explore possible imprints of SES in gray and white matter structure in the wider population (n ≈ 10,000 UK Biobank participants). Individuals with higher SES, compared with those with lower SES, showed a pattern of increased region volumes in the left brain and decreased region volumes in the right brain. The analogous lateralization pattern emerged for the fiber structure of anatomical white matter tracts. Our multimodal findings suggest hemispheric asymmetry as an SES-related brain signature, which was consistent across six different indicators of SES: degree, education, income, job, neighborhood and vehicle count. Hence, hemispheric specialization may have evolved in human primates in a way that reveals crucial links to SES.