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个体大脑网络中任务状态的蒙面特征。

Masked features of task states found in individual brain networks.

机构信息

Department of Psychology, Northwestern University, 633 Clark St, Evanston, IL 60208, United States.

Department of Neurology, Washington University in St. Louis, 1 Brookings Dr, St. Louis, MO 63130, United States.

出版信息

Cereb Cortex. 2023 Mar 10;33(6):2879-2900. doi: 10.1093/cercor/bhac247.

Abstract

Completing complex tasks requires that we flexibly integrate information across brain areas. While studies have shown how functional networks are altered during different tasks, this work has generally focused on a cross-subject approach, emphasizing features that are common across people. Here we used extended sampling "precision" fMRI data to test the extent to which task states generalize across people or are individually specific. We trained classifiers to decode state using functional network data in single-person datasets across 5 diverse task states. Classifiers were then tested on either independent data from the same person or new individuals. Individualized classifiers were able to generalize to new participants. However, classification performance was significantly higher within a person, a pattern consistent across model types, people, tasks, feature subsets, and even for decoding very similar task conditions. Notably, these findings also replicated in a new independent dataset. These results suggest that individual-focused approaches can uncover robust features of brain states, including features obscured in cross-subject analyses. Individual-focused approaches have the potential to deepen our understanding of brain interactions during complex cognition.

摘要

完成复杂任务需要我们灵活地整合大脑区域之间的信息。虽然研究已经表明了在不同任务期间功能网络是如何被改变的,但这些工作通常侧重于跨主体的方法,强调在人群中共同存在的特征。在这里,我们使用扩展的采样“精度”fMRI 数据来测试任务状态在多大程度上可以在人群中泛化或因人而异。我们使用单个人数据集在 5 种不同的任务状态下的功能网络数据来训练分类器以对状态进行解码。然后,分类器在同一人的独立数据或新个体上进行测试。个性化分类器能够推广到新的参与者。然而,在个体内部,分类性能显著更高,这种模式在模型类型、人群、任务、特征子集甚至解码非常相似的任务条件下都是一致的。值得注意的是,这些发现也在新的独立数据集上得到了复制。这些结果表明,以个体为中心的方法可以揭示大脑状态的稳健特征,包括在跨主体分析中被掩盖的特征。以个体为中心的方法有可能加深我们对复杂认知过程中大脑相互作用的理解。

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