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Searching through functional space reveals distributed visual, auditory, and semantic coding in the human brain

机译:通过功能空间搜索显示人脑中的分布式视觉,听觉和语义编码

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The extent to which brain functions are localized or distributed is a foundational question in neuroscience. In the human brain, common fMRI methods such as cluster correction, atlas parcellation, and anatomical searchlight are biased by design toward finding localized representations. Here we introduce the functional searchlight approach as an alternative to anatomical searchlight analysis, the most commonly used exploratory multivariate fMRI technique. Functional searchlight removes any anatomical bias by grouping voxels based only on functional similarity and ignoring anatomical proximity. We report evidence that visual and auditory features from deep neural networks and semantic features from a natural language processing model, as well as object representations, are more widely distributed across the brain than previously acknowledged and that functional searchlight can improve model-based similarity and decoding accuracy. This approach provides a new way to evaluate and constrain computational models with brain activity and pushes our understanding of human brain function further along the spectrum from strict modularity toward distributed representation.
机译:大脑功能是本地化或分发的程度是神经科学的基础问题。在人性大脑中,常见的FMRI方法,例如集群校正,阿特拉斯局和解剖探照灯被设计朝向寻找局部化表示偏置。在这里,我们介绍了功能型探索灯分析的替代功能探索灯分析的替代方法,是最常用的探索性多元FMRI技术。功能探照灯仅通过基于功能相似性和忽略解剖学接近来分组voxel来消除任何解剖偏压。我们报告了来自自然语言处理模型的深度神经网络和语义特征的视觉和听觉特征以及对象表示,比以前确认的大脑更广泛地分布,并且功能探照灯可以提高基于模型的相似性和解码准确性。这种方法提供了一种评估和约束具有大脑活动的计算模型的新方法,并通过严格的模块化对分布式表示来推动我们对人脑功能的理解。

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