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高级认知依赖于信息丰富但可压缩的大脑活动模式。

High-level cognition is supported by information-rich but compressible brain activity patterns.

机构信息

Department of Psychiatry and Human Behavior, Carney Institute for Brain Sciences, Brown University, Providence, RI 02906.

Department of Psychological and Brain Sciences, Dartmouth College, Hanover, NH 03755.

出版信息

Proc Natl Acad Sci U S A. 2024 Aug 27;121(35):e2400082121. doi: 10.1073/pnas.2400082121. Epub 2024 Aug 23.

Abstract

To efficiently yet reliably represent and process information, our brains need to produce information-rich signals that differentiate between moments or cognitive states, while also being robust to noise or corruption. For many, though not all, natural systems, these two properties are often inversely related: More information-rich signals are less robust, and vice versa. Here, we examined how these properties change with ongoing cognitive demands. To this end, we applied dimensionality reduction algorithms and pattern classifiers to functional neuroimaging data collected as participants listened to a story, temporally scrambled versions of the story, or underwent a resting state scanning session. We considered two primary aspects of the neural data recorded in these different experimental conditions. First, we treated the maximum achievable decoding accuracy across participants as an indicator of the "informativeness" of the recorded patterns. Second, we treated the number of features (components) required to achieve a threshold decoding accuracy as a proxy for the "compressibility" of the neural patterns (where fewer components indicate greater compression). Overall, we found that the peak decoding accuracy (achievable without restricting the numbers of features) was highest in the intact (unscrambled) story listening condition. However, the number of features required to achieve comparable classification accuracy was also lowest in the intact story listening condition. Taken together, our work suggests that our brain networks flexibly reconfigure according to ongoing task demands and that the activity patterns associated with higher-order cognition and high engagement are both more informative and more compressible than the activity patterns associated with lower-order tasks and lower engagement.

摘要

为了高效且可靠地表示和处理信息,我们的大脑需要生成信息丰富的信号,以区分不同的时刻或认知状态,同时对噪声或损坏具有鲁棒性。然而,对于许多自然系统而言,这两个特性往往是相互矛盾的:信息越丰富的信号越不鲁棒,反之亦然。在这里,我们研究了这些特性如何随持续的认知需求而变化。为此,我们将降维算法和模式分类器应用于功能神经影像学数据,这些数据是在参与者听故事、故事的时间打乱版本或进行静息状态扫描时收集的。我们考虑了在这些不同实验条件下记录的神经数据的两个主要方面。首先,我们将参与者之间最大可实现的解码精度作为记录模式“信息量”的指标。其次,我们将达到阈值解码精度所需的特征(成分)数量作为神经模式“可压缩性”的代理(其中较少的成分表示更大的压缩)。总体而言,我们发现,在完整(未打乱)故事聆听条件下,峰值解码精度(无需限制特征数量即可实现)最高。然而,在完整故事聆听条件下,达到可比分类精度所需的特征数量也是最低的。综上所述,我们的工作表明,我们的大脑网络根据持续的任务需求灵活地重新配置,并且与高级认知和高参与度相关的活动模式不仅更具信息量,而且比与低阶任务和低参与度相关的活动模式更具可压缩性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/70eb/11363287/f0da464d5b12/pnas.2400082121fig01.jpg

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