相关变异性的几何形状导致了高度次优的分辨感觉编码。

IF 2.1 3区 医学 Q3 NEUROSCIENCES
Journal of neurophysiology Pub Date : 2025-01-01 Epub Date: 2024-11-06 DOI:10.1152/jn.00313.2024
Jesse A Livezey, Pratik S Sachdeva, Maximilian E Dougherty, Mathew T Summers, Kristofer E Bouchard
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引用次数: 0

摘要

大脑通过神经群的活动来表现世界;然而,感官编码的计算目标是支持感官刺激的分辨,还是生成感官世界的内部模型,目前尚不清楚。实验中通常会观察到神经群之间的相关变异性(噪声相关性),许多研究表明,与没有相关性的空模型相比,相关变异性能提高感官编码的分辨能力。然而,这些研究结果并没有解决相关变异性是否用于辨别性感觉编码的问题。如果感觉编码的计算目标是辨别性,那么相关变异性就应该得到优化,以支持这一目标。我们通过建立两个新的空模型,分别从生物学角度对噪声相关性进行了评估。在不同的数据集中,我们发现神经群中的相关变异性会导致这两种无效模型下的分辨感觉编码非常不理想。此外,生物制约因素使得许多神经群子集无法达到最优,而根据生物标准进行子选择又会使分辨编码性能处于次优状态。最后,我们还发现,随着种群数量的增加,最优子群的数量也会呈指数增长。总之,这些结果表明,相关变异性的几何形状会导致高度次优的分辨感觉编码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The geometry of correlated variability leads to highly suboptimal discriminative sensory coding.

The brain represents the world through the activity of neural populations; however, whether the computational goal of sensory coding is to support discrimination of sensory stimuli or to generate an internal model of the sensory world is unclear. Correlated variability across a neural population (noise correlations) is commonly observed experimentally, and many studies demonstrate that correlated variability improves discriminative sensory coding compared to a null model with no correlations. However, such results do not address whether correlated variability is optimal for discriminative sensory coding. If the computational goal of sensory coding is discriminative, than correlated variability should be optimized to support that goal. We assessed optimality of noise correlations for discriminative sensory coding in diverse datasets by developing two novel null models, each with a biological interpretation. Across datasets, we found that correlated variability in neural populations leads to highly suboptimal discriminative sensory coding according to both null models. Furthermore, biological constraints prevent many subsets of the neural populations from achieving optimality, and subselecting based on biological criteria leaves red discriminative coding performance suboptimal. Finally, we show that optimal subpopulations are exponentially small as the population size grows. Together, these results demonstrate that the geometry of correlated variability leads to highly suboptimal discriminative sensory coding.NEW & NOTEWORTHY The brain represents the world through the activity of neural populations that exhibit correlated variability. We assessed optimality of correlated variability for discriminative sensory coding in diverse datasets by developing two novel null models. Across datasets, correlated variability in neural populations leads to highly suboptimal discriminative sensory coding according to both null models. Biological constraints prevent the neural populations from achieving optimality. Together, these results demonstrate that the geometry of correlated variability leads to highly suboptimal discriminative sensory coding.

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来源期刊
Journal of neurophysiology
Journal of neurophysiology 医学-神经科学
CiteScore
4.80
自引率
8.00%
发文量
255
审稿时长
2-3 weeks
期刊介绍: The Journal of Neurophysiology publishes original articles on the function of the nervous system. All levels of function are included, from the membrane and cell to systems and behavior. Experimental approaches include molecular neurobiology, cell culture and slice preparations, membrane physiology, developmental neurobiology, functional neuroanatomy, neurochemistry, neuropharmacology, systems electrophysiology, imaging and mapping techniques, and behavioral analysis. Experimental preparations may be invertebrate or vertebrate species, including humans. Theoretical studies are acceptable if they are tied closely to the interpretation of experimental data and elucidate principles of broad interest.
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