一个可解的神经回路模型揭示了感知决策中非最优时间加权的动力学原理。

IF 2 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY
Journal of Computational Neuroscience Pub Date : 2025-09-01 Epub Date: 2025-07-29 DOI:10.1007/s10827-025-00910-9
Xuewen Shen, Fangting Li, Bin Min
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引用次数: 0

摘要

了解在深思熟虑的决策过程中积累证据的机制对人类和动物都至关重要。虽然在过去的几十年里已经提出了许多模型来表征证据的时间加权,但在决策过程中控制神经回路的动力学原理仍然难以捉摸。在这项研究中,我们提出了一个可解的秩1神经回路模型来解决这个问题。我们首先推导了积分核的解析表达式,积分核是描述不同时间点的感官证据如何相对于最终决策进行加权的关键量。基于该表达式,我们说明了在辅助空间中引入的动力学,即与决策变量正交的子空间,如何通过增益调制机制调制决策变量的流场,从而产生各种积分核类型,不仅包括单调型(近因型和素数型),还包括非单调型(凸型和凹型)。此外,我们定量验证了积分核形状可以从动态景观中理解,非单调时间加权反映了景观的拓扑转换。此外,我们表明,在非最优加权网络上的训练导致向最优加权收敛。最后,我们证明了rank-1连通性诱导对称竞争产生干草叉分叉。总之,我们提出了一个可解的神经回路模型,该模型统一了不同类型的时间加权,提供了非单调积分核结构与动态景观拓扑转换之间的有趣联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A solvable neural circuit model revealing the dynamical principle of non-optimal temporal weighting in perceptual decision making.

Understanding the mechanism of accumulating evidence over time in deliberate decision-making is crucial for both humans and animals. While numerous models have been proposed over the past few decades to characterize the temporal weighting of evidence, the dynamical principle governing the neural circuits in decision making remain elusive. In this study, we proposed a solvable rank-1 neural circuit model to address this problem. We first derived an analytical expression for integration kernel, a key quantity describing how sensory evidence at different time points is weighted with respect to the final decision. Based on this expression, we illustrated that how the dynamics introduced in the auxiliary space-namely, a subspace orthogonal to the decision variable-modulates the flow fields of decision variable through a gain modulation mechanism, resulting in a variety of integration kernel types, including not only monotonic ones (recency and primacy) but also non-monotonic ones (convex and concave). Furthermore, we quantitatively validated that integration kernel shapes can be understood from dynamical landscapes and non-monotonic temporal weighting reflects topological transitions in the landscape. Additionally, we showed that training on networks with non-optimal weighting leads to convergence toward optimal weighting. Finally, we demonstrate that rank-1 connectivity induces symmetric competition to generate pitchfork bifurcation. In summary, we present a solvable neural circuit model that unifies diverse types of temporal weighting, providing an intriguing link between non-monotonic integration kernel structure and topological transitions of dynamical landscape.

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来源期刊
CiteScore
2.00
自引率
8.30%
发文量
32
审稿时长
3 months
期刊介绍: The Journal of Computational Neuroscience provides a forum for papers that fit the interface between computational and experimental work in the neurosciences. The Journal of Computational Neuroscience publishes full length original papers, rapid communications and review articles describing theoretical and experimental work relevant to computations in the brain and nervous system. Papers that combine theoretical and experimental work are especially encouraged. Primarily theoretical papers should deal with issues of obvious relevance to biological nervous systems. Experimental papers should have implications for the computational function of the nervous system, and may report results using any of a variety of approaches including anatomy, electrophysiology, biophysics, imaging, and molecular biology. Papers investigating the physiological mechanisms underlying pathologies of the nervous system, or papers that report novel technologies of interest to researchers in computational neuroscience, including advances in neural data analysis methods yielding insights into the function of the nervous system, are also welcomed (in this case, methodological papers should include an application of the new method, exemplifying the insights that it yields).It is anticipated that all levels of analysis from cognitive to cellular will be represented in the Journal of Computational Neuroscience.
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