TRACKING THE TOPOLOGY OF NEURAL MANIFOLDS ACROSS POPULATIONS.

ArXiv Pub Date : 2025-03-26
Iris H R Yoon, Gregory Henselman-Petrusek, Yiyi Yu, Robert Ghrist, Spencer Lavere Smith, Chad Giusti
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Abstract

Neural manifolds summarize the intrinsic structure of the information encoded by a population of neurons. Advances in experimental techniques have made simultaneous recordings from multiple brain regions increasingly commonplace, raising the possibility of studying how these manifolds relate across populations. However, when the manifolds are nonlinear and possibly code for multiple unknown variables, it is challenging to extract robust and falsifiable information about their relationships. We introduce a framework, called the method of analogous cycles, for matching topological features of neural manifolds using only observed dissimilarity matrices within and between neural populations. We demonstrate via analysis of simulations and in vivo experimental data that this method can be used to correctly identify multiple shared circular coordinate systems across both stimuli and inferred neural manifolds. Conversely, the method rejects matching features that are not intrinsic to one of the systems. Further, as this method is deterministic and does not rely on dimensionality reduction or optimization methods, it is amenable to direct mathematical investigation and interpretation in terms of the underlying neural activity. We thus propose the method of analogous cycles as a suitable foundation for a theory of cross-population analysis via neural manifolds.

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跨群体追踪神经流形的拓扑结构
神经流形概括了由一群神经元编码的信息的内在结构。实验技术的进步使得同时记录多个大脑区域变得越来越普遍,这增加了研究这些流形在不同人群中如何联系的可能性。然而,当流形是非线性的并且可能编码多个未知变量时,提取关于它们之间关系的鲁棒性和可证伪性信息是具有挑战性的。我们引入了一种框架,称为类似循环方法,用于仅使用观察到的神经种群内部和之间的不相似矩阵来匹配神经流形的拓扑特征。我们通过模拟分析和\emph{体内}实验数据证明,该方法可用于正确识别刺激和推断神经流形之间的多个共享圆形坐标系统。相反,该方法拒绝匹配非系统固有的特征。此外,由于这种方法是确定性的,不依赖于降维或优化方法,因此可以根据潜在的神经活动进行直接的数学研究和解释。因此,我们提出了类似循环的方法,作为通过神经流形进行交叉种群分析理论的合适基础。
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