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电网规范与空间的多尺度、多场位置编码

Grid codes vs. multi-scale, multi-field place codes for space.

作者信息

Dietrich Robin, Waniek Nicolai, Stemmler Martin, Knoll Alois

机构信息

School of Computation, Information and Technology, Technical University of Munich, Munich, Germany.

Kavli Institute for Systems Neuroscience, Norwegian University of Science and Technology, Trondheim, Norway.

出版信息

Front Comput Neurosci. 2024 Apr 19;18:1276292. doi: 10.3389/fncom.2024.1276292. eCollection 2024.

Abstract

INTRODUCTION

Recent work on bats flying over long distances has revealed that single hippocampal cells have multiple place fields of different sizes. At the network level, a multi-scale, multi-field place cell code outperforms classical single-scale, single-field place codes, yet the performance boundaries of such a code remain an open question. In particular, it is unknown how general multi-field codes compare to a highly regular grid code, in which cells form distinct modules with different scales.

METHODS

In this work, we address the coding properties of theoretical spatial coding models with rigorous analyses of comprehensive simulations. Starting from a multi-scale, multi-field network, we performed evolutionary optimization. The resulting multi-field networks sometimes retained the multi-scale property at the single-cell level but most often converged to a single scale, with all place fields in a given cell having the same size. We compared the results against a single-scale single-field code and a one-dimensional grid code, focusing on two main characteristics: the performance of the code itself and the dynamics of the network generating it.

RESULTS

Our simulation experiments revealed that, under normal conditions, a regular grid code outperforms all other codes with respect to decoding accuracy, achieving a given precision with fewer neurons and fields. In contrast, multi-field codes are more robust against noise and lesions, such as random drop-out of neurons, given that the significantly higher number of fields provides redundancy. Contrary to our expectations, the network dynamics of all models, from the original multi-scale models before optimization to the multi-field models that resulted from optimization, did not maintain activity bumps at their original locations when a position-specific external input was removed.

DISCUSSION

Optimized multi-field codes appear to strike a compromise between a place code and a grid code that reflects a trade-off between accurate positional encoding and robustness. Surprisingly, the recurrent neural network models we implemented and optimized for either multi- or single-scale, multi-field codes did not intrinsically produce a persistent "memory" of attractor states. These models, therefore, were not continuous attractor networks.

摘要

引言

最近关于远距离飞行蝙蝠的研究表明,单个海马体细胞具有多个不同大小的位置野。在网络层面,多尺度、多场位置细胞编码优于传统的单尺度、单场位置编码,然而这种编码的性能边界仍是一个悬而未决的问题。特别是,尚不清楚一般的多场编码与高度规则的网格编码相比如何,在网格编码中细胞形成具有不同尺度的独特模块。

方法

在这项工作中,我们通过对综合模拟进行严格分析来研究理论空间编码模型的编码特性。从一个多尺度、多场网络开始,我们进行了进化优化。得到的多场网络有时在单细胞层面保留了多尺度特性,但大多数情况下会收敛到单一尺度,给定细胞中的所有位置野大小相同。我们将结果与单尺度单场编码和一维网格编码进行了比较,重点关注两个主要特征:编码本身的性能以及生成它的网络的动力学。

结果

我们的模拟实验表明,在正常条件下,规则网格编码在解码精度方面优于所有其他编码,使用更少的神经元和野就能达到给定的精度。相比之下,多场编码对噪声和损伤(如神经元随机丢失)更具鲁棒性,因为大量增加的野提供了冗余。与我们的预期相反,当去除位置特定的外部输入时,所有模型(从优化前的原始多尺度模型到优化后产生的多场模型)的网络动力学都没有在其原始位置维持活动峰。

讨论

优化后的多场编码似乎在位置编码和网格编码之间达成了一种折衷,这反映了精确位置编码和鲁棒性之间的权衡。令人惊讶的是,我们为多尺度或单尺度多场编码实现并优化的递归神经网络模型并没有内在地产生吸引子状态的持久“记忆”。因此,这些模型不是连续吸引子网络。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7e82/11066179/5e0ba3a5d3b6/fncom-18-1276292-g0001.jpg

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