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A geometric framework for understanding dynamic information integration in context-dependent computation

The prefrontal cortex (PFC) plays a prominent role in performing flexible cognitive functions and working memory, yet the underlying computational principle remains poorly understood. Here, we trained a rate-based recurrent neural network (RNN) to explore how the context rules are encoded, maintaine...

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Detalles Bibliográficos
Autores principales: Zhang, Xiaohan, Liu, Shenquan, Chen, Zhe Sage
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8367843/
https://www.ncbi.nlm.nih.gov/pubmed/34430809
http://dx.doi.org/10.1016/j.isci.2021.102919
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author Zhang, Xiaohan
Liu, Shenquan
Chen, Zhe Sage
author_facet Zhang, Xiaohan
Liu, Shenquan
Chen, Zhe Sage
author_sort Zhang, Xiaohan
collection PubMed
description The prefrontal cortex (PFC) plays a prominent role in performing flexible cognitive functions and working memory, yet the underlying computational principle remains poorly understood. Here, we trained a rate-based recurrent neural network (RNN) to explore how the context rules are encoded, maintained across seconds-long mnemonic delay, and subsequently used in a context-dependent decision-making task. The trained networks replicated key experimentally observed features in the PFC of rodent and monkey experiments, such as mixed selectivity, neuronal sequential activity, and rotation dynamics. To uncover the high-dimensional neural dynamical system, we further proposed a geometric framework to quantify and visualize population coding and sensory integration in a temporally defined manner. We employed dynamic epoch-wise principal component analysis (PCA) to define multiple task-specific subspaces and task-related axes, and computed the angles between task-related axes and these subspaces. In low-dimensional neural representations, the trained RNN first encoded the context cues in a cue-specific subspace, and then maintained the cue information with a stable low-activity state persisting during the delay epoch, and further formed line attractors for sensor integration through low-dimensional neural trajectories to guide decision-making. We demonstrated via intensive computer simulations that the geometric manifolds encoding the context information were robust to varying degrees of weight perturbation in both space and time. Overall, our analysis framework provides clear geometric interpretations and quantification of information coding, maintenance, and integration, yielding new insight into the computational mechanisms of context-dependent computation.
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spelling pubmed-83678432021-08-23 A geometric framework for understanding dynamic information integration in context-dependent computation Zhang, Xiaohan Liu, Shenquan Chen, Zhe Sage iScience Article The prefrontal cortex (PFC) plays a prominent role in performing flexible cognitive functions and working memory, yet the underlying computational principle remains poorly understood. Here, we trained a rate-based recurrent neural network (RNN) to explore how the context rules are encoded, maintained across seconds-long mnemonic delay, and subsequently used in a context-dependent decision-making task. The trained networks replicated key experimentally observed features in the PFC of rodent and monkey experiments, such as mixed selectivity, neuronal sequential activity, and rotation dynamics. To uncover the high-dimensional neural dynamical system, we further proposed a geometric framework to quantify and visualize population coding and sensory integration in a temporally defined manner. We employed dynamic epoch-wise principal component analysis (PCA) to define multiple task-specific subspaces and task-related axes, and computed the angles between task-related axes and these subspaces. In low-dimensional neural representations, the trained RNN first encoded the context cues in a cue-specific subspace, and then maintained the cue information with a stable low-activity state persisting during the delay epoch, and further formed line attractors for sensor integration through low-dimensional neural trajectories to guide decision-making. We demonstrated via intensive computer simulations that the geometric manifolds encoding the context information were robust to varying degrees of weight perturbation in both space and time. Overall, our analysis framework provides clear geometric interpretations and quantification of information coding, maintenance, and integration, yielding new insight into the computational mechanisms of context-dependent computation. Elsevier 2021-07-30 /pmc/articles/PMC8367843/ /pubmed/34430809 http://dx.doi.org/10.1016/j.isci.2021.102919 Text en © 2021 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zhang, Xiaohan
Liu, Shenquan
Chen, Zhe Sage
A geometric framework for understanding dynamic information integration in context-dependent computation
title A geometric framework for understanding dynamic information integration in context-dependent computation
title_full A geometric framework for understanding dynamic information integration in context-dependent computation
title_fullStr A geometric framework for understanding dynamic information integration in context-dependent computation
title_full_unstemmed A geometric framework for understanding dynamic information integration in context-dependent computation
title_short A geometric framework for understanding dynamic information integration in context-dependent computation
title_sort geometric framework for understanding dynamic information integration in context-dependent computation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8367843/
https://www.ncbi.nlm.nih.gov/pubmed/34430809
http://dx.doi.org/10.1016/j.isci.2021.102919
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