4.3 Article

Integration of velocity-dependent spatio-temporal structure of place cell activation during navigation in a reservoir model of prefrontal cortex

期刊

BIOLOGICAL CYBERNETICS
卷 116, 期 5-6, 页码 585-610

出版社

SPRINGER
DOI: 10.1007/s00422-022-00945-6

关键词

Reservoir computing; Prefrontal cortex; Rat; Navigation; Robotics; Mixed selectivity

资金

  1. French Region Bourgogne Franche Comte [ANER RobotSelf 2019-Y-10650]
  2. NSF-IIS Robust Intelligence Grants [1703340, 1703225]
  3. Div Of Information & Intelligent Systems
  4. Direct For Computer & Info Scie & Enginr [1703225, 1703340] Funding Source: National Science Foundation

向作者/读者索取更多资源

This research investigates the behavioral significance of speed profiles and how cortical networks encode this information. The study demonstrates that rats can associate different speed patterns with distinct behavioral choices. Using simulated navigation contexts and an embodied robotic setup, the researchers show that reservoir networks can discriminate between traversals of the same path with different speed profiles. Moreover, reservoir neurons exhibit a form of statistical mixed selectivity, which is characteristic of cortex and reservoirs, and may provide predictions for future experiments on rat cortex neural activity.
Sequential behavior unfolds both in space and in time. The same spatial trajectory can be realized in different manners in the same overall time by changing instantaneous speeds. The current research investigates how speed profiles might be given behavioral significance and how cortical networks might encode this information. We first demonstrate that rats can associate different speed patterns on the same trajectory with distinct behavioral choices. In this novel experimental paradigm, rats follow a small baited robot in a large megaspace environment where the rat's speed is precisely controlled by the robot's speed. Based on this proof of concept and research showing that recurrent reservoir networks are ideal for representing spatio-temporal structures, we then test reservoir networks in simulated navigation contexts and demonstrate they can discriminate between traversals of the same path with identical durations but different speed profiles. We then test the networks in an embodied robotic setup, where we use place cell representations from physically navigating robots as input and again successfully discriminate between traversals. To demonstrate that this capability is inherent to recurrent networks, we compared the model against simple linear integrators. Interestingly, although the linear integrators could also perform the speed profile discrimination, a clear difference emerged when examining information coding in both models. Reservoir neurons displayed a form of statistical mixed selectivity as a complex interaction between spatial location and speed that was not as abundant in the linear integrators. This mixed selectivity is characteristic of cortex and reservoirs and allows us to generate specific predictions about the neural activity that will be recorded in rat cortex in future experiments.

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