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Neurotechnology

RESEARCH

     

Like learning, sleep changes the brain to improve its future performance. Unlike learning, these changes occur in the absence of overt behavior or sensory input. This “offline learning” thus contains a mystery: how does spontaneous activity, which is generated by the brain itself, improve brain function? Our lab aims to develop theories of offline learning that shed light on this mystery and can be used to mimic its computational benefits in artificial neural networks or understand its disruption in neuropsychiatric disorders.

Our work generally focuses on spatial representation in the hippocampal formation, and a phenomenon called sharp wave ripples - high frequency oscillations in the hippocampus that coordinate activity across the brain and simulate wake-like “replay” trajectories during sleep. We use artificial neural networks (ANNs), dynamical systems theory, and neural data analysis to study how these internally-generated dynamics support offline learning – working closely with experimental collaborators to inspire the design of computational models and to compare them in experimental data. This NeuroAI approach, in which brain-inspired ANNs are built and used as models for the brain, is particularly well-suited to bridge neurons’ circuit and cellular-level properties with their computational capacities, and allows us to study three questions central to our research.: “How does spontaneous activity emerge and self-organize in neural networks?”, “How does plasticity during spontaneous activity change the brain?”, and “How do those changes improve the brain’s operations and performance on future tasks?”.

In addition to our work on sleep, the lab works broadly at the interface of theoretical and experimental neuroscience - applying computational methods to a variety of interesting problems involving neural dynamics and computation with experimentalist collaborators.

Current Research Directions/Projects

  • The hippocampus is a critical brain structure for memory and goal-directed behavior. When an animal is awake, it represents the animal’s position in the environment and other task-relevant variables and forms new memories. When an animal is asleep, it simulates plausible behavioral trajectories through the environment, often called replay. We are interested to understand how these computational abilities emerge and are shaped by the hippocampus’ circuit structure, and how the interaction between emergent dynamics and plasticity during sleep supports the hippocampus’ role in navigation and memory. Recently, we found that recurrent neural networks trained to predict the sequence of sensory input produce representation and replay similar to that seen in the hippocampus, and are now working to build on this model - by making it more reflective of the hippocampus’ circuit structure and by studying the functional implications of intrinsically generated replay.

    Research Questions

    1. How do the circuit and cellular-level properties of the hippocampus support its computational capacities?

    2. How does neural activity during sleep modify hippocampal circuits?

    3. How does the hippocampus form new memories in new environments, without forgetting previously learned information?

     Key Papers

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  • During sleep, the hippocampus is in constant dialogue with the neocortex. This communication relies on the interaction between distinct dynamic events in the two structures: slow waves and spindles in the neocortex and sharp wave-ripples (SWRs) in the hippocampus. We are interested to understand how these intrinsically-generated activity patterns self-organize, how they support information transfer between the hippocampus and neocortex, and how their interaction supports offline learning.

    Research Questions

    1. How do the intrinsically-generated dynamics of the hippocampal-cortical system support information flow between the two structures and between different regions of the cortex?

    2. How does generative replay in the hippocampus support the creation of generalizable memories, or “schema”, in the neocortex?

     Key Papers

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  •  Work in our lab sits at the intersection of theoretical and experimental neuroscience. We work on a variety of projects with experimental collaborators, bringing the tools of brain-inspired ANNs, dynamical systems theory, and neural data analysis to bear on a range of topics beyond sleep.

     Key Papers

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  •      Key Papers

    • Levenstein D, Alvarez VA, Amarasingham A, Azab H, Gerkin RC, Hasenstaub A, Iyer R, Jolivet RB, Marzen S, Monaco JD, Prinz AA, Quraishi S, Santamaria F, Shivkumar S, Singh MF, Stockton DB, Traub R, Rotstein HG*, Nadim F*, Redish AD*. 2023 On the role of theory and modeling in neuroscience. JNeurosci.  43 (7) 1074-1088.

    • Levenstein D, De Santo A, Heijnen S, Narayan M, Oude Maatman FJW, Rawski J, Wright C. 2024. The problem-ladenness of theory. Computational Brain and Behavior

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Contact

Dan Levenstein

daniel.levenstein@yale.edu

100 College St. New Haven, CT.

Room 1130 06510

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