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4275 Publications

Showing 2381-2390 of 4275 results
Sgro LabFitzgerald Lab
01/01/26 | Memory from variability: Heritable short-term cellular memory emerges from stochastic biochemical reaction networks
Aronson MS, Zhou BY, Fitzgerald JE, Sgro AE
bioRxiv. 2026 Jan 01:. doi: 10.64898/2025.12.31.694479

Cells exhibit a mysterious form of selective heritable short-term memory, influencing outcomes as diverse as cell fate decisions in embryos and environmental responses in cancer cells and bacteria. Here, we present a simple theoretical framework explaining how this selective memory can arise from the reactions regulating molecular levels in cells. Our key insight is that related cells retain more similar molecular concentrations relative to random cells when a greater variance of possible concentration states is created during a single cell generation than is created by cell division across a population. This persistence of molecular similarity down a lineage constitutes a form of heritable short-term memory. We identify the biochemical networks that produce, modify, and degrade molecules as an underexplored source of these additional molecular concentration states. Using experimentally informed simulations, we find that the strength and duration of molecular similarity down a lineage depend on tunable network properties, explaining why some cellular traits persist only briefly while others last generations. These contributions to molecular concentration variance from biochemical reaction networks act in concert with gene expression and other regulatory processes to shape the protein composition of cells. Our framework yields clear, testable predictions for determining how biochemical network architectures drive non-genetic cellular inheritance.

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12/19/02 | Memory of sequential experience in the hippocampus during slow wave sleep.
Lee AK, Wilson MA
Neuron. 2002 Dec 19;36(6):1183-94

Rats repeatedly ran through a sequence of spatial receptive fields of hippocampal CA1 place cells in a fixed temporal order. A novel combinatorial decoding method reveals that these neurons repeatedly fired in precisely this order in long sequences involving four or more cells during slow wave sleep (SWS) immediately following, but not preceding, the experience. The SWS sequences occurred intermittently in brief ( approximately 100 ms) bursts, each compressing the behavioral sequence in time by approximately 20-fold. This rapid encoding of sequential experience is consistent with evidence that the hippocampus is crucial for spatial learning in rodents and the formation of long-term memories of events in time in humans.

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06/07/17 | Memory retrieval from first principles.
Katkov M, Romani S, Tsodyks M
Neuron. 2017 Jun 07;94(5):1027-1032. doi: 10.1016/j.neuron.2017.03.048

The dilemma that neurotheorists face is that (1) detailed biophysical models that can be constrained by direct measurements, while being of great importance, offer no immediate insights into cognitive processes in the brain, and (2) high-level abstract cognitive models, on the other hand, while relevant for understanding behavior, are largely detached from neuronal processes and typically have many free, experimentally unconstrained parameters that have to be tuned to a particular data set and, hence, cannot be readily generalized to other experimental paradigms. In this contribution, we propose a set of "first principles" for neurally inspired cognitive modeling of memory retrieval that has no biologically unconstrained parameters and can be analyzed mathematically both at neuronal and cognitive levels. We apply this framework to the classical cognitive paradigm of free recall. We show that the resulting model accounts well for puzzling behavioral data on human participants and makes predictions that could potentially be tested with neurophysiological recording techniques.

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11/25/25 | Memory traces bias new learning for hippocampal generalization
Qian FK, Li G, Lipshutz D, Romani S, Magee JC
bioRxiv. 2025 Nov 25:. doi: 10.1101/2025.11.24.690297

The ability to use generalized prior experience to guide behavior in novel situations is a fundamental cognitive function. While recent evidence suggests that the hippocampus supports generalization how this is accomplished is poorly understood. Here we combined longitudinal optical imaging in head-fixed mice with computational modeling to examine generalization in hippocampal area CA1. We found that prior training accelerated behavioral adaptation to a novel environment and that this was accompanied by highly stable hippocampal representations. We identified putative memory traces from prior experience that enabled this generalization at multiple levels. At the population level, novel-context network dynamics rapidly aligned with low-dimensional neural subspaces established during prior experience. At the cellular level, spatially-informative weak "residual" activity reflecting generalizable information about the task structure appeared to bias which neurons form place fields (PFs) and where via behavioral timescale synaptic plasticity (BTSP). Finally, this was an active process as many PFs changed their reference frame in the novel environment to reflect the consistent task structure. In sum, the influence of memory traces on new PF formation may allow past experience to guide new learning such that representations are based on generalizable features, thus enabling rapid adaptive behavior in new contexts.

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04/10/23 | Mental navigation and telekinesis with a hippocampal map-based brain-machine interface
Chongxi Lai , Shinsuke Tanaka , Timothy D. Harris , Albert K. Lee
bioRxiv. 2023 Apr 10:. doi: 10.1101/2023.04.07.536077

The hippocampus is critical for recollecting and imagining experiences. This is believed to involve voluntarily drawing from hippocampal memory representations of people, events, and places, including the hippocampus’ map-like representations of familiar environments. However, whether the representations in such “cognitive maps” can be volitionally and selectively accessed is unknown. We developed a brain-machine interface to test if rats could control their hippocampal activity in a flexible, goal-directed, model-based manner. We show that rats can efficiently navigate or direct objects to arbitrary goal locations within a virtual reality arena solely by activating and sustaining appropriate hippocampal representations of remote places. This should provide insight into the mechanisms underlying episodic memory recall, mental simulation/planning, and imagination, and open up possibilities for high-level neural prosthetics utilizing hippocampal representations.

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11/01/90 | Merrill C. Sosman lecture. Drugs, behavior, and brain chemistry.
Wagner HN
American Journal of Roentgenology. 1990 Nov;155(5):925-31
05/31/22 | Mesolimbic dopamine adapts the rate of learning from action.
Luke T. Coddington , Sarah E. Lindo , Joshua T. Dudman
bioRxiv. 2022 May 31:. doi: 10.1101/2021.05.31.446464

Recent success in training artificial agents and robots derives from a combination of direct learning of behavioral policies and indirect learning via value functions. Policy learning and value learning employ distinct algorithms that optimize behavioral performance and reward prediction, respectively. In animals, behavioral learning and the role of mesolimbic dopamine signaling have been extensively evaluated with respect to reward prediction; however, to date there has been little consideration of how direct policy learning might inform our understanding. Here we used a comprehensive dataset of orofacial and body movements to understand how behavioral policies evolve as naive, head-restrained mice learned a trace conditioning paradigm. Individual differences in initial dopaminergic reward responses correlated with the emergence of learned behavioral policy, but not the emergence of putative value encoding for a predictive cue. Likewise, physiologically-calibrated manipulations of mesolimbic dopamine produced multiple effects inconsistent with value learning but predicted by a neural network-based model that used dopamine signals to set an adaptive rate, not an error signal, for behavioral policy learning. This work provides strong evidence that phasic dopamine activity can regulate direct learning of behavioral policies, expanding the explanatory power of reinforcement learning models for animal learning.

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01/18/23 | Mesolimbic dopamine adapts the rate of learning from action.
Coddington LT, Lindo SE, Dudman JT
Nature. 2023 Jan 18:. doi: 10.1038/s41586-022-05614-z

Recent success in training artificial agents and robots derives from a combination of direct learning of behavioural policies and indirect learning through value functions. Policy learning and value learning use distinct algorithms that optimize behavioural performance and reward prediction, respectively. In animals, behavioural learning and the role of mesolimbic dopamine signalling have been extensively evaluated with respect to reward prediction; however, so far there has been little consideration of how direct policy learning might inform our understanding. Here we used a comprehensive dataset of orofacial and body movements to understand how behavioural policies evolved as naive, head-restrained mice learned a trace conditioning paradigm. Individual differences in initial dopaminergic reward responses correlated with the emergence of learned behavioural policy, but not the emergence of putative value encoding for a predictive cue. Likewise, physiologically calibrated manipulations of mesolimbic dopamine produced several effects inconsistent with value learning but predicted by a neural-network-based model that used dopamine signals to set an adaptive rate, not an error signal, for behavioural policy learning. This work provides strong evidence that phasic dopamine activity can regulate direct learning of behavioural policies, expanding the explanatory power of reinforcement learning models for animal learning.

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10/04/24 | Mesoscale chromatin confinement facilitates target search of pioneer transcription factors in live cells
Wang Z, Wang B, Niu D, Yin C, Bi Y, Cattoglio C, Loh KM, Lavis LD, Ge H, Deng W
Nat. Struct. Mol. Biol.. 2024 Oct 04:. doi: 10.1038/s41594-024-01385-5

Pioneer transcription factors (PTFs) possess the unique capability to access closed chromatin regions and initiate cell fate changes, yet the underlying mechanisms remain elusive. Here, we characterized the single-molecule dynamics of PTFs targeting chromatin in living cells, revealing a notable 'confined target search' mechanism. PTFs such as FOXA1, FOXA2, SOX2, OCT4 and KLF4 sampled chromatin more frequently than non-PTF MYC, alternating between fast free diffusion in the nucleus and slower confined diffusion within mesoscale zones. Super-resolved microscopy showed closed chromatin organized as mesoscale nucleosome-dense domains, confining FOXA2 diffusion locally and enriching its binding. We pinpointed specific histone-interacting disordered regions, distinct from DNA-binding domains, crucial for confined target search kinetics and pioneer activity within closed chromatin. Fusion to other factors enhanced pioneer activity. Kinetic simulations suggested that transient confinement could increase target association rate by shortening search time and binding repeatedly. Our findings illuminate how PTFs recognize and exploit closed chromatin organization to access targets, revealing a pivotal aspect of gene regulation.

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10/16/25 | Mesoscale volumetric fluorescence imaging at nanoscale resolution by photochemical sectioning
Wei Wang , Xiongtao Ruan , Gaoxiang Liu , Daniel E. Milkie , Wenping Li , Eric Betzig , Srigokul Upadhyayula , Ruixuan Gao
Science. 2025 Oct 16;390:eadr9109. doi: 10.1126/science.adr9109

Optical nanoscopy of intact biological specimens has been transformed by recent advancements in hydrogel-based tissue clearing and expansion, enabling the imaging of cellular and subcellular structures with molecular contrast. However, existing high-resolution fluorescence microscopes are physically limited by objective-to-specimen distance, which prevents the study of whole-mount specimens without physical sectioning. To address this challenge, we developed a photochemical strategy for spatially precise sectioning of specimens. By combining serial photochemical sectioning with lattice light-sheet imaging and petabyte-scale computation, we imaged and reconstructed axons and myelin sheaths across entire mouse olfactory bulbs at nanoscale resolution. An olfactory bulb–wide analysis of myelinated and unmyelinated axons revealed distinctive patterns of axon degeneration and de-/dysmyelination in the neurodegenerative brain, highlighting the potential for peta- to exabyte-scale super-resolution studies using this approach. High-resolution microscopes have a short working distance, making it difficult to see deep within large biological samples such as an intact brain. Slicing the tissue with a blade can reach deeper, but this often distorts or destroys the fine structures that scientists want to study. By embedding a sample in a light-sensitive hydrogel, Wang et al. demonstrated a gentler approach using a precise ray or sheet of light to dissolve or cut away tissue layer by layer. After each layer is removed, the newly exposed surface is imaged, allowing for a complete, high-resolution, three-dimensional reconstruction without damaging physical contact. 

 

bioRxiv preprint: https://www.biorxiv.org/content/10.1101/2024.08.01.605857v1

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