TopicNeuroscience
Content Overview
75Total items
40ePosters
33Seminars
2Positions

Latest

PositionNeuroscience

Geoffrey J Goodhill

Washington University School of Medicine
St. Louis, MO
Feb 9, 2026

An NIH-funded collaboration between David Prober (Caltech), Thai Truong (USC) and Geoff Goodhill (Washington University in St Louis) aims to gain new insight into the neural circuits underlying sleep, through a combination of whole-brain neural recordings in zebrafish and theoretical/computational modeling. A postdoc position is available in the Goodhill lab to contribute to the modeling and computational analysis components. Using novel 2-photon imaging technologies Prober and Truong are recording from the entire larval zebrafish brain at single-neuron resolution continuously for long periods of time, examining neural circuit activity during normal day-night cycles and in response to genetic and pharmacological perturbations. The Goodhill lab is analyzing the resulting huge datasets using a variety of sophisticated computational approaches, and using these results to build new theoretical models that reveal how neural circuits interact to govern sleep.

PositionNeuroscience

Professor Geoffrey J Goodhill

Department of Neuroscience, Washington University School of Medicine
Washington University School of Medicine, 660 S. Euclid Avenue, St. Louis, MO 63110
Feb 9, 2026

The Department of Neuroscience at Washington University School of Medicine is currently recruiting investigators with the passion to create knowledge, pursue bold visions, and challenge canonical thinking as we expand into our new 600,000 sq ft purpose-built neurosciences research building. We are now seeking a tenure-track investigator at the level of Assistant Professor to develop an innovative research program in Theoretical/Computational Neuroscience. The successful candidates will join a thriving theoretical/computational neuroscience community at Washington University, including the new Center for Theoretical and Computational Neuroscience. In addition, the Department also has world-class research strengths in systems, circuits and behavior, cellular and molecular neuroscience using a variety of animal models including worms, flies, zebrafish, rodents and non-human primates. We are particularly interested in outstanding researchers who are both creative and collaborative.

SeminarNeuroscience

Brain-Wide Compositionality and Learning Dynamics in Biological Agents

Kanaka Rajan
Harvard Medical School
Nov 13, 2024

Biological agents continually reconcile the internal states of their brain circuits with incoming sensory and environmental evidence to evaluate when and how to act. The brains of biological agents, including animals and humans, exploit many evolutionary innovations, chiefly modularity—observable at the level of anatomically-defined brain regions, cortical layers, and cell types among others—that can be repurposed in a compositional manner to endow the animal with a highly flexible behavioral repertoire. Accordingly, their behaviors show their own modularity, yet such behavioral modules seldom correspond directly to traditional notions of modularity in brains. It remains unclear how to link neural and behavioral modularity in a compositional manner. We propose a comprehensive framework—compositional modes—to identify overarching compositionality spanning specialized submodules, such as brain regions. Our framework directly links the behavioral repertoire with distributed patterns of population activity, brain-wide, at multiple concurrent spatial and temporal scales. Using whole-brain recordings of zebrafish brains, we introduce an unsupervised pipeline based on neural network models, constrained by biological data, to reveal highly conserved compositional modes across individuals despite the naturalistic (spontaneous or task-independent) nature of their behaviors. These modes provided a scaffolding for other modes that account for the idiosyncratic behavior of each fish. We then demonstrate experimentally that compositional modes can be manipulated in a consistent manner by behavioral and pharmacological perturbations. Our results demonstrate that even natural behavior in different individuals can be decomposed and understood using a relatively small number of neurobehavioral modules—the compositional modes—and elucidate a compositional neural basis of behavior. This approach aligns with recent progress in understanding how reasoning capabilities and internal representational structures develop over the course of learning or training, offering insights into the modularity and flexibility in artificial and biological agents.

SeminarNeuroscienceRecording

Human and Zebrafish retinal circuits: similarities in day and night

Takeshi Yoshimatsu
University of Washington, St. Louis
Jun 12, 2023
SeminarNeuroscience

The Geometry of Decision-Making

Iain Couzin
University of Konstanz, Germany
May 24, 2023

Running, swimming, or flying through the world, animals are constantly making decisions while on the move—decisions that allow them to choose where to eat, where to hide, and with whom to associate. Despite this most studies have considered only on the outcome of, and time taken to make, decisions. Motion is, however, crucial in terms of how space is represented by organisms during spatial decision-making. Employing a range of new technologies, including automated tracking, computational reconstruction of sensory information, and immersive ‘holographic’ virtual reality (VR) for animals, experiments with fruit flies, locusts and zebrafish (representing aerial, terrestrial and aquatic locomotion, respectively), I will demonstrate that this time-varying representation results in the emergence of new and fundamental geometric principles that considerably impact decision-making. Specifically, we find that the brain spontaneously reduces multi-choice decisions into a series of abrupt (‘critical’) binary decisions in space-time, a process that repeats until only one option—the one ultimately selected by the individual—remains. Due to the critical nature of these transitions (and the corresponding increase in ‘susceptibility’) even noisy brains are extremely sensitive to very small differences between remaining options (e.g., a very small difference in neuronal activity being in “favor” of one option) near these locations in space-time. This mechanism facilitates highly effective decision-making, and is shown to be robust both to the number of options available, and to context, such as whether options are static (e.g. refuges) or mobile (e.g. other animals). In addition, we find evidence that the same geometric principles of decision-making occur across scales of biological organisation, from neural dynamics to animal collectives, suggesting they are fundamental features of spatiotemporal computation.

SeminarNeuroscience

Microbial modulation of zebrafish behavior and brain development

Judith S. Eisen
University of Oregon
May 16, 2023

There is growing recognition that host-associated microbiotas modulate intrinsic neurodevelopmental programs including those underlying human social behavior. Despite this awareness, the fundamental processes are generally not understood. We discovered that the zebrafish microbiota is necessary for normal social behavior. By examining neuronal correlates of behavior, we found that the microbiota restrains neurite complexity and targeting of key forebrain neurons within the social behavior circuitry. The microbiota is also necessary for both localization and molecular functions of forebrain microglia, brain-resident phagocytes that remodel neuronal arbors. In particular, the microbiota promotes expression of complement signaling pathway components important for synapse remodeling. Our work provides evidence that the microbiota modulates zebrafish social behavior by stimulating microglial remodeling of forebrain circuits during early neurodevelopment and suggests molecular pathways for therapeutic interventions during atypical neurodevelopment.

SeminarNeuroscienceRecording

Nature over Nurture: Functional neuronal circuits emerge in the absence of developmental activity

Dániel L. Barabási
Engert lab, MCB Harvard University
Apr 5, 2023

During development, the complex neuronal circuitry of the brain arises from limited information contained in the genome. After the genetic code instructs the birth of neurons, the emergence of brain regions, and the formation of axon tracts, it is believed that neuronal activity plays a critical role in shaping circuits for behavior. Current AI technologies are modeled after the same principle: connections in an initial weight matrix are pruned and strengthened by activity-dependent signals until the network can sufficiently generalize a set of inputs into outputs. Here, we challenge these learning-dominated assumptions by quantifying the contribution of neuronal activity to the development of visually guided swimming behavior in larval zebrafish. Intriguingly, dark-rearing zebrafish revealed that visual experience has no effect on the emergence of the optomotor response (OMR). We then raised animals under conditions where neuronal activity was pharmacologically silenced from organogenesis onward using the sodium-channel blocker tricaine. Strikingly, after washout of the anesthetic, animals performed swim bouts and responded to visual stimuli with 75% accuracy in the OMR paradigm. After shorter periods of silenced activity OMR performance stayed above 90% accuracy, calling into question the importance and impact of classical critical periods for visual development. Detailed quantification of the emergence of functional circuit properties by brain-wide imaging experiments confirmed that neuronal circuits came ‘online’ fully tuned and without the requirement for activity-dependent plasticity. Thus, contrary to what you learned on your mother's knee, complex sensory guided behaviors can be wired up innately by activity-independent developmental mechanisms.

SeminarNeuroscienceRecording

Off the rails - how pathological patterns of whole brain activity emerge in epileptic seizures

Richard Rosch
King's College London
Mar 15, 2023

In most brains across the animal kingdom, brain dynamics can enter pathological states that are recognisable as epileptic seizures. Yet usually, brain operate within certain constraints given through neuronal function and synaptic coupling, that will prevent epileptic seizure dynamics from emerging. In this talk, I will bring together different approaches to identifying how networks in the broadest sense shape brain dynamics. Using illustrative examples from intracranial EEG recordings, disorders characterised by molecular disruption of a single neurotransmitter receptor type, to single-cell recordings of whole-brain activity in the larval zebrafish, I will address three key questions - (1) how does the regionally specific composition of synaptic receptors shape ongoing physiological brain activity; (2) how can disruption of this regionally specific balance result in abnormal brain dynamics; and (3) which cellular patterns underly the transition into an epileptic seizure.

SeminarNeuroscience

Motion processing across visual field locations in zebrafish

Aristides Arrenberg
Mar 11, 2023
SeminarNeuroscience

The role of astroglia-neuron interactions in generation and spread of seizures

Emre Yaksi
Kavli Institute for Systems Neuroscience, Norwegian University of Science and technology
Jul 6, 2022

Astroglia-neuron interactions are involved in multiple processes, regulating development, excitability and connectivity of neural circuits. Accumulating number of evidences highlight a direct connection between aberrant astroglial genetics and physiology in various forms of epilepsies. Using zebrafish seizure models, we showed that neurons and astroglia follow different spatiotemporal dynamics during transitions from pre-ictal to ictal activity. We observed that during pre-ictal period neurons exhibit local synchrony and low level of activity, whereas astroglia exhibit global synchrony and high-level of calcium signals that are anti correlated with neural activity. Instead, generalized seizures are marked by a massive release of astroglial glutamate release as well as a drastic increase of astroglia and neuronal activity and synchrony across the entire brain. Knocking out astroglial glutamate transporters leads to recurrent spontaneous generalized seizures accompanied with massive astroglial glutamate release. We are currently using a combination of genetic and pharmacological approaches to perturb astroglial glutamate signalling and astroglial gap junctions to further investigate their role in generation and spreading of epileptic seizures across the brain.

SeminarNeuroscience

The evolution of computation in the brain: Insights from studying the retina

Tom Baden
University of Sussex (UK)
Jun 2, 2022

The retina is probably the most accessible part of the vertebrate central nervous system. Its computational logic can be interrogated in a dish, from patterns of lights as the natural input, to spike trains on the optic nerve as the natural output. Consequently, retinal circuits include some of the best understood computational networks in neuroscience. The retina is also ancient, and central to the emergence of neurally complex life on our planet. Alongside new locomotor strategies, the parallel evolution of image forming vision in vertebrate and invertebrate lineages is thought to have driven speciation during the Cambrian. This early investment in sophisticated vision is evident in the fossil record and from comparing the retina’s structural make up in extant species. Animals as diverse as eagles and lampreys share the same retinal make up of five classes of neurons, arranged into three nuclear layers flanking two synaptic layers. Some retina neuron types can be linked across the entire vertebrate tree of life. And yet, the functions that homologous neurons serve in different species, and the circuits that they innervate to do so, are often distinct to acknowledge the vast differences in species-specific visuo-behavioural demands. In the lab, we aim to leverage the vertebrate retina as a discovery platform for understanding the evolution of computation in the nervous system. Working on zebrafish alongside birds, frogs and sharks, we ask: How do synapses, neurons and networks enable ‘function’, and how can they rearrange to meet new sensory and behavioural demands on evolutionary timescales?

SeminarNeuroscience

Zebrafish models help untangle genetic interactions in motor neuron degeneration

Sorana Ciura
Imagine Institute, Université de Paris
May 31, 2022

Due to high homology to the human genome and rapid development, zebrafish have been successfully used to model diseases of the neuromuscular system. In this seminar, I will present current advances in modeling genetic causes of Amyotrophic Lateral Sclerosis (ALS), the most common motor neuron degeneration and show how epistatic interaction studies in zebrafish have helped elucidate synergistic effects of major ALS genes and their cellular targets.

SeminarNeuroscience

Neural Circuit Dysfunction along the Gut/Brain Axis in zebrafish models of Autism Spectrum Disorder

Julia Dallman
University of Miami
May 11, 2022
SeminarNeuroscience

Inhibitory connectivity and computations in olfaction

Rainer Friedrich
Friedrich Miescher Institute for Biomedical Research
Dec 6, 2021

We use the olfactory system and forebrain of (adult) zebrafish as a model to analyze how relevant information is extracted from sensory inputs, how information is stored in memory circuits, and how sensory inputs inform behavior. A series of recent findings provides evidence that inhibition has not only homeostatic functions in neuronal circuits but makes highly specific, instructive contributions to behaviorally relevant computations in different brain regions. These observations imply that the connectivity among excitatory and inhibitory neurons exhibits essential higher-order structure that cannot be determined without dense network reconstructions. To analyze such connectivity we developed an approach referred to as “dynamical connectomics” that combines 2-photon calcium imaging of neuronal population activity with EM-based dense neuronal circuit reconstruction. In the olfactory bulb, this approach identified specific connectivity among co-tuned cohorts of excitatory and inhibitory neurons that can account for the decorrelation and normalization (“whitening”) of odor representations in this brain region. These results provide a mechanistic explanation for a fundamental neural computation that strictly requires specific network connectivity.

SeminarNeuroscienceRecording

What transcriptomics tells us about retinal development, disease and evolution

Joshua Sanes
Harvard University
Nov 22, 2021

Classification of neurons, long viewed as a fairly boring enterprise, has emerged as a major bottleneck in analysis of neural circuits. High throughput single cell RNA-seq has provided a new way to improve the situation. We initially applied this method to mouse retina, showing that its five neuronal classes (photoreceptors, three groups of interneurons, and retinal ganglion cells) can be divided into 130 discrete types. We then applied the method to other species including human, macaque, zebrafish and chick. With the atlases in hand, we are now using them to address questions about how retinal cell types diversify, how they differ in their responses to injury and disease, and the extent to which cell classes and types are conserved among vertebrates.

SeminarNeuroscienceRecording

The Geometry of Decision-Making

Iain Couzin
Max Planck Institute of Animal Behavior & University of Konstanz
Oct 8, 2021

Choosing among spatially distributed options is a central challenge for animals, from deciding among alternative potential food sources or refuges, to choosing with whom to associate. Here, using an integrated theoretical and experimental approach (employing immersive Virtual Reality), with both invertebrate and vertebrate models—the fruit fly, desert locust and zebrafish—we consider the recursive interplay between movement and collective vectorial integration in the brain during decision-making regarding options (potential ‘targets’) in space. We reveal that the brain repeatedly breaks multi-choice decisions into a series of abrupt (critical) binary decisions in space-time where organisms switch, spontaneously, from averaging vectorial information among, to suddenly excluding one of, the remaining options. This bifurcation process repeats until only one option—the one ultimately selected—remains. Close to each bifurcation the ‘susceptibility’ of the system exhibits a sharp increase, inevitably causing small differences among the remaining options to become amplified; a property that both comes ‘for free’ and is highly desirable for decision-making. This mechanism facilitates highly effective decision-making, and is shown to be robust both to the number of options available, and to context, such as whether options are static (e.g. refuges) or mobile (e.g. other animals). In addition, we find evidence that the same geometric principles of decision-making occur across scales of biological organisation, from neural dynamics to animal collectives, suggesting they are fundamental features of spatiotemporal computation.

SeminarNeuroscienceRecording

Analyzing Retinal Disease Using Electron Microscopic Connectomics

John Dowling
Harvard University
Sep 15, 2021

John DowlingJohn E. Dowling received his AB and PhD from Harvard University. He taught in the Biology Department at Harvard from 1961 to 1964, first as an Instructor, then as assistant professor. In 1964 he moved to Johns Hopkins University, where he held an appointment as associate professor of Ophthalmology and Biophysics. He returned to Harvard as professor of Biology in 1971, was the Maria Moors Cabot Professor of Natural Sciences from 1971-2001, Harvard College professor from 1999-2004 and is presently the Gordon and Llura Gund Professor of Neurosciences. Dowling was chairman of the Biology Department at Harvard from 1975 to 1978 and served as associate dean of the faculty of Arts and Sciences from 1980 to 1984. He was Master of Leverett House at Harvard from 1981-1998 and currently serves as president of the Corporation of The Marine Biological Laboratory in Woods Hole. He is a Fellow of the American Academy of Arts and Sciences, a member of the National Academy of Sciences and a member of the American Philosophical Society. Awards that Dowling received include the Friedenwald Medal from the Association of Research in Ophthalmology and Vision in 1970, the Annual Award of the New England Ophthalmological Society in 1979, the Retinal Research Foundation Award for Retinal Research in 1981, an Alcon Vision Research Recognition Award in 1986, a National Eye Institute's MERIT award in 1987, the Von Sallman Prize in 1992, The Helen Keller Prize for Vision Research in 2000 and the Llura Ligget Gund Award for Lifetime Achievement and Recognition of Contribution to the Foundation Fighting Blindness in 2001. He was granted an honorary MD degree by the University of Lund (Sweden) in 1982 and an honorary Doctor of Laws degree from Dalhousie University (Canada) in 2012. Dowling's research interests have focused on the vertebrate retina as a model piece of the brain. He and his collaborators have long been interested in the functional organization of the retina, studying its synaptic organization, the electrical responses of the retinal neurons, and the mechanisms underlying neurotransmission and neuromodulation in the retina. Dowling became interested in zebrafish as a system in which one could explore the development and genetics of the vertebrate retina about 20 years ago. Part of his research team has focused on retinal development in zebrafish and the role of retinoic acid in early eye and photoreceptor development. A second group has developed behavioral tests to isolate mutations, both recessive and dominant, specific to the visual system.

SeminarNeuroscience

Co-tuned, balanced excitation and inhibition in olfactory memory networks

Claire Meissner-Bernard
Friedrich lab, Friedrich Miescher Institute, Basel, Switzerland
May 20, 2021

Odor memories are exceptionally robust and essential for the survival of many species. In rodents, the olfactory cortex shows features of an autoassociative memory network and plays a key role in the retrieval of olfactory memories (Meissner-Bernard et al., 2019). Interestingly, the telencephalic area Dp, the zebrafish homolog of olfactory cortex, transiently enters a state of precise balance during the presentation of an odor (Rupprecht and Friedrich, 2018). This state is characterized by large synaptic conductances (relative to the resting conductance) and by co-tuning of excitation and inhibition in odor space and in time at the level of individual neurons. Our aim is to understand how this precise synaptic balance affects memory function. For this purpose, we build a simplified, yet biologically plausible spiking neural network model of Dp using experimental observations as constraints: besides precise balance, key features of Dp dynamics include low firing rates, odor-specific population activity and a dominance of recurrent inputs from Dp neurons relative to afferent inputs from neurons in the olfactory bulb. To achieve co-tuning of excitation and inhibition, we introduce structured connectivity by increasing connection probabilities and/or strength among ensembles of excitatory and inhibitory neurons. These ensembles are therefore structural memories of activity patterns representing specific odors. They form functional inhibitory-stabilized subnetworks, as identified by the “paradoxical effect” signature (Tsodyks et al., 1997): inhibition of inhibitory “memory” neurons leads to an increase of their activity. We investigate the benefits of co-tuning for olfactory and memory processing, by comparing inhibitory-stabilized networks with and without co-tuning. We find that co-tuned excitation and inhibition improves robustness to noise, pattern completion and pattern separation. In other words, retrieval of stored information from partial or degraded sensory inputs is enhanced, which is relevant in light of the instability of the olfactory environment. Furthermore, in co-tuned networks, odor-evoked activation of stored patterns does not persist after removal of the stimulus and may therefore subserve fast pattern classification. These findings provide valuable insights into the computations performed by the olfactory cortex, and into general effects of balanced state dynamics in associative memory networks.

SeminarNeuroscienceRecording

A Changing View of Vision: From Molecules to Behavior in Zebrafish

Herwig Baier
Max PLanck Institute
May 3, 2021

All sensory perception and every coordinated movement, as well as feelings, memories and motivation, arise from the bustling activity of many millions of interconnected cells in the brain. The ultimate function of this elaborate network is to generate behavior. We use zebrafish as our experimental model, employing a diverse array of molecular, genetic, optical, connectomic, behavioral and computational approaches. The goal of our research is to understand how neuronal circuits integrate sensory inputs and internal state and convert this information into behavioral responses.

SeminarNeuroscienceRecording

Function and development of neuronal ensembles in zebrafish habenula

Emre Yaksi
Kavli Institute for Systems Neuroscience, NTNU
Apr 15, 2021
SeminarNeuroscienceRecording

How Brain Circuits Function in Health and Disease: Understanding Brain-wide Current Flow

Kanaka Rajan
Icahn School of Medicine at Mount Sinai, New York
Apr 14, 2021

Dr. Rajan and her lab design neural network models based on experimental data, and reverse-engineer them to figure out how brain circuits function in health and disease. They recently developed a powerful framework for tracing neural paths across multiple brain regions— called Current-Based Decomposition (CURBD). This new approach enables the computation of excitatory and inhibitory input currents that drive a given neuron, aiding in the discovery of how entire populations of neurons behave across multiple interacting brain regions. Dr. Rajan’s team has applied this method to studying the neural underpinnings of behavior. As an example, when CURBD was applied to data gathered from an animal model often used to study depression- and anxiety-like behaviors (i.e., learned helplessness) the underlying biology driving adaptive and maladaptive behaviors in the face of stress was revealed. With this framework Dr. Rajan's team probes for mechanisms at work across brain regions that support both healthy and disease states-- as well as identify key divergences from multiple different nervous systems, including zebrafish, mice, non-human primates, and humans.

SeminarNeuroscience

Neural control of motor actions: from whole-brain landscape to millisecond dynamics

Takashi Kawashima
Weizmann Institute
Apr 8, 2021

Animals control motor actions at multiple timescales. We use larval zebrafish and advanced optical microscopy to understand the underlying neural mechanisms. First, we examined the mechanisms of short-term motor learning by using whole-brain neural activity imaging. We found that the 5-HT system integrates the sensory outcome of actions and determines future motor patterns. Second, we established a method for recording spiking activity and membrane potential from a population of neurons during behavior. We identified putative motor command signals and internal copy signals that encode millisecond-scale details of the swimming dynamics. These results demonstrate that zebrafish provide a holistic and mechanistic understanding of the neural basis of motor control in vertebrate brains.

SeminarNeuroscienceRecording

Fish Feelings: Emotional states in larval zebrafish

Florian Engert
Harvard University
Apr 8, 2021

I’ll give an overview of internal - or motivational - states in larval zebrafish. Specifically we will focus on the role of the Oxytocin system in regulating the detection of, and behavioral responses to, conspecifics. The appeal here is that Oxytocin has likely conserved roles across all vertebrates, including humans, and that the larval zebrafish allows us to study some of the general principles across the brain but nonetheless at cellular resolution. This allows us to propose mechanistic models of emotional states.

SeminarNeuroscienceRecording

Inferring brain-wide interactions using data-constrained recurrent neural network models

Matthew Perich
Rajan lab, Icahn School of Medicine at Mount Sinai
Mar 24, 2021

Behavior arises from the coordinated activity of numerous distinct brain regions. Modern experimental tools allow access to neural populations brain-wide, yet understanding such large-scale datasets necessitates scalable computational models to extract meaningful features of inter-region communication. In this talk, I will introduce Current-Based Decomposition (CURBD), an approach for inferring multi-region interactions using data-constrained recurrent neural network models. I will first show that CURBD accurately isolates inter-region currents in simulated networks with known dynamics. I will then apply CURBD to understand the brain-wide flow of information leading to behavioral state transitions in larval zebrafish. These examples will establish CURBD as a flexible, scalable framework to infer brain-wide interactions that are inaccessible from experimental measurements alone.

SeminarNeuroscienceRecording

Young IBRO NextInNeuro Webinar - The retinal basis of colour vision: from fish to humans

Tom Baden
University of Sussex
Mar 19, 2021

Colour vision is based on circuit-level comparison of the signals from spectral distinct types of photoreceptors. In our own eyes, the presence of three types of cones enable trichromatic colour vision. However, many phylogenetically ‘older’ vertebrates have four or more cone types, and in almost all their cases the circuits that enable tetra- or possibly even pentachromatic colour vision are not known. This includes the majority of birds, reptiles, amphibians, and bony fish. In the lab we study neuronal circuits for colour vision in non-mammalian vertebrates, with a focus on zebrafish, a tetrachromatic surface dwelling species of teleost. I will discuss how in the case of zebrafish, retinal colour computations are implemented in a fundamentally different, and probably much more efficient way compared to how they are thought to work in humans. I will then highlight how these fish circuits might be linked with those in mammals, possibly providing a new way of thinking about how circuits for colour vision are organized in vertebrates.

SeminarNeuroscienceRecording

Untangling brain wide current flow using neural network models

Kanaka Rajan
Mount Sinai
Mar 12, 2021

Rajanlab designs neural network models constrained by experimental data, and reverse engineers them to figure out how brain circuits function in health and disease. Recently, we have been developing a powerful new theory-based framework for “in-vivo tract tracing” from multi-regional neural activity collected experimentally. We call this framework CURrent-Based Decomposition (CURBD). CURBD employs recurrent neural networks (RNNs) directly constrained, from the outset, by time series measurements acquired experimentally, such as Ca2+ imaging or electrophysiological data. Once trained, these data-constrained RNNs let us infer matrices quantifying the interactions between all pairs of modeled units. Such model-derived “directed interaction matrices” can then be used to separately compute excitatory and inhibitory input currents that drive a given neuron from all other neurons. Therefore different current sources can be de-mixed – either within the same region or from other regions, potentially brain-wide – which collectively give rise to the population dynamics observed experimentally. Source de-mixed currents obtained through CURBD allow an unprecedented view into multi-region mechanisms inaccessible from measurements alone. We have applied this method successfully to several types of neural data from our experimental collaborators, e.g., zebrafish (Deisseroth lab, Stanford), mice (Harvey lab, Harvard), monkeys (Rudebeck lab, Sinai), and humans (Rutishauser lab, Cedars Sinai), where we have discovered both directed interactions brain wide and inter-area currents during different types of behaviors. With this powerful framework based on data-constrained multi-region RNNs and CURrent Based Decomposition (CURBD), we ask if there are conserved multi-region mechanisms across different species, as well as identify key divergences.

SeminarNeuroscienceRecording

Emergence of long time scales in data-driven network models of zebrafish activity

Remi Monasson
CNRS
Feb 10, 2021

How can neural networks exhibit persistent activity on time scales much larger than allowed by cellular properties? We address this question in the context of larval zebrafish, a model vertebrate that is accessible to brain-scale neuronal recording and high-throughput behavioral studies. We study in particular the dynamics of a bilaterally distributed circuit, the so-called ARTR, including hundreds neurons. ARTR exhibits slow antiphasic alternations between its left and right subpopulations, which can be modulated by the water temperature, and drive the coordinated orientation of swim bouts, thus organizing the fish spatial exploration. To elucidate the mechanism leading to the slow self-oscillation, we train a network graphical model (Ising) on neural recordings. Sampling the inferred model allows us to generate synthetic oscillatory activity, whose features correctly capture the observed dynamics. A mean-field analysis of the inferred model reveals the existence several phases; activated crossing of the barriers in between those phases controls the long time scales present in the network oscillations. We show in particular how the barrier heights and the nature of the phases vary with the water temperature.

SeminarNeuroscienceRecording

Inferring brain-wide current flow using data-constrained neural network models

Kanaka Rajan
Icahn School of Medicine at Mount Sinai
Nov 18, 2020

Rajanlab designs neural network models constrained by experimental data, and reverse engineers them to figure out how brain circuits function in health and disease. Recently, we have been developing a powerful new theory-based framework for “in-vivo tract tracing” from multi-regional neural activity collected experimentally. We call this framework CURrent-Based Decomposition (CURBD). CURBD employs recurrent neural networks (RNNs) directly constrained, from the outset, by time series measurements acquired experimentally, such as Ca2+ imaging or electrophysiological data. Once trained, these data-constrained RNNs let us infer matrices quantifying the interactions between all pairs of modeled units. Such model-derived “directed interaction matrices” can then be used to separately compute excitatory and inhibitory input currents that drive a given neuron from all other neurons. Therefore different current sources can be de-mixed – either within the same region or from other regions, potentially brain-wide – which collectively give rise to the population dynamics observed experimentally. Source de-mixed currents obtained through CURBD allow an unprecedented view into multi-region mechanisms inaccessible from measurements alone. We have applied this method successfully to several types of neural data from our experimental collaborators, e.g., zebrafish (Deisseroth lab, Stanford), mice (Harvey lab, Harvard), monkeys (Rudebeck lab, Sinai), and humans (Rutishauser lab, Cedars Sinai), where we have discovered both directed interactions brain wide and inter-area currents during different types of behaviors. With this framework based on data-constrained multi-region RNNs and CURrent Based Decomposition (CURBD), we can ask if there are conserved multi-region mechanisms across different species, as well as identify key divergences.

SeminarNeuroscienceRecording

Cones with character: An in vivo circuit implementation of efficient coding

Tom Baden
University of Sussex
Nov 10, 2020

In this talk I will summarize some of our recent unpublished work on spectral coding in the larval zebrafish retina. Combining 2p imaging, hyperspectral stimulation, computational modeling and connectomics, we take a renewed look at the spectral tuning of cone photoreceptors in the live eye. We find that already cones optimally rotate natural colour space in a PCA-like fashion to disambiguate greyscale from "colour" information. We then follow this signal through the retinal layers and ultimately into the brain to explore the major spectral computations performed by the visual system at its consecutive stages. We find that by and large, zebrafish colour vision can be broken into three major spectral zones: long wavelength grey-scale-like vision, short-wavelength prey capture circuits, and spectrally diverse mid-wavelength circuits which possibly support the bulk of "true colour vision" in this tetrachromate vertebrate.

SeminarNeuroscienceRecording

Motion processing across visual field locations in zebrafish

Aristides Arrenberg
University of Tuebingen
Sep 28, 2020

Animals are able to perceive self-motion and navigate in their environment using optic flow information. They often perform visually guided stabilization behaviors like the optokinetic (OKR) or optomotor response (OMR) in order to maintain their eye and body position relative to the moving surround. But how does the animal manage to perform appropriate behavioral response and how are processing tasks divided between the various non-cortical visual brain areas? Experiments have shown that the zebrafish pretectum, which is homologous to the mammalian accessory optic system, is involved in the OKR and OMR. The optic tectum (superior colliculus in mammals) is involved in processing of small stimuli, e.g. during prey capture. We have previously shown that many pretectal neurons respond selectively to rotational or translational motion. These neurons are likely detectors for specific optic flow patterns and mediate behavioral choices of the animal based on optic flow information. We investigate the motion feature extraction of brain structures that receive input from retinal ganglion cells to identify the visual computations that underlie behavioral decisions during prey capture, OKR, OMR and other visually mediate behaviors. Our study of receptive fields shows that receptive field sizes in pretectum (large) and tectum (small) are very different and that pretectal responses are diverse and anatomically organized. Since calcium indicators are slow and receptive fields for motion stimuli are difficult to measure, we also develop novel stimuli and statistical methods to infer the neuronal computations of visual brain areas.

SeminarNeuroscienceRecording

Dynamic computation in the retina by retuning of neurons and synapses

Leon Lagnado
University of Sussex
Sep 16, 2020

How does a circuit of neurons process sensory information? And how are transformations of neural signals altered by changes in synaptic strength? We investigate these questions in the context of the visual system and the lateral line of fish. A distinguishing feature of our approach is the imaging of activity across populations of synapses – the fundamental elements of signal transfer within all brain circuits. A guiding hypothesis is that the plasticity of neurotransmission plays a major part in controlling the input-output relation of sensory circuits, regulating the tuning and sensitivity of neurons to allow adaptation or sensitization to particular features of the input. Sensory systems continuously adjust their input-output relation according to the recent history of the stimulus. A common alteration is a decrease in the gain of the response to a constant feature of the input, termed adaptation. For instance, in the retina, many of the ganglion cells (RGCs) providing the output produce their strongest responses just after the temporal contrast of the stimulus increases, but the response declines if this input is maintained. The advantage of adaptation is that it prevents saturation of the response to strong stimuli and allows for continued signaling of future increases in stimulus strength. But adaptation comes at a cost: a reduced sensitivity to a future decrease in stimulus strength. The retina compensates for this loss of information through an intriguing strategy: while some RGCs adapt following a strong stimulus, a second population gradually becomes sensitized. We found that the underlying circuit mechanisms involve two opposing forms of synaptic plasticity in bipolar cells: synaptic depression causes adaptation and facilitation causes sensitization. Facilitation is in turn caused by depression in inhibitory synapses providing negative feedback. These opposing forms of plasticity can cause simultaneous increases and decreases in contrast-sensitivity of different RGCs, which suggests a general framework for understanding the function of sensory circuits: plasticity of both excitatory and inhibitory synapses control dynamic changes in tuning and gain.

SeminarNeuroscienceRecording

A mechanosensory system in the spinal cord for posture, morphogenesis & innate immunity

Claire Wyart
Institut du Cerveau (ICM), Sorbonne Universités
Sep 3, 2020
SeminarNeuroscience

Computational models of neural development

Geoffrey J. Goodhill
The University of Queensland
Jul 21, 2020

Unlike even the most sophisticated current forms of artificial intelligence, developing biological organisms must build their neural hardware from scratch. Furthermore they must start to evade predators and find food before this construction process is complete. I will discuss an interdisciplinary program of mathematical and experimental work which addresses some of the computational principles underlying neural development. This includes (i) how growing axons navigate to their targets by detecting and responding to molecular cues in their environment, (ii) the formation of maps in the visual cortex and how these are influenced by visual experience, and (iii) how patterns of neural activity in the zebrafish brain develop to facilitate precisely targeted hunting behaviour. Together this work contributes to our understanding of both normal neural development and the etiology of neurodevelopmental disorders.

SeminarNeuroscienceRecording

Understanding the visual demands of underwater habitats for aquatic animals used in neuroscience research

Tod Thiele and Dr. Emily Cooper
Tod Thiele: University of Toronto Scarborough; Emily Cooper: University of California, Berkeley
Jul 10, 2020

Zebrafish and cichlids are popular models in visual neuroscience, due to their amenability to advanced research tools and their diverse set of visually guided behaviours. It is often asserted that animals’ neural systems are adapted to the statistical regularities in their natural environments, but relatively little is known about the visual spatiotemporal features in the underwater habitats that nurtured these fish. To address this gap, we have embarked on an examination of underwater habitats in northeastern India and Lake Tanganyika (Zambia), where zebrafish and cichlids are native. In this talk, we will describe the methods used to conduct a series of field measurements and generate a large and diverse dataset of these underwater habitats. We will present preliminary results suggesting that the demands for visually-guided navigation differ between these underwater habitats and the terrestrial habitats characteristic of other model species.

SeminarNeuroscience

How the brain comes to balance: Development of postural stability and its neural architecture in larval zebrafish

David Schoppik
New York University Grossman School of Medicine
Jul 2, 2020

Maintaining posture is a vital challenge for all freely-moving organisms. As animals grow, their relationship to destabilizing physical forces changes. How does the nervous system deal with this ongoing challenge? Vertebrates use highly conserved vestibular reflexes to stabilize the body. We established the larval zebrafish as a new model system to understand the development of the vestibular reflexes responsible for balance. In this talk, I will begin with the biophysical challenges facing baby fish as they learn to swim. I’ll briefly review published work by David Ehrlich, Ph.D., establishing a fundamental relationship between postural stability and locomotion. The bulk of the talk will highlight unpublished work by Kyla Hamling. She discovered that a small (~50) population of molecularly-defined brainstem neurons called vestibulo-spinal cells act as a nexus for postural development. Her loss-of-function experiments show that these neurons contribute more to postural stability as animals grow older. I’ll end with brief highlights from her ongoing work examining tilt-evoked responses of these neurons using 2-photon imaging and the consequences of downstream activity in the spinal cord using single-objective light-sheet (SCAPE) microscopy

ePosterNeuroscience

A hindbrain ring attractor network that integrates heading direction in the larval zebrafish

Luigi Petrucco,Hagar Lavian,Vilim Štih,You Kure Wu,Fabian Svara,Ruben Portugues

COSYNE 2022

ePosterNeuroscience

A hindbrain ring attractor network that integrates heading direction in the larval zebrafish

Luigi Petrucco,Hagar Lavian,Vilim Štih,You Kure Wu,Fabian Svara,Ruben Portugues

COSYNE 2022

ePosterNeuroscience

Representations of supra-second time intervals in the cerebellum of larval zebrafish

Sriram Narayanan,Aalok Varma,Vatsala Thirumalai

COSYNE 2022

ePosterNeuroscience

Representations of supra-second time intervals in the cerebellum of larval zebrafish

Sriram Narayanan,Aalok Varma,Vatsala Thirumalai

COSYNE 2022

ePosterNeuroscience

Influence of neuromodulators on brain state transitions in larval zebrafish

Antoine Légaré, Sandrine Poulin, Vincent Boily, Mado Lemieux, Patrick Desrosiers, Paul De Koninck

COSYNE 2023

ePosterNeuroscience

A population code for spatial representation in the larval zebrafish telencephalon

Chuyu Yang, Lorenz Mammen, Byoungsoo Kim, Drew Robson, Jennifer Li

COSYNE 2023

ePosterNeuroscience

The scale-invariant covariance spectrum of brain-wide activity in larval zebrafish

Zezhen Wang, Weihao Mai, Yuming Chai, Chen Shen, Kexin Qi, Yu Hu, Quan Wen

COSYNE 2023

ePosterNeuroscience

Understanding network dynamics of compact assemblies of neurons in zebrafish larvae optic tectum during spontaneous activation

Nicole Sanderson, Carina Curto, Enrique Hansen, Germán Sumbre

COSYNE 2023

ePosterNeuroscience

Functional connectivity constrained simulations of visuomotor circuits in zebrafish

Kaitlyn Fouke, Jacob Morra, Auke Ijspeert, Eva Naumann

COSYNE 2025

ePosterNeuroscience

How internal states shape sensorimotor mapping in zebrafish larvae

Adrien Jouary, Goncalo Oliveira, Miguel Mata, Arlindo Oliveira, Christian Machens, Michael Orger

COSYNE 2025

ePosterNeuroscience

A spiking neuromechanical model of the zebrafish to investigate the role of axial proprioceptive sensory feedback during locomotion

Alessandro Pazzaglia, Andrea Ferrario, Jonathan Arreguit, Laurence Picton, David Madrid, Abdel El Manira, Auke Ijspeert

COSYNE 2025

ePosterNeuroscience

Structural and genetic determinants of zebrafish functional brain networks

Antoine Legare, Mado Lemieux, Vincent Boily, Sandrine Poulin, Arthur Legare, Patrick Desrosiers, Paul De Koninck

COSYNE 2025

ePosterNeuroscience

Abnormal functional connectivity in tectal circuit impairs decoding and behavior in mepc2 mutant zebrafish

Enrique Hansen, Martin Privat, Thomas Pietri, Auriane Duchemin, Sarah Nourin, German Sumbre
ePosterNeuroscience

Acute toxicity of methomyl commercial formulation induces morphological and behavioral changes in larval zebrafish (Danio rerio)

Mauricio R. Bogo, Camilo A. Jablonski, Talita C. Pereira, Lilian D. Teodoro, Stefani Altenhofen, Gabriel Rübensam, Carla D. Bonan
ePosterNeuroscience

Assessment of toxicity caused by exposure to micro/nanoplastics during zebrafish (Danio rerio) early stages development

Luiza W. Kist, Lilian D. Teodoro, Kaue Pelegrini, Thuany G. Maraschin, Camilo A. Jablonski, Talita C. Pereira, Nara R. Basso, Mauricio R. Bogo
ePosterNeuroscience

Behavioral diversity across zebrafish strains occurs at the level of swim sequences

João Marques, Gautam Sridhar, Rita Felix, Claire Wyart, Michael Orger
ePosterNeuroscience

Behavioural strategies and brain-wide neural circuits driving postural control in larval zebrafish

Sharbatanu Chatterjee, Natalia Beiza, Muntasir Callachand, Hippolyte Moulle, Mattéo Dommanget-Kott, Georges Debrégeas, Volker Bormuth
ePosterNeuroscience

A comparative approach in vertebrate neuroscience: the Zebrafish (Danio rerio) and Giant Danio (Devario aequipinnatus)

Pedro Tomás M. Silva, Aaron Ostrovsky, Sabine Renninger, Adrien Jouary, Ruth Diez del Corral, João Marques, Edite Figueiras, Alexandre Laborde, Mariana Sampaio, Adriana Correia, Michael Orger
ePosterNeuroscience

The consequences of concurrent stress and hyperglycemia on redox homeostasis in the adult zebrafish brain

Rhea Subba, Amal C. Mondal
ePosterNeuroscience

Deciphering the differentiation program and function of ependymal cells in the zebrafish brain

Percival Paul M. D’gama, Tao Qiu, Mehmet Ilyas Cosacak, Dheeraj Rayamajhi, Ahsen Konac, Jan N. Hansen, Christa Ringers, Francisca Acuña-Hinrichsen, Subhra Hui, Emilie W Olstad, Yan Ling Chong, Charlton Kang An Lim, Astha Gupta, Chee Peng Ng, Benedikt S . Nilges, Nachiket D. Kashikar Kashikar, Dagmar Wachten, David Lieb, Kazu Kikuchi, Caghan Kizil
ePosterNeuroscience

Deep phenotypic analysis of zebrafish models of Parkinson’s disease

Tanita Maria Tzotzolaki, Olivier Mirat, Claire Wyart, Flavia De Santis, Javier Terriente
ePosterNeuroscience

Defining the functional role of Tbk1 using a novel zebrafish model of Amyotrophic lateral sclerosis (ALS)

Gregoire Haouy, Hortense De Calbiac, Marion Rosello, Filippo Del Bene, Sorana Ciura, Edor Kabashi
ePosterNeuroscience

A delay and trace conditioning paradigm for head-fixed larval zebrafish

Joaquim António Contradanças, Raquel Jacinto, Edite Figueiras, Alexandre Laborde, Joe Paton, Michael Orger
ePosterNeuroscience

Developing zebrafish CRISPR/Cas9 knockout models of Parkinson’s Disease to identify novel therapeutic targets

Jessica Garcia-Fernandez, Laura Lopez-Blanch, Manuel Irimia, Flavia De Santis, Javier Terriente
ePosterNeuroscience

Dorsal raphe modulates the ongoing activity, functional connectivity and sensory responses of zebrafish forebrain circuits

Aytac Kadir Mutlu, Bram Serneels, Christoph Wiest, Ricarda Bardenhewer, Oda Bjørnevik Håheim, Laetitia Lalla, Fabrizio Palumbo, Phong Chau, Emre Yaksi
ePosterNeuroscience

Dynamical entropy in population activity of zebrafish larvae

Joshua Paik, Enrique Hansen, German Sumbre, Carina Curto
ePosterNeuroscience

Early axon guidance and synapse maturation defects in a zebrafish model of Mucopolysaccharidosis type II

Rosa Manzoli, Lorenzo Badenetti, Rosella Tomanin, Enrico Moro
ePosterNeuroscience

Early life chronic stress alters zebrafish dorsal raphe serotonergic neuron responses to subsequent stressor exposure

Florence Kermen, Archana Golla, Paola Cappanna
ePosterNeuroscience

Effects of early social environment on adult zebrafish behaviour – a neuronal and transcriptomic approach

Magda C. Teles, Miguel Correia, Rita Gageiro, Rui F. Oliveira
ePosterNeuroscience

Effects of prenatal exposure to thiacloprid, a neonicotinoid on neuroplasticity in zebrafish and mouse

Kirthana Kunikullaya Ubrangala, Baran Zuzanna, Valentine D. L’estoile, Harry W. Steinbusch, Fatima Smagulova, Thierry D. Charlier
ePosterNeuroscience

The effects of sensory salience on smooth-pursuit tracking performance of zebrafish during rheotaxis

SEVVAL IZEL Solmaz, Orhun Koc, Alp Demirel, Fatmagül İbişoğlu, Ismail Uyanik
ePosterNeuroscience

Embryonic nutritional hyperglycemia inhibits cell proliferation in the zebrafish retina

Ismael Hernández Núñez, María Vivero-López, Ana Quelle Regaldie, Laura Sánchez Piñón, Angel Concheiro, Carmen Álvarez Lorenzo, Eva Candal, Antón Barreiro-Iglesias
ePosterNeuroscience

Evaluation of the role of early neuronal activity on the zebrafish dopaminergic cells development, a transcriptomic study

Michael Demarque
ePosterNeuroscience

A forward genetic screen of ENU-mutagenised zebrafish identifies lines showing deficits in impulse control

Saeedeh Hosseinian, William Havelange, Adele Leggieri, Aleksandra Mech, Munise Merteroglu, Ian Sealy, Elisabeth Busch-Nentwich, Caroline Brennan
ePosterNeuroscience

Genetics of Addiction - Identification of Novel Genetic Variants Associated with Reward Mechanism in Zebrafish

Aleksandra Mech, Munise Merteroglu, William Havelange, Adele Leggieri, Saeedeh Husseinian, Ian Sealy, Elisabeth Busch-Nentwich, Caroline Brennan
ePosterNeuroscience

Guiera senegalensis (Combretaceae) leaves hydroethanolic extract prevents scopolamine-induced cognitive dysfunction by regulating cholinergic and antioxidant systems in zebrafish (Danio rerio)

Jorelle Linda Damo Kamda, Razvan S. Boiangiu, Ion Brinza, Léa Blondelle Kenko Djoumessi, Roland Rebe Nhouma, Balbine Kamleu Nkwingwa, Simon Désiré Guedang Nyayi, Guillaume Camdi Woumitna, Parfait Bourvoune, Eglantine Keugong Wado, Hervé Hervé Ngatanko Abaïssou, Harquin Simplice Foyet, Lucian Hritcu
ePosterNeuroscience

A head-fixed assay for larval zebrafish to study behavioral state changes across multiple timescales

Thomas Soares Mullen, Adrien Jouary, Edite Figueiras, Alexandre Laborde, Joaquim António Contradanças, Michael Orger
ePosterNeuroscience

Imaging neural activity dynamics during gait switching in larval zebrafish

Elena Hindinger, Edite Figueiras, Alexandre Laborde, Adrien Jouary, Michael Orger
ePosterNeuroscience

Inferring brain-wide circuit modules linking structural and functional connectivity in zebrafish larvae

Matteo Bruzzone, Karan K. Manjunatha, Giorgio Nicoletti, Samir Suweis, Marco Dal Maschio
ePosterNeuroscience

To add or to multiply? The ring-attractor network in the zebrafish heading-direction system.

Siyuan Mei, Hagar Lavian, You Wu, Martin Stemmler, Rubén Portugues, Andreas Herz

Bernstein Conference 2024

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