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2470 Janelia Publications

Showing 11-20 of 2470 results
04/25/24 | Connectomic Analysis of Mitochondria in the Central Brain of Drosophila
Patricia K Rivlin , Michal Januszewski , Kit D Longden , Erika Neace , Louis K Scheffer , Christopher Ordish , Jody Clements , Elliott Phillips , Natalie Smith , Satoko Takemura , Lowell Umayam , Claire Walsh , Emily A Yakal , Stephen M Plaza , Stuart Berg
bioRxiv. 2024 Apr 25:. doi: 10.1101/2024.04.21.590464

Mitochondria are an integral part of the metabolism of a neuron. EM images of fly brain volumes, taken for connectomics, contain mitochondria as well as the cells and synapses that have already been reported. Here, from the Drosophila hemibrain dataset, we extract, classify, and measure approximately 6 million mitochondria among roughly 21 thousand neurons of more than 5500 cell types. Each mitochondrion is classified by its appearance - dark and dense, light and sparse, or intermediate - and the location, orientation, and size (in voxels) are annotated. These mitochondria are added to our publicly available data portal, and each synapse is linked to its closest mitochondrion. Using this data, we show quantitative evidence that mitochodrial trafficing extends to the smallest dimensions in neurons. The most basic characteristics of mitochondria - volume, distance from synapses, and color - vary considerably between cell types, and between neurons with different neurotransmitters. We find that polyadic synapses with more post-synaptic densities (PSDs) have closer and larger mitochondria on the pre-synaptic side, but smaller and more distant mitochondria on the PSD side. We note that this relationship breaks down for synapses with only one PSD, suggesting a different role for such synapses.Competing Interest StatementThe authors have declared no competing interest.

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04/25/24 | Expansion of in vitro Toxoplasma gondii cysts using enzymatically enhanced ultrastructure expansion microscopy
Kseniia Bondarenko , Floriane Limoge , Kayvon Pedram , Mathieu Gissot , Joanna C. Young
bioRxiv. 2024 Apr 25:. doi: 10.1101/2024.04.24.590991

Expansion microscopy (ExM) is an innovative approach to achieve super-resolution images without using super-resolution microscopes, based on the physical expansion of the sample. The advent of ExM has unlocked super-resolution imaging for a broader scientific circle, lowering the cost and entry skill requirements to the field. One of its branches, ultrastructure ExM (U-ExM), has become popular among research groups studying Apicomplexan parasites, including the acute stage of Toxoplasma gondii infection. The chronic cyst-forming stage of Toxoplasma, however, resists U-ExM expansion, impeding precise protein localisation. Here, we solve the in vitro cyst’s resistance to denaturation required for successful U-ExM of the encapsulated parasites. As the cyst’s main structural protein CST1 contains a mucin domain, we added an enzymatic digestion step using the pan-mucinase StcE prior to the expansion protocol. This allowed full expansion of the cysts in fibroblasts and primary neuronal cell culture without interference with the epitopes of the cyst-wall associated proteins. Using StcE-enhanced U-ExM, we clarified the shape and location of the GRA2 protein important for establishing a normal cyst. Expanded cysts revealed GRA2 granules spanning across the cyst wall, with a notable presence observed outside on both sides of the CST1-positive layer.

Importance Toxoplasma gondii is an intracellular parasite capable of establishing long-term chronic infection in nearly all warm-blooded animals. During the chronic stage, parasites encapsulate into cysts in a wide range of tissues but particularly in neurons of the central nervous system and in skeletal muscle. Current anti-Toxoplasma drugs do not eradicate chronic parasites and leave behind a reservoir of infection. As the cyst is critical for both transmission and pathology of the disease, we need to understand more fully the biology of the cyst and its vulnerabilities.

The advent of a new super-resolution approach called ultrastructure expansion microscopy allowed in-depth studies of the acute stage of Toxoplasma infection but not the cyst-forming stage, which resists protocol-specific denaturation. Here, we show that an additional step of enzymatic digestion using mucinase StcE allows full expansion of the Toxoplasma cysts, offering a new avenue for a comprehensive examination of the chronic stage of infection using an accessible super-resolution technique.

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04/17/24 | Machine learning reveals the control mechanics of an insect wing hinge
Melis JM, Siwanowicz I, Dickinson MH
Nature. 2024 Apr 17;628(8009):795-803. doi: 10.1038/s41586-024-07293-4

Insects constitute the most species-rich radiation of metazoa, a success that is due to the evolution of active flight. Unlike pterosaurs, birds and bats, the wings of insects did not evolve from legs, but are novel structures that are attached to the body via a biomechanically complex hinge that transforms tiny, high-frequency oscillations of specialized power muscles into the sweeping back-and-forth motion of the wings. The hinge consists of a system of tiny, hardened structures called sclerites that are interconnected to one another via flexible joints and regulated by the activity of specialized control muscles. Here we imaged the activity of these muscles in a fly using a genetically encoded calcium indicator, while simultaneously tracking the three-dimensional motion of the wings with high-speed cameras. Using machine learning, we created a convolutional neural network that accurately predicts wing motion from the activity of the steering muscles, and an encoder-decoder that predicts the role of the individual sclerites on wing motion. By replaying patterns of wing motion on a dynamically scaled robotic fly, we quantified the effects of steering muscle activity on aerodynamic forces. A physics-based simulation incorporating our hinge model generates flight manoeuvres that are remarkably similar to those of free-flying flies. This integrative, multi-disciplinary approach reveals the mechanical control logic of the insect wing hinge, arguably among the most sophisticated and evolutionarily important skeletal structures in the natural world.

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04/30/24 | Mitochondrially-associated actin waves maintain organelle homeostasis and equitable inheritance.
Coscia SM, Moore AS, Wong YC, Holzbaur EL
Curr Opin Cell Biol. 2024 Apr 30;88:102364. doi: 10.1016/j.ceb.2024.102364

First identified in dividing cells as revolving clusters of actin filaments, these are now understood as mitochondrially-associated actin waves that are active throughout the cell cycle. These waves are formed from the polymerization of actin onto a subset of mitochondria. Within minutes, this F-actin depolymerizes while newly formed actin filaments assemble onto neighboring mitochondria. In interphase, actin waves locally fragment the mitochondrial network, enhancing mitochondrial content mixing to maintain organelle homeostasis. In dividing cells actin waves spatially mix mitochondria in the mother cell to ensure equitable partitioning of these organelles between daughter cells. Progress has been made in understanding the consequences of actin cycling as well as the underlying molecular mechanisms, but many questions remain, and here we review these elements. Also, we draw parallels between mitochondrially-associated actin cycling and cortical actin waves. These dynamic systems highlight the remarkable plasticity of the actin cytoskeleton.

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04/06/24 | NMDAR-mediated activation of pannexin1 channels contributes to the detonator properties of hippocampal mossy fiber synapses.
Rangel-Sandoval C, Soula M, Li W, Castillo PE, Hunt DL
iScience. 2024 Apr 06;27(5):109681. doi: 10.1016/j.isci.2024.109681

Pannexins are large-pore ion channels expressed throughout the mammalian brain that participate in various neuropathologies; however, their physiological roles remain obscure. Here, we report that pannexin1 channels (Panx1) can be synaptically activated under physiological recording conditions in rodent acute hippocampal slices. Specifically, NMDA receptor (NMDAR)-mediated responses at the mossy fiber to CA3 pyramidal cell synapse were followed by a slow postsynaptic inward current that could activate CA3 pyramidal cells but was absent in Panx1 knockout mice. Immunoelectron microscopy revealed that Panx1 was localized near the postsynaptic density. Further, Panx1-mediated currents were potentiated by metabotropic receptors and bidirectionally modulated by burst-timing-dependent plasticity of NMDAR-mediated transmission. Lastly, Panx1 channels were preferentially recruited when NMDAR activation enters a supralinear regime, resulting in temporally delayed burst-firing. Thus, Panx1 can contribute to synaptic amplification and broadening the temporal associativity window for co-activated pyramidal cells, thereby supporting the auto-associative functions of the CA3 region.

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04/25/24 | Optimization in Visual Motion Estimation.
Clark DA, Fitzgerald JE
Annu Rev Vis Sci. 2024 Apr 25:. doi: 10.1146/annurev-vision-101623-025432

Sighted animals use visual signals to discern directional motion in their environment. Motion is not directly detected by visual neurons, and it must instead be computed from light signals that vary over space and time. This makes visual motion estimation a near universal neural computation, and decades of research have revealed much about the algorithms and mechanisms that generate directional signals. The idea that sensory systems are optimized for performance in natural environments has deeply impacted this research. In this article, we review the many ways that optimization has been used to quantitatively model visual motion estimation and reveal its underlying principles. We emphasize that no single optimization theory has dominated the literature. Instead, researchers have adeptly incorporated different computational demands and biological constraints that are pertinent to the specific brain system and animal model under study. The successes and failures of the resulting optimization models have thereby provided insights into how computational demands and biological constraints together shape neural computation.

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05/01/24 | Recognising the importance and impact of Imaging Scientists: Global guidelines for establishing career paths within core facilities
Wright GD, Thompson KA, Reis Y, Bischof J, Hockberger PE, Itano MS, Yen L, Adelodun ST, Bialy N, Brown CM, Chaabane L, Chew T, Chitty AI, Cordelières FP, De Niz M, Ellenberg J, Engelbrecht L, Fabian-Morales E, Fazeli E, Fernandez-Rodriguez J, Ferrando-May E, Fletcher G, Galloway GJ, Guerrero A, Guimarães JM, Jacobs CA, Jayasinghe S, Kable E, Kitten GT, Komoto S, Ma X, Marques JA, Millis BA, Miranda K, JohnO'Toole P, Olatunji SY, Paina F, Pollak CN, Prats C, Pylvänäinen JW, Rahmoon MA, Reiche MA, Riches JD, Rossi AH, Salamero J, Thiriet C, Terjung S, Vasconcelos AD, Keppler A
J Microsc. 2024 May 01:. doi: 10.1111/jmi.13307

In the dynamic landscape of scientific research, imaging core facilities are vital hubs propelling collaboration and innovation at the technology development and dissemination frontier. Here, we present a collaborative effort led by Global BioImaging (GBI), introducing international recommendations geared towards elevating the careers of Imaging Scientists in core facilities. Despite the critical role of Imaging Scientists in modern research ecosystems, challenges persist in recognising their value, aligning performance metrics and providing avenues for career progression and job security. The challenges encompass a mismatch between classic academic career paths and service-oriented roles, resulting in a lack of understanding regarding the value and impact of Imaging Scientists and core facilities and how to evaluate them properly. They further include challenges around sustainability, dedicated training opportunities and the recruitment and retention of talent. Structured across these interrelated sections, the recommendations within this publication aim to propose globally applicable solutions to navigate these challenges. These recommendations apply equally to colleagues working in other core facilities and research institutions through which access to technologies is facilitated and supported. This publication emphasises the pivotal role of Imaging Scientists in advancing research programs and presents a blueprint for fostering their career progression within institutions all around the world.

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04/22/24 | A Bayesian Solution to Count the Number of Molecules within a Diffraction Limited Spot
Alexander Hillsley , Johannes Stein , Paul W. Tillberg , David L. Stern , Jan Funke
bioRxiv. 2024 Apr 22:. doi: 10.1101/2024.04.18.590066

We address the problem of inferring the number of independently blinking fluorescent light emitters, when only their combined intensity contributions can be observed at each timepoint. This problem occurs regularly in light microscopy of objects that are smaller than the diffraction limit, where one wishes to count the number of fluorescently labelled subunits. Our proposed solution directly models the photo-physics of the system, as well as the blinking kinetics of the fluorescent emitters as a fully differentiable hidden Markov model. Given a trace of intensity over time, our model jointly estimates the parameters of the intensity distribution per emitter, their blinking rates, as well as a posterior distribution of the total number of fluorescent emitters. We show that our model is consistently more accurate and increases the range of countable subunits by a factor of two compared to current state-of-the-art methods, which count based on autocorrelation and blinking frequency, Further-more, we demonstrate that our model can be used to investigate the effect of blinking kinetics on counting ability, and therefore can inform experimental conditions that will maximize counting accuracy.

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04/17/24 | Hippocampal cholecystokinin-expressing interneurons regulate temporal coding and contextual learning
Rangel Guerrero DK, Balueva K, Barayeu U, Baracskay P, Gridchyn I, Nardin M, Roth CN, Wulff P, Csicsvari J
Neuron. 2024 Apr 17:. doi: 10.1016/j.neuron.2024.03.019

Cholecystokinin-expressing interneurons (CCKIs) are hypothesized to shape pyramidal cell-firing patterns and regulate network oscillations and related network state transitions. To directly probe their role in the CA1 region, we silenced their activity using optogenetic and chemogenetic tools in mice. Opto-tagged CCKIs revealed a heterogeneous population, and their optogenetic silencing triggered wide disinhibitory network changes affecting both pyramidal cells and other interneurons. CCKI silencing enhanced pyramidal cell burst firing and altered the temporal coding of place cells: theta phase precession was disrupted, whereas sequence reactivation was enhanced. Chemogenetic CCKI silencing did not alter the acquisition of spatial reference memories on the Morris water maze but enhanced the recall of contextual fear memories and enabled selective recall when similar environments were tested. This work suggests the key involvement of CCKIs in the control of place-cell temporal coding and the formation of contextual memories.

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04/18/24 | Connectome-driven neural inventory of a complete visual system
Aljoscha Nern , Frank Loesche , Shin-ya Takemura , Laura E Burnett , Marisa Dreher , Eyal Gruntman , Judith Hoeller , Gary B Huang , Michal Januszewski , Nathan C Klapoetke , Sanna Koskela , Kit D Longden , Zhiyuan Lu , Stephan Preibisch , Wei Qiu , Edward M Rogers , Pavithraa Seenivasan , Arthur Zhao , John Bogovic , Brandon S Canino , Jody Clements , Michael Cook , Samantha Finley-May , Miriam A Flynn , Imran Hameed , Kenneth J Hayworth , Gary Patrick Hopkins , Philip M Hubbard , William T Katz , Julie Kovalyak , Shirley A Lauchie , Meghan Leonard , Alanna Lohff , Charli A Maldonado , Caroline Mooney , Nneoma Okeoma , Donald J Olbris , Christopher Ordish , Tyler Paterson , Emily M Phillips , Tobias Pietzsch , Jennifer Rivas Salinas , Patricia K Rivlin , Ashley L Scott , Louis A Scuderi , Satoko Takemura , Iris Talebi , Alexander Thomson , Eric T Trautman , Lowell Umayam , Claire Walsh , John J Walsh , C Shan Xu , Emily A Yakal , Tansy Yang , Ting Zhao , Jan Funke , Reed George , Harald F Hess , Gregory S X E Jefferis , Christopher Knecht , Wyatt Korff , Stephen M Plaza , Sandro Romani , Stephan Saalfeld , Louis K Scheffer , Stuart Berg , Gerald M Rubin , Michael B Reiser
bioRxiv. 2024 Apr 18:. doi: 10.1101/2024.04.16.589741

Vision provides animals with detailed information about their surroundings, conveying diverse features such as color, form, and movement across the visual scene. Computing these parallel spatial features requires a large and diverse network of neurons, such that in animals as distant as flies and humans, visual regions comprise half the brain’s volume. These visual brain regions often reveal remarkable structure-function relationships, with neurons organized along spatial maps with shapes that directly relate to their roles in visual processing. To unravel the stunning diversity of a complex visual system, a careful mapping of the neural architecture matched to tools for targeted exploration of that circuitry is essential. Here, we report a new connectome of the right optic lobe from a male Drosophila central nervous system FIB-SEM volume and a comprehensive inventory of the fly’s visual neurons. We developed a computational framework to quantify the anatomy of visual neurons, establishing a basis for interpreting how their shapes relate to spatial vision. By integrating this analysis with connectivity information, neurotransmitter identity, and expert curation, we classified the 53,000 neurons into 727 types, about half of which are systematically described and named for the first time. Finally, we share an extensive collection of split-GAL4 lines matched to our neuron type catalog. Together, this comprehensive set of tools and data unlock new possibilities for systematic investigations of vision in Drosophila, a foundation for a deeper understanding of sensory processing.

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