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2768 Janelia Publications

Showing 2601-2610 of 2768 results
Looger Lab
11/10/10 | Toward the second generation of optogenetic tools.
Knöpfel T, Lin MZ, Levskaya A, Tian L, Lin JY, Boyden ES
The Journal of Neuroscience: The Official Journal of the Society for Neuroscience. 2010 Nov 10;30(45):14998-5004. doi: 10.1523/JNEUROSCI.4190-10.2010

This mini-symposium aims to provide an integrated perspective on recent developments in optogenetics. Research in this emerging field combines optical methods with targeted expression of genetically encoded, protein-based probes to achieve experimental manipulation and measurement of neural systems with superior temporal and spatial resolution. The essential components of the optogenetic toolbox consist of two kinds of molecular devices: actuators and reporters, which respectively enable light-mediated control or monitoring of molecular processes. The first generation of genetically encoded calcium reporters, fluorescent proteins, and neural activators has already had a great impact on neuroscience. Now, a second generation of voltage reporters, neural silencers, and functionally extended fluorescent proteins hold great promise for continuing this revolution. In this review, we will evaluate and highlight the limitations of presently available optogenic tools and discuss where these technologies and their applications are headed in the future.

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09/29/25 | Towards a unified framework for the function of endoplasmic reticulum exit sites.
Farhan H, Raote I, Campelo F, Ge L, Hirschberg K, Forrester A, Zanetti G, Lippincott-Schwartz J, Pastor-Pareja JC, Perez F, Saito K, Malhotra V
Nat Rev Mol Cell Biol. 2025 Sep 29:. doi: 10.1038/s41580-025-00899-0

Endoplasmic reticulum exit sites (ERES) are specialized, ribosome-free ER subdomains that serve as dynamic portals for COPII-mediated export of proteins from the ER. Beyond their role in the secretory pathway, ERES are implicated in diverse processes, including autophagy and the maturation of lipid droplets, highlighting their functional plasticity. ERES integrate cargo load, membrane tension and spatial cues to remodel their architecture and function in real time. This Roadmap synthesizes our current knowledge on the biogenesis, structural diversity and regulatory logic of ERES. We highlight key unanswered questions in the field, particularly concerning how ERES integrate signals to coordinate protein trafficking under varying cellular states. Finally, we propose a multidisciplinary framework - leveraging advances in high-resolution imaging, synthetic reconstitution and computational modelling - to delineate the principles governing the function and plasticity of ERES. Understanding these mechanisms holds significant potential for developing targeted therapeutic strategies in diseases linked to trafficking dysfunction.

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07/01/20 | Towards accurate and unbiased imaging-based differentiation of Parkinson's disease, progressive supranuclear palsy and corticobasal syndrome.
Correia MM, Rittman T, Barnes CL, Coyle-Gilchrist IT, Ghosh B, Hughes LE, Rowe JB
Brain Communications. 2020 Jul 1;2(1):fcaa051. doi: 10.1093/braincomms/fcaa051

The early and accurate differential diagnosis of parkinsonian disorders is still a significant challenge for clinicians. In recent years, a number of studies have used magnetic resonance imaging data combined with machine learning and statistical classifiers to successfully differentiate between different forms of Parkinsonism. However, several questions and methodological issues remain, to minimize bias and artefact-driven classification. In this study, we compared different approaches for feature selection, as well as different magnetic resonance imaging modalities, with well-matched patient groups and tightly controlling for data quality issues related to patient motion. Our sample was drawn from a cohort of 69 healthy controls, and patients with idiopathic Parkinson's disease (= 35), progressive supranuclear palsy Richardson's syndrome (= 52) and corticobasal syndrome (= 36). Participants underwent standardized T1-weighted and diffusion-weighted magnetic resonance imaging. Strict data quality control and group matching reduced the control and patient numbers to 43, 32, 33 and 26, respectively. We compared two different methods for feature selection and dimensionality reduction: whole-brain principal components analysis, and an anatomical region-of-interest based approach. In both cases, support vector machines were used to construct a statistical model for pairwise classification of healthy controls and patients. The accuracy of each model was estimated using a leave-two-out cross-validation approach, as well as an independent validation using a different set of subjects. Our cross-validation results suggest that using principal components analysis for feature extraction provides higher classification accuracies when compared to a region-of-interest based approach. However, the differences between the two feature extraction methods were significantly reduced when an independent sample was used for validation, suggesting that the principal components analysis approach may be more vulnerable to overfitting with cross-validation. Both T1-weighted and diffusion magnetic resonance imaging data could be used to successfully differentiate between subject groups, with neither modality outperforming the other across all pairwise comparisons in the cross-validation analysis. However, features obtained from diffusion magnetic resonance imaging data resulted in significantly higher classification accuracies when an independent validation cohort was used. Overall, our results support the use of statistical classification approaches for differential diagnosis of parkinsonian disorders. However, classification accuracy can be affected by group size, age, sex and movement artefacts. With appropriate controls and out-of-sample cross validation, diagnostic biomarker evaluation including magnetic resonance imaging based classifiers may be an important adjunct to clinical evaluation.

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04/28/21 | Towards community-driven metadata standards for light microscopy: tiered specifications extending the OME model.
Mathias Hammer , Maximiliaan Huisman , Alex Rigano , Ulrike Boehm , James J. Chambers , Nathalie Gaudreault , Alison J. North , Jaime A. Pimentel , Damir Sudar , Peter Bajcsy , Claire M. Brown , Alexander D. Corbett , Orestis Faklaris , Judith Lacoste , Alex Laude , Glyn Nelson , Roland Nitschke , Farzin Farzam , Carlas S. Smith , David Grunwald , Caterina Strambio-De-Castillia
bioRxiv. 2021 Apr 28:. doi: 10.1101/2021.04.25.441198v1

Digital light microscopy provides powerful tools for quantitatively probing the real-time dynamics of subcellular structures. While the power of modern microscopy techniques is undeniable, rigorous record-keeping and quality control are required to ensure that imaging data may be properly interpreted (quality), reproduced (reproducibility), and used to extract reliable information and scientific knowledge which can be shared for further analysis (value). Keeping notes on microscopy experiments and quality control procedures ought to be straightforward, as the microscope is a machine whose components are defined and the performance measurable. Nevertheless, to this date, no universally adopted community-driven specifications exist that delineate the required information about the microscope hardware and acquisition settings (i.e., microscopy “data provenance” metadata) and the minimally accepted calibration metrics (i.e., microscopy quality control metadata) that should be automatically recorded by both commercial microscope manufacturers and customized microscope developers. In the absence of agreed guidelines, it is inherently difficult for scientists to create comprehensive records of imaging experiments and ensure the quality of resulting image data or for manufacturers to incorporate standardized reporting and performance metrics. To add to the confusion, microscopy experiments vary greatly in aim and complexity, ranging from purely descriptive work to complex, quantitative and even sub-resolution studies that require more detailed reporting and quality control measures.

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12/03/21 | Towards community-driven metadata standards for light microscopy: tiered specifications extending the OME model.
Hammer M, Huisman M, Rigano A, Boehm U, Chambers JJ, Gaudreault N, North AJ, Pimentel JA, Sudar D, Bajcsy P, Brown CM, Corbett AD, Faklaris O, Lacoste J, Laude A, Nelson G, Nitschke R, Farzam F, Smith CS, Grunwald D, Strambio-De-Castillia C
Nature Methods. 2021 Dec 03;18(12):1427-1440. doi: 10.1038/s41592-021-01327-9
04/29/13 | Towards comprehensive cell lineage reconstructions in complex organisms using light-sheet microscopy.
Amat F, Keller PJ
Development, Growth and Differentiation. 2013 Apr 29;55(4):563-78. doi: 10.1111/dgd.12063

Understanding the development of complex multicellular organisms as a function of the underlying cell behavior is one of the most fundamental goals of developmental biology. The ability to quantitatively follow cell dynamics in entire developing embryos is an indispensable step towards such a system-level understanding. In recent years, light-sheet fluorescence microscopy has emerged as a particularly promising strategy for recording the in vivo data required to realize this goal. Using light-sheet fluorescence microscopy, entire complex organisms can be rapidly imaged in three dimensions at sub-cellular resolution, achieving high temporal sampling and excellent signal-to-noise ratio without damaging the living specimen or bleaching fluorescent markers. The resulting datasets allow following individual cells in vertebrate and higher invertebrate embryos over up to several days of development. However, the complexity and size of these multi-terabyte recordings typically preclude comprehensive manual analyses. Thus, new computational approaches are required to automatically segment cell morphologies, accurately track cell identities and systematically analyze cell behavior throughout embryonic development. We review current efforts in light-sheet microscopy and bioimage informatics towards this goal, and argue that comprehensive cell lineage reconstructions are finally within reach for many key model organisms, including fruit fly, zebrafish and mouse.

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07/22/23 | Towards Generalizable Organelle Segmentation in Volume Electron Microscopy.
Heinrich L, Patton W, Bennett D, Ackerman D, Park G, Bogovic JA, Eckstein N, Petruncio A, Clements J, Pang S, Shan Xu C, Funke J, Korff W, Hess H, Lippincott-Schwartz J, Saalfeld S, Weigel A, CellMap Project Team
Microscopy and Microanalysis. 2023 Jul 22;29(Supplement_1):975. doi: 10.1093/micmic/ozad067.487
Cardona Lab
01/01/13 | Towards semi-automatic reconstruction of neural circuits.
Cardona A
Neuroinformatics. 2013 Jan;11(1):31-3. doi: 10.1007/s12021-012-9166-x
09/02/22 | Tracing and Manipulating Drosophila Cell Lineages Based on CRISPR: CaSSA and CLADES.
Garcia-Marques J, Lee T
Methods in Molecular Biology. 2022 Sep 02;2540:201-217. doi: 10.1007/978-1-0716-2541-5_9

Cell lineage defines the mitotic connection between cells that make up an organism. Mapping these connections in relation to cell identity offers an extraordinary insight into the mechanisms underlying normal and pathological development. The analysis of molecular determinants involved in the acquisition of cell identity requires gaining experimental access to precise parts of cell lineages. Recently, we have developed CaSSA and CLADES, a new technology based on CRISPR that allows targeting and labeling specific lineage branches. Here we discuss how to better exploit this technology for lineage studies in Drosophila, with an emphasis on neuronal specification.

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09/22/22 | Tracking by Weakly-Supervised Learning and Graph Optimization for Whole-Embryo C. elegans lineages
Wang L, Dou Q, Fletcher PT, Speidel S, Li S
International Conference on Medical Image Computing and Computer-Assisted Intervention. 2022 Sep 16:. doi: 10.1007/978-3-031-16440-8

Tracking all nuclei of an embryo in noisy and dense fluorescence microscopy data is a challenging task. We build upon a recent method for nuclei tracking that combines weakly-supervised learning from a small set of nuclei center point annotations with an integer linear program (ILP) for optimal cell lineage extraction. Our work specifically addresses the following challenging properties of C. elegans embryo recordings: (1) Many cell divisions as compared to benchmark recordings of other organisms, and (2) the presence of polar bodies that are easily mistaken as cell nuclei. To cope with (1), we devise and incorporate a learnt cell division detector. To cope with (2), we employ a learnt polar body detector. We further propose automated ILP weights tuning via a structured SVM, alleviating the need for tedious manual set-up of a respective grid search.

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