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1.
Nat Methods ; 20(2): 295-303, 2023 02.
Article in English | MEDLINE | ID: mdl-36585455

ABSTRACT

We present an auxiliary learning task for the problem of neuron segmentation in electron microscopy volumes. The auxiliary task consists of the prediction of local shape descriptors (LSDs), which we combine with conventional voxel-wise direct neighbor affinities for neuron boundary detection. The shape descriptors capture local statistics about the neuron to be segmented, such as diameter, elongation, and direction. On a study comparing several existing methods across various specimen, imaging techniques, and resolutions, auxiliary learning of LSDs consistently increases segmentation accuracy of affinity-based methods over a range of metrics. Furthermore, the addition of LSDs promotes affinity-based segmentation methods to be on par with the current state of the art for neuron segmentation (flood-filling networks), while being two orders of magnitudes more efficient-a critical requirement for the processing of future petabyte-sized datasets.


Subject(s)
Image Processing, Computer-Assisted , Neurons , Image Processing, Computer-Assisted/methods
3.
Nat Methods ; 18(9): 1082-1090, 2021 09.
Article in English | MEDLINE | ID: mdl-34480155

ABSTRACT

Single-molecule localization microscopy (SMLM) has had remarkable success in imaging cellular structures with nanometer resolution, but standard analysis algorithms require sparse emitters, which limits imaging speed and labeling density. Here, we overcome this major limitation using deep learning. We developed DECODE (deep context dependent), a computational tool that can localize single emitters at high density in three dimensions with highest accuracy for a large range of imaging modalities and conditions. In a public software benchmark competition, it outperformed all other fitters on 12 out of 12 datasets when comparing both detection accuracy and localization error, often by a substantial margin. DECODE allowed us to acquire fast dynamic live-cell SMLM data with reduced light exposure and to image microtubules at ultra-high labeling density. Packaged for simple installation and use, DECODE will enable many laboratories to reduce imaging times and increase localization density in SMLM.


Subject(s)
Deep Learning , Image Processing, Computer-Assisted/methods , Single Molecule Imaging/methods , Animals , COS Cells , Chlorocebus aethiops , Databases, Factual , Software
4.
Nat Methods ; 18(7): 771-774, 2021 07.
Article in English | MEDLINE | ID: mdl-34168373

ABSTRACT

We develop an automatic method for synaptic partner identification in insect brains and use it to predict synaptic partners in a whole-brain electron microscopy dataset of the fruit fly. The predictions can be used to infer a connectivity graph with high accuracy, thus allowing fast identification of neural pathways. To facilitate circuit reconstruction using our results, we develop CIRCUITMAP, a user interface add-on for the circuit annotation tool CATMAID.


Subject(s)
Brain/physiology , Image Processing, Computer-Assisted/methods , Synapses/physiology , Animals , Brain/cytology , Databases, Factual , Drosophila melanogaster , Microscopy, Electron , Neural Pathways
5.
Science ; 370(6514)2020 10 16.
Article in English | MEDLINE | ID: mdl-33060330

ABSTRACT

Brains encode behaviors using neurons amenable to systematic classification by gene expression. The contribution of molecular identity to neural coding is not understood because of the challenges involved with measuring neural dynamics and molecular information from the same cells. We developed CaRMA (calcium and RNA multiplexed activity) imaging based on recording in vivo single-neuron calcium dynamics followed by gene expression analysis. We simultaneously monitored activity in hundreds of neurons in mouse paraventricular hypothalamus (PVH). Combinations of cell-type marker genes had predictive power for neuronal responses across 11 behavioral states. The PVH uses combinatorial assemblies of molecularly defined neuron populations for grouped-ensemble coding of survival behaviors. The neuropeptide receptor neuropeptide Y receptor type 1 (Npy1r) amalgamated multiple cell types with similar responses. Our results show that molecularly defined neurons are important processing units for brain function.


Subject(s)
Behavior, Animal , Calcium/metabolism , Gene Expression , Paraventricular Hypothalamic Nucleus/metabolism , RNA/metabolism , Animals , Gene Expression Profiling , Genetic Markers , Male , Mice , Neurons/metabolism , RNA-Seq , Receptors, Neuropeptide Y/genetics , Single-Cell Analysis
6.
Curr Opin Neurobiol ; 58: 94-100, 2019 10.
Article in English | MEDLINE | ID: mdl-31470252

ABSTRACT

Numerous efforts to generate "connectomes," or synaptic wiring diagrams, of large neural circuits or entire nervous systems are currently underway. These efforts promise an abundance of data to guide theoretical models of neural computation and test their predictions. However, there is not yet a standard set of tools for incorporating the connectivity constraints that these datasets provide into the models typically studied in theoretical neuroscience. This article surveys recent approaches to building models with constrained wiring diagrams and the insights they have provided. It also describes challenges and the need for new techniques to scale these approaches to ever more complex datasets.


Subject(s)
Microscopy, Electron , Nerve Net , Connectome , Models, Neurological , Nervous System
7.
IEEE Trans Pattern Anal Mach Intell ; 41(7): 1669-1680, 2019 07.
Article in English | MEDLINE | ID: mdl-29993708

ABSTRACT

We present a method combining affinity prediction with region agglomeration, which improves significantly upon the state of the art of neuron segmentation from electron microscopy (EM) in accuracy and scalability. Our method consists of a 3D U-Net, trained to predict affinities between voxels, followed by iterative region agglomeration. We train using a structured loss based on Malis, encouraging topologically correct segmentations obtained from affinity thresholding. Our extension consists of two parts: First, we present a quasi-linear method to compute the loss gradient, improving over the original quadratic algorithm. Second, we compute the gradient in two separate passes to avoid spurious gradient contributions in early training stages. Our predictions are accurate enough that simple learning-free percentile-based agglomeration outperforms more involved methods used earlier on inferior predictions. We present results on three diverse EM datasets, achieving relative improvements over previous results of 27, 15, and 250 percent. Our findings suggest that a single method can be applied to both nearly isotropic block-face EM data and anisotropic serial sectioned EM data. The runtime of our method scales linearly with the size of the volume and achieves a throughput of $\sim$∼ 2.6 seconds per megavoxel, qualifying our method for the processing of very large datasets.


Subject(s)
Connectome/methods , Deep Learning , Image Processing, Computer-Assisted/methods , Nerve Net/diagnostic imaging , Algorithms , Animals , Cerebral Cortex/cytology , Cerebral Cortex/diagnostic imaging , Drosophila , Imaging, Three-Dimensional , Mice , Microscopy, Electron , Neurons/cytology
8.
Cell ; 175(3): 859-876.e33, 2018 10 18.
Article in English | MEDLINE | ID: mdl-30318151

ABSTRACT

The mouse embryo has long been central to the study of mammalian development; however, elucidating the cell behaviors governing gastrulation and the formation of tissues and organs remains a fundamental challenge. A major obstacle is the lack of live imaging and image analysis technologies capable of systematically following cellular dynamics across the developing embryo. We developed a light-sheet microscope that adapts itself to the dramatic changes in size, shape, and optical properties of the post-implantation mouse embryo and captures its development from gastrulation to early organogenesis at the cellular level. We furthermore developed a computational framework for reconstructing long-term cell tracks, cell divisions, dynamic fate maps, and maps of tissue morphogenesis across the entire embryo. By jointly analyzing cellular dynamics in multiple embryos registered in space and time, we built a dynamic atlas of post-implantation mouse development that, together with our microscopy and computational methods, is provided as a resource. VIDEO ABSTRACT.


Subject(s)
Cell Lineage , Gastrulation , Organogenesis , Single-Cell Analysis/methods , Animals , Mice , Mice, Inbred C57BL , Models, Statistical , Optical Imaging/methods
9.
PLoS Comput Biol ; 14(5): e1006157, 2018 05.
Article in English | MEDLINE | ID: mdl-29782491

ABSTRACT

In recent years, two-photon calcium imaging has become a standard tool to probe the function of neural circuits and to study computations in neuronal populations. However, the acquired signal is only an indirect measurement of neural activity due to the comparatively slow dynamics of fluorescent calcium indicators. Different algorithms for estimating spike rates from noisy calcium measurements have been proposed in the past, but it is an open question how far performance can be improved. Here, we report the results of the spikefinder challenge, launched to catalyze the development of new spike rate inference algorithms through crowd-sourcing. We present ten of the submitted algorithms which show improved performance compared to previously evaluated methods. Interestingly, the top-performing algorithms are based on a wide range of principles from deep neural networks to generative models, yet provide highly correlated estimates of the neural activity. The competition shows that benchmark challenges can drive algorithmic developments in neuroscience.


Subject(s)
Action Potentials/physiology , Calcium/metabolism , Computational Biology/methods , Models, Neurological , Algorithms , Animals , Calcium/chemistry , Calcium/physiology , Databases, Factual , Mice , Molecular Imaging , Optical Imaging , Retina/cytology , Retinal Neurons/cytology , Retinal Neurons/metabolism
10.
J R Soc Interface ; 15(141)2018 04.
Article in English | MEDLINE | ID: mdl-29618526

ABSTRACT

Deep learning describes a class of machine learning algorithms that are capable of combining raw inputs into layers of intermediate features. These algorithms have recently shown impressive results across a variety of domains. Biology and medicine are data-rich disciplines, but the data are complex and often ill-understood. Hence, deep learning techniques may be particularly well suited to solve problems of these fields. We examine applications of deep learning to a variety of biomedical problems-patient classification, fundamental biological processes and treatment of patients-and discuss whether deep learning will be able to transform these tasks or if the biomedical sphere poses unique challenges. Following from an extensive literature review, we find that deep learning has yet to revolutionize biomedicine or definitively resolve any of the most pressing challenges in the field, but promising advances have been made on the prior state of the art. Even though improvements over previous baselines have been modest in general, the recent progress indicates that deep learning methods will provide valuable means for speeding up or aiding human investigation. Though progress has been made linking a specific neural network's prediction to input features, understanding how users should interpret these models to make testable hypotheses about the system under study remains an open challenge. Furthermore, the limited amount of labelled data for training presents problems in some domains, as do legal and privacy constraints on work with sensitive health records. Nonetheless, we foresee deep learning enabling changes at both bench and bedside with the potential to transform several areas of biology and medicine.


Subject(s)
Biomedical Research/trends , Biomedical Technology/trends , Deep Learning/trends , Algorithms , Biomedical Research/methods , Decision Making , Delivery of Health Care/methods , Delivery of Health Care/trends , Disease/genetics , Drug Design , Electronic Health Records/trends , Humans , Terminology as Topic
11.
Front Neuroanat ; 9: 142, 2015.
Article in English | MEDLINE | ID: mdl-26594156

ABSTRACT

To stimulate progress in automating the reconstruction of neural circuits, we organized the first international challenge on 2D segmentation of electron microscopic (EM) images of the brain. Participants submitted boundary maps predicted for a test set of images, and were scored based on their agreement with a consensus of human expert annotations. The winning team had no prior experience with EM images, and employed a convolutional network. This "deep learning" approach has since become accepted as a standard for segmentation of EM images. The challenge has continued to accept submissions, and the best so far has resulted from cooperation between two teams. The challenge has probably saturated, as algorithms cannot progress beyond limits set by ambiguities inherent in 2D scoring and the size of the test dataset. Retrospective evaluation of the challenge scoring system reveals that it was not sufficiently robust to variations in the widths of neurite borders. We propose a solution to this problem, which should be useful for a future 3D segmentation challenge.

12.
Cell Rep ; 10(2): 292-305, 2015 Jan 13.
Article in English | MEDLINE | ID: mdl-25558063

ABSTRACT

Understanding how brain activation mediates behaviors is a central goal of systems neuroscience. Here, we apply an automated method for mapping brain activation in the mouse in order to probe how sex-specific social behaviors are represented in the male brain. Our method uses the immediate-early-gene c-fos, a marker of neuronal activation, visualized by serial two-photon tomography: the c-fos-GFP+ neurons are computationally detected, their distribution is registered to a reference brain and a brain atlas, and their numbers are analyzed by statistical tests. Our results reveal distinct and shared female and male interaction-evoked patterns of male brain activation representing sex discrimination and social recognition. We also identify brain regions whose degree of activity correlates to specific features of social behaviors and estimate the total numbers and the densities of activated neurons per brain areas. Our study opens the door to automated screening of behavior-evoked brain activation in the mouse.


Subject(s)
Behavior, Animal , Brain/physiology , Animals , Brain/diagnostic imaging , Brain Mapping/veterinary , Female , Green Fluorescent Proteins/genetics , Green Fluorescent Proteins/metabolism , Image Processing, Computer-Assisted , Imaging, Three-Dimensional , Immunohistochemistry , Male , Mice , Mice, Inbred C57BL , Mice, Transgenic , Proto-Oncogene Proteins c-fos/genetics , Proto-Oncogene Proteins c-fos/metabolism , Radiography , Tomography
13.
Nature ; 509(7500): 331-336, 2014 May 15.
Article in English | MEDLINE | ID: mdl-24805243

ABSTRACT

How does the mammalian retina detect motion? This classic problem in visual neuroscience has remained unsolved for 50 years. In search of clues, here we reconstruct Off-type starburst amacrine cells (SACs) and bipolar cells (BCs) in serial electron microscopic images with help from EyeWire, an online community of 'citizen neuroscientists'. On the basis of quantitative analyses of contact area and branch depth in the retina, we find evidence that one BC type prefers to wire with a SAC dendrite near the SAC soma, whereas another BC type prefers to wire far from the soma. The near type is known to lag the far type in time of visual response. A mathematical model shows how such 'space-time wiring specificity' could endow SAC dendrites with receptive fields that are oriented in space-time and therefore respond selectively to stimuli that move in the outward direction from the soma.


Subject(s)
Brain Mapping , Models, Neurological , Neural Pathways/physiology , Retina/cytology , Retina/physiology , Spatio-Temporal Analysis , Amacrine Cells/cytology , Amacrine Cells/physiology , Amacrine Cells/ultrastructure , Animals , Artificial Intelligence , Crowdsourcing , Dendrites/metabolism , Mice , Motion , Presynaptic Terminals/metabolism , Retinal Bipolar Cells/cytology , Retinal Bipolar Cells/physiology , Retinal Bipolar Cells/ultrastructure
14.
Nature ; 500(7461): 168-74, 2013 Aug 08.
Article in English | MEDLINE | ID: mdl-23925239

ABSTRACT

Comprehensive high-resolution structural maps are central to functional exploration and understanding in biology. For the nervous system, in which high resolution and large spatial extent are both needed, such maps are scarce as they challenge data acquisition and analysis capabilities. Here we present for the mouse inner plexiform layer--the main computational neuropil region in the mammalian retina--the dense reconstruction of 950 neurons and their mutual contacts. This was achieved by applying a combination of crowd-sourced manual annotation and machine-learning-based volume segmentation to serial block-face electron microscopy data. We characterize a new type of retinal bipolar interneuron and show that we can subdivide a known type based on connectivity. Circuit motifs that emerge from our data indicate a functional mechanism for a known cellular response in a ganglion cell that detects localized motion, and predict that another ganglion cell is motion sensitive.


Subject(s)
Connectome , Models, Biological , Retina/cytology , Retina/physiology , Retinal Ganglion Cells/physiology , Amacrine Cells/cytology , Amacrine Cells/physiology , Animals , Cell Communication , Image Processing, Computer-Assisted , Mice , Mice, Inbred C57BL , Microscopy, Electron , Neuropil/physiology , Retinal Ganglion Cells/cytology
15.
Curr Opin Neurobiol ; 20(5): 653-66, 2010 Oct.
Article in English | MEDLINE | ID: mdl-20801638

ABSTRACT

Connections between neurons can be found by checking whether synapses exist at points of contact, which in turn are determined by neural shapes. Finding these shapes is a special case of image segmentation, which is laborious for humans and would ideally be performed by computers. New metrics properly quantify the performance of a computer algorithm using its disagreement with 'true' segmentations of example images. New machine learning methods search for segmentation algorithms that minimize such metrics. These advances have reduced computer errors dramatically. It should now be faster for a human to correct the remaining errors than to segment an image manually. Further reductions in human effort are expected, and crucial for finding connectomes more complex than that of Caenorhabditis elegans.


Subject(s)
Algorithms , Artificial Intelligence , Image Processing, Computer-Assisted/trends , Nanotechnology/trends , Neurobiology/trends , Animals , Humans , Image Processing, Computer-Assisted/instrumentation , Image Processing, Computer-Assisted/methods , Microscopy, Electron/instrumentation , Microscopy, Electron/methods , Microscopy, Electron/trends , Nanotechnology/instrumentation , Nanotechnology/methods , Neurobiology/instrumentation , Neurobiology/methods
16.
Neural Comput ; 22(2): 511-38, 2010 Feb.
Article in English | MEDLINE | ID: mdl-19922289

ABSTRACT

Many image segmentation algorithms first generate an affinity graph and then partition it. We present a machine learning approach to computing an affinity graph using a convolutional network (CN) trained using ground truth provided by human experts. The CN affinity graph can be paired with any standard partitioning algorithm and improves segmentation accuracy significantly compared to standard hand-designed affinity functions. We apply our algorithm to the challenging 3D segmentation problem of reconstructing neuronal processes from volumetric electron microscopy (EM) and show that we are able to learn a good affinity graph directly from the raw EM images. Further, we show that our affinity graph improves the segmentation accuracy of both simple and sophisticated graph partitioning algorithms. In contrast to previous work, we do not rely on prior knowledge in the form of hand-designed image features or image preprocessing. Thus, we expect our algorithm to generalize effectively to arbitrary image types.


Subject(s)
Artificial Intelligence , Image Processing, Computer-Assisted/methods , Mathematical Computing , Neural Networks, Computer , Pattern Recognition, Automated , Algorithms , Mathematical Concepts , Mathematics , Microscopy, Electron/methods
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