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Dive into the research topics where Davi Bock is active.

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Featured researches published by Davi Bock.


eLife | 2016

A large fraction of neocortical myelin ensheathes axons of local inhibitory neurons

Kristina D. Micheva; Dylan Wolman; Brett D. Mensh; Elizabeth Pax; JoAnn Buchanan; Stephen J. Smith; Davi Bock

Myelin is best known for its role in increasing the conduction velocity and metabolic efficiency of long-range excitatory axons. Accordingly, the myelin observed in neocortical gray matter is thought to mostly ensheath excitatory axons connecting to subcortical regions and distant cortical areas. Using independent analyses of light and electron microscopy data from mouse neocortex, we show that a surprisingly large fraction of cortical myelin (half the myelin in layer 2/3 and a quarter in layer 4) ensheathes axons of inhibitory neurons, specifically of parvalbumin-positive basket cells. This myelin differs significantly from that of excitatory axons in distribution and protein composition. Myelin on inhibitory axons is unlikely to meaningfully hasten the arrival of spikes at their pre-synaptic terminals, due to the patchy distribution and short path-lengths observed. Our results thus highlight the need for exploring alternative roles for myelin in neocortical circuits. DOI: http://dx.doi.org/10.7554/eLife.15784.001


PLOS ONE | 2014

Automated detection of synapses in serial section transmission electron microscopy image stacks.

Anna Kreshuk; Ullrich Koethe; Elizabeth Pax; Davi Bock; Fred A. Hamprecht

We describe a method for fully automated detection of chemical synapses in serial electron microscopy images with highly anisotropic axial and lateral resolution, such as images taken on transmission electron microscopes. Our pipeline starts from classification of the pixels based on 3D pixel features, which is followed by segmentation with an Ising model MRF and another classification step, based on object-level features. Classifiers are learned on sparse user labels; a fully annotated data subvolume is not required for training. The algorithm was validated on a set of 238 synapses in 20 serial 7197×7351 pixel images (4.5×4.5×45 nm resolution) of mouse visual cortex, manually labeled by three independent human annotators and additionally re-verified by an expert neuroscientist. The error rate of the algorithm (12% false negative, 7% false positive detections) is better than state-of-the-art, even though, unlike the state-of-the-art method, our algorithm does not require a prior segmentation of the image volume into cells. The software is based on the ilastik learning and segmentation toolkit and the vigra image processing library and is freely available on our website, along with the test data and gold standard annotations (http://www.ilastik.org/synapse-detection/sstem).


statistical and scientific database management | 2013

The open connectome project data cluster: scalable analysis and vision for high-throughput neuroscience

Randal C. Burns; Kunal Lillaney; Daniel R. Berger; Logan Grosenick; Karl Deisseroth; R. Clay Reid; William Gray Roncal; Priya Manavalan; Davi Bock; Narayanan Kasthuri; Michael M. Kazhdan; Stephen J. Smith; Dean M. Kleissas; Eric Perlman; Kwanghun Chung; Nicholas C. Weiler; Jeff W. Lichtman; Alexander S. Szalay; Joshua T. Vogelstein; R. Jacob Vogelstein

We describe a scalable database cluster for the spatial analysis and annotation of high-throughput brain imaging data, initially for 3-d electron microscopy image stacks, but for time-series and multi-channel data as well. The system was designed primarily for workloads that build connectomes---neural connectivity maps of the brain---using the parallel execution of computer vision algorithms on high-performance compute clusters. These services and open-science data sets are publicly available at openconnecto.me. The system design inherits much from NoSQL scale-out and data-intensive computing architectures. We distribute data to cluster nodes by partitioning a spatial index. We direct I/O to different systems---reads to parallel disk arrays and writes to solid-state storage---to avoid I/O interference and maximize throughput. All programming interfaces are RESTful Web services, which are simple and stateless, improving scalability and usability. We include a performance evaluation of the production system, highlighting the effectiveness of spatial data organization.


Nature Methods | 2017

Multicut brings automated neurite segmentation closer to human performance

Thorsten Beier; Constantin Pape; Nasim Rahaman; Timo Prange; Stuart Berg; Davi Bock; Albert Cardona; Graham Knott; Stephen M. Plaza; Louis K. Scheffer; Ullrich Koethe; Anna Kreshuk; Fred A. Hamprecht

Reference EPFL-ARTICLE-226946doi:10.1038/nmeth.4151View record in Web of Science Record created on 2017-03-27, modified on 2017-07-13


Cell | 2018

A Complete Electron Microscopy Volume of the Brain of Adult Drosophila melanogaster

Zhihao Zheng; J. Scott Lauritzen; Eric Perlman; Camenzind G. Robinson; Matthew Nichols; Daniel E. Milkie; Omar N. Torrens; John H. Price; Corey B. Fisher; Nadiya Sharifi; Steven A. Calle-Schuler; Lucia Kmecova; Iqbal J. Ali; Bill Karsh; Eric T. Trautman; John A. Bogovic; Philipp Hanslovsky; Gregory S.X.E. Jefferis; Michael M. Kazhdan; Khaled Khairy; Stephan Saalfeld; Richard D. Fetter; Davi Bock

Summary Drosophila melanogaster has a rich repertoire of innate and learned behaviors. Its 100,000-neuron brain is a large but tractable target for comprehensive neural circuit mapping. Only electron microscopy (EM) enables complete, unbiased mapping of synaptic connectivity; however, the fly brain is too large for conventional EM. We developed a custom high-throughput EM platform and imaged the entire brain of an adult female fly at synaptic resolution. To validate the dataset, we traced brain-spanning circuitry involving the mushroom body (MB), which has been extensively studied for its role in learning. All inputs to Kenyon cells (KCs), the intrinsic neurons of the MB, were mapped, revealing a previously unknown cell type, postsynaptic partners of KC dendrites, and unexpected clustering of olfactory projection neurons. These reconstructions show that this freely available EM volume supports mapping of brain-spanning circuits, which will significantly accelerate Drosophila neuroscience. Video Abstract


Communications in Statistics-theory and Methods | 2013

Optimizing the Quantity/Quality Trade-Off in Connectome Inference

Carey E. Priebe; Joshua T. Vogelstein; Davi Bock

We demonstrate a meaningful prospective power analysis for an (admittedly idealized) illustrative connectome inference task. Modeling neurons as vertices and synapses as edges in a simple random graph model, we optimize the trade-off between the number of (putative) edges identified and the accuracy of the edge identification procedure. We conclude that explicit analysis of the quantity/quality trade-off is imperative for optimal neuroscientific experimental design. In particular, identifying edges faster/more cheaply, but with more error, can yield superior inferential performance.


bioRxiv | 2018

Functional and Anatomical Specificity in a Higher Olfactory Centre

Shahar Frechter; Alexander Shakeel Bates; Sina Tootoonian; Michael-John Dolan; James Manton; Arian Jamasb; Johannes Kohl; Davi Bock; Gregory S.X.E. Jefferis

Most sensory systems are organized into parallel neuronal pathways that process distinct aspects of incoming stimuli. For example, second order olfactory neurons make divergent projections onto functionally distinct brain areas relevant to different behaviors. In insects, one area, the mushroom body has been intensively studied for its role in olfactory learning while the lateral horn is proposed to mediate innate olfactory behavior. Some lateral horn neurons (LHNs) show selective responses to sex pheromones but its functional principles remain poorly understood. We have carried out a comprehensive anatomical analysis of the Drosophila lateral horn and identified genetic driver lines targeting many LHNs. We find that the lateral horn contains >1300 neurons and by combining genetic, anatomical and functional criteria, we identify >150 cell types. In particular we show that genetically labeled LHNs show stereotyped odor responses from one animal to the next. Although LHN tuning can be ultra-sparse (1/40 odors tested), as a population they respond to three times more odors than their inputs; this coding change can be rationalized by our observation that LHNs are better odor categorizers. Our results reveal some of the principles by which a higher sensory processing area can extract innate behavioral significance from sensory stimuli.


Neuron | 2018

Communication from Learned to Innate Olfactory Processing Centers Is Required for Memory Retrieval in Drosophila

Michael-John Dolan; Ghislain Belliart-Guérin; Alexander Shakeel Bates; Shahar Frechter; Aurélie Lampin-Saint-Amaux; Yoshinori Aso; Ruairi J.V. Roberts; Philipp Schlegel; Allan M. Wong; Adnan Hammad; Davi Bock; Gerald M. Rubin; Thomas Preat; Pierre-Yves Plaçais; Gregory S.X.E. Jefferis

Summary The behavioral response to a sensory stimulus may depend on both learned and innate neuronal representations. How these circuits interact to produce appropriate behavior is unknown. In Drosophila, the lateral horn (LH) and mushroom body (MB) are thought to mediate innate and learned olfactory behavior, respectively, although LH function has not been tested directly. Here we identify two LH cell types (PD2a1 and PD2b1) that receive input from an MB output neuron required for recall of aversive olfactory memories. These neurons are required for aversive memory retrieval and modulated by training. Connectomics data demonstrate that PD2a1 and PD2b1 neurons also receive direct input from food odor-encoding neurons. Consistent with this, PD2a1 and PD2b1 are also necessary for unlearned attraction to some odors, indicating that these neurons have a dual behavioral role. This provides a circuit mechanism by which learned and innate olfactory information can interact in identified neurons to produce appropriate behavior. Video Abstract


bioRxiv | 2018

Specific octopaminergic neurons arbitrate between perseverance and reward in hungry Drosophila

Sercan Sayin; Jean-François De Backer; Marina E Wosniack; Laurence P.C. Lewis; K.P. Siju; Lisa-Marie Frisch; Philipp Schlegel; A. Edmondson-Stait; Nadiya Sharifi; C.B. Fisher; S. Calle-Schuler; Scott Lauritzen; Davi Bock; Marta Costa; Gregory S.X.E. Jefferis; Julijana Gjorgjieva; Ilona C. Grunwald Kadow

In pursuit of palatable food, hungry animals mobilize significant energy resources and overcome obstacles, exhaustion and fear. Their perseverance depends on metabolic state, internal motivation and the expected benefit. Sustained commitment to a trying task is crucial, however, disengagement from one behavior to engage into another can be essential for optimal adaptation and survival. How neural circuits allow prioritizing perseverance over withdrawal based on the animal9s need, however, is not understood. Using a single fly spherical treadmill, we show that hungry flies display increasing perseverance to track a food odor in the repeated absence of the predicted food reward. While this perseverance is mediated by a group of dopaminergic neurons, a subset of neurons expressing octopamine, the invertebrate noradrenaline, provide reward feedback and counteract dopamine-motivated food seeking. Our data and modeling suggest that two important neuromodulators tally internal and external signals to ultimately coordinate motivation-dependent antagonistic behavioral drives: perseverance vs. change of behavior.In pursuit of palatable food, hungry animals mobilize significant energy resources and overcome obstacles, exhaustion and fear. Their perseverance depends on metabolic state, internal motivation and the expected benefit. Sustained commitment to a trying task is crucial, however, disengagement from one behavior to engage into another can be essential for optimal adaptation and survival. How neural circuits allow prioritizing perseverance over withdrawal based on the animal’s need is not understood. Using a single fly spherical treadmill, we show that hungry flies display increasing perseverance to track a food odor in the repeated absence of the predicted food reward. While this perseverance is mediated by a group of dopaminergic neurons, a subset of neurons expressing octopamine, the invertebrate counterpart of noradrenaline, provide reward feedback and counteract dopamine-motivated food seeking. Our data and modeling suggest that two important neuromodulators tally internal and external signals to coordinate motivation-dependent antagonistic behavioral drives: perseverance vs. change of behavior. Highlights Lack of reward stimulates perseverance, and not quitting. Dopaminergic neurons previously implicated in aversive learning promote perseverance. Sugar responsive octopaminergic neurons directly counteract perseverant odor tracking through a downstream inhibitory neuron. Computational modeling supports a simple neural circuit featuring antagonistic functions for dopamine and octopamine as tallies of expense and gain.


Cell | 2018

Integration of Parallel Opposing Memories Underlies Memory Extinction

Johannes Felsenberg; Pedro F. Jacob; Tom Walker; Oliver Barnstedt; Amelia J. Edmondson-Stait; Markus W. Pleijzier; Nils Otto; Philipp Schlegel; Nadiya Sharifi; Emmanuel Perisse; Carlas Smith; J. Scott Lauritzen; Marta Costa; Gregory S.X.E. Jefferis; Davi Bock; Scott Waddell

Summary Accurately predicting an outcome requires that animals learn supporting and conflicting evidence from sequential experience. In mammals and invertebrates, learned fear responses can be suppressed by experiencing predictive cues without punishment, a process called memory extinction. Here, we show that extinction of aversive memories in Drosophila requires specific dopaminergic neurons, which indicate that omission of punishment is remembered as a positive experience. Functional imaging revealed co-existence of intracellular calcium traces in different places in the mushroom body output neuron network for both the original aversive memory and a new appetitive extinction memory. Light and ultrastructural anatomy are consistent with parallel competing memories being combined within mushroom body output neurons that direct avoidance. Indeed, extinction-evoked plasticity in a pair of these neurons neutralizes the potentiated odor response imposed in the network by aversive learning. Therefore, flies track the accuracy of learned expectations by accumulating and integrating memories of conflicting events.

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Gregory S.X.E. Jefferis

Laboratory of Molecular Biology

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Alexander Shakeel Bates

Laboratory of Molecular Biology

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Marta Costa

University of Cambridge

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Michael-John Dolan

Laboratory of Molecular Biology

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Shahar Frechter

Laboratory of Molecular Biology

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Gerald M. Rubin

Howard Hughes Medical Institute

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Nadiya Sharifi

Howard Hughes Medical Institute

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