Discovery of brainwide neural-behavioral maps via multiscale unsupervised structure learning.
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From regions to connections and networks: new bridges between brain and behaviorPutting big data to good use in neuroscienceTowards the automatic classification of neuronsComputational models in the age of large datasetsChanges in Postural Syntax Characterize Sensory Modulation and Natural Variation of C. elegans LocomotionIdentification of Ppk26, a DEG/ENaC Channel Functioning with Ppk1 in a Mutually Dependent Manner to Guide Locomotion Behavior in Drosophila.MicroRNA-encoded behavior in DrosophilaHierarchical compression of Caenorhabditis elegans locomotion reveals phenotypic differences in the organization of behaviourFunctional Genetic Screen to Identify Interneurons Governing Behaviorally Distinct Aspects of Drosophila Larval Motor ProgramsA screen for constituents of motor control and decision making in Drosophila reveals visual distance-estimation neurons.Neuronal processing of noxious thermal stimuli mediated by dendritic Ca(2+) influx in Drosophila somatosensory neurons.Immediate and punitive impact of mechanosensory disturbance on olfactory behaviour of larval Drosophila.An automated system for quantitative analysis of Drosophila larval locomotion.Mapping Sub-Second Structure in Mouse Behavior.High-content behavioral profiling reveals neuronal genetic network modulating Drosophila larval locomotor program.Big behavioral data: psychology, ethology and the foundations of neuroscience.Connectivity-based parcellation: Critique and implications.Neural Circuits Underlying Fly Larval LocomotionNetwork neuroscience.Potency of transgenic effectors for neurogenetic manipulation in Drosophila larvae.Reverse-correlation analysis of navigation dynamics in Drosophila larva using optogenetics.Quantitative neuroanatomy for connectomics in DrosophilaA circuit mechanism for the propagation of waves of muscle contraction in Drosophila.The wiring diagram of a glomerular olfactory systemEvaluation of a Neuromechanical Walking Control Model Using Disturbance Experiments.Restoration of motor defects caused by loss of Drosophila TDP-43 by expression of the voltage-gated calcium channel, Cacophony, in central neurons.Supervised and Unsupervised Learning Technology in the Study of Rodent Behavior.Micro-connectomics: probing the organization of neuronal networks at the cellular scale.Synaptic transmission parallels neuromodulation in a central food-intake circuit.Dynamic structure of locomotor behavior in walking fruit flies.DISC1 causes associative memory and neurodevelopmental defects in fruit flies.Learning the specific quality of taste reinforcement in larval Drosophila.Continuous lateral oscillations as a core mechanism for taxis in Drosophila larvae.Inter-individual stereotypy of the Platynereis larval visual connectome.Small conductance Ca2+-activated K+ channels induce the firing pause periods during the activation of Drosophila nociceptive neuronsNeural networks in the future of neuroscience research.Classical Statistics and Statistical Learning in Imaging Neuroscience.Anion-conducting channelrhodopsins with tuned spectra and modified kinetics engineered for optogenetic manipulation of behavior.Exploring the Interaction of Drosophila TDP-43 and the Type II Voltage-Gated Calcium Channel, Cacophony, in Regulating Motor Function and Behavior.Dissection and Immunofluorescent Staining of Mushroom Body and Photoreceptor Neurons in Adult Drosophila melanogaster Brains.
P2860
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P2860
Discovery of brainwide neural-behavioral maps via multiscale unsupervised structure learning.
description
2014 nî lūn-bûn
@nan
2014年の論文
@ja
2014年学术文章
@wuu
2014年学术文章
@zh
2014年学术文章
@zh-cn
2014年学术文章
@zh-hans
2014年学术文章
@zh-my
2014年学术文章
@zh-sg
2014年學術文章
@yue
2014年學術文章
@zh-hant
name
Discovery of brainwide neural- ...... supervised structure learning.
@en
Discovery of brainwide neural- ...... supervised structure learning.
@nl
type
label
Discovery of brainwide neural- ...... supervised structure learning.
@en
Discovery of brainwide neural- ...... supervised structure learning.
@nl
prefLabel
Discovery of brainwide neural- ...... supervised structure learning.
@en
Discovery of brainwide neural- ...... supervised structure learning.
@nl
P2093
P2860
P356
P1433
P1476
Discovery of brainwide neural- ...... supervised structure learning.
@en
P2093
Carey E Priebe
James W Truman
Joshua T Vogelstein
Marta Zlatic
Rex A Kerr
P2860
P304
P356
10.1126/SCIENCE.1250298
P4011
f7fba80c3f1552920feb752183f06751b6aeb4e3
P407
P577
2014-03-27T00:00:00Z