about
Processing and Analysis of Multichannel Extracellular Neuronal Signals: State-of-the-Art and ChallengesHigh Stimulus-Related Information in Barrel Cortex Inhibitory InterneuronsQSpike tools: a generic framework for parallel batch preprocessing of extracellular neuronal signals recorded by substrate microelectrode arraysSpyke Viewer: a flexible and extensible platform for electrophysiological data analysisParallel processing in the honeybee olfactory pathway: structure, function, and evolution.Rapid odor processing in the honeybee antennal lobe network.Analyzing large-scale spiking neural data with HRLAnalysis(™)A Framework for the Comparative Assessment of Neuronal Spike Sorting Algorithms towards More Accurate Off-Line and On-Line Microelectrode Arrays Data AnalysisOpen source tools for the information theoretic analysis of neural dataImplications of hybridization, NUMTs, and overlooked diversity for DNA Barcoding of Eurasian ground squirrels.Inhibition and modulation of rhythmic neuronal spiking by noise.NeuroQuest: a comprehensive analysis tool for extracellular neural ensemble recordings.Long-range intralaminar noise correlations in the barrel cortex.Extracting the Behaviorally Relevant Stimulus: Unique Neural Representation of Farnesol, a Component of the Recruitment Pheromone of Bombus terrestris.Elemental and configural olfactory coding by antennal lobe neurons of the honeybee (Apis mellifera).Variance Based Measure for Optimization of Parametric Realignment Algorithms.ToolConnect: A Functional Connectivity Toolbox for In vitro Networks.Propagation of spontaneous slow-wave activity across columns and layers of the adult rat barrel cortex in vivo.Automated quantification of neuronal networks and single-cell calcium dynamics using calcium imaging.nSTAT: open-source neural spike train analysis toolbox for Matlab.PRANAS: A New Platform for Retinal Analysis and Simulation.Carbon nanotube electrodes for retinal implants: A study of structural and functional integration over time.Database analysis of simulated and recorded electrophysiological datasets with PANDORA's toolbox.SPICODYN: A Toolbox for the Analysis of Neuronal Network Dynamics and Connectivity from Multi-Site Spike Signal Recordings.Laminar and Columnar Structure of Sensory-Evoked Multineuronal Spike Sequences in Adult Rat Barrel Cortex In Vivo.Understanding and improving photo-control of ion channels in nociceptors with azobenzene photo-switches.NeoAnalysis: a Python-based toolbox for quick electrophysiological data processing and analysis.Estimating instantaneous irregularity of neuronal firing.Investigation of the Functional Retinal Output Using Microelectrode Arrays.Neural correlates of side-specific odour memory in mushroom body output neurons.Local interneurons and projection neurons in the antennal lobe from a spiking point of view.Multimodal integration and stimulus categorization in putative mushroom body output neurons of the honeybee.On the Way to Large-Scale and High-Resolution Brain-Chip Interfacing
P2860
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P2860
description
2008 nî lūn-bûn
@nan
2008 թուականի Յուլիսին հրատարակուած գիտական յօդուած
@hyw
2008 թվականի հուլիսին հրատարակված գիտական հոդված
@hy
2008年の論文
@ja
2008年論文
@yue
2008年論文
@zh-hant
2008年論文
@zh-hk
2008年論文
@zh-mo
2008年論文
@zh-tw
2008年论文
@wuu
name
FIND--a unified framework for neural data analysis.
@ast
FIND--a unified framework for neural data analysis.
@en
type
label
FIND--a unified framework for neural data analysis.
@ast
FIND--a unified framework for neural data analysis.
@en
prefLabel
FIND--a unified framework for neural data analysis.
@ast
FIND--a unified framework for neural data analysis.
@en
P2093
P1433
P1476
FIND--a unified framework for neural data analysis.
@en
P2093
Ad Aertsen
Martin P Nawrot
Ralph Meier
P304
P356
10.1016/J.NEUNET.2008.06.019
P577
2008-07-03T00:00:00Z