Sensory integration dynamics in a hierarchical network explains choice probabilities in cortical area MT
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Albert Compte | Jaime de la Rocha | Alex Roxin | Klaus Wimmer | Alfonso Renart | Diogo Peixoto | A. Renart | A. Compte | K. Wimmer | Alex Roxin | Jaime de la Rocha | Diogo Peixoto
[1] K. H. Britten,et al. Responses of neurons in macaque MT to stochastic motion signals , 1993, Visual Neuroscience.
[2] L. P. O'Keefe,et al. The influence of fixational eye movements on the response of neurons in area MT of the macaque , 1998, Visual Neuroscience.
[3] H. Sompolinsky,et al. Chaos in Neuronal Networks with Balanced Excitatory and Inhibitory Activity , 1996, Science.
[4] Brent Doiron,et al. Correlated neural variability in persistent state networks , 2012, Proceedings of the National Academy of Sciences.
[5] M. Shadlen,et al. Neural Activity in Macaque Parietal Cortex Reflects Temporal Integration of Visual Motion Signals during Perceptual Decision Making , 2005, The Journal of Neuroscience.
[6] P. Dayan,et al. Supporting Online Material Materials and Methods Som Text Figs. S1 to S9 References the Asynchronous State in Cortical Circuits , 2022 .
[7] Anders Ledberg,et al. Neurobiological Models of Two-Choice Decision Making Can Be Reduced to a One-Dimensional Nonlinear Diffusion Equation , 2008, PLoS Comput. Biol..
[8] Bingni W. Brunton,et al. Distinct relationships of parietal and prefrontal cortices to evidence accumulation , 2014, Nature.
[9] K. H. Britten,et al. A relationship between behavioral choice and the visual responses of neurons in macaque MT , 1996, Visual Neuroscience.
[10] Jaime de la Rocha,et al. Supplementary Information for the article ‘ Correlation between neural spike trains increases with firing rate ’ , 2007 .
[11] D. Levi,et al. Receptive versus perceptive fields from the reverse-correlation viewpoint , 2006, Vision Research.
[12] Alexandre Pouget,et al. Insights from a Simple Expression for Linear Fisher Information in a Recurrently Connected Population of Spiking Neurons , 2011, Neural Computation.
[13] A. Pouget,et al. Neural correlations, population coding and computation , 2006, Nature Reviews Neuroscience.
[14] M. Shadlen,et al. Representation of Confidence Associated with a Decision by Neurons in the Parietal Cortex , 2009, Science.
[15] Peter Dayan,et al. The Effect of Correlated Variability on the Accuracy of a Population Code , 1999, Neural Computation.
[16] T. Uka,et al. Dynamic Readout of Behaviorally Relevant Signals from Area MT during Task Switching , 2009, Neuron.
[17] W. Newsome,et al. Estimates of the Contribution of Single Neurons to Perception Depend on Timescale and Noise Correlation , 2009, The Journal of Neuroscience.
[18] Pieter R. Roelfsema,et al. The Representation of Erroneously Perceived Stimuli in the Primary Visual Cortex , 2001, Neuron.
[19] C. Law,et al. The relative influences of priors and sensory evidence on an oculomotor decision variable during perceptual learning. , 2008, Journal of neurophysiology.
[20] M. Bethge,et al. Inferring decoding strategies from choice probabilities in the presence of correlated variability , 2013, Nature Neuroscience.
[21] Gustavo Deco,et al. Neural Network Mechanisms Underlying Stimulus Driven Variability Reduction , 2012, PLoS Comput. Biol..
[22] L. Maloney,et al. The Irrationality of Categorical Perception , 2013, The Journal of Neuroscience.
[23] H. Sompolinsky,et al. Theory of orientation tuning in visual cortex. , 1995, Proceedings of the National Academy of Sciences of the United States of America.
[24] A. Litwin-Kumar,et al. Slow dynamics and high variability in balanced cortical networks with clustered connections , 2012, Nature Neuroscience.
[25] B. Cumming,et al. Decision-related activity in sensory neurons reflects more than a neuron’s causal effect , 2009, Nature.
[26] K. Krug. A common neuronal code for perceptual processes in visual cortex? Comparing choice and attentional correlates in V5/MT. , 2004, Philosophical transactions of the Royal Society of London. Series B, Biological sciences.
[27] Xin Huang,et al. Noise correlations in cortical area MT and their potential impact on trial-by-trial variation in the direction and speed of smooth-pursuit eye movements. , 2009, Journal of neurophysiology.
[28] P. Roelfsema,et al. Simultaneous selection by object-based attention in visual and frontal cortex , 2014, Proceedings of the National Academy of Sciences.
[29] Gustavo Deco,et al. Stimulus-dependent variability and noise correlations in cortical MT neurons , 2013, Proceedings of the National Academy of Sciences.
[30] Xiao-Jing Wang,et al. A Recurrent Network Mechanism of Time Integration in Perceptual Decisions , 2006, The Journal of Neuroscience.
[31] Gasper Tkacik,et al. Optimal population coding by noisy spiking neurons , 2010, Proceedings of the National Academy of Sciences.
[32] E H Adelson,et al. Spatiotemporal energy models for the perception of motion. , 1985, Journal of the Optical Society of America. A, Optics and image science.
[33] Alexander S. Ecker,et al. The Effect of Noise Correlations in Populations of Diversely Tuned Neurons , 2011, The Journal of Neuroscience.
[34] M. A. Smith,et al. Stimulus Dependence of Neuronal Correlation in Primary Visual Cortex of the Macaque , 2005, The Journal of Neuroscience.
[35] Romain Brette,et al. The Brian Simulator , 2009, Front. Neurosci..
[36] Eric Shea-Brown,et al. Impact of Correlated Neural Activity on Decision-Making Performance , 2012, Neural Computation.
[37] D. Wolpert,et al. Changing your mind: a computational mechanism of vacillation , 2009, Nature.
[38] Xiao-Jing Wang,et al. Probabilistic Decision Making by Slow Reverberation in Cortical Circuits , 2002, Neuron.
[39] Bruce G Cumming,et al. Decision-related activity in sensory neurons: correlations among neurons and with behavior. , 2012, Annual review of neuroscience.
[40] A. Pouget,et al. The Cost of Accumulating Evidence in Perceptual Decision Making , 2012, The Journal of Neuroscience.
[41] Timothy D. Hanks,et al. Bounded Integration in Parietal Cortex Underlies Decisions Even When Viewing Duration Is Dictated by the Environment , 2008, The Journal of Neuroscience.
[42] G. DeAngelis,et al. Neural correlates of multisensory cue integration in macaque MSTd , 2008, Nature Neuroscience.
[43] G. DeAngelis,et al. Contribution of Area MT to Stereoscopic Depth Perception Choice-Related Response Modulations Reflect Task Strategy , 2004, Neuron.
[44] Victor A. F. Lamme,et al. Synchrony and covariation of firing rates in the primary visual cortex during contour grouping , 2004, Nature Neuroscience.
[45] H. Sompolinsky,et al. Population coding in neuronal systems with correlated noise. , 2001, Physical review. E, Statistical, nonlinear, and soft matter physics.
[46] J. Movshon,et al. The analysis of visual motion: a comparison of neuronal and psychophysical performance , 1992, The Journal of neuroscience : the official journal of the Society for Neuroscience.
[47] W. Newsome,et al. Context-Dependent Changes in Functional Circuitry in Visual Area MT , 2008, Neuron.
[48] W. Newsome,et al. The Variable Discharge of Cortical Neurons: Implications for Connectivity, Computation, and Information Coding , 1998, The Journal of Neuroscience.
[49] D. Amit,et al. Model of global spontaneous activity and local structured activity during delay periods in the cerebral cortex. , 1997, Cerebral cortex.
[50] Yong Gu,et al. Perceptual Learning Reduces Interneuronal Correlations in Macaque Visual Cortex , 2011, Neuron.
[51] Stefan Treue,et al. Feature-based attention influences motion processing gain in macaque visual cortex , 1999, Nature.
[52] J. Assad,et al. Neural Activity in the Middle Temporal Area and Lateral Intraparietal Area during Endogenously Cued Shifts of Attention , 2009, The Journal of Neuroscience.
[53] J. Movshon,et al. A computational analysis of the relationship between neuronal and behavioral responses to visual motion , 1996, The Journal of neuroscience : the official journal of the Society for Neuroscience.
[54] J. Maunsell,et al. A Neuronal Population Measure of Attention Predicts Behavioral Performance on Individual Trials , 2010, The Journal of Neuroscience.
[55] Andrew M. Clark,et al. Stimulus onset quenches neural variability: a widespread cortical phenomenon , 2010, Nature Neuroscience.
[56] Christof Koch,et al. Temporal Precision of Spike Trains in Extrastriate Cortex of the Behaving Macaque Monkey , 1999, Neural Computation.
[57] Gustavo Deco,et al. Prediction of Decisions from Noise in the Brain before the Evidence is Provided , 2011, Front. Neurosci..
[58] Jude F. Mitchell,et al. Spatial Attention Decorrelates Intrinsic Activity Fluctuations in Macaque Area V4 , 2009, Neuron.
[59] Ehud Zohary,et al. Correlated neuronal discharge rate and its implications for psychophysical performance , 1994, Nature.
[60] Andreas K. Engel,et al. Buildup of Choice-Predictive Activity in Human Motor Cortex during Perceptual Decision Making , 2009, Current Biology.
[61] A. Parker,et al. Perceptually Bistable Three-Dimensional Figures Evoke High Choice Probabilities in Cortical Area MT , 2001, The Journal of Neuroscience.
[62] Marc-Oliver Gewaltig,et al. Towards Reproducible Descriptions of Neuronal Network Models , 2009, PLoS Comput. Biol..
[63] John H R Maunsell,et al. Potential confounds in estimating trial-to-trial correlations between neuronal response and behavior using choice probabilities. , 2012, Journal of neurophysiology.
[64] J. Gold,et al. The neural basis of decision making. , 2007, Annual review of neuroscience.
[65] J. Maunsell,et al. Attention improves performance primarily by reducing interneuronal correlations , 2009, Nature Neuroscience.
[66] W. Bair,et al. Correlated Firing in Macaque Visual Area MT: Time Scales and Relationship to Behavior , 2001, The Journal of Neuroscience.
[67] A. Compte,et al. Bump attractor dynamics in prefrontal cortex explains behavioral precision in spatial working memory , 2014, Nature Neuroscience.