about
Dynamic excitatory and inhibitory gain modulation can produce flexible, robust and optimal decision-makingTemporal Information of Directed Causal Connectivity in Multi-Trial ERP Data using Partial Granger Causality.Computational study of hippocampal-septal theta rhythm changes due to β-amyloid-altered ionic channelsNeural circuit interactions between the dorsal raphe nucleus and the lateral hypothalamus: an experimental and computational study.Can post-error dynamics explain sequential reaction time patterns?Multi-Kernel Learning with Dartel Improves Combined MRI-PET Classification of Alzheimer's Disease in AIBL Data: Group and Individual Analyses.An integrated modelling framework for neural circuits with multiple neuromodulators.Toward a multiscale modeling framework for understanding serotonergic function.Signal Propagation in the Human Visual Pathways: An Effective Connectivity Analysis.Directed neural connectivity changes in robot-assisted gait training: a partial Granger causality analysis.On self-feedback connectivity in neural mass models applied to event-related potentials.Functions and computational principles of serotonergic and related systems at multiple scales.Time-varying perturbations can distinguish among integrate-to-threshold models for perceptual decision making in reaction time tasks.Optimality and robustness of a biophysical decision-making model under norepinephrine modulation.Closed-Form Approximations of First-Passage Distributions for a Stochastic Decision-Making Model.Correction to 'An integrated modelling framework for neural circuits with multiple neuromodulators'Network properties of a computational model of the dorsal raphe nucleus.Increased number of orexin/hypocretin neurons with high and prolonged external stress-induced depression.A mathematical model to explore the interdependence between the serotonin and orexin/hypocretin systems.Beta-amyloid induced changes in A-type K⁺ current can alter hippocampo-septal network dynamics.Prescriptive variability of drugs by general practitioners.A multimodal interface to resolve the Midas-Touch problem in gaze controlled wheelchair.Directed Functional Connectivity in Fronto-Centroparietal Circuit Correlates With Motor Adaptation in Gait Training.Integrated dopaminergic neuronal model with reduced intracellular processes and inhibitory autoreceptors.Toward Optimization of Gaze-Controlled Human-Computer Interaction: Application to Hindi Virtual Keyboard for Stroke Patients.A computational study of astrocytic glutamate influence on post-synaptic neuronal excitability.Potassium and sodium microdomains in thin astroglial processes: A computational model study.A hybrid computational approach for efficient Alzheimer's disease classification based on heterogeneous data.Bridging Neural and Computational Viewpoints on Perceptual Decision-MakingA neural circuit model of decision uncertainty and change-of-mindReduced computational models of serotonin synthesis, release, and reuptakeRobust EEG/MEG Based Functional Connectivity with the Envelope of the Imaginary Coherence: Sensor Space AnalysisM/EEG-Based Bio-Markers to Predict the MCI and Alzheimer's Disease: A Review From the ML PerspectiveA practical computerized decision support system for predicting the severity of Alzheimer's disease of an individualOpportunities for multiscale computational modelling of serotonergic drug effects in Alzheimer's disease
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P50
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onderzoeker
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հետազոտող
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KongFatt Wong-Lin
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KongFatt Wong-Lin
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KongFatt Wong-Lin
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KongFatt Wong-Lin
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KongFatt Wong-Lin
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KongFatt Wong-Lin
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P108
P106
P1153
26532134800
P2456
P31
P496
0000-0001-8724-4398