| Models |
1. |
A cardiac cell simulator (Puglisi and Bers 2001), applied to the QT interval (Busjahn et al 2004)
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2. |
A comparison of mathematical models of mood in bipolar disorder (Cochran et al. 2017)
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3. |
A CORF computational model of a simple cell that relies on LGN input (Azzopardi & Petkov 2012)
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4. |
A detailed and fast model of extracellular recordings (Camunas-Mesa & Qurioga 2013)
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5. |
A dynamic model of the canine ventricular myocyte (Hund, Rudy 2004)
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6. |
A gap junction network of Amacrine Cells controls Nitric Oxide release (Jacoby et al 2018)
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7. |
A model for focal seizure onset, propagation, evolution, and progression (Liou et al 2020)
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8. |
A neural mass model for critical assessment of brain connectivity (Ursino et al 2020)
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9. |
A neural mass model of cross frequency coupling (Chehelcheraghi et al 2017)
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10. |
A neurocomputational model of classical conditioning phenomena (Moustafa et al. 2009)
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11. |
A reinforcement learning example (Sutton and Barto 1998)
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12. |
A simple integrative electrophysiological model of bursting GnRH neurons (Csercsik et al. 2011)
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13. |
Activity constraints on stable neuronal or network parameters (Olypher and Calabrese 2007)
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14. |
Analyzing neural time series data theory and practice (Cohen 2014)
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15. |
Auditory nerve spontaneous rate histograms (Jackson and Carney 2005)
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16. |
Binocular energy model set for binocular neurons in optic lobe of praying mantis (Rosner et al 2019)
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17. |
Brain Dynamics Toolbox (Heitmann & Breakspear 2016, 2017, 2018)
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18. |
Cat auditory nerve model (Zilany and Bruce 2006, 2007)
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19. |
Cerebellar stellate cells: changes in threshold, latency and frequency of firing (Mitry et al 2020)
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20. |
Cochlear implant models (Bruce et al. 1999a, b, c, 2000)
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21. |
Continuous lateral oscillations as a mechanism for taxis in Drosophila larvae (Wystrach et al 2016)
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22. |
Disrupted information processing in Fmr1-KO mouse layer 4 barrel cortex (Domanski et al 2019)
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23. |
Dynamics of sleep oscillations coupled to brain temperature on multiple scales (Csernai et al 2019)
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24. |
DynaSim: a MATLAB toolbox for neural modeling and simulation (Sherfey et al 2018)
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25. |
Evaluation of stochastic diff. eq. approximation of ion channel gating models (Bruce 2009)
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26. |
Fixed point attractor (Hasselmo et al 1995)
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27. |
Gamma and theta rythms in biophysical models of hippocampus circuits (Kopell et al. 2011)
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28. |
Generating coherent patterns of activity from chaotic neural networks (Sussillo and Abbott 2009)
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29. |
High-Res. Recordings Using a Real-Time Computational Model of the Electrode (Brette et al. 2008)
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30. |
Hippocampal context-dependent retrieval (Hasselmo and Eichenbaum 2005)
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31. |
Hodgkin–Huxley model with fractional gating (Teka et al. 2016)
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32. |
Human seizures couple across spatial scales through travelling wave dynamics (Martinet et al 2017)
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33. |
Implementation issues in approximate methods for stochastic Hodgkin-Huxley models (Bruce 2007)
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34. |
Inhibitory cells enable sparse coding in V1 model (King et al. 2013)
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35. |
Integrate and fire model code for spike-based coincidence-detection (Heinz et al. 2001, others)
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36. |
Levodopa-Induced Toxicity in Parkinson's Disease (Muddapu et al, 2022)
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37. |
Logarithmic distributions prove that intrinsic learning is Hebbian (Scheler 2017)
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38. |
Long-term adaptation with power-law dynamics (Zilany et al. 2009)
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39. |
Loss of phase-locking in non-weakly coupled inhib. networks of type-I neurons (Oh and Matveev 2009)
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40. |
Mathematics for Neuroscientists (Gabbiani and Cox 2010)
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41. |
MATLAB for brain and cognitive scientists (Cohen 2017)
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42. |
Mature and young adult-born dentate granule cell models (T2N interface) (Beining et al. 2017)
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43. |
Method for counting motor units in mice (Major et al 2007)
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44. |
Method of probabilistic principle surfaces (PPS) (Chang and Ghosh 2001)
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45. |
Microglial cytokine network (Anderson et al., 2015)
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46. |
Model of generalized periodic discharges in acute hepatic encephalopathy (Song et al 2019)
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47. |
Model of neural responses to amplitude-modulated tones (Nelson and Carney 2004)
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48. |
Modeling conductivity profiles in the deep neocortical pyramidal neuron (Wang K et al. 2013)
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49. |
Models analysis for auditory-nerve synapse (Zhang and Carney 2005)
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50. |
Models for diotic and dichotic detection (Davidson et al. 2009)
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51. |
Multi-timescale adaptive threshold model (Kobayashi et al 2009)
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52. |
Multiscale model of excitotoxicity in PD (Muddapu and Chakravarthy 2020)
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53. |
Multistability of clustered states in a globally inhibitory network (Chandrasekaran et al. 2009)
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54. |
Network topologies for producing limited sustained activation (Kaiser and Hilgetag 2010)
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55. |
Neural field model to reconcile structure with function in V1 (Rankin & Chavane 2017)
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56. |
Neural Mass Model for relationship between Brain Rhythms + Functional Connectivity (Ricci et al '21)
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57. |
Neural mass model of spindle generation in the isolated thalamus (Schellenberger Costa et al. 2016)
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58. |
Neural mass model of the neocortex under sleep regulation (Costa et al 2016)
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59. |
Neural mass model of the sleeping thalamocortical system (Schellenberger Costa et al 2016)
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60. |
Neural model of two-interval discrimination (Machens et al 2005)
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61. |
Neural recruitment during synchronous multichannel microstimulation (Hokanson et al 2018)
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62. |
NeuroManager: a workflow analysis based simulation management engine (Stockton & Santamaria 2015)
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63. |
NN for proto-object based contour integration and figure-ground segregation (Hu & Niebur 2017)
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64. |
Nodose sensory neuron (Schild et al. 1994, Schild and Kunze 1997)
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65. |
Nonlinear neuronal computation based on physiologically plausible inputs (McFarland et al. 2013)
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66. |
Phase-locking analysis with transcranial magneto-acoustical stimulation (Yuan et al 2017)
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67. |
Polychronization: Computation With Spikes (Izhikevich 2005)
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68. |
Prefrontal cortical mechanisms for goal-directed behavior (Hasselmo 2005)
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69. |
Prefrontal–striatal Parkinsons comp. model of multicue category learning (Moustafa and Gluck 2011)
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70. |
Quantitative assessment of computational models for retinotopic map formation (Hjorth et al. 2015)
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71. |
Reduction of nonlinear ODE systems possessing multiple scales (Clewley et al. 2005)
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72. |
Response properties of an integrate and fire model (Zhang and Carney 2005)
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73. |
Role of KCNQ1 and IKs in cardiac repolarization (Silva, Rudy 2005)
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74. |
Single-cell comprehensive biophysical model of SN pars compacta (Muddapu & Chakravarthy 2021)
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75. |
Squid axon (Hodgkin, Huxley 1952) (LabAXON)
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76. |
Stimulated and physiologically induced APs: frequency and fiber diameter (Sadashivaiah et al 2018)
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77. |
Sympathetic neuron (Wheeler et al 2004)
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78. |
Synaptic damage underlies EEG abnormalities in postanoxic encephalopathy (Ruijter et al 2017)
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79. |
Synaptic strengths are critical in creating the proper output phasing in a CPG (Gunay et al 2019)
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80. |
The dynamics underlying pseudo-plateau bursting in a pituitary cell model (Teka et al. 2011)
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81. |
Two-cell inhibitory network bursting dynamics captured in a one-dimensional map (Matveev et al 2007)
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82. |
Voltage and light-sensitive Channelrhodopsin-2 model (ChR2) (Williams et al. 2013)
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