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Precision in Cortical Message Passing. Rosalyn J. Moran Wellcome Trust Centre for Neuroimaging 1 st Workshop on the Free Energy Principle, ION, UCL, July 5 th 2012. Outline. Predicting & Estimating Precision under the Free Energy Principle - Laplace and Mean Field Assumptions
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Precision in Cortical Message Passing Rosalyn J. Moran WellcomeTrust Centre for Neuroimaging 1st Workshop on the Free Energy Principle, ION, UCL, July 5th 2012.
Outline Predicting & Estimating Precision under the Free Energy Principle - Laplace and Mean Field Assumptions Hypothesised Neuronal Implementation & the role of Neuromodulators - Gain effects on primary neurotransmission Cholinergic Neuromodulation& Certainty Effects on Auditory mismatch negativity - Theoretical simulation of perception Testing Cholinergic Neuromodulation - DCM characterization of Event Related Responses
Outline Predicting & Estimating Precision under the Free Energy Principle - Laplace and Mean Field Assumptions Hypothesised Neuronal Implementation & the role of Neuromodulators - Gain effects on primary neurotransmission Cholinergic Neuromodulation& Certainty Effects on Auditory mismatch negativity - Theoretical simulation of perception Testing Cholinergic Neuromodulation - DCM characterization of Event Related Responses
Predicting & Estimating Precision under the Free Energy Principle Hierarchical, Dynamic & Uncertain causes in the environment generate sensory signals Different Levels of the hierarchy and/or different sensory signals may confer more precise Information
The Environment Hierarchical, Dynamic
The Environment Hierarchical, Dynamic & Uncertain causes generate sensory signals y y
The Inversion Estimate: Hierarchical, Dynamic & Uncertainty of sensory signals to minimise the surprise of the sensory signals Minimise Free Energy Minimise Surprise Time averaged Surprise(Ergodicity) MinimiseF at every point in time States, parameters & noise The Brain’s Response to y … A Tractable Problem y y
Outline Predicting & Estimating Precision under the Free Energy Principle - Laplace and Mean Field Assumptions Hypothesised Neuronal Implementation & the role of Neuromodulators - Gain effects on primary neurotransmission Cholinergic Neuromodulation& Certainty Effects on Auditory mismatch negativity - Theoretical simulation of perception Testing Cholinergic Neuromodulation - DCM characterization of Event Related Responses
Minimising Free Energy The Laplace Assumption: The brain assumes gaussianrandom fluctuations 20 25 1 5 10 15 Smooth noise correlations within levels Markov properties between levels y 0 0 20 20 1 1 5 5 10 10 25 25 15 15 Gradients a function of error terms weighted by the precisions at each level: How might precisions be encoded?
Superficial pyramidal cells Deep pyramidal cells Gradients of Free Energy Precision Dependent Backward predictions Forward prediction error Perceiving multiple hierarchical levels together: errors can have a greater or lesser effect y A multiplicative term that stays within levels: Candidate mechanisms: local lateral inhibition & neuromodulators
Gain control at superficial pyramidal cells Neuromodulators: Anatomically deployed to provide input in multiple regions EgSarter et al. 2009 Local Glutamate & GABA Long Range Glutamate Diffuse projections Neuromodulators Acetylcholine Dopamine y
Gain control at superficial pyramidal cells Neuromodulators: Physiologically equipped to provide gain control Dopaminergic Projections from VTA/SNc Cholinergic Projections from Basal Forebrain Activity at D1 receptors stimulates adenylyl cyclase modulating postsynaptic currents Activity at muscarinic receptors enhances EPSPs through K-current modulation y
Dendritic spine Presynaptic terminals Gain control at superficial pyramidal cells Neuromodulators: Physiologically equipped to provide gain control Dopaminergic Projections from VTA/SNc Cholinergic Projections from Basal Forebrain Excitatory (AMPA) receptors Modulatory receptor Inhibitory (GABAA) receptors y error precision Precision-weighted error
Outline Predicting & Estimating Precision under the Free Energy Principle - Laplace and Mean Field Assumptions Hypothesised Neuronal Implementation & the role of Neuromodulators - Gain effects on primary neurotransmission Cholinergic Neuromodulation& Certainty Effects on Auditory mismatch negativity - Theoretical simulation of perception Testing Cholinergic Neuromodulation - DCM characterization of Event Related Responses
Testing error precision modulation by Acetylcholine:The Framework Simulate Experiment 7 Auditory Stimuli: Pure tones presented in mini-blocks Recognition Dynamics Under Placebo & Cholinergic Enhancement Freq time Mismatch Negativity ~150 ms
Testing error precision modulation by Acetylcholine:The Sensory Data Recognition Dynamics There was a particular sound v1 The sound has dynamics determined by properties, Frequency and Amplitude x1 x2 Sensations
Testing error precision modulation by Acetylcholine:The Sensory Data C =4 A two level hierarchy Freq time v1 x1 x2 Sensations
Testing error precision modulation by Acetylcholine:The Sensory Data A two level hierarchy C = 2 Freq time v1 x1 x2 Sensations
Testing error precision modulation by Acetylcholine:The Inversion: assume different precision estimates Freq time Sensations Placebo ACh
Testing error precision modulation by Acetylcholine:The Recognition Dynamics under different precision estimates 80 80 d1 d2 d10 60 60 40 40 20 20 time 0 0 Freq -20 -20 Placebo -40 -40 Sensations ACh -60 -60 -80 -80 0 50 100 150 200 250 300 0 50 100 150 200 250 300 Simulated ERP ACh Simulated ERP Placebo Precision weighted PE Time (msec) Time (msec)
Testing error precision modulation by Acetylcholine:The MMN itself under different precision estimates 80 80 d1 d2 d10 60 60 40 40 More Certain Environment Until oddball 20 20 Certain Environment Until oddball 0 0 -20 -20 -40 -40 -60 -60 -80 -80 0 50 100 150 200 250 300 0 50 100 150 200 250 300 Simulated ERP ACh Simulated ERP Placebo 25 20 Precision weighted PE 15 Simulated MMN Placebo Simulated MMN ACh(more Precision) 10 Precision weighted PE 5 0 -5 Tone is predicted Tone is predicted Time (msec) Time (msec)
Outline Predicting & Estimating Precision under the Free Energy Principle - Laplace and Mean Field Assumptions Hypothesised Neuronal Implementation & the role of Neuromodulators - Gain effects on primary neurotransmission Cholinergic Neuromodulation& Certainty Effects on Auditory mismatch negativity - Theoretical simulation of perception Testing Cholinergic Neuromodulation - DCM characterization of Event Related Responses
Testing error precision modulation by Acetylcholine: Real Experiment 7 Auditory Stimuli: Pure tones presented in mini-blocks Under Placebo & Cholinergic Enhancement Freq time Mismatch Negativity ~150 ms
Scalp Effects: MMN Simulated MMN Galantamine (more Precision) Simulated MMN Placebo More Certain Environment Until oddball Certain Environment Until oddball Tone is predicted Tone is predicted 2.5 2 1.5 25 1 20 Precision weighted PE Recorded MMN Galantamine Recorded MMN Placebo 0.5 15 * 10 0 * 5 -0.5 channel C21 0 -1 -5 -1.5
Superficial pyramidal cells Deep pyramidal cells Physiological & Hierarchical PredictionsRecall: Backward predictions Forward prediction error A multiplicative term that stays within levels: Candidate mechanisms: neuromodulators
Gain Modulation at Supragranular Pyramidal Cells Acetylcholine: Where does it affect network processing? What region? What layer? Inhibitory interneuron Superficial pyramidal Forward (Bottom-up) Connection Backward (Top-Down) Connection Gain Modulation at Deep Pyramidal Cells Spiny stellate Deep pyramidal Backward connections IFG IFG MTG MTG A1 A1 Forward connections
Acetylcholine: Where does it affect network processing? What region? What layer? Electromagnetic forward model:neural activityEEGMEG LFP Time Domain ERP Data … Hemodynamicforward model:neural activityBOLD Time Domain Data DCM Forward (Bottom-up) Connection Backward (Top-Down) Connection Forward (Bottom-up) Connection Backward (Top-Down) Connection IFG IFG IFG IFG MTG MTG A1 MTG MTG A1 A1 A1 Neural state equation: EEG/MEG fMRI Neural Mass Model complicated neuronal model Fast time scale simple neuronal model Slow time scale
Acetylcholine: Where does it affect network processing? DCM for ERPs : Canonical Microcircuit What region? What layer? Inhibitory interneuron Superficial pyramidal Forward (Bottom-up) Connection Backward (Top-Down) Connection Forward (Bottom-up) Connection Backward (Top-Down) Connection Spiny stellate Deep pyramidal Backward connections IFG IFG IFG IFG MTG MTG A1 MTG MTG A1 A1 A1 Forward connections
Acetylcholine: Bayesian Model Selection IFG IFG IFG IFG IFG IFG IFG IFG IFG IFG IFG IFG IFG IFG IFG 1000 MTG MTG MTG MTG MTG MTG MTG ∆F = 153 MTG MTG MTG MTG MTG MTG MTG A1 A1 A1 A1 A1 A1 A1 A1 A1 A1 A1 A1 A1 A1 800 600 Intrinsic Modulation (models 1-6); Extrinsic Modulation (models 7-10) Relative Log Model Evidence Model 1 Model 3 400 Model 4 IFG IFG IFG IFG IFG IFG Model 3 200 MTG MTG MTG MTG MTG MTG 0 A1 A1 1A M10 M8 A1 A1 M9 M7 M1 M2 M3 M4 M5 M6 A1 Model 5 Model 6 Model 7 Model 8 MTG MTG MTG MTG A1 A1 Model 2 Model 10 Model 9 Forward Connection Backward Connection
Gain Modulation at Supragranular Pyramidal Cells Acetylcholine: Direction of Gain Modulation In A1 Inhibitory interneuron Superficial pyramidal Superficial Pyramidal Cell Gain Spiny stellate 0.06 * Deep pyramidal 0.05 0.04 Backward connections Modulatory Effect of Galantamine 0.03 0.02 0.01 Forward connections Placebo Baseline Galantamine Placebo ACh
Summary • Precision estimates enable Bayes optimal perception • Hierarchical inference enables different precision effects at different levels • Precision estimates control the impact of errors in Free Energy minimisation under the Laplace Assumption • Neuromodulators are anatomically & physiologically equipped to signal precision in this scheme • Neuromodulatory systems could control precision at different hierarchical levels • Cholinergic Neuromodulation controls gain in superficial pyramidal cells in early sensory regions; conforming to Free Energy Predictions of enhanced precision on sensory prediction errors
Thank You Acknowledgments Karl Friston Ray Dolan KlaasEnno Stephan MkaelSymmonds Nicholas Wright Pablo Campo Methods Group Emotion Group