Learning sensorimotor transformations

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Learning sensorimotor transformations Maurice J. Chacron

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Learning sensorimotor transformations. Maurice J. Chacron. The principle of sensory reafference:. Von Holst and Mittelstaedt, 1950. Movements can lead to sensory reafference (e.g. body movements) An efference copy and the reafferent stimulus are combined and give rise to the - PowerPoint PPT Presentation

Transcript of Learning sensorimotor transformations

Page 1: Learning sensorimotor transformations

Learning sensorimotor transformations

Maurice J. Chacron

Page 2: Learning sensorimotor transformations

The principle of sensory reafference:

Von Holstand Mittelstaedt, 1950

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• Movements can lead to sensory reafference (e.g. body movements)

• An efference copy and the reafferent stimulus are combined and give rise to the

perceived stimulus.

• Question: how is the efference copy combined with the reafferent stimulus to give rise to the perceived stimulus?

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Mechanical tickling experiment:

Blakemore, Frith, and Wolpert, J. Cogn. Neurosci. (1999)

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• Motor command arm movement

• Reafference tactile stimulus • Perceived stimulus tickling sensation

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Wolpert andFlanagan, 2001

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• The predicted sensory stimulus (efference copy) is compared to the actual stimulus

• If there is a discrepancy, then the subject perceives the stimulus as causing a tickling sensation.

• The efference copy contains both temporal and spatial information about the reafferent stimulus.

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Adaptive cancellation of sensory reafference

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Motor learning:

Martin et al. 1996

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• Sensorimotor coordination does not require the cerebellum.

• Adaptation to novel conditions does require cerebellar function.

• Adaptation is an error driven process.

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Cerebellar Plasticity:

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Co-activation of parallel and climbing fiber input gives rise toLTD

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• How does cerebellar LTD help achieve cancellation of expected stimuli?

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Weakly electric Fish

• Electric fish emit electric fields through an electric organ in their tail.

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Trout Electric Fish

Anatomy

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• The cerebellum of electric fish is very developed.

• Cerebellar anatomy is conserved across vertebrates.

• Electric fish have “simple” anatomy and behaviors.

• Electric fish are a good model system to study cancellation of reafferent input.

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Electrolocation

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• Electric fish use perturbations of their self-generated electric field to interact with their environment.

• Pulses generated by the animal can activate their own electrosensory system.

• Are there mechanisms by which sensory neurons can “ignore” these reafferent stimuli?

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Cerebellar-like anatomy:

Bell, 2001

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Bell, 2001

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• Changes in the reafferent stimulus cause changes in the efference copy

• What mechanisms underlie these changes?

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Plasticity experiment:

Parallel fiber

granule cell

sensory input

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Anti-Hebbian STDP:

postsynapticpresynaptic

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• Cancellation of unwanted stimuli requires precise timing.

• Anti-Hebbian STDP underlies the adaptive cancellation of reafferent input.

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How?

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Adaptive cancellation of tail bends

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Cerebellar-like anatomy

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Anatomy

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Burst firing in pyramidal cells

Burst-timing dependent plasticity

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Model of adaptive cancellation in the electrosensory system

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Model Assumptions: How to “carve out” a negative image

• A subset of cerebellar granule cells fires at every phase of the stimulus

• Probability to fire a burst is largest/smallest at a local stimulus maximum/minimum

• Weights from synapses near the local maximum/ minimum will be most/least depressed

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Graphically…

Phase (rad)0 2ππ

stimulus

Most depression

Least depression

Synaptic weights

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Extra assumptions

• Non-associative potentiation (in order to prevent the weights from going to zero).

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Does the model work?

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Bursting is frequency dependent

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Bursts and isolated spikes code for different features of a stimulus

Oswald et al. 2004

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Adaptive learning

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Summary

• Sensorimotor transformations require learning.

• This learning must be adaptive (e.g. adapt to changes during development, etc…)

• Anti-Hebbian plasticity provides a mechanism for adaptive cancellation of reafferent stimuli