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What are we trying to explain? Multiple facets of a simple behavior. Stephen G. Lisberger Howard Hughes Medical Institute W.M. Keck Center for Integrative Neuroscience Department of Physiology, UCSF. What we are trying to explain. What does Barry have to do to hit a home run?.
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What are we trying to explain?Multiple facets of a simple behavior Stephen G. LisbergerHoward Hughes Medical Institute W.M. Keck Center for Integrative NeuroscienceDepartment of Physiology, UCSF
What does Barry have to do to hit a home run? • Sense ball motion and determine speed and direction of motion. • Decide whether or not to swing the bat. • Program the correct swing to meet the ball just in front of his right foot. • Make any corrections as the ball “moves”. • All in 400 ms!
Anatomy of pursuit Why are there so many different parts to the pursuit circuit? Perhaps each part of the circuit is doing a different computation. Caudate nucleus
The signals recorded in different areas are more similar than different: consider motor cortex (FPA), parietal cortex, and the cerebellum during pursuit • Transient and sustained responses • Directional tuning • Firing related to target speed • Similar latencies
Even neurons in the parietal cortex -- in area MST -- fire nicely during pursuit
Neural responses during the behavior don’t distinguish different parts of the pursuit circuit -- now what? • It’s especially troubling that all of these areas combine similar blends of signals related to eye velocity, head velocity, and visual motion. • The same would be true in the basal ganglia, probably. • The same would probably be true for neural activity related to Barry’s home run swing. • So, let’s look at the behavior and see if we can use similar signals to support different behavioral features.
What are we trying to explain -- the many features of the pursuit behavior. • Smooth eye movement persists without image motion. • Population decoding for visual-motor transformations (probably done at multiple levels) • On-line gain control • Target choice in real-world situations • Long-term adaptive changes (learning)
What are we trying to explain -- the many features of the pursuit behavior. • Smooth eye movement persists without image motion. • Population decoding for visual-motor transformations (probably done at multiple levels) • On-line gain control • Target choice in real-world situations • Long-term adaptive changes (learning)
Natural inputs show that image motion goes away during accurate pursuit. Visual input consists of a big pulse of image motion …followed by a time of very little image motion and big sustained eye motion
Continued tracking during image stabilization provides evidence for “eye velocity memory”
A simple feedback controller won’t show velocity memory, and requires high internal gain to achieve excellent tracking - T + I E + g E = g I = g (T – E) = gT – gEE + gE = gTE (1 + g) = gTGain = E / T = g / (1+g) Gain is 0.5, if g = 1Gain is 0.9, if g = 9 Gain is 0.99, if g = 99
An idea about how to create velocity memory with a positive feedback circuit Lisberger, Exp. Brain Res. Suppl 6: 501-514, 1982. What discharge would we expect if we recorded from F? Signals related to eye velocity. MST, FPA, and the cerebellum all potentially qualify. But this is a nuts-and-bolts function and we imagine it is supported by cerebellar circuits.
What are we trying to explain -- the many features of the pursuit behavior. • Smooth eye movement persists without image motion. • Population decoding for visual-motor transformations (probably done at multiple levels) • On-line gain control • Target choice in real-world situations • Long-term adaptive changes (learning)
How do we think about visual-motor transformations in terms of neural circuits? Parieto-ponto-cerebellar circuit Population code for image motion Preliminary command for eye velocity Motor command
How do we think about visual-motor transformations in terms of neural circuits? Parieto-ponto-cerebellar circuit MT Preliminary command for eye velocity Motor command
What are we trying to explain -- the many features of the pursuit behavior. • Smooth eye movement persists without image motion. • Population decoding for visual-motor transformations (probably done at multiple levels) • On-line gain control • Target choice in real-world situations • Long-term adaptive changes (learning)
So far, we’ve treated pursuit as a negative feedback control system with velocity memory Feedforward Gain retina Next, I’ll show that the feedforward gain of pursuit is variable. Gain control is another feature of pursuit that we need to understand at the level of neural circuits.
Use of perturbations to probe the gain of visual-motor transformations for pursuit Target position Research of Joshua Schwartz
Use of perturbations to probe the gain of visual-motor transformations for pursuit Target position Research of Joshua Schwartz
Use of perturbations to probe the gain of visual-motor transformations for pursuit Target position Research of Joshua Schwartz
Use of perturbations to probe the gain of visual-motor transformations for pursuit Target position Research of Joshua Schwartz
Perturbations cause large responses during pursuit: the gain is set to “high” During pursuit During fixation
Perturbations cause small responses during fixation: the gain is set to “low” During pursuit During fixation
Pursuit is a negative feedback control system with a variable feedforward gain VariableGain retina
How do we think about gain control in terms of neural circuits? Parieto-ponto-cerebellar circuit Gain control circuit MT ? Vector averaging Preliminary command for eye velocity X Motor command Site of gain control
Stimulation of FPA enhances the response to a perturbation delivered during fixation
Enhancement is in the direction of the perturbation, not in the direction of the evoked eye movement
Enhancement is in the direction of the perturbation, not in the direction of the evoked eye movement
How do we think about gain control in terms of neural circuits? Parieto-frontal circuit Parieto-ponto-cerebellar circuit MT Vector averaging Frontal Pursuit Area Preliminary command for eye velocity X Motor command Site of gain control What are the input signals that allow the frontal pursuit area to control the gain of the visual-motor transformation?
How do we think about gain control in terms of neural circuits? Parieto-frontal circuit Parieto-ponto-cerebellar circuit MT Vector averaging Frontal Pursuit Area Preliminary command for eye velocity X Motor command Site of gain control Vision needs to be one input signal, since image motion has to turn the pursuit system on and initiate smooth tracking.
How do we think about gain control in terms of neural circuits? Parieto-frontal circuit Parieto-ponto-cerebellar circuit Feedback of motor command MT Vector averaging Frontal Pursuit Area Preliminary command for eye velocity X Motor command Site of gain control The frontal pursuit area needs to represent eye velocity as well as image velocity. (Note another positive feedback loop, like the one through the cerebellum)
Now we know why the FPA and cerebellum have very similar outputs during pursuit FPA Cerebellum
Now we know why the FPA and cerebellum have very similar outputs during pursuit FPA Cerebellum Uses image motion to initiate pursuit by increasing the internal gain of pursuit. Uses eye velocity to keep the internal gain of pursuit high when image motion vanishes because of perfect tracking. Uses image motion to initiate pursuit by driving eye acceleration. Uses eye velocity to keep a moving eye moving when image motion vanishes because of perfect tracking. Same basic signals, same basic positive feedback circuit, same basic goal of maintaining excellent tracking when the sensory input to the system goes away. Operating at very different levels of the motor hierarchy, one at a modulatory level, one at a nuts-and-bolts level.
What are we trying to explain -- the many features of the pursuit behavior. • Smooth eye movement persists without image motion. • Population decoding for visual-motor transformations (probably done at multiple levels) • On-line gain control • Target choice in real-world situations • Long-term adaptive changes (learning)
Anatomy of pursuit Caudate nucleus How does it work when each part is doing the same neural computation?
Collaborators Anne Churchland Mark Churchland Rich Krauzlis Ed Morris Nicholas Priebe Joshua Schwartz Leeland Stone Masaki Tanaka Albert Fuchs